WO2014110486A1 - Acoustic analysis of component having engineered internal space for fluid flow - Google Patents

Acoustic analysis of component having engineered internal space for fluid flow Download PDF

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Publication number
WO2014110486A1
WO2014110486A1 PCT/US2014/011239 US2014011239W WO2014110486A1 WO 2014110486 A1 WO2014110486 A1 WO 2014110486A1 US 2014011239 W US2014011239 W US 2014011239W WO 2014110486 A1 WO2014110486 A1 WO 2014110486A1
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WO
WIPO (PCT)
Prior art keywords
component
frequency
acoustic
fluid
internal space
Prior art date
Application number
PCT/US2014/011239
Other languages
French (fr)
Inventor
Taylor K. BLAIR
Gary Pickrell
Michael Cybulsky
Raymond Sinatra
Romesh BATRA
Original Assignee
Blair Taylor K
Gary Pickrell
Michael Cybulsky
Raymond Sinatra
Batra Romesh
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Blair Taylor K, Gary Pickrell, Michael Cybulsky, Raymond Sinatra, Batra Romesh filed Critical Blair Taylor K
Publication of WO2014110486A1 publication Critical patent/WO2014110486A1/en

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Classifications

    • GPHYSICS
    • G01MEASURING; TESTING
    • G01HMEASUREMENT OF MECHANICAL VIBRATIONS OR ULTRASONIC, SONIC OR INFRASONIC WAVES
    • G01H13/00Measuring resonant frequency
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B05SPRAYING OR ATOMISING IN GENERAL; APPLYING FLUENT MATERIALS TO SURFACES, IN GENERAL
    • B05BSPRAYING APPARATUS; ATOMISING APPARATUS; NOZZLES
    • B05B12/00Arrangements for controlling delivery; Arrangements for controlling the spray area
    • B05B12/08Arrangements for controlling delivery; Arrangements for controlling the spray area responsive to condition of liquid or other fluent material to be discharged, of ambient medium or of target ; responsive to condition of spray devices or of supply means, e.g. pipes, pumps or their drive means
    • B05B12/082Arrangements for controlling delivery; Arrangements for controlling the spray area responsive to condition of liquid or other fluent material to be discharged, of ambient medium or of target ; responsive to condition of spray devices or of supply means, e.g. pipes, pumps or their drive means responsive to a condition of the discharged jet or spray, e.g. to jet shape, spray pattern or droplet size
    • BPERFORMING OPERATIONS; TRANSPORTING
    • B05SPRAYING OR ATOMISING IN GENERAL; APPLYING FLUENT MATERIALS TO SURFACES, IN GENERAL
    • B05BSPRAYING APPARATUS; ATOMISING APPARATUS; NOZZLES
    • B05B15/00Details of spraying plant or spraying apparatus not otherwise provided for; Accessories
    • B05B15/14Arrangements for preventing or controlling structural damage to spraying apparatus or its outlets, e.g. for breaking at desired places; Arrangements for handling or replacing damaged parts
    • B05B15/18Arrangements for preventing or controlling structural damage to spraying apparatus or its outlets, e.g. for breaking at desired places; Arrangements for handling or replacing damaged parts for improving resistance to wear, e.g. inserts or coatings; for indicating wear; for handling or replacing worn parts
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N29/00Investigating or analysing materials by the use of ultrasonic, sonic or infrasonic waves; Visualisation of the interior of objects by transmitting ultrasonic or sonic waves through the object
    • G01N29/14Investigating or analysing materials by the use of ultrasonic, sonic or infrasonic waves; Visualisation of the interior of objects by transmitting ultrasonic or sonic waves through the object using acoustic emission techniques
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N29/00Investigating or analysing materials by the use of ultrasonic, sonic or infrasonic waves; Visualisation of the interior of objects by transmitting ultrasonic or sonic waves through the object
    • G01N29/22Details, e.g. general constructional or apparatus details
    • G01N29/222Constructional or flow details for analysing fluids
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N29/00Investigating or analysing materials by the use of ultrasonic, sonic or infrasonic waves; Visualisation of the interior of objects by transmitting ultrasonic or sonic waves through the object
    • G01N29/44Processing the detected response signal, e.g. electronic circuits specially adapted therefor
    • G01N29/4454Signal recognition, e.g. specific values or portions, signal events, signatures
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N29/00Investigating or analysing materials by the use of ultrasonic, sonic or infrasonic waves; Visualisation of the interior of objects by transmitting ultrasonic or sonic waves through the object
    • G01N29/44Processing the detected response signal, e.g. electronic circuits specially adapted therefor
    • G01N29/46Processing the detected response signal, e.g. electronic circuits specially adapted therefor by spectral analysis, e.g. Fourier analysis or wavelet analysis
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01HMEASUREMENT OF MECHANICAL VIBRATIONS OR ULTRASONIC, SONIC OR INFRASONIC WAVES
    • G01H3/00Measuring characteristics of vibrations by using a detector in a fluid
    • G01H3/04Frequency
    • G01H3/08Analysing frequencies present in complex vibrations, e.g. comparing harmonics present
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01HMEASUREMENT OF MECHANICAL VIBRATIONS OR ULTRASONIC, SONIC OR INFRASONIC WAVES
    • G01H3/00Measuring characteristics of vibrations by using a detector in a fluid
    • G01H3/10Amplitude; Power

Definitions

  • the present disclosure relates generally to thermal spray devices and other manufactured components that have an engineered internal space for fluid flow. More particularly, the present disclosure relates to the analysis of acoustic phenomena produced by fluid flow through the engineered internal space of such components.
  • Thermal spray nozzles, electrodes, and powder ports are some examples of components that rely on engineered internal spaces.
  • Thermal spray techniques apply a coating material to a substrate for protection against corrosion and wear in a wide variety of industrial applications.
  • the coating material is fed into the thermal spray device, where it is heated to a molten or semi-molten state by electric or combustion energy.
  • High-pressure fluid e.g., gas or air
  • a method for analyzing an internal characteristic of a component having an engineered internal space, a fluid entrance and a fluid exit to allow fluid flow through the internal space past a portion of the component for which the internal characteristic is determined includes, with a computing device: receiving time- dependent acoustic data signals produced by the component during the fluid flow through the internal space at one or more controlled flow rates; converting the time- dependent acoustic data signals to a frequency-dependent spectrum; extracting frequency and acoustic intensity values from the acoustic data signals in the frequency-dependent spectrum; identifying a frequency in the frequency-dependent spectrum that corresponds to the internal characteristic of the component; and predicting at least one of a state and a source of the component based on the identified frequency and an acoustic intensity value
  • the method may include comparing the extracted frequency and acoustic intensity values in the frequency-dependent spectrum to a set of known frequency and acoustic intensity values for the one or more controlled flow rates. In some examples, the method may include identifying a maximum acoustic intensity value in the extracted acoustic intensity values and determining a portion of the frequency-dependent spectrum that corresponds to the maximum acoustic intensity value. In some examples, the method may include using the identified portion of the frequency-dependent spectrum to analyze the internal characteristic of the component. In some examples, the method may include identifying a portion of the frequency spectrum that corresponds to a flow phenomenon comprising one or more of vortical flow, jet screech, and shock cell generation.
  • the method may include receiving acoustic data signals that are detectable by a microphone and performing the method using the acoustic data signals that are detectable by a microphone. In some examples, the method may include receiving acoustic data signals that are not detectable by a human ear and performing the method using the acoustic data signals that are not detectable by a human ear. In some examples, the method may include processing the acoustic data signals using a Fast Fourier Transform. In some examples, the method may include calculating a probability that the state of the component is new. In some examples, the method may include calculating a probability that the state of the component is worn.
  • the method may include generating a fit model as a function of frequency and intensity, and predicting a likelihood that the component is new or worn using the fit model. In some examples, the method may include calculating a probability that the source of the component is a particular manufacturer. In some examples, the method may include generating a fit model as a function of frequency and source, and predicting a likelihood that the component is made by a particular source using the fit model. In some examples, the method may include generating a plurality of spectrograms of the extracted frequency values and the corresponding flow rates, analyzing the differences in the spectrograms, and based on the differences in the spectrograms, predicting at least one of the state and the source of the component.
  • the method may include conducting the method during operation of the component and updating a process control parameter in response to the predicting and during the operation of the component.
  • the method may include generating a human- readable electronic notification of the predicted state or the predicted source of the component.
  • the component may include one of a thermal spray nozzle and an electrode of a thermal spray device.
  • an apparatus includes the component, a fluid supply to supply fluid to the entrance of the component, a flow regulator to control the flow rate through the internal space of the component, an attachment apparatus to attach the fluid supply to the component, and a microphone, wherein the apparatus is to generate the fluid flow through the internal space of the component and capture the acoustic data signals that are analyzed by the computing device according to any of the foregoing methods.
  • a computing device includes a processor and memory having stored therein a plurality of instructions that when executed by the processor cause the computing device to perform any of the foregoing methods.
  • a method for analyzing an internal characteristic of a component having an engineered internal space, a fluid entrance and a fluid exit to allow supersonic fluid flow through the internal space past a portion of the component for which the internal characteristic is determined includes, with a computing device: receiving time-dependent acoustic data signals produced by the component during the supersonic fluid flow through the internal space at a plurality of different flow rates over time; converting the time-dependent acoustic data signals to a frequency- dependent spectrum; for each of the different flow rates, determining a peak frequency value from the acoustic data signals in the frequency-dependent spectrum, the peak frequency value corresponding to a maximum acoustic intensity at the flow rate; and predicting at least one of a state
  • the method of claim 21 comprising generating a fit model as a function of the peak frequency and flow rate, and predicting a likelihood that the component is new or worn using the fit model.
  • the method may include conducting the method during operation of the component and updating a process control parameter based on the predicting during the operation of the component.
  • the method may include notifying a human operator of the predicted state or the predicted source of the component.
  • the component may include a powder port of a thermal spray device.
  • an apparatus comprising the component, a fluid supply to supply fluid to the entrance of the component, a flow regulator to control the flow rate through the internal space of the component, an attachment apparatus to attach the fluid supply to the component, and a microphone, wherein the apparatus is to generate the fluid flow through the internal space of the component and capture the acoustic data signals that are analyzed by the computing device according to any of the foregoing methods.
  • a computing device comprising a processor and memory having stored therein a plurality of instructions that when executed by the processor cause the computing device to perform any of the foregoing methods.
  • one or more machine readable storage media including a plurality of instructions stored thereon that in response to being executed result in a computing device performing any of the foregoing methods.
  • FIG. 1 is a simplified block diagram of at least one embodiment of an apparatus for analyzing an internal space of a component, where the internal space is engineered for fluid flow;
  • FIG. 2 is a simplified block diagram of at least one embodiment of the computing device of FIG. 1 ;
  • FIG. 3 is a simplified flow diagram of at least one embodiment of method for analyzing at least one embodiment of the component of FIG. 1 ;
  • FIG. 4 is an example of a plot of acoustic intensity and frequency data obtained using the apparatus of FIG. 1 to analyze the state of each nozzle in a set of GH nozzles;
  • FIG. 5 is an example of a plot of the probability that a nozzle is new and acoustic intensity data, obtained using the apparatus of FIG. 1 ;
  • FIG. 6 is an example of a plot of the probability that a nozzle is manufactured by a particular source and frequency data, obtained using the apparatus of FIG. 1 ;
  • FIG. 7 is an example of a plot of peak frequency and air flow rate data for a powder port, obtained using the apparatus of FIG. 1 ;
  • FIG. 8 is another example of a plot of peak frequency and air flow rate data for a powder port, obtained using the apparatus of FIG. 1 ;
  • FIGS. 9A and 9B are examples of spectrograms of frequency and air flow rate for a new nozzle and a used nozzle, respectively;
  • FIG. 9C is a legend for use with FIG. 9A and FIG. 9B;
  • FIG. 10A is an example plot of a spectrum difference resulting from an analysis of the spectrograms of FIGS. 9A and 9B;
  • FIG. 10B is a legend for use with FIG. 10A;
  • FIG. 1 1 A is an example plot of a spectrum difference resulting from an analysis of spectrograms for nozzles from different sources.
  • FIG. 1 1 B is a legend for use with FIG. 1 1 A.
  • an apparatus 100 enables a non-visual, operator-independent, objective inspection and analysis of internal component structures.
  • the illustrative apparatus 1 00 can be used to test, inspect, and/or analyze a component 1 1 8 that has an engineered internal space 120 for fluid flow.
  • the apparatus 100 can determine and analyze the progressive changes in the state or condition (e.g., wear) of components such as plasma spray process consumables (e.g., electrodes and powder ports).
  • the apparatus 100 includes a computing device 1 1 0, a fluid supply 1 1 2, a flow regulator 1 14, an attachment apparatus 1 16, the component 1 18, and a microphone 124.
  • the microphone 124 captures acoustic signals 1 26 (e.g., audio) that are created by the component 1 18 when fluid flows through the engineered internal space 120.
  • An acoustic diagnostics system 140 is embodied in the computing device 1 10, and is configured to cause the computing device 1 10 to execute one or more methods of frequency analysis using data that is extracted from the acoustic signals 126.
  • the fluid supply 1 12 provides the fluid (e.g., air, liquid, gas, gel, aerosol, etc.), which is introduced to the internal space 120 through an entrance region 1 30 and exits the internal space 120 via an exit region 132.
  • the fluid may include, for example, air, argon, helium, or nitrogen.
  • the fluid travels through the internal space 120 at a flow rate that is controlled by a flow regulator 1 14. After exiting the internal space 1 20, the fluid travels along a path of jet flow. In some embodiments, the fluid travels toward and may temporarily or permanently bind to a substrate 122.
  • the substrate 122 may include, for example, a manufactured part needing a protective coating.
  • the apparatus 100 allows for non-destructive inspection and testing of the component 1 18, even where the internal space 120 is difficult or impossible to inspect by traditional visual or mechanical methods (as may be the case with small-diameter ports, for example). Embodiments of the apparatus 100 can be used to detect and diagnose progressive changes in the state of wear of the component 1 18.
  • embodiments of the apparatus 100 can be used to identify the source (e.g., the manufacturer) of the component 1 18. Further, alternatively or in addition, embodiments of the apparatus 100 can utilize the methods performed by the computing device 1 10 and/or the results obtained therefrom for online or offline diagnostics and/or process control. Accordingly, the computing device 1 10 may generate one or more process control parameters 128 as a result of the analysis of the acoustic signals and supply the process control parameters 128 to the flow regulator 1 14 (e.g., to modify the fluid flow rate). In this way, aspects of the apparatus 100 can be used to, for example, maintain consistent output quality during operation of the component 1 18, to alert a human operator to replace or repair the component 1 18, and/or for life-forecasting of the component 1 1 8.
  • the component 1 18 may be any type of device that has at least one engineered internal space for fluid flow therethrough.
  • the component 1 18 is a sub-component of a larger device, such as a plasma spray gun.
  • the component 1 1 8 may be embodied as a type G, GH, or GP plasma spray nozzle, another type of plasma spray electrode, a plasma spray powder port, or another type of spray nozzle.
  • aspects of the disclosed apparatus and methods may differ based on the component type, or based on an internal characteristic of the component.
  • the apparatus 100 executes a method to detect differences in an internal characteristic of the component 1 1 8 by producing, detecting and analyzing the acoustic signal 126.
  • the acoustic signal 126 is produced by a controlled gas or fluid flow through the internal space 120 of the component 1 18.
  • the internal space 1 20 has at least two exit orifices or apertures (e.g., the entrance 130 and the exit 132), such that by implementing a pressure gradient a fluid can be induced to flow past the surface or body of the component that is being examined.
  • the flow regulator 1 14 controls the flow rate of the fluid such that known conditions of flow can be maintained and repeated accurately.
  • the flow regulator 1 14 may be embodied as a digital flow meter of a type manufactured by Alicat Scientific, Inc.
  • the flow rate is set at a level that can produce an acoustic signal of sufficient loudness to be within the detection range of the microphone 124.
  • the flow rate is set to produce a supersonic acoustic signal.
  • the fluid supply 1 12 is embodied as a controlled source of fluid that can produce and maintain the requisite pressures and flow rates.
  • the fluid supply 1 1 2 may be embodied as a standard air compressor whose operation is electronically controlled by the flow regulator 1 14. Any suitable type of fluid can be used. As such, the apparatus 1 00 can be useful in many different processes and applications.
  • the component 1 18 is coupled or directly connected to the fluid supply 1 1 2 by the attachment apparatus 1 16 in a manner that reduces or eliminates the potential for uncontrolled fluid flow, leaks, or vibrations of the component 1 18 or the attachment apparatus 1 16.
  • the attachment apparatus 1 16 may comprise a pipe (e.g., a PVC pipe) and a hose clamp, where the pipe has an inner diameter that is defined so that the hose clamp compresses the pipe for an air-tight fit onto the nozzle.
  • Another hose clamp may be applied to the end of the pipe so that the nozzle abuts the end of the pipe in an even and consistent manner.
  • the pipe can then be attached to the flow regulator 1 14 by a standard compressed air hose.
  • the nozzle and the pipe may be mounted in a stand, to place them in a stable or consistent position relative to the other components of the apparatus 100 (e.g., the microphone 124).
  • the microphone 124 is positioned downstream of the component 1 1 8 (e.g., the nozzle) and off of the jet axis (shown in FIG. 1 as the "jet flow” arrow), in order to limit broadband turbulent noise of the airflow impinging on the microphone 124, or for other reasons.
  • the apparatus 100 is used to perform a number of tests or continuously analyze the acoustic signals 126 that are generated over a period of time, the position or location of the microphone 124 relative to the component 1 18, or more particularly the portion of the component being analyzed (e.g., the nozzle), is maintained consistently through use of a stand as mentioned above, or another suitable position-stabilizing device.
  • the microphone 124 may be positioned consistently relative to the component 1 18 such that the microphone detects the acoustic signal of the fluid flow through the component 1 1 8 and not the interaction between the fluid flow and the microphone 1 24 (i.e., outside of the jet flow).
  • the microphone 1 24 has a frequency response range that is sufficient to accommodate the acoustic signal that is produced by the flow phenomena resulting from the operation of the component 1 18.
  • the microphone 124 is coupled or directly connected to a power supply that feeds the audio signals generated by the jet flow to a signal processor (e.g., an analog to digital converter), which may be integrated with the computing device 1 10, and then from the signal processor to the acoustic diagnostics system 140 for data processing.
  • a signal processor e.g., an analog to digital converter
  • the physical arrangement of the various elements of the apparatus 100 is designed to produce one or more discrete acoustic frequencies from the component 1 18 (e.g., type GH and G plasma spray nozzles) that vary by component manufacturer and/or change as the degree of wear of the component 1 1 8 changes. Portions of the apparatus 100 can be altered or rearranged as needed, to accommodate different component types and/or to induce certain desired acoustic frequencies from the fluid flow, for example.
  • the microphone 124 can be selected to record high frequency acoustic signals to allow for the detection of high frequency flow and acoustic phenomena, including jet screech resulting from fluid flow past small internal diameter components such as plasma spray powder ports.
  • any acoustic frequency response be within the range of human hearing, although some embodiments may be limited as such if called for by the requirements of a particular design.
  • the apparatus 100 can be implemented as an offline test method or as an online diagnostic tool.
  • the component 1 18 being tested can be removed from its normal state of use and tested independently of process variables that could alter the acoustic signals.
  • the component 1 1 8 e.g., a plasma spray nozzle or powder port
  • the larger device e.g., a plasma spray gun
  • the frequency analysis methods disclosed herein can allow for the simultaneous characterization of more than one component of a larger device, if the components' characteristic flow differences occur at different frequencies.
  • the acoustic signals 126 and/or information derived therefrom are fed back into a real-time adaptive process control algorithm, which may respond to the detected changes in component characteristics by calculating new or modified process control parameters, in order to maintain consistent output quality or for other reasons.
  • Real-time feedback of the acoustic diagnostics produced by the apparatus 100 into adaptive process control can decrease or eliminate the deterioration of process quality needed to reach the detection limits of other monitoring systems.
  • the principles of the disclosed methods allow time-dependent process phenomena to be analyzed and diagnosed on any timescale longer than the frequency response of the microphone 124.
  • the computing device 1 10 includes hardware and/or software components that are capable of recording audio (e.g., as .wav files) and processing the acoustic signals 126 in the full frequency range of the microphone 124.
  • the hardware and/or software components of the computing device 1 10 are configured to compare and evaluate the different states of the component 1 18 as a function of fluid flow rate, acoustic frequency and acoustic intensity.
  • the computing device 1 10 (or more specifically, the acoustic diagnostic system 140) can identify differences in the acoustic frequency spectrums for components 1 18 that produce a discrete frequency tone and for components 1 1 8 that do not produce a discrete frequency tone.
  • FIG. 2 depicts a simplified block diagram of an exemplary computing environment 200 including the computing device 1 1 0, in which the acoustic diagnostics system 140 may be embodied. While not specifically shown, the illustrative environment 200 may include other computing devices (e.g., servers, mobile computing devices, etc.), which may be in communication with each other and/or the computing device 1 1 0 via one or more communication networks.
  • the illustrative computing device 1 10 includes at least one processor 220 (e.g. a controller, microprocessor, microcontroller, digital signal processor, etc.), memory 224, and an input/output (I/O) subsystem 222.
  • processor 220 e.g. a controller, microprocessor, microcontroller, digital signal processor, etc.
  • memory 224 e.g. a controller, microprocessor, microcontroller, digital signal processor, etc.
  • I/O input/output
  • the computing device 1 10 may be embodied as any type of computing device such as a personal computer or mobile device (e.g., desktop, laptop, tablet, smart phone, body-mounted or wearable device, etc.), a server, an enterprise computer system, a network of computers, a combination of computers and other electronic devices, or other electronic devices.
  • the I/O subsystem 222 typically includes, among other things, an I/O controller, a memory controller, and one or more I/O ports.
  • the processor 220 and the I/O subsystem 222 are communicatively coupled to the memory 224.
  • the memory 224 may be embodied as any type of suitable computer memory device (e.g., volatile memory such as various forms of random access memory).
  • the I/O subsystem 222 is communicatively coupled to a number of hardware and/or software components, including a data storage device 226, a display 230, communication circuitry 232, a user interface subsystem 234, a signal processing subsystem 236, an audio subsystem 238, and the acoustic diagnostics system 140.
  • the data storage device 226 may include one or more hard drives or other suitable persistent data storage devices (e.g., flash memory, memory cards, memory sticks, and/or others). Portions of the acoustic diagnostics system 140 (e.g., a component model 228) may reside at least temporarily in the data storage device 226.
  • the display 230 may be embodied as any suitable type of digital display device, such as a liquid crystal display (LCD), and may include a touchscreen.
  • the illustrative display 230 is configured or selected to be capable of displaying two- and/or three-dimensional graphics, including the plots and spectrograms shown in FIGS. 4-1 1 .
  • the communication circuitry 232 may communicatively couple the computing device 1 10 to other computing devices and/or systems by, for example, a cellular network, a local area network, wide area network (e.g., Wi-Fi), personal cloud, virtual personal network (e.g., VPN), enterprise cloud, public cloud, Ethernet, and/or public network such as the Internet.
  • the communication circuitry 232 may, alternatively or in addition, enable shorter-range wireless communications between the computing device 710 and other computing devices, using, for example, BLUETOOTH and/or Near Field Communication (NFC) technology.
  • the communication circuitry 232 may include one or more optical, wired and/or wireless network interface subsystems, cards, adapters, or other devices, as may be needed pursuant to the specifications and/or design of the particular computing device 1 1 0.
  • the user interface subsystem 234 includes one or more user input devices (e.g., a microphone, a touchscreen, keyboard, virtual keypad, etc.) and one or more output devices (e.g., audio speakers, LEDs, additional displays, etc.). While not specifically shown, the I/O subsystem 222 may also be communicatively coupled to sensing devices (e.g., motion sensors, pressure sensors, kinetic sensors, temperature sensors, biometric sensors, and/or others) that are integrated with or in communication with the computing device 1 10, in some embodiments.
  • the signal processing subsystem 236 may include the analog to digital converter mentioned above, a digital to analog converter, and any other signal processing components that may be required by a particular design of the apparatus 1 00 (e.g., filters, etc.).
  • the audio subsystem 238 may include the microphone 124 (e.g., as an integrated component of a mobile device or other computing device), and may include, for example, an audio CODEC and/or one or more speakers and headphone jacks.
  • the illustrative acoustic diagnostics system 140 is embodied as a number of computer-executable sub-components and data structures, including a frequency analysis module 242, a component characterization module 244, and an optional monitoring and control module 246.
  • the illustrative frequency analysis module 242 extracts acoustic frequency and acoustic intensity data from the time- dependent acoustic signals 126 and converts the frequency and intensity data to a frequency-dependent spectrum (using, e.g., a Fast Fourier Transform or FFT).
  • FFT Fast Fourier Transform
  • the acoustic signals126 can be recorded for the background noise and the FFT of the background noise signal can be subtracted from the frequency spectrums of the actual component flow recordings.
  • the illustrative component characterization module 244 analyzes the extracted data and generates a prediction as to an internal characteristic of the component 1 1 8 (using, e.g., probabilistic models). To do this, the component characterization module 244 may compare the extracted data to a set of previously- determined data for similar components (e.g., similar components at different stages of wear or similar components made by different manufacturers). For instance, the component characterization module 244 may compare the acoustic frequency and the acoustic intensity between or across a number of different components 1 18 as a function of the fluid flow rate, to identify portions of the frequency spectrum that vary between or across different components or different component states. The component characterization module 244 utilizes the differences in acoustic frequency and acoustic intensity across components to identify distinguishing characteristics of the component and then uses the distinguishing characteristics to evaluate uncharacterized components.
  • the illustrative monitoring and control module 246 generates new or modified process control parameters (e.g., fluid flow rate changes) in response to the predictions made by the component characterization module 244.
  • Computational fluid dynamics software may be used to improve the output provided by the apparatus 1 00.
  • the component model 228 may be embodied as, for example, a computer program, a set of mathematical equations, a database, table, file or other suitable data structure, or a combination thereof.
  • the component model 228 models the fluid flow through the component 1 18 by storing "training data" accumulated as a result of the testing and analysis of other components or of the same component earlier in its lifecycle.
  • aspects of the component model 228 may establish data relationships between the data elements of the different components for which data is stored in the model 228 (such as common search terms, keys, links or pointers).
  • the component model 228 may allow the attachment apparatus 1 1 6 to be optimized to, for example, reduce the acoustic signals from upstream of the component 1 1 8 and/or amplify the component characteristic-identifying flow phenomena.
  • flow phenomena such as vortical flow, jet screech or shock cell generation that creates discrete acoustic frequencies can be identified and used to select an optimal fluid flow rate and frequency range for a given component and fluid system.
  • the component model 228 can be used to generate simulations that can identify microphone recording positions that are optimized for signal detection and signal to noise ratio.
  • the component model 228 also enables the prediction of component changes that can affect the fluid flow acoustics, as well as the degree to which the fluid flow acoustics may be affected by such component changes.
  • the computing environment 200 may include other components, sub-components, and devices not illustrated in FIG. 2 for clarity of the description.
  • the components of the environment 200 are communicatively coupled as shown in FIG. 2 by electronic signal paths, which may be embodied as any type of wired or wireless signal paths capable of facilitating communication between the respective devices and components.
  • an illustrative method 300 for analyzing an internal characteristic of the component 1 18 using acoustic frequencies generated by fluid flow through the internal space 120 is shown. Aspects of the method 300 may be embodied as computerized programs, routines, logic and/or instructions executed by the computing device 1 10, for example by the modules 242, 244, 246 of the acoustic diagnostics system 140, and/or as steps or processes that are performed by other elements of the apparatus 100 or by a human person.
  • the method 300 represents one embodiment of the disclosed analytical process. Portions of the method 320 may be performed differently depending on the type of component to be analyzed. For instance, different components may require different fluid flow rates to generate the internal characteristic-identifying frequencies.
  • the desired flow rates and acoustic frequency range at which the component 1 18 is to be evaluated are set.
  • data values may be assigned to parameters or variables stored in memory at the computing device 1 1 0 and/or the flow regulator 1 14.
  • the flow rates and/or frequency ranges may be set differently depending on the component type.
  • the component 1 18 is operated to produce the acoustic signals 126 at the flow rates that are set at block 31 0.
  • the computing device 1 10 or a human operator may configure the flow regulator 1 14 to activate and control the fluid flow from the fluid supply 1 1 2 to the internal space 1 20 for a defined period of time at each of the flow rates defined at block 31 0.
  • the acoustic signals 126 are recorded by the microphone 124, which is positioned at a fixed position relative to the component 1 1 8 as described above.
  • the acoustic signals 126 are processed, e.g., by the signal processing subsystem 236, to perform the analog to digital conversion mentioned above and to extract the acoustic intensity and acoustic frequency data from the acoustic signals 1 26 at each of the defined flow rates.
  • the processed (e.g., digital) version of the acoustic signals 126 is converted to the frequency domain by applying a Fast Fourier Transform.
  • the frequency spectrum produced from the acoustic signals 126 is analyzed, e.g., by the frequency analysis module 242.
  • one or more acoustic frequencies in the defined frequency range are selected and stored in memory for further analysis.
  • the selected frequency or frequencies correspond to the maximum acoustic intensity detected within the defined frequency range.
  • the selected frequency or range of frequencies and the corresponding acoustic intensity is evaluated at each of the defined flow rates.
  • the current acoustic frequency and intensity values are compared to known frequency and intensity values at the defined flow rates. For example, the current frequency and intensity values may be compared to corresponding data residing in the component model 228.
  • the current frequency and intensity values at a given flow rate may be compared to frequency and intensity values previously obtained at the same flow rate, for the same component 1 18 or for similar components (e.g., nozzles made by different manufacturers or nozzles at various different stages of wear) which has then been stored in the component model 228.
  • a numerical computing environment such as ATLAB may be used to perform this analysis.
  • an internal characteristic of the component 1 18 is determined.
  • the computing device 1 10 may generate a prediction as to the current state of the component (e.g., new vs. worn) (block 326) and/or generate a prediction as to the source of the component (e.g., the component's manufacturer) (block 328).
  • Such predictions may be generated using probabilistic fit models, as described below.
  • statistical software such as JMP may be used to generate these predictions.
  • the computing device 1 1 0 notifies a human operator of the results of the analyses performed at blocks 320, 322, 324, 326, 328 (e.g. on the display 230 or by an electronic notification message to a mobile device). Following block 336, the human operator may manually adjust one or more of the process control parameters for the operation of the component 1 1 8, and the method 300 returns to block 310. If the method 300 is implemented for automated adaptive control, the computing device 1 1 0 computes the new or updated process control parameters (e.g., flow rate, temperature, volume, voltage, electric current, etc.) at block 338 and the method 300 returns to block 310. In the following sections, additional embodiments of the method 300 are described. TESTING AND ANALYSIS OF TYPE GH PLASMA SPRAY NOZZLES
  • the acoustic diagnostics system 140 can be used to determine one or more internal characteristics of the component 1 1 8 is illustrated.
  • both the wear and the manufacturer are determined for electrodes and/or nozzles of a plasma spray process in which a type GH plasma spray nozzle is used.
  • the flow regulator 1 14 is a digital flow controller and the fluid supply 1 1 2 is a compressed air source.
  • the fluid supply 1 1 2 supplies air into a 25-foot air hose, which is connected to a 17-inch long 3 ⁇ 4-inch ID PE pipe.
  • a hose clamp is used to compress the pipe and to provide an air-tight fit onto the nozzle, which is inserted onto the end of the pipe opposite the air hose.
  • An additional clamp is added to the exterior at the end of the pipe to which the nozzle abuts, in an even and consistent manner.
  • the microphone 124 is encased in 0.5-inch foam insulation, and is laid parallel to and on top of the pipe, in line with the end of the nozzle. The foam on the microphone 124 and its placement ensures that the microphone is acoustically isolated from any vibrations and ensures repeatable placement relative to the nozzles.
  • the audio signals captured by the microphone 124 are fed into the computing device 1 10, which is also communicatively coupled to the flow regulator 1 14.
  • the acoustic signals 126 are recorded, and the acoustic frequency and acoustic intensity data are extracted for analysis.
  • the range of fluid flow rates (e.g., velocities) at which to evaluate the nozzle is set depending on the type of nozzle being tested.
  • other aspects of the processing are varied, alternatively or in addition to the fluid flow rate. For example, in some embodiments, a number of different frequency ranges may be analyzed, a number of different frequency peaks may be compared, and/or the acoustic intensity may be analyzed over a range of different fluid flow rates and/or a range of different acoustic frequencies.
  • the criteria used to evaluate the nozzle may be selected based on the nozzle type, the condition of the nozzle, the type of analysis desired, and/or other factors.
  • the fluid flow rate may be set in the range of about 40 standard liters per minute (SLM), with increases in 1 -SLM increments up to about 1 00 SLM.
  • SLM standard liters per minute
  • a characteristic frequency or frequencies may be identified for a particular flow rate, such that the recording of acoustic data over a range of flow rates may not be necessary.
  • the acoustic signal is recorded for 0.5 seconds, the FFT is taken of that signal and, in the frequency range of about 1 .2 to about 10kHz, the discrete acoustic frequency that corresponds to the maximum acoustic intensity ("peak frequency") is identified and written to a computer file along with the flow properties (e.g., the flow rate), which are obtained from the digital flow controller.
  • the peak frequency and maximum intensity data is then imported into statistical software, such as JMP, where it is analyzed further. For example, the maximum acoustic intensity value and the corresponding peak frequency value are compared to the maximum intensity and peak frequency values obtained from analysis of other components (e.g., by a look-up table or database query of the component model 228.
  • FIG. 4 shows a plot of the highest acoustic intensity peak in the frequency spectrums of recordings taken of 23 GH plasma spray nozzles operated at a 75 SLM air flow rate.
  • the test results for new and worn nozzles are identified by the legend to the right of the plot.
  • the peak frequency and intensity values are further analyzed using fit models to differentiate between a new nozzle and a worn out nozzle and to distinguish between new nozzles made by different manufacturers.
  • a fit model of state (where the state is new or worn) as a function of acoustic frequency and acoustic intensity predicted the component's state with 87% accuracy.
  • a fit model of source (where the source is the name of the manufacturer) by frequency distinguished between two new nozzles made by different manufacturers 100% of the time.
  • a function that can be used to determine the probability that a nozzle is new.
  • Pra&iNEW ⁇ : —
  • the probabilities as to the likely state of the component are computed as functions of only the maximum acoustic intensity and peak acoustic frequency values that are found for the frequency spectrum. In other embodiments, other parameters may be used, alternatively or in addition to maximum intensity and frequency.
  • FIG. 5 is an example of a plot of the probability of the nozzle being new vs. the acoustic intensity, obtained using the intensity and frequency data shown in FIG. 4.
  • the plot of FIG. 5 distinguishes between new and worn nozzles as shown.
  • a function that may be used to determine the probability that a new GH nozzle was manufactured by American Torch Tip (ATT) versus Sulzer Metco (SM).
  • the probabilities as to the likely source of the component are computed as functions of only the peak acoustic frequency values that are found for the frequency spectrum. In other embodiments, other parameters may be used, alternatively or in addition to maximum intensity and frequency. Using the same data as FIGS. 4-5, the predictions resulting from the application of the above equation are plotted in FIG. 6, as the probability that the source is ATT as a function of acoustic frequency.
  • the method 300 varies slightly. Powder ports, small-diameter nozzles, and similar components have sufficiently small diameter to, assuming available gas pressure and flow rate, induce supersonic flow. In the "powder port" embodiment, the location and intensity of the jet screech discrete frequency as a function of flow rate can be compared between or across components to determine the components' wear state.
  • the powder ports are attached via compression fittings to a 1 0-inch length of 1 ⁇ 4-inch I D straight metal pipe, but otherwise using the same air hose, flow controller, and compressed air source as in the above-described example.
  • the metal pipe is wrapped in insulation to provide spacing between the powder port and the microphone 1 24.
  • the microphone 1 24 is positioned relative to the powder port in the same manner as described above.
  • the acoustic signals 1 26 are recorded as described above, except with different flow rate ranges depending upon the geometry of the powder port. For example, with powder ports of type # 1 , a flow rate in the range of about 1 0 to about 125 SLM may be used.
  • a flow rate in the range of about 70 to about 1 25 SLM may be used.
  • a flow rate in the range of about 45 to about 125 SLM may be used. Some of these flow rates have been determined to produce supersonic flows from the powder ports.
  • the flow rate, acoustic intensity, and acoustic frequency data is recorded in a similar manner as described above.
  • the acoustic frequency at the maximum acoustic intensity (“peak frequency”) is identified, but over a different frequency range than used above (e.g., in the frequency range between about 10 and about 96 kilohertz (kHz)).
  • the identified peak frequency is analyzed using statistical software such as JMP.
  • a peak frequency or peak frequencies are extracted from the recorded data for a selected fluid flow rate or for multiple flow rates, where the selected flow rate(s) have been determined (e.g., based on experimentation) to indicate a distinguishing characteristic of the component.
  • the flow rate(s) may be selected to best distinguish the degree of wear for a particular type of powder port.
  • an equation that relates the powder volume flowed through the powder port, as indicated by the legends of FIGS. 7-8, to the peak frequency or the maximum intensity can be derived from the test data. Powder volume flowed through the powder port is proportional to the wear of the port, corresponding to an increase in the diameter of the port as confirmed by part mass loss and optical measurement of the increasing exit internal diameter.
  • FIG. 7 shows an example of the peak frequency as a function of flow rate for the incremental steps of wear on a powder port of type #2, as determined by the amounts of powder flowed through the port at each instance.
  • the lines 710, 71 2, 714, 716, 718 are the best fit lines showing the trend of increasing peak frequency with component wear.
  • peak frequency is plotted as a function of flow rate for a powder port of type #1 , and shows large changes in the frequency spectrum trends with increasing port wear.
  • GP nozzles can be tested and analyzed in a similar manner as the GH nozzles described above. However, with GP nozzles, the acoustic signals 1 26 may be recorded at flow rates in different range of flow rates, e.g., flow rates in the range of about 15 SLM to about 85 SLM. As the GP nozzles don't produce a discrete frequency, the extraction of the highest intensity frequency is not typically effective to characterize the component. Thus, rather than using a single discrete frequency, the "GP plasma" embodiment of the method 300 may use multiple frequencies or all of the frequencies in the defined frequency range.
  • the "GP plasma” embodiment takes the FFT of all of the .wav files and smoothes them with a smoothing filter, such as a Savitzky-Golay (polynomial) smoothing filter.
  • a smoothing filter such as a Savitzky-Golay (polynomial) smoothing filter.
  • a second order polynomial e.g., over a 55 data point window
  • the smoothed FFTs are stored in memory for further processing.
  • Software e.g., MATLAB
  • averaging the spectrograms for a subset of nozzles new, used, manufacturer 1 , manufacturer 2
  • the differences in the spectrum can be elucidated via their subtraction.
  • These differences plots can identify areas that are indicative of state and source characteristics of the component. For example, by calculating the average intensity of the frequency spectrum within a set frequency range for a selected flow rate, the probabilities for wear state and source can be determined.
  • FIGS. 9A-B illustrate examples of spectrograms for a new nozzle (FIG. 9A) and a worn nozzle (FIG. 9B), respectively.
  • the dark region of FIG. 9B e.g., region 916
  • the light region of FIG. 9B e.g., region 91 8
  • the differences in acoustic intensity and frequency can be used to identify the characteristics of new and worn nozzles, and a nozzle can be characterized as new or worn based on those characteristics.
  • FIG. 1 0A illustrates the spectrum difference that results when the spectrograms of FIGS. 9A and 9B are compared (e.g., subtracted).
  • regions 101 0 and 1012 indicate frequencies at which the intensity difference is smaller and larger, respectively.
  • the frequencies in the region 101 2 may be used to classify the state of individual nozzles.
  • FIG. 1 1 A illustrates a spectrum difference that results when the spectrograms of two different new nozzles are compared (i.e., two new nozzles made by two different manufacturers).
  • the regions 1 1 1 1 0 and 1 1 1 2 indicate frequencies at which the intensity difference is smaller and larger, respectively.
  • the frequencies in the region 1 1 12 may be used to identify the source of individual nozzles.
  • references in the specification to "an embodiment,” etc., indicate that the embodiment described may include a particular feature, structure, or characteristic, but every embodiment may not necessarily include the particular feature, structure, or characteristic. Such phrases are not necessarily referring to the same embodiment. Further, when a particular feature, structure, or characteristic is described in connection with an embodiment, it is believed to be within the knowledge of one skilled in the art to effect such feature, structure, or characteristic in connection with other embodiments whether or not explicitly indicated.
  • Embodiments in accordance with the disclosure may be implemented in hardware, firmware, software, or any combination thereof. Embodiments may also be implemented as instructions stored using one or more machine-readable media, which may be read and executed by one or more processors.
  • a machine-readable medium may include any mechanism for storing or transmitting information in a form readable by a machine.
  • a machine-readable medium may include any suitable form of volatile or non-volatile memory.
  • Modules, data structures, and the like defined herein are defined as such for ease of discussion, and are not intended to imply that any specific implementation details are required.
  • any of the described modules and/or data structures may be combined or divided into sub-modules, sub-processes or other units of computer code or data as may be required by a particular design or implementation of the apparatus 1 00.

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Abstract

A characteristic of a component having an engineered internal space can be analyzed by recording acoustic signals produced by fluid flow through the internal space at controlled flow rates, and determining one or more acoustic frequencies and acoustic intensities that are indicative of the characteristic of the component. A state and/or a source of the component can be predicted based on the results of such analysis.

Description

ACOUSTIC ANALYSIS OF COMPONENT HAVING ENGINEERED INTERNAL SPACE FOR FLUID FLOW
Cross-Reference to Related Application
[0001] This application claims the benefit of and priority to U.S. Provisional Patent Application Serial No. 61 /752,083, filed January 14, 2013, which is incorporated herein by this reference in its entirety.
Field of the Disclosure:
[0002] The present disclosure relates generally to thermal spray devices and other manufactured components that have an engineered internal space for fluid flow. More particularly, the present disclosure relates to the analysis of acoustic phenomena produced by fluid flow through the engineered internal space of such components.
BACKGROUND
[0003] Components with engineered internal spaces for fluid flow are important in many applications. Such components can be used to direct the flow of coolant, oil, or fuel in an engine, to direct and shape the fluid flow out of a nozzle, and to direct coolant to a turbine blade, among many others. Thermal spray nozzles, electrodes, and powder ports are some examples of components that rely on engineered internal spaces. Thermal spray techniques apply a coating material to a substrate for protection against corrosion and wear in a wide variety of industrial applications. In thermal spray processes, the coating material is fed into the thermal spray device, where it is heated to a molten or semi-molten state by electric or combustion energy. High-pressure fluid (e.g., gas or air) atomizes and propels the heated particles through the nozzle to the substrate. The heated particles impact the surface and bond to the substrate to form a dense, tightly-bound coating.
SUMMARY
[0004] The present application discloses one or more of the features recited in the appended claims and/or the following features which, alone or in any combination, may comprise patentable subject matter. [0005] For example, according to at least one embodiment of this disclosure, a method for analyzing an internal characteristic of a component having an engineered internal space, a fluid entrance and a fluid exit to allow fluid flow through the internal space past a portion of the component for which the internal characteristic is determined, includes, with a computing device: receiving time- dependent acoustic data signals produced by the component during the fluid flow through the internal space at one or more controlled flow rates; converting the time- dependent acoustic data signals to a frequency-dependent spectrum; extracting frequency and acoustic intensity values from the acoustic data signals in the frequency-dependent spectrum; identifying a frequency in the frequency-dependent spectrum that corresponds to the internal characteristic of the component; and predicting at least one of a state and a source of the component based on the identified frequency and an acoustic intensity value corresponding to the identified frequency.
[0006] In some examples, the method may include comparing the extracted frequency and acoustic intensity values in the frequency-dependent spectrum to a set of known frequency and acoustic intensity values for the one or more controlled flow rates. In some examples, the method may include identifying a maximum acoustic intensity value in the extracted acoustic intensity values and determining a portion of the frequency-dependent spectrum that corresponds to the maximum acoustic intensity value. In some examples, the method may include using the identified portion of the frequency-dependent spectrum to analyze the internal characteristic of the component. In some examples, the method may include identifying a portion of the frequency spectrum that corresponds to a flow phenomenon comprising one or more of vortical flow, jet screech, and shock cell generation. In some examples, the method may include receiving acoustic data signals that are detectable by a microphone and performing the method using the acoustic data signals that are detectable by a microphone. In some examples, the method may include receiving acoustic data signals that are not detectable by a human ear and performing the method using the acoustic data signals that are not detectable by a human ear. In some examples, the method may include processing the acoustic data signals using a Fast Fourier Transform. In some examples, the method may include calculating a probability that the state of the component is new. In some examples, the method may include calculating a probability that the state of the component is worn. In some examples, the method may include generating a fit model as a function of frequency and intensity, and predicting a likelihood that the component is new or worn using the fit model. In some examples, the method may include calculating a probability that the source of the component is a particular manufacturer. In some examples, the method may include generating a fit model as a function of frequency and source, and predicting a likelihood that the component is made by a particular source using the fit model. In some examples, the method may include generating a plurality of spectrograms of the extracted frequency values and the corresponding flow rates, analyzing the differences in the spectrograms, and based on the differences in the spectrograms, predicting at least one of the state and the source of the component. In some examples, the method may include conducting the method during operation of the component and updating a process control parameter in response to the predicting and during the operation of the component. In some examples, the method may include generating a human- readable electronic notification of the predicted state or the predicted source of the component. In any of the examples, the component may include one of a thermal spray nozzle and an electrode of a thermal spray device.
[0007] As another example, according to at least one embodiment of this disclosure, an apparatus includes the component, a fluid supply to supply fluid to the entrance of the component, a flow regulator to control the flow rate through the internal space of the component, an attachment apparatus to attach the fluid supply to the component, and a microphone, wherein the apparatus is to generate the fluid flow through the internal space of the component and capture the acoustic data signals that are analyzed by the computing device according to any of the foregoing methods. As another example, according to at least one embodiment of this disclosure, a computing device includes a processor and memory having stored therein a plurality of instructions that when executed by the processor cause the computing device to perform any of the foregoing methods. As another example, according to at least one embodiment of this disclosure, one or more machine readable storage media including a plurality of instructions stored thereon that in response to being executed result in a computing device performing any of the foregoing methods. [0008] As another example, according to at least one embodiment of this disclosure, a method for analyzing an internal characteristic of a component having an engineered internal space, a fluid entrance and a fluid exit to allow supersonic fluid flow through the internal space past a portion of the component for which the internal characteristic is determined, includes, with a computing device: receiving time-dependent acoustic data signals produced by the component during the supersonic fluid flow through the internal space at a plurality of different flow rates over time; converting the time-dependent acoustic data signals to a frequency- dependent spectrum; for each of the different flow rates, determining a peak frequency value from the acoustic data signals in the frequency-dependent spectrum, the peak frequency value corresponding to a maximum acoustic intensity at the flow rate; and predicting at least one of a state and a source of the component based on the peak frequency values.
[0009] In some examples, the method of claim 21 , comprising generating a fit model as a function of the peak frequency and flow rate, and predicting a likelihood that the component is new or worn using the fit model. In some examples, the method may include conducting the method during operation of the component and updating a process control parameter based on the predicting during the operation of the component. In some examples, the method may include notifying a human operator of the predicted state or the predicted source of the component. In any of the examples, the component may include a powder port of a thermal spray device.
[0010] As another example, according to at least one embodiment of this disclosure, an apparatus comprising the component, a fluid supply to supply fluid to the entrance of the component, a flow regulator to control the flow rate through the internal space of the component, an attachment apparatus to attach the fluid supply to the component, and a microphone, wherein the apparatus is to generate the fluid flow through the internal space of the component and capture the acoustic data signals that are analyzed by the computing device according to any of the foregoing methods.
[0011] As another example, according to at least one embodiment of this disclosure, a computing device comprising a processor and memory having stored therein a plurality of instructions that when executed by the processor cause the computing device to perform any of the foregoing methods. As another example, according to at least one embodiment of this disclosure, one or more machine readable storage media including a plurality of instructions stored thereon that in response to being executed result in a computing device performing any of the foregoing methods.
BRIEF DESCRIPTION OF THE DRAWINGS
[0012] This disclosure is illustrated by way of example and not by way of limitation in the accompanying figures. The figures may, alone or in combination, illustrate one or more embodiments of the disclosure. Elements illustrated in the figures are not necessarily drawn to scale. Reference labels may be repeated among the figures to indicate corresponding or analogous elements.
[0013] FIG. 1 is a simplified block diagram of at least one embodiment of an apparatus for analyzing an internal space of a component, where the internal space is engineered for fluid flow;
[0014] FIG. 2 is a simplified block diagram of at least one embodiment of the computing device of FIG. 1 ;
[0015] FIG. 3 is a simplified flow diagram of at least one embodiment of method for analyzing at least one embodiment of the component of FIG. 1 ;
[0016] FIG. 4 is an example of a plot of acoustic intensity and frequency data obtained using the apparatus of FIG. 1 to analyze the state of each nozzle in a set of GH nozzles;
[0017] FIG. 5 is an example of a plot of the probability that a nozzle is new and acoustic intensity data, obtained using the apparatus of FIG. 1 ;
[0018] FIG. 6 is an example of a plot of the probability that a nozzle is manufactured by a particular source and frequency data, obtained using the apparatus of FIG. 1 ;
[0019] FIG. 7 is an example of a plot of peak frequency and air flow rate data for a powder port, obtained using the apparatus of FIG. 1 ;
[0020] FIG. 8 is another example of a plot of peak frequency and air flow rate data for a powder port, obtained using the apparatus of FIG. 1 ;
[0021] FIGS. 9A and 9B are examples of spectrograms of frequency and air flow rate for a new nozzle and a used nozzle, respectively;
[0022] FIG. 9C is a legend for use with FIG. 9A and FIG. 9B; [0023] FIG. 10A is an example plot of a spectrum difference resulting from an analysis of the spectrograms of FIGS. 9A and 9B;
[0024] FIG. 10B is a legend for use with FIG. 10A;
[0025] FIG. 1 1 A is an example plot of a spectrum difference resulting from an analysis of spectrograms for nozzles from different sources; and
[0026] FIG. 1 1 B is a legend for use with FIG. 1 1 A.
DETAILED DESCRIPTION OF THE DRAWINGS
[0027] While the concepts of the present disclosure are susceptible to various modifications and alternative forms, specific embodiments thereof are shown by way of example in the drawings and are described in detail below. It should be understood that there is no intent to limit the concepts of the present disclosure to the particular forms disclosed. On the contrary, the intent is to cover all modifications, equivalents, and alternatives consistent with the present disclosure and the appended claims.
[0028] Progressive changes in the condition or state of wear of a plasma spray nozzle can significantly affect the flow structure of the plasma, and can affect the voltage and current of the plasma spray device. Worn nozzles can have a detrimental effect on the plasma temperature and velocity, and thereby influence the particles and the coatings themselves. Powder ports determine the powder injection direction and velocity. Thus, worn powder ports can affect the thermal profile experienced by the powder, which in turn affects the coatings that are produced by the plasma spray device. There are limited non-destructive options for analyzing and diagnosing the internal structures of components that are engineered for fluid flow and more particularly, components that have multifunctional internal spaces such as those found in thermal spray devices. For example, in processes such as plasma spray, component wear detection is traditionally determined at the operator's discretion (e.g., by visual or tactile human inspection). As disclosed herein, an apparatus 100 enables a non-visual, operator-independent, objective inspection and analysis of internal component structures.
[0029] Referring now to FIG. 1 , an embodiment of the apparatus 100 is shown. The illustrative apparatus 1 00 can be used to test, inspect, and/or analyze a component 1 1 8 that has an engineered internal space 120 for fluid flow. The apparatus 100 can determine and analyze the progressive changes in the state or condition (e.g., wear) of components such as plasma spray process consumables (e.g., electrodes and powder ports). The apparatus 100 includes a computing device 1 1 0, a fluid supply 1 1 2, a flow regulator 1 14, an attachment apparatus 1 16, the component 1 18, and a microphone 124. As described in more detail below, the microphone 124 captures acoustic signals 1 26 (e.g., audio) that are created by the component 1 18 when fluid flows through the engineered internal space 120. An acoustic diagnostics system 140 is embodied in the computing device 1 10, and is configured to cause the computing device 1 10 to execute one or more methods of frequency analysis using data that is extracted from the acoustic signals 126. The fluid supply 1 12 provides the fluid (e.g., air, liquid, gas, gel, aerosol, etc.), which is introduced to the internal space 120 through an entrance region 1 30 and exits the internal space 120 via an exit region 132. The fluid may include, for example, air, argon, helium, or nitrogen. The fluid travels through the internal space 120 at a flow rate that is controlled by a flow regulator 1 14. After exiting the internal space 1 20, the fluid travels along a path of jet flow. In some embodiments, the fluid travels toward and may temporarily or permanently bind to a substrate 122. The substrate 122 may include, for example, a manufactured part needing a protective coating. Among other things, the apparatus 100 allows for non-destructive inspection and testing of the component 1 18, even where the internal space 120 is difficult or impossible to inspect by traditional visual or mechanical methods (as may be the case with small-diameter ports, for example). Embodiments of the apparatus 100 can be used to detect and diagnose progressive changes in the state of wear of the component 1 18. Additionally or alternatively, embodiments of the apparatus 100 can be used to identify the source (e.g., the manufacturer) of the component 1 18. Further, alternatively or in addition, embodiments of the apparatus 100 can utilize the methods performed by the computing device 1 10 and/or the results obtained therefrom for online or offline diagnostics and/or process control. Accordingly, the computing device 1 10 may generate one or more process control parameters 128 as a result of the analysis of the acoustic signals and supply the process control parameters 128 to the flow regulator 1 14 (e.g., to modify the fluid flow rate). In this way, aspects of the apparatus 100 can be used to, for example, maintain consistent output quality during operation of the component 1 18, to alert a human operator to replace or repair the component 1 18, and/or for life-forecasting of the component 1 1 8.
[0030] The component 1 18 may be any type of device that has at least one engineered internal space for fluid flow therethrough. In some embodiments, the component 1 18 is a sub-component of a larger device, such as a plasma spray gun. For instance, the component 1 1 8 may be embodied as a type G, GH, or GP plasma spray nozzle, another type of plasma spray electrode, a plasma spray powder port, or another type of spray nozzle. As described further below, aspects of the disclosed apparatus and methods may differ based on the component type, or based on an internal characteristic of the component.
[0031] An illustrative embodiment of the apparatus 100 will now be described in more detail. In operation, the apparatus 100 executes a method to detect differences in an internal characteristic of the component 1 1 8 by producing, detecting and analyzing the acoustic signal 126. The acoustic signal 126 is produced by a controlled gas or fluid flow through the internal space 120 of the component 1 18. The internal space 1 20 has at least two exit orifices or apertures (e.g., the entrance 130 and the exit 132), such that by implementing a pressure gradient a fluid can be induced to flow past the surface or body of the component that is being examined.
[0032] The flow regulator 1 14 controls the flow rate of the fluid such that known conditions of flow can be maintained and repeated accurately. For instance, the flow regulator 1 14 may be embodied as a digital flow meter of a type manufactured by Alicat Scientific, Inc. In some embodiments, the flow rate is set at a level that can produce an acoustic signal of sufficient loudness to be within the detection range of the microphone 124. In other embodiments, the flow rate is set to produce a supersonic acoustic signal. The fluid supply 1 12 is embodied as a controlled source of fluid that can produce and maintain the requisite pressures and flow rates. For example, the fluid supply 1 1 2 may be embodied as a standard air compressor whose operation is electronically controlled by the flow regulator 1 14. Any suitable type of fluid can be used. As such, the apparatus 1 00 can be useful in many different processes and applications.
[0033] The component 1 18 is coupled or directly connected to the fluid supply 1 1 2 by the attachment apparatus 1 16 in a manner that reduces or eliminates the potential for uncontrolled fluid flow, leaks, or vibrations of the component 1 18 or the attachment apparatus 1 16. For example, in an embodiment in which the apparatus 100 is configured to generate and analyze a vortex shedding-induced frequency for a type G or type GH plasma spray nozzle, the attachment apparatus 1 16 may comprise a pipe (e.g., a PVC pipe) and a hose clamp, where the pipe has an inner diameter that is defined so that the hose clamp compresses the pipe for an air-tight fit onto the nozzle. Another hose clamp may be applied to the end of the pipe so that the nozzle abuts the end of the pipe in an even and consistent manner. The pipe can then be attached to the flow regulator 1 14 by a standard compressed air hose. The nozzle and the pipe may be mounted in a stand, to place them in a stable or consistent position relative to the other components of the apparatus 100 (e.g., the microphone 124).
[0034] The microphone 124 is positioned downstream of the component 1 1 8 (e.g., the nozzle) and off of the jet axis (shown in FIG. 1 as the "jet flow" arrow), in order to limit broadband turbulent noise of the airflow impinging on the microphone 124, or for other reasons. Where the apparatus 100 is used to perform a number of tests or continuously analyze the acoustic signals 126 that are generated over a period of time, the position or location of the microphone 124 relative to the component 1 18, or more particularly the portion of the component being analyzed (e.g., the nozzle), is maintained consistently through use of a stand as mentioned above, or another suitable position-stabilizing device. For instance, the microphone 124 may be positioned consistently relative to the component 1 18 such that the microphone detects the acoustic signal of the fluid flow through the component 1 1 8 and not the interaction between the fluid flow and the microphone 1 24 (i.e., outside of the jet flow). The microphone 1 24 has a frequency response range that is sufficient to accommodate the acoustic signal that is produced by the flow phenomena resulting from the operation of the component 1 18. The microphone 124 is coupled or directly connected to a power supply that feeds the audio signals generated by the jet flow to a signal processor (e.g., an analog to digital converter), which may be integrated with the computing device 1 10, and then from the signal processor to the acoustic diagnostics system 140 for data processing.
[0035] The physical arrangement of the various elements of the apparatus 100 is designed to produce one or more discrete acoustic frequencies from the component 1 18 (e.g., type GH and G plasma spray nozzles) that vary by component manufacturer and/or change as the degree of wear of the component 1 1 8 changes. Portions of the apparatus 100 can be altered or rearranged as needed, to accommodate different component types and/or to induce certain desired acoustic frequencies from the fluid flow, for example. For instance, the microphone 124 can be selected to record high frequency acoustic signals to allow for the detection of high frequency flow and acoustic phenomena, including jet screech resulting from fluid flow past small internal diameter components such as plasma spray powder ports. In the apparatus 1 00, there is no requirement that any acoustic frequency response be within the range of human hearing, although some embodiments may be limited as such if called for by the requirements of a particular design.
[0036] As noted above, the apparatus 100 can be implemented as an offline test method or as an online diagnostic tool. When the apparatus 1 00 is implemented as an offline test method, the component 1 18 being tested can be removed from its normal state of use and tested independently of process variables that could alter the acoustic signals. In contrast to existing wear detection methods, in the apparatus 100, the component 1 1 8 (e.g., a plasma spray nozzle or powder port) can be removed from its larger device (e.g., a plasma spray gun) and tested apart from the normal device operation. In this way, the state of wear of the component 1 18 can be determined independently of its usage history and independently of the device operating conditions.
[0037] When the apparatus 100 is implemented as an online diagnostic tool, the frequency analysis methods disclosed herein can allow for the simultaneous characterization of more than one component of a larger device, if the components' characteristic flow differences occur at different frequencies. The acoustic signals 126 and/or information derived therefrom are fed back into a real-time adaptive process control algorithm, which may respond to the detected changes in component characteristics by calculating new or modified process control parameters, in order to maintain consistent output quality or for other reasons. Real-time feedback of the acoustic diagnostics produced by the apparatus 100 into adaptive process control can decrease or eliminate the deterioration of process quality needed to reach the detection limits of other monitoring systems. Furthermore, the principles of the disclosed methods allow time-dependent process phenomena to be analyzed and diagnosed on any timescale longer than the frequency response of the microphone 124.
[0038] Referring now to FIG. 2, the computing device 1 10 includes hardware and/or software components that are capable of recording audio (e.g., as .wav files) and processing the acoustic signals 126 in the full frequency range of the microphone 124. The hardware and/or software components of the computing device 1 10 are configured to compare and evaluate the different states of the component 1 18 as a function of fluid flow rate, acoustic frequency and acoustic intensity. The computing device 1 10 (or more specifically, the acoustic diagnostic system 140) can identify differences in the acoustic frequency spectrums for components 1 18 that produce a discrete frequency tone and for components 1 1 8 that do not produce a discrete frequency tone.
[0039] FIG. 2 depicts a simplified block diagram of an exemplary computing environment 200 including the computing device 1 1 0, in which the acoustic diagnostics system 140 may be embodied. While not specifically shown, the illustrative environment 200 may include other computing devices (e.g., servers, mobile computing devices, etc.), which may be in communication with each other and/or the computing device 1 1 0 via one or more communication networks. The illustrative computing device 1 10 includes at least one processor 220 (e.g. a controller, microprocessor, microcontroller, digital signal processor, etc.), memory 224, and an input/output (I/O) subsystem 222. The computing device 1 10 may be embodied as any type of computing device such as a personal computer or mobile device (e.g., desktop, laptop, tablet, smart phone, body-mounted or wearable device, etc.), a server, an enterprise computer system, a network of computers, a combination of computers and other electronic devices, or other electronic devices. Although not specifically shown, it should be understood that the I/O subsystem 222 typically includes, among other things, an I/O controller, a memory controller, and one or more I/O ports. The processor 220 and the I/O subsystem 222 are communicatively coupled to the memory 224. The memory 224 may be embodied as any type of suitable computer memory device (e.g., volatile memory such as various forms of random access memory).
[0040] The I/O subsystem 222 is communicatively coupled to a number of hardware and/or software components, including a data storage device 226, a display 230, communication circuitry 232, a user interface subsystem 234, a signal processing subsystem 236, an audio subsystem 238, and the acoustic diagnostics system 140. The data storage device 226 may include one or more hard drives or other suitable persistent data storage devices (e.g., flash memory, memory cards, memory sticks, and/or others). Portions of the acoustic diagnostics system 140 (e.g., a component model 228) may reside at least temporarily in the data storage device 226. Portions of the acoustic diagnostics system 140 may be copied to the memory 224 during operation of the computing device 1 10, for faster processing or other reasons. The display 230 may be embodied as any suitable type of digital display device, such as a liquid crystal display (LCD), and may include a touchscreen. The illustrative display 230 is configured or selected to be capable of displaying two- and/or three-dimensional graphics, including the plots and spectrograms shown in FIGS. 4-1 1 .
[0041] The communication circuitry 232 may communicatively couple the computing device 1 10 to other computing devices and/or systems by, for example, a cellular network, a local area network, wide area network (e.g., Wi-Fi), personal cloud, virtual personal network (e.g., VPN), enterprise cloud, public cloud, Ethernet, and/or public network such as the Internet. The communication circuitry 232 may, alternatively or in addition, enable shorter-range wireless communications between the computing device 710 and other computing devices, using, for example, BLUETOOTH and/or Near Field Communication (NFC) technology. Accordingly, the communication circuitry 232 may include one or more optical, wired and/or wireless network interface subsystems, cards, adapters, or other devices, as may be needed pursuant to the specifications and/or design of the particular computing device 1 1 0.
[0042] The user interface subsystem 234 includes one or more user input devices (e.g., a microphone, a touchscreen, keyboard, virtual keypad, etc.) and one or more output devices (e.g., audio speakers, LEDs, additional displays, etc.). While not specifically shown, the I/O subsystem 222 may also be communicatively coupled to sensing devices (e.g., motion sensors, pressure sensors, kinetic sensors, temperature sensors, biometric sensors, and/or others) that are integrated with or in communication with the computing device 1 10, in some embodiments. The signal processing subsystem 236 may include the analog to digital converter mentioned above, a digital to analog converter, and any other signal processing components that may be required by a particular design of the apparatus 1 00 (e.g., filters, etc.). The audio subsystem 238 may include the microphone 124 (e.g., as an integrated component of a mobile device or other computing device), and may include, for example, an audio CODEC and/or one or more speakers and headphone jacks.
[0043] The illustrative acoustic diagnostics system 140 is embodied as a number of computer-executable sub-components and data structures, including a frequency analysis module 242, a component characterization module 244, and an optional monitoring and control module 246. The illustrative frequency analysis module 242 extracts acoustic frequency and acoustic intensity data from the time- dependent acoustic signals 126 and converts the frequency and intensity data to a frequency-dependent spectrum (using, e.g., a Fast Fourier Transform or FFT). In the presence of ambient noise, the acoustic signals126 can be recorded for the background noise and the FFT of the background noise signal can be subtracted from the frequency spectrums of the actual component flow recordings.
[0044] The illustrative component characterization module 244 analyzes the extracted data and generates a prediction as to an internal characteristic of the component 1 1 8 (using, e.g., probabilistic models). To do this, the component characterization module 244 may compare the extracted data to a set of previously- determined data for similar components (e.g., similar components at different stages of wear or similar components made by different manufacturers). For instance, the component characterization module 244 may compare the acoustic frequency and the acoustic intensity between or across a number of different components 1 18 as a function of the fluid flow rate, to identify portions of the frequency spectrum that vary between or across different components or different component states. The component characterization module 244 utilizes the differences in acoustic frequency and acoustic intensity across components to identify distinguishing characteristics of the component and then uses the distinguishing characteristics to evaluate uncharacterized components.
[0045] The illustrative monitoring and control module 246 generates new or modified process control parameters (e.g., fluid flow rate changes) in response to the predictions made by the component characterization module 244. Computational fluid dynamics software may be used to improve the output provided by the apparatus 1 00. The component model 228 may be embodied as, for example, a computer program, a set of mathematical equations, a database, table, file or other suitable data structure, or a combination thereof. The component model 228 models the fluid flow through the component 1 18 by storing "training data" accumulated as a result of the testing and analysis of other components or of the same component earlier in its lifecycle. Aspects of the component model 228 may establish data relationships between the data elements of the different components for which data is stored in the model 228 (such as common search terms, keys, links or pointers). Among other things, the component model 228 may allow the attachment apparatus 1 1 6 to be optimized to, for example, reduce the acoustic signals from upstream of the component 1 1 8 and/or amplify the component characteristic-identifying flow phenomena. Using the component model 228, flow phenomena such as vortical flow, jet screech or shock cell generation that creates discrete acoustic frequencies can be identified and used to select an optimal fluid flow rate and frequency range for a given component and fluid system. The component model 228 can be used to generate simulations that can identify microphone recording positions that are optimized for signal detection and signal to noise ratio. The component model 228 also enables the prediction of component changes that can affect the fluid flow acoustics, as well as the degree to which the fluid flow acoustics may be affected by such component changes.
[0046] Particular aspects of the methods that may be embodied in the modules 242, 244, 246 may vary depending on one or more of the characteristics of the component 1 18, and illustrative examples of such methods are described in more detail below. The computing environment 200 may include other components, sub-components, and devices not illustrated in FIG. 2 for clarity of the description. In general, the components of the environment 200 are communicatively coupled as shown in FIG. 2 by electronic signal paths, which may be embodied as any type of wired or wireless signal paths capable of facilitating communication between the respective devices and components.
[0047] Referring now to FIG. 3, an illustrative method 300 for analyzing an internal characteristic of the component 1 18 using acoustic frequencies generated by fluid flow through the internal space 120 is shown. Aspects of the method 300 may be embodied as computerized programs, routines, logic and/or instructions executed by the computing device 1 10, for example by the modules 242, 244, 246 of the acoustic diagnostics system 140, and/or as steps or processes that are performed by other elements of the apparatus 100 or by a human person. The method 300 represents one embodiment of the disclosed analytical process. Portions of the method 320 may be performed differently depending on the type of component to be analyzed. For instance, different components may require different fluid flow rates to generate the internal characteristic-identifying frequencies. Some examples of other embodiment-specific aspects of the method 300 are described below. At block 310, the desired flow rates and acoustic frequency range at which the component 1 18 is to be evaluated are set. To do this, data values may be assigned to parameters or variables stored in memory at the computing device 1 1 0 and/or the flow regulator 1 14. As described further below, the flow rates and/or frequency ranges may be set differently depending on the component type. At block 312, the component 1 18 is operated to produce the acoustic signals 126 at the flow rates that are set at block 31 0. To do this, the computing device 1 10 or a human operator may configure the flow regulator 1 14 to activate and control the fluid flow from the fluid supply 1 1 2 to the internal space 1 20 for a defined period of time at each of the flow rates defined at block 31 0. At block 314, the acoustic signals 126 are recorded by the microphone 124, which is positioned at a fixed position relative to the component 1 1 8 as described above. At block 316, the acoustic signals 126 are processed, e.g., by the signal processing subsystem 236, to perform the analog to digital conversion mentioned above and to extract the acoustic intensity and acoustic frequency data from the acoustic signals 1 26 at each of the defined flow rates. At block 31 8, the processed (e.g., digital) version of the acoustic signals 126 is converted to the frequency domain by applying a Fast Fourier Transform.
[0048] At block 320, the frequency spectrum produced from the acoustic signals 126 is analyzed, e.g., by the frequency analysis module 242. To do this, one or more acoustic frequencies in the defined frequency range are selected and stored in memory for further analysis. The selected frequency or frequencies correspond to the maximum acoustic intensity detected within the defined frequency range. At block 322, the selected frequency or range of frequencies and the corresponding acoustic intensity is evaluated at each of the defined flow rates. To do this, the current acoustic frequency and intensity values are compared to known frequency and intensity values at the defined flow rates. For example, the current frequency and intensity values may be compared to corresponding data residing in the component model 228. That is, the current frequency and intensity values at a given flow rate may be compared to frequency and intensity values previously obtained at the same flow rate, for the same component 1 18 or for similar components (e.g., nozzles made by different manufacturers or nozzles at various different stages of wear) which has then been stored in the component model 228. In some embodiments, a numerical computing environment such as ATLAB may be used to perform this analysis.
[0049] At block 324, an internal characteristic of the component 1 18 is determined. To do this, the computing device 1 10 may generate a prediction as to the current state of the component (e.g., new vs. worn) (block 326) and/or generate a prediction as to the source of the component (e.g., the component's manufacturer) (block 328). Such predictions may be generated using probabilistic fit models, as described below. In some embodiments, statistical software such as JMP may be used to generate these predictions.
[0050] At block 330, a determination is made as to whether the method 300 is implemented for real-time diagnostics of the component 1 18 during normal operation. If the method 300 is not implemented for real-time diagnostics of the component 1 18, the method 300 ends at block 334. At block 334, portions of the data, predictions, and/or graphical representations thereof may be displayed, e.g. on the display 230. If the method 300 is implemented for real-time diagnostics, a determination is made as to whether the method 300 is implemented for automated adaptive control of the operation of the component 1 18, at block 332. If the method 300 is not implemented for automated adaptive control, the computing device 1 1 0 notifies a human operator of the results of the analyses performed at blocks 320, 322, 324, 326, 328 (e.g. on the display 230 or by an electronic notification message to a mobile device). Following block 336, the human operator may manually adjust one or more of the process control parameters for the operation of the component 1 1 8, and the method 300 returns to block 310. If the method 300 is implemented for automated adaptive control, the computing device 1 1 0 computes the new or updated process control parameters (e.g., flow rate, temperature, volume, voltage, electric current, etc.) at block 338 and the method 300 returns to block 310. In the following sections, additional embodiments of the method 300 are described. TESTING AND ANALYSIS OF TYPE GH PLASMA SPRAY NOZZLES
[0051] Referring now to FIGS. 4-6, an example of how the acoustic diagnostics system 140 can be used to determine one or more internal characteristics of the component 1 1 8 is illustrated. In this example, both the wear and the manufacturer are determined for electrodes and/or nozzles of a plasma spray process in which a type GH plasma spray nozzle is used. In the "GH nozzle" embodiment, the flow regulator 1 14 is a digital flow controller and the fluid supply 1 1 2 is a compressed air source. The fluid supply 1 1 2 supplies air into a 25-foot air hose, which is connected to a 17-inch long ¾-inch ID PE pipe. A hose clamp is used to compress the pipe and to provide an air-tight fit onto the nozzle, which is inserted onto the end of the pipe opposite the air hose. An additional clamp is added to the exterior at the end of the pipe to which the nozzle abuts, in an even and consistent manner. The microphone 124 is encased in 0.5-inch foam insulation, and is laid parallel to and on top of the pipe, in line with the end of the nozzle. The foam on the microphone 124 and its placement ensures that the microphone is acoustically isolated from any vibrations and ensures repeatable placement relative to the nozzles. The audio signals captured by the microphone 124 are fed into the computing device 1 10, which is also communicatively coupled to the flow regulator 1 14.
[0052] Using data acquisition software such as MATLAB, the acoustic signals 126 are recorded, and the acoustic frequency and acoustic intensity data are extracted for analysis. The range of fluid flow rates (e.g., velocities) at which to evaluate the nozzle is set depending on the type of nozzle being tested. In the various embodiments, other aspects of the processing are varied, alternatively or in addition to the fluid flow rate. For example, in some embodiments, a number of different frequency ranges may be analyzed, a number of different frequency peaks may be compared, and/or the acoustic intensity may be analyzed over a range of different fluid flow rates and/or a range of different acoustic frequencies. The criteria used to evaluate the nozzle may be selected based on the nozzle type, the condition of the nozzle, the type of analysis desired, and/or other factors. As an example, for GH nozzles, the fluid flow rate may be set in the range of about 40 standard liters per minute (SLM), with increases in 1 -SLM increments up to about 1 00 SLM. In some embodiments, however, a characteristic frequency (or frequencies) may be identified for a particular flow rate, such that the recording of acoustic data over a range of flow rates may not be necessary. At each flow rate in the set range, the acoustic signal is recorded for 0.5 seconds, the FFT is taken of that signal and, in the frequency range of about 1 .2 to about 10kHz, the discrete acoustic frequency that corresponds to the maximum acoustic intensity ("peak frequency") is identified and written to a computer file along with the flow properties (e.g., the flow rate), which are obtained from the digital flow controller. The peak frequency and maximum intensity data is then imported into statistical software, such as JMP, where it is analyzed further. For example, the maximum acoustic intensity value and the corresponding peak frequency value are compared to the maximum intensity and peak frequency values obtained from analysis of other components (e.g., by a look-up table or database query of the component model 228.
[0053] FIG. 4 shows a plot of the highest acoustic intensity peak in the frequency spectrums of recordings taken of 23 GH plasma spray nozzles operated at a 75 SLM air flow rate. The test results for new and worn nozzles are identified by the legend to the right of the plot. The peak frequency and intensity values are further analyzed using fit models to differentiate between a new nozzle and a worn out nozzle and to distinguish between new nozzles made by different manufacturers. In one example, a fit model of state (where the state is new or worn) as a function of acoustic frequency and acoustic intensity predicted the component's state with 87% accuracy. In another example, a fit model of source (where the source is the name of the manufacturer) by frequency distinguished between two new nozzles made by different manufacturers 100% of the time. Below is an example of a function that can be used to determine the probability that a nozzle is new.
i
Pra&iNEW} = : —
1 -r £2j3i-s -12,3S - D.39 * MaxFr &tfi ti kiiz + G..31 * MaantttaitYViB) fl
[0054]
[0055] In the illustrative embodiments, the probabilities as to the likely state of the component are computed as functions of only the maximum acoustic intensity and peak acoustic frequency values that are found for the frequency spectrum. In other embodiments, other parameters may be used, alternatively or in addition to maximum intensity and frequency.
[0056] FIG. 5 is an example of a plot of the probability of the nozzle being new vs. the acoustic intensity, obtained using the intensity and frequency data shown in FIG. 4. The plot of FIG. 5 distinguishes between new and worn nozzles as shown. Below is an example of a function that may be used to determine the probability that a new GH nozzle was manufactured by American Torch Tip (ATT) versus Sulzer Metco (SM).
-j:
ProHAm = ; -
[0057] 1 + £x ζ-{- B 5 ,21 - 1.5, 52 * M&stF equmeylkHs) f)
[0058] In the illustrative embodiments, the probabilities as to the likely source of the component are computed as functions of only the peak acoustic frequency values that are found for the frequency spectrum. In other embodiments, other parameters may be used, alternatively or in addition to maximum intensity and frequency. Using the same data as FIGS. 4-5, the predictions resulting from the application of the above equation are plotted in FIG. 6, as the probability that the source is ATT as a function of acoustic frequency.
TESTING AND ANALYSIS OF POWDER PORTS
[0059] Referring now to FIGS. 7-8, for plasma spray powder ports (or small- diameter nozzles), the method 300 varies slightly. Powder ports, small-diameter nozzles, and similar components have sufficiently small diameter to, assuming available gas pressure and flow rate, induce supersonic flow. In the "powder port" embodiment, the location and intensity of the jet screech discrete frequency as a function of flow rate can be compared between or across components to determine the components' wear state.
[0060] In the "powder port" embodiment of the apparatus 100, the powder ports are attached via compression fittings to a 1 0-inch length of ¼-inch I D straight metal pipe, but otherwise using the same air hose, flow controller, and compressed air source as in the above-described example. The metal pipe is wrapped in insulation to provide spacing between the powder port and the microphone 1 24. The microphone 1 24 is positioned relative to the powder port in the same manner as described above. The acoustic signals 1 26 are recorded as described above, except with different flow rate ranges depending upon the geometry of the powder port. For example, with powder ports of type # 1 , a flow rate in the range of about 1 0 to about 125 SLM may be used. For powder ports of type #2, a flow rate in the range of about 70 to about 1 25 SLM may be used. For powder ports of type #5, a flow rate in the range of about 45 to about 125 SLM may be used. Some of these flow rates have been determined to produce supersonic flows from the powder ports. The flow rate, acoustic intensity, and acoustic frequency data is recorded in a similar manner as described above. The acoustic frequency at the maximum acoustic intensity ("peak frequency") is identified, but over a different frequency range than used above (e.g., in the frequency range between about 10 and about 96 kilohertz (kHz)). The identified peak frequency is analyzed using statistical software such as JMP. A peak frequency or peak frequencies are extracted from the recorded data for a selected fluid flow rate or for multiple flow rates, where the selected flow rate(s) have been determined (e.g., based on experimentation) to indicate a distinguishing characteristic of the component. For example, the flow rate(s) may be selected to best distinguish the degree of wear for a particular type of powder port. For instance, an equation that relates the powder volume flowed through the powder port, as indicated by the legends of FIGS. 7-8, to the peak frequency or the maximum intensity can be derived from the test data. Powder volume flowed through the powder port is proportional to the wear of the port, corresponding to an increase in the diameter of the port as confirmed by part mass loss and optical measurement of the increasing exit internal diameter. FIG. 7 shows an example of the peak frequency as a function of flow rate for the incremental steps of wear on a powder port of type #2, as determined by the amounts of powder flowed through the port at each instance. The lines 710, 71 2, 714, 716, 718 are the best fit lines showing the trend of increasing peak frequency with component wear. In FIG. 8, peak frequency is plotted as a function of flow rate for a powder port of type #1 , and shows large changes in the frequency spectrum trends with increasing port wear.
TESTING AND ANALYSIS OF TYPE GP PLASMA SPRAY NOZZLES
[0061] GP nozzles can be tested and analyzed in a similar manner as the GH nozzles described above. However, with GP nozzles, the acoustic signals 1 26 may be recorded at flow rates in different range of flow rates, e.g., flow rates in the range of about 15 SLM to about 85 SLM. As the GP nozzles don't produce a discrete frequency, the extraction of the highest intensity frequency is not typically effective to characterize the component. Thus, rather than using a single discrete frequency, the "GP plasma" embodiment of the method 300 may use multiple frequencies or all of the frequencies in the defined frequency range. Accordingly, the "GP plasma" embodiment takes the FFT of all of the .wav files and smoothes them with a smoothing filter, such as a Savitzky-Golay (polynomial) smoothing filter. A second order polynomial (e.g., over a 55 data point window) may be used with the smoothing filter. The smoothed FFTs are stored in memory for further processing. Software (e.g., MATLAB) is used to plot the smoothed data to generate spectrograms of frequency as a function of flow rate for each nozzle. By averaging the spectrograms for a subset of nozzles (new, used, manufacturer 1 , manufacturer 2) the differences in the spectrum can be elucidated via their subtraction. These differences plots can identify areas that are indicative of state and source characteristics of the component. For example, by calculating the average intensity of the frequency spectrum within a set frequency range for a selected flow rate, the probabilities for wear state and source can be determined.
[0062] In the averages plotted in FIGS. 9A-B, the light regions are indicative of a large acoustic intensity in the frequency spectrum, and the frequency spectrum for individual nozzles can be compared in these regions to determine which category the nozzles fall into (e.g., new vs. worn). FIGS. 9A and 9B illustrate examples of spectrograms for a new nozzle (FIG. 9A) and a worn nozzle (FIG. 9B), respectively. As compared to FIG. 9A, the dark region of FIG. 9B, e.g., region 916, is larger than the dark region 910. Similarly, the light region of FIG. 9B, e.g., region 91 8, is smaller than the light region 912 of FIG. 9A. Thus, the differences in acoustic intensity and frequency can be used to identify the characteristics of new and worn nozzles, and a nozzle can be characterized as new or worn based on those characteristics.
[0063] FIG. 1 0A illustrates the spectrum difference that results when the spectrograms of FIGS. 9A and 9B are compared (e.g., subtracted). In FIG. 10A, regions 101 0 and 1012 indicate frequencies at which the intensity difference is smaller and larger, respectively. As such, the frequencies in the region 101 2 may be used to classify the state of individual nozzles.
[0064] FIG. 1 1 A illustrates a spectrum difference that results when the spectrograms of two different new nozzles are compared (i.e., two new nozzles made by two different manufacturers). In FIG. 1 1 A, the regions 1 1 1 0 and 1 1 1 2 indicate frequencies at which the intensity difference is smaller and larger, respectively. As such, the frequencies in the region 1 1 12 may be used to identify the source of individual nozzles.
[0065] In the foregoing description, numerous specific details, examples, and scenarios are set forth in order to provide a more thorough understanding of the present disclosure. It will be appreciated, however, that embodiments of the disclosure may be practiced without such specific details. Further, such examples and scenarios are provided for illustration, and are not intended to limit the disclosure in any way. Those of ordinary skill in the art, with the included descriptions, should be able to implement appropriate functionality without undue experimentation.
[0066] References in the specification to "an embodiment," etc., indicate that the embodiment described may include a particular feature, structure, or characteristic, but every embodiment may not necessarily include the particular feature, structure, or characteristic. Such phrases are not necessarily referring to the same embodiment. Further, when a particular feature, structure, or characteristic is described in connection with an embodiment, it is believed to be within the knowledge of one skilled in the art to effect such feature, structure, or characteristic in connection with other embodiments whether or not explicitly indicated.
[0067] Embodiments in accordance with the disclosure may be implemented in hardware, firmware, software, or any combination thereof. Embodiments may also be implemented as instructions stored using one or more machine-readable media, which may be read and executed by one or more processors. A machine-readable medium may include any mechanism for storing or transmitting information in a form readable by a machine. For example, a machine-readable medium may include any suitable form of volatile or non-volatile memory.
[0068] Modules, data structures, and the like defined herein are defined as such for ease of discussion, and are not intended to imply that any specific implementation details are required. For example, any of the described modules and/or data structures may be combined or divided into sub-modules, sub-processes or other units of computer code or data as may be required by a particular design or implementation of the apparatus 1 00.
[0069] In the drawings, specific arrangements or orderings of schematic elements may be shown for ease of description. However, the specific ordering or arrangement of such elements is not meant to imply that a particular order or sequence of processing, or separation of processes, is required in all embodiments. In general, schematic elements used to represent instruction blocks or modules may be implemented using any suitable form of machine-readable instruction, and each such instruction may be implemented using any suitable programming language, library, application programming interface (API), and/or other software development tools or frameworks. Similarly, schematic elements used to represent data or information may be implemented using any suitable electronic arrangement or data structure. Further, some connections, relationships or associations between elements may be simplified or not shown in the drawings so as not to obscure the disclosure.
[0070] This disclosure is to be considered as exemplary and not restrictive in character, and all changes and modifications that come within the spirit of the disclosure are desired to be protected.

Claims

CLAIMS:
1 . A method for analyzing an internal characteristic of a component having an engineered internal space, a fluid entrance and a fluid exit to allow fluid flow through the internal space past a portion of the component for which the internal characteristic is determined, the method comprising, with a computing device:
receiving time-dependent acoustic data signals produced by the component during the fluid flow through the internal space at one or more controlled flow rates;
converting the time-dependent acoustic data signals to a frequency- dependent spectrum;
extracting frequency and acoustic intensity values from the acoustic data signals in the frequency-dependent spectrum ;
identifying a frequency in the frequency-dependent spectrum that corresponds to the internal characteristic of the component; and
predicting at least one of a state and a source of the component based on the identified frequency and an acoustic intensity value corresponding to the identified frequency.
2. The method of claim 1 , comprising comparing the extracted frequency and acoustic intensity values in the frequency-dependent spectrum to a set of known frequency and acoustic intensity values for the one or more controlled flow rates.
3. The method of claim 1 or claim 2, comprising identifying a maximum acoustic intensity value in the extracted acoustic intensity values and determining a portion of the frequency-dependent spectrum that corresponds to the maximum acoustic intensity value.
4. The method of claim 3, comprising using the identified portion of the frequency-dependent spectrum to analyze the internal characteristic of the component.
5. The method of claim 4, comprising identifying a portion of the frequency spectrum that corresponds to a flow phenomena comprising one or more of vortical flow, jet screech, and shock cell generation.
6. The method of any of the preceding claims, comprising receiving acoustic data signals that are detectable by a microphone and performing the method using the acoustic data signals that are detectable by a microphone.
7. The method of any of the preceding claims, comprising receiving acoustic data signals that are not detectable by a human ear and performing the method using the acoustic data signals that are not detectable by a human ear.
8. The method of any of the preceding claims, comprising processing the acoustic data signals using a Fast Fourier Transform.
9. The method of any of the preceding claims, comprising calculating a probability that the state of the component is new.
10. The method of any of the preceding claims, comprising calculating a probability that the state of the component is worn.
1 1 . The method of any of the preceding claims, comprising generating a fit model as a function of frequency and intensity, and predicting a likelihood that the component is new or worn using the fit model.
12. The method of any of the preceding claims, comprising calculating a probability that the source of the component is a particular manufacturer.
13. The method of any of the preceding claims, comprising generating a fit model as a function of frequency and source, and predicting a likelihood that the component is made by a particular source using the fit model.
14. The method of any of the preceding claims, comprising generating a plurality of spectrograms of the extracted frequency values and the corresponding flow rates, analyzing the differences in the spectrograms, and based on the differences in the spectrograms, predicting at least one of the state and the source of the component.
15. The method of any of the preceding claims, comprising conducting the method during operation of the component and updating a process control parameter in response to the predicting and during the operation of the component.
16. The method of any of the preceding claims, comprising generating a human-readable electronic notification of the predicted state or the predicted source of the component.
17. The method of any of the preceding claims, wherein the component comprises one of a thermal spray nozzle and an electrode of a thermal spray device.
18. An apparatus comprising the component, a fluid supply to supply fluid to the entrance of the component, a flow regulator to control the flow rate through the internal space of the component, an attachment apparatus to attach the fluid supply to the component, and a microphone, wherein the apparatus is to generate the fluid flow through the internal space of the component and capture the acoustic data signals that are analyzed by the computing device according to the method of any of claims 1 -17.
19. A computing device comprising a processor and memory having stored therein a plurality of instructions that when executed by the processor cause the computing device to perform the method of any of claims 1 -17.
20. One or more machine readable storage media comprising a plurality of instructions stored thereon that in response to being executed result in a computing device performing the method of any of claims 1 -17.
21 . A method for analyzing an internal characteristic of a component having an engineered internal space, a fluid entrance and a fluid exit to allow supersonic fluid flow through the internal space past a portion of the component for which the internal characteristic is determined, the method comprising, with a computing device:
receiving time-dependent acoustic data signals produced by the component during the supersonic fluid flow through the internal space at a plurality of different flow rates over time;
converting the time-dependent acoustic data signals to a frequency- dependent spectrum;
for each of the different flow rates, determining a peak frequency value from the acoustic data signals in the frequency-dependent spectrum, the peak frequency value corresponding to a maximum acoustic intensity at the flow rate; and predicting at least one of a state and a source of the component based on the peak frequency values.
22. The method of claim 21 , comprising generating a fit model as a function of the peak frequency and flow rate, and predicting a likelihood that the component is new or worn using the fit model.
23. The method of claim 21 or claim 22, comprising conducting the method during operation of the component and updating a process control parameter based on the predicting during the operation of the component.
24. The method of any of claims 21 -23, comprising notifying a human operator of the predicted state or the predicted source of the component.
25. The method of any of claims 21 -24, wherein the component comprises a powder port of a thermal spray device.
26. An apparatus comprising the component, a fluid supply to supply fluid to the entrance of the component, a flow regulator to control the flow rate through the internal space of the component, an attachment apparatus to attach the fluid supply to the component, and a microphone, wherein the apparatus is to generate the fluid flow through the internal space of the component and capture the acoustic data signals that are analyzed by the computing device according to the method of any of claims 21 -25.
27. A computing device comprising a processor and memory having stored therein a plurality of instructions that when executed by the processor cause the computing device to perform the method of any of claims 21 -25.
28. One or more machine readable storage media comprising a plurality of instructions stored thereon that in response to being executed result in a computing device performing the method of any of claims 21 -25.
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Cited By (7)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP3336536A1 (en) * 2016-12-06 2018-06-20 Rolls-Royce Corporation System control based on acoustic signals
US10241091B2 (en) 2015-06-04 2019-03-26 Rolls-Royce Corporation Diagnosis of thermal spray gun ignition
US10274364B2 (en) 2013-01-14 2019-04-30 Virginia Tech Intellectual Properties, Inc. Analysis of component having engineered internal space for fluid flow
CN109909092A (en) * 2019-02-25 2019-06-21 北京芯合科技有限公司 Paint film spraying method based on the detection of film thickness real non-destructive
US10724999B2 (en) 2015-06-04 2020-07-28 Rolls-Royce Corporation Thermal spray diagnostics
US11092983B2 (en) 2018-06-18 2021-08-17 Rolls-Royce Corporation System control based on acoustic and image signals
GB2594760A (en) * 2020-10-01 2021-11-10 Ft Tech Uk Ltd Acoustic resonance fluid flow measurement device and method

Families Citing this family (8)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP2975397B1 (en) 2014-07-18 2020-01-15 Siemens Aktiengesellschaft High frequency acoustic spectrum imaging method and corresponding device
US20170080445A1 (en) * 2015-09-17 2017-03-23 Cnh Industrial America Llc Nozzle Flow Detection System
CN105760611B (en) * 2016-02-25 2019-08-27 江苏大学 A kind of optimum design method of low pressure even insufflation showerhead space runner
EP3444463B1 (en) * 2016-05-26 2021-09-01 Mitsubishi Heavy Industries Engine & Turbocharger, Ltd. Imbalance detection device and imbalance detection method
JP6625209B2 (en) * 2016-05-26 2019-12-25 三菱重工エンジン&ターボチャージャ株式会社 Unbalance detection device and unbalance detection method
US10227890B2 (en) * 2016-08-18 2019-03-12 Delavan, Inc. Resonant modes in sprays
JP6831225B2 (en) 2016-12-07 2021-02-17 三菱重工エンジン&ターボチャージャ株式会社 An unbalanced detector including a vibration insulating member and a vibration insulating member.
DE102020204686A1 (en) 2020-04-14 2021-10-14 Robert Bosch Gesellschaft mit beschränkter Haftung Device unit for determining a flow rate of a nozzle

Citations (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4811605A (en) * 1988-02-29 1989-03-14 Canadian Patents And Development Limited/Societe Canadienne Des Brevets Et D'exploitation Limitee Apparatus and method for inspecting the degradation of a gas nozzle
US20050011278A1 (en) * 2003-07-18 2005-01-20 Brown Gregory C. Process diagnostics

Family Cites Families (66)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US2361458A (en) 1942-08-10 1944-10-31 Standard Oil Dev Co Microphone for conduits
US3580092A (en) 1969-12-23 1971-05-25 Scarpa Lab Inc Acoustic flowmeter
EP0104004A1 (en) 1982-09-06 1984-03-28 Graham Cameron Grant Fluid flowmeter and method of measuring flow rate
US4856321A (en) 1983-07-29 1989-08-15 Panametrics, Inc. Apparatus and methods for measuring fluid flow parameters
US4586386A (en) 1984-10-29 1986-05-06 Nordson Corporation Method and apparatus for determining powder flow rate and transfer efficiency of powder spray system
US4621519A (en) 1984-10-29 1986-11-11 The United States Of America As Represented By The Secretary Of The Army Ballistics pressure transducer
US4613259A (en) 1984-11-28 1986-09-23 United Technologies Corporation Apparatus for controlling powder flow rate in a carrier gas
US4905897A (en) 1988-06-17 1990-03-06 Ramon Barry Rogers Field sprayer nozzle pattern monitor
US4850229A (en) 1988-08-05 1989-07-25 The United States Of America As Represented By The Secretary Of The Army Ballistics pressure transducer
US5101774A (en) 1989-08-03 1992-04-07 Westvaco Corporation Acoustic leak detection system
CA2052699A1 (en) 1990-10-19 1992-04-20 Stephen L. Merkel Method and apparatus for monitoring parameters of coating material dispensing systems and processes by analysis of swirl pattern dynamics
US5180921A (en) 1991-11-18 1993-01-19 National Research Council Of Canada Method and apparatus for monitoring the temperature and velocity of plasma sprayed particles
US5455868A (en) 1994-02-14 1995-10-03 Edward W. Sergent Gunshot detector
JPH09192586A (en) * 1996-01-17 1997-07-29 Nippon Parkerizing Co Ltd Electrostatic powder coating method
US5654797A (en) 1996-02-22 1997-08-05 National Research Council Of Canada Method and apparatus for monitoring the diameter of thermally sprayed particles
US6507023B1 (en) 1996-07-31 2003-01-14 Fire Sentry Corporation Fire detector with electronic frequency analysis
US5757498A (en) 1996-05-30 1998-05-26 Klein, Ii; Richard J. Optical spray coating monitoring system and method
EP0837305A1 (en) 1996-10-21 1998-04-22 Sulzer Metco AG Method and assembly for controlling the coating process in thermal coating apparatus
DE19651702C1 (en) 1996-12-12 1998-04-16 Joerg Kuechen Spray jet function monitoring method e.g. for painting system
US6014447A (en) 1997-03-20 2000-01-11 Raytheon Company Passive vehicle classification using low frequency electro-magnetic emanations
US5986277A (en) 1997-10-29 1999-11-16 National Research Council Of Canada Method and apparatus for on-line monitoring the temperature and velocity of thermally sprayed particles
US6757665B1 (en) * 1999-09-28 2004-06-29 Rockwell Automation Technologies, Inc. Detection of pump cavitation/blockage and seal failure via current signature analysis
US6185153B1 (en) 1999-02-19 2001-02-06 The United States Of America As Represented By The Secretary Of The Navy System for detecting gunshots
DE19910892A1 (en) 1999-03-11 2000-09-14 Linde Tech Gase Gmbh Quality assurance in thermal spraying by means of arithmetic revision or alienation of digital images
US6437694B1 (en) 1999-04-30 2002-08-20 Jung K. Lee Air controlled sensor
SE0004140D0 (en) 2000-11-13 2000-11-13 Siemens Elema Ab Acoustic Gas Analyzes
US6648053B2 (en) 2001-04-18 2003-11-18 Ford Motor Company Method and apparatus for controlling a spray form process based on sensed surface temperatures
US6940409B1 (en) 2001-08-13 2005-09-06 Potter Electric Signal Company Fluid flow detector
DE10154284A1 (en) 2001-11-05 2003-05-15 Rolls Royce Deutschland Process for the automatic application of a surface layer
AU2002353097A1 (en) * 2001-12-07 2003-07-09 Battelle Memorial Institute Methods and systems for analyzing the degradation and failure of mechanical systems
LU90883B1 (en) 2002-01-23 2003-07-24 Wurth Paul Sa Method and device for monotoring a mass flow in a pneumatic pipeline
SE0200184D0 (en) 2002-01-24 2002-01-24 Siemens Elema Ab Acoustic Gas Meter
CA2378791A1 (en) 2002-03-25 2003-09-25 Mcmaster University Method of detection of flow duct obstruction
JP4244145B2 (en) 2002-03-27 2009-03-25 株式会社日清製粉グループ本社 Powder and particle conveying system
US7499836B1 (en) 2003-01-07 2009-03-03 Solid State Scientific Corporation Apparatus for and methods of detecting combustion ignition
US7311004B2 (en) 2003-03-10 2007-12-25 Capstan Ag Systems, Inc. Flow control and operation monitoring system for individual spray nozzles
US7882750B2 (en) * 2003-08-01 2011-02-08 Cidra Corporate Services, Inc. Method and apparatus for measuring parameters of a fluid flowing within a pipe using a configurable array of sensors
US7064812B2 (en) 2003-08-19 2006-06-20 Tokyo Electron Limited Method of using a sensor gas to determine erosion level of consumable system components
US7034244B2 (en) 2003-09-03 2006-04-25 Illinois Tool Works Inc. Method and apparatus of coordinating operational feedback in a plasma cutter
US9099074B1 (en) 2003-10-21 2015-08-04 Peter A. Lucon Custom tunable acoustic insulation
DE102004010782A1 (en) 2004-03-05 2005-09-22 Mtu Aero Engines Gmbh Method for coating a workpiece
US8250907B2 (en) 2005-04-12 2012-08-28 Durham Kenimer Giles System and method for determining atomization characteristics of spray liquids
US7278294B2 (en) 2005-04-12 2007-10-09 Durham Kenimer Giles System and method for determining atomization characteristics of spray liquids
DE102005024854B3 (en) 2005-05-31 2006-09-14 Dürr Systems GmbH Coating powder filter for filtering coating powder in powder coating system has angular filter surface, e.g. rectangular surface with different lengths sides inclined so dirt particles that have been filtered out pass off to the side
US7891315B2 (en) 2005-09-09 2011-02-22 Sulzer Metco Ag Powder supply system
RU2442075C2 (en) 2006-04-17 2012-02-10 САУНДБЛАСТ ТЕКНОЛОДЖИЗ ЭлЭлСи Method and device for combusting a gas or fuel-oxidising agent mixture
DE102007005313A1 (en) 2007-02-02 2008-08-07 Itw Gema Ag Coating powder conveying device
DE102007005310A1 (en) 2007-02-02 2008-08-07 Itw Gema Ag Coating powder filter device
DE102007005348A1 (en) 2007-02-02 2008-08-07 Itw Gema Ag Powder level sensor unit for spray coating powder
CA2619424C (en) * 2007-02-06 2011-12-20 Weatherford/Lamb, Inc. Flowmeter array processing algorithm with wide dynamic range
US7969318B2 (en) 2007-06-15 2011-06-28 Matt White Flow detector with alarm features
US8121588B2 (en) * 2007-09-05 2012-02-21 Logicmark, Llc Voice-extending emergency response system
MX340167B (en) * 2008-05-20 2016-06-29 Cidra Corp Services Inc * Applications of pump performance monitoring.
EP2218514B1 (en) 2009-02-09 2017-04-26 J. Wagner AG Coating powder supply device
US20110308812A1 (en) * 2010-06-22 2011-12-22 Terry Bullen Artificial lift system
US20120037074A1 (en) 2010-08-10 2012-02-16 Mike Outland Automated Thermal Spray Apparatus
US8542124B2 (en) 2011-07-21 2013-09-24 Axiom Technologies Inc. Acoustic leak detector
US20140010968A1 (en) 2012-07-04 2014-01-09 Christopher D. Prest Flame sprayed bulk solidifying amorphous alloy cladding layer
US8964995B2 (en) 2012-09-07 2015-02-24 International Business Machines Corporation Acoustic diagnosis and correction system
WO2014062190A1 (en) 2012-10-19 2014-04-24 Technology Development Llc Empire Analyte detection system with cleaning phase and renewable liquid sensing material and methods therefore
US10274364B2 (en) 2013-01-14 2019-04-30 Virginia Tech Intellectual Properties, Inc. Analysis of component having engineered internal space for fluid flow
WO2014116675A1 (en) 2013-01-22 2014-07-31 Cidra Corporate Services Inc. Acoustic impact particle size measurement
US9709466B2 (en) 2014-08-14 2017-07-18 The Boeing Company Systems and methods for ignition source testing with flammable foam
US10724999B2 (en) 2015-06-04 2020-07-28 Rolls-Royce Corporation Thermal spray diagnostics
US10241091B2 (en) 2015-06-04 2019-03-26 Rolls-Royce Corporation Diagnosis of thermal spray gun ignition
US10295502B2 (en) 2015-08-05 2019-05-21 Delavan Inc. Systems for quality monitoring of additive manufacturing

Patent Citations (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4811605A (en) * 1988-02-29 1989-03-14 Canadian Patents And Development Limited/Societe Canadienne Des Brevets Et D'exploitation Limitee Apparatus and method for inspecting the degradation of a gas nozzle
US20050011278A1 (en) * 2003-07-18 2005-01-20 Brown Gregory C. Process diagnostics

Non-Patent Citations (1)

* Cited by examiner, † Cited by third party
Title
UMEDA YOSHIKUNI ET AL: "On the sound sources of screech tones radiated from choked circular jets", THE JOURNAL OF THE ACOUSTICAL SOCIETY OF AMERICA, AMERICAN INSTITUTE OF PHYSICS FOR THE ACOUSTICAL SOCIETY OF AMERICA, NEW YORK, NY, US, vol. 110, no. 4, 1 October 2001 (2001-10-01), pages 1845 - 1858, XP012002544, ISSN: 0001-4966, DOI: 10.1121/1.1402620 *

Cited By (9)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US10274364B2 (en) 2013-01-14 2019-04-30 Virginia Tech Intellectual Properties, Inc. Analysis of component having engineered internal space for fluid flow
US10241091B2 (en) 2015-06-04 2019-03-26 Rolls-Royce Corporation Diagnosis of thermal spray gun ignition
US10724999B2 (en) 2015-06-04 2020-07-28 Rolls-Royce Corporation Thermal spray diagnostics
EP3336536A1 (en) * 2016-12-06 2018-06-20 Rolls-Royce Corporation System control based on acoustic signals
US10695783B2 (en) 2016-12-06 2020-06-30 Rolls-Royce Corporation System control based on acoustic signals
US11092983B2 (en) 2018-06-18 2021-08-17 Rolls-Royce Corporation System control based on acoustic and image signals
CN109909092A (en) * 2019-02-25 2019-06-21 北京芯合科技有限公司 Paint film spraying method based on the detection of film thickness real non-destructive
GB2594760A (en) * 2020-10-01 2021-11-10 Ft Tech Uk Ltd Acoustic resonance fluid flow measurement device and method
GB2594760B (en) * 2020-10-01 2022-05-04 Ft Tech Uk Ltd Acoustic resonance fluid flow measurement device and method

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