WO2017191313A1 - Sensor system for monitoring a vehicle axle and for discriminating between a plurality of axle failure modes - Google Patents
Sensor system for monitoring a vehicle axle and for discriminating between a plurality of axle failure modes Download PDFInfo
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- WO2017191313A1 WO2017191313A1 PCT/EP2017/060807 EP2017060807W WO2017191313A1 WO 2017191313 A1 WO2017191313 A1 WO 2017191313A1 EP 2017060807 W EP2017060807 W EP 2017060807W WO 2017191313 A1 WO2017191313 A1 WO 2017191313A1
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M13/00—Testing of machine parts
- G01M13/02—Gearings; Transmission mechanisms
- G01M13/028—Acoustic or vibration analysis
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M17/00—Testing of vehicles
- G01M17/007—Wheeled or endless-tracked vehicles
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01K—MEASURING TEMPERATURE; MEASURING QUANTITY OF HEAT; THERMALLY-SENSITIVE ELEMENTS NOT OTHERWISE PROVIDED FOR
- G01K7/00—Measuring temperature based on the use of electric or magnetic elements directly sensitive to heat ; Power supply therefor, e.g. using thermoelectric elements
- G01K7/02—Measuring temperature based on the use of electric or magnetic elements directly sensitive to heat ; Power supply therefor, e.g. using thermoelectric elements using thermoelectric elements, e.g. thermocouples
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01K—MEASURING TEMPERATURE; MEASURING QUANTITY OF HEAT; THERMALLY-SENSITIVE ELEMENTS NOT OTHERWISE PROVIDED FOR
- G01K7/00—Measuring temperature based on the use of electric or magnetic elements directly sensitive to heat ; Power supply therefor, e.g. using thermoelectric elements
- G01K7/16—Measuring temperature based on the use of electric or magnetic elements directly sensitive to heat ; Power supply therefor, e.g. using thermoelectric elements using resistive elements
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M13/00—Testing of machine parts
- G01M13/02—Gearings; Transmission mechanisms
- G01M13/021—Gearings
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M13/00—Testing of machine parts
- G01M13/02—Gearings; Transmission mechanisms
- G01M13/022—Power-transmitting couplings or clutches
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M13/00—Testing of machine parts
- G01M13/04—Bearings
- G01M13/045—Acoustic or vibration analysis
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M17/00—Testing of vehicles
- G01M17/08—Railway vehicles
- G01M17/10—Suspensions, axles or wheels
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F30/00—Computer-aided design [CAD]
- G06F30/10—Geometric CAD
- G06F30/15—Vehicle, aircraft or watercraft design
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F30/00—Computer-aided design [CAD]
- G06F30/20—Design optimisation, verification or simulation
- G06F30/27—Design optimisation, verification or simulation using machine learning, e.g. artificial intelligence, neural networks, support vector machines [SVM] or training a model
Definitions
- the present invention relates to a Sensor system for monitoring a vehicle axle, in particular an axle for an off-highway vehicle, and for discriminating between a plurality of axle failure modes.
- the invention further relates to an axle arrangement including this sensor system.
- Off-highway (OH) vehicles are typically used for handling heavy loads under various conditions that may stress the vehicle chassis and the axles.
- OH Off-highway
- the problem addressed by the present invention consists in defining a sensor network configured to monitor and predict the health status of a vehicle axle, in particular of an OH axle, with preferably great efficiency and reliability.
- the proposed sensor system comprises:
- a first axle sensor for acquiring first axle data
- At least one second axle sensor for acquiring second axle data
- At least one memory storing or configured to store at least one model of the axle and/or of one or more axle subsystems
- a data processing unit in (also termed data logger) communication with the first axle sensor, the second axle sensor, and the memory, wherein the data processing unit is configured or programmed to:
- the failure notice may be issued through an output device such as a screen, a display panel, one ore more lamps, or an acoustic alarm device, for example.
- the first axle sensor may comprise an inertia measurement unit (IMU) for determining an acceleration and/or an attitude of the axle.
- the IMU comprises at least one accelerometer and/or at least one gyrometer.
- the accelerometer and/or the gyroscope have one, two, or three mutually perpendicular sensing axes.
- the gyroscope and the accelerometer may mounted on a common PCB support (which defines the physical boundary of the IMU), but they can also be situated on the same chip (i.e. one single ceramic package). Any architecture of the IMU is suitable for the proposed sensor system.
- the IMU may be used to acquire vibrational axle data at one or more locations in or on the vehicle axle.
- the vibrational data may include a time course of an attitude and/or an acceleration sensed by the IMU.
- the vibrational data acquired by the IMU may be indicative of one or more of the following axle failure modes:
- the first axle sensor may also comprise a temperature sensor, in particular a thermocouple or a resistance thermometer, for determining a temperature of a rigid axle component and/or of a lubricant disposed within the axle for lubricating the rotating or rotatable axle components.
- a temperature sensor in particular a thermocouple or a resistance thermometer, for determining a temperature of a rigid axle component and/or of a lubricant disposed within the axle for lubricating the rotating or rotatable axle components.
- oil is used as a lubricant.
- the at least one second axle sensor may comprise one or more of the following sensors: an IMU or a temperature sensor as previously described;
- a debris sensor in particular including a Hall-sensor, for detecting ferrous debris dispersed in a lubricant disposed within the axle;
- a dielectricity sensor for determining the dielectric constant of the lubricant
- a viscosity sensor in particular an acoustic wave viscosity sensor, for determining the viscosity of a lubricant disposed within the axle.
- the debris sensor may include a magnet for producing a magnetic field and a further sensor configured to detect or measure a variation of the magnetic field close to the further sensor due to metallic particles dispersed in the lubricant.
- the debris sensor may further include two electrodes arranged at a distance, wherein a change of an electric conductivity and/or of an electric capacity of the electrode arrangement may be sensed depending on the abundance and/or density of ferrous debris dispersed in the oil (measured in particles per cm 3 , for example).
- the memory and the data processing unit may be configured such that the model or one of the models further provides the second reference data when the model is stored in the memory.
- both the first reference data and the second reference data may be provided by a model or by different models.
- the sensor system or sensor network may further comprise at least one vehicle status sensor in communication with the data processing unit and/or with the memory, the vehicle status sensor configured to determine a vehicle status.
- the vehicle status may comprise one or more of the following quantities:
- the data processing unit may be configured to adapt the model or at least one of the models, for example the model providing the first reference data and/or the model providing the second reference data or some of the second reference data, based on the vehicle status.
- the first reference data and/or the second reference data provided by the model or provided by different models may be dependent on the vehicle status.
- the vehicle status can potentially influence the quantities acquired by the first and/or the second axle sensor.
- the vehicle status is taken into account when detecting an anomaly of the axle or of an axle subsystem.
- the vehicle status sensor includes one or more rotational speed sensors.
- the model or at least one of the models may comprise a theoretical model of the axle, in particular of an intact axle and/or of a defective axle.
- the model may predict one or more spectral features of vibrational axle data acquired at one or more locations on or inside the axle.
- the data processing unit may then preferably be configured to run a classification algorithm to detect, based on the theoretical model and based on newly acquired first and/or second axle data, if the newly acquired first and/or second axle data features at least one of the first anomaly and the second anomaly.
- the model or one of the models may comprise a learned set of first and/or second axle data corresponding to an intact axle and/or corresponding to a defective axle, and a classification algorithm configured to detect, based on the learned set of first and/or second axle data and based on newly acquired first and/or second axle data, at least one of the first anomaly and the second anomaly associated with the newly acquired first and/or second axle data.
- the learned first and/or second axle data may be acquired by the first and/or the second sensor when the axle is intact, such as during a time period beginning right after production or right after maintenance of the axle.
- the axle or an identical further axle is damaged in a targeted manner, so that the behavior of this particular damage and its effect on the first and/or second axle data acquired by the axle sensors may be included in the model.
- the model may be adapted to recognize this particular damage or axle failure mode.
- the first or the second axle sensor may include an IMU and the first/second axle data comprise currently acquired axle vibrational data.
- the first and/or the second reference data provided by the model may then include learned axle vibrational data, preferably acquired from an intact axle.
- the data processing unit may then be configured to classify, by running a classification algorithm, the currently acquired axle vibrational data as coinciding or being compatible with the learned axle vibrational data, or as deviating from the learned axle vibrational data.
- the data processing unit may then further be configured to detect that a rotating component of the axle and/or the axle frame features an anomaly if the currently measured axle vibrational data is classified as deviating from the first/second reference data, for example by more than a predetermined threshold.
- the first or the second axle sensor may again include an IMU, and the first/second axle data may comprise currently acquired axle vibrational data.
- the model or one of the models may be a model of a defective axle, in particular a model of an axle including worn out or broken rotating components and/or a deformed or broken axle frame.
- the first/second reference data provided by the model may then include predicted spectral features of axle vibrational data associated with the modeled defective axle. For example, a frequency spectrum of the first and/or second reference data provided by the model may comprise a peak in amplitude at one or more particular frequencies.
- the data processing unit may in this case be configured to detect that one or more rotating components and/or the axle frame feature an anomaly if the spectral features predicted by the model of the defective axle are present in the currently acquired axle vibrational data.
- the first or the second axle sensor may include a temperature sensor and the first/second axle data may comprise temperature data currently acquired from a lubricant disposed within the axle.
- the model or one of the models may then include learned temperature data acquired from the lubricant by the temperature sensor.
- the learned temperature data is acquired during a time period beginning right after a lubricant change when it can be assumed that the lubricant is fresh and has the desired quality and behavior.
- the first and/or the second reference data provided by the model may then include a minimum temperature rise time of the lubricant, wherein the minimum temperature rise time of the lubricant is based on or derived from the learned temperature data.
- the temperature rise time may be the time that passes until the lubricant reaches a (steady) operating temperature or until the lubricant reaches a predetermined temperature.
- the data processing unit may then be configured to determine, based on the currently acquired temperature data of the lubricant, a current temperature rise time of the lubricant.
- the data processing unit may furthermore be configured to detect that the lubricant features an anomaly if the current temperature rise time of the lubricant is below the minimum temperature rise time of the lubricant provided by the model.
- the first or the second axle sensor may include a dielectricity sensor for determining a dielectric constant, for example the average dielectric constant, of a lubricant disposed within the axle, and the first/second axle data may comprise dielectricity data currently acquired from the lubricant.
- the model or one of the models may then include learned dielectricity data acquired from the lubricant by the dielectricity sensor.
- the learned dielectricity data is acquired during a time period beginning right after a lubricant change when it can be assumed that the lubricant is fresh and has the desired quality and behavior.
- the first and/or the second reference data provided by the model may then include an acceptable range of the dielectric constant of the lubricant, wherein the acceptable range of the dielectric constant of the lubricant may be based on or derived from the learned dielectricity data.
- the data processing unit may then be configured to determine, based on the currently acquired dielectricity data, a current dielectric constant of the lubricant. Furthermore, the data processing unit may be configured to detect that the lubricant features an anomaly if a current dielectric constant of the lubricant derived from the currently acquired dielectricity data lies outside the acceptable range provided by the model.
- the first axle sensor may include a lubricant viscosity sensor for measuring the viscosity of a lubricant disposed within the axle
- the second axle sensor may include at least one of: a temperature sensor for measuring a temperature of the lubricant, a debris sensor for measuring an abundance/density of ferrous debris dispersed in the lubricant, and a dielectricity sensor for measuring a dielectric constant of the lubricant.
- the first axle data may comprise viscosity data currently acquired from the lubricant
- the second axle data may comprise at least one of: temperature data, debris data, and dielectricity data, all currently acquired from the lubricant, respectively.
- the model or one of the models may then include learned input data, the learned input data including at least one of: learned temperature data, learned debris data, and learned dielectricity data, and the model may further include learned viscosity data as output data, all previously acquired from the lubricant, respectively.
- each data set of the learned data includes learned input data and learned output data acquired at the same time.
- the model may then further include a regression function derived from the learned data, the regression function providing a defined relation between the output data and the input data.
- the regression function includes the input variables as arguments or parameters and the output variable, namely the viscosity of the lubricant, as the dependent variable or value of the function.
- the first reference data provided by the model may then include an
- the data processing unit may then be configured to detect that the viscosity features an anomaly if the currently acquired viscosity of the lubricant deviates from the extrapolated viscosity, for example by more than a predefined threshold.
- the second axle sensor includes a debris sensor for measuring the abundance and/or the density of ferrous debris dispersed in a lubricant disposed within the axle.
- the abundance/density of the ferrous debris dispersed in the lubricant is measured in number of debris particles per volume of the lubricant, for example in number of particles per liter or per cm 3 .
- the second axle data may comprise a measured time course of the abundance/density of ferrous debris dispersed in the lubricant.
- the second reference data may include an upper threshold, for example a predetermined upper threshold, of the abundance/density or of the time derivative of the
- the data processing unit may then be configured to determine, based on the measured abundance/density of ferrous debris dispersed in the lubricant, a time derivative of the abundance/density of ferrous debris dispersed in the lubricant. Furthermore, the data processing unit may be configured to detect that at least one of the rotating axle components, an axle frame and the lubricant features an anomaly if the measured abundance/density or the time derivative of the abundance/density of ferrous debris dispersed in the lubricant exceeds the corresponding upper threshold.
- the model or one of the models may further include a plurality of learned data sets, each learned data set including learned first axle data and/or learned second axle data previously acquired by the first and/or the second axle sensor, and each learned data set further may include the time at which the data set was acquired.
- the model may further include a further regression function derived from the learned data sets, the further regression function providing a defined relation between the time at which the learned data sets were acquired and the first and/or second axle data included in the learned data sets.
- the time may be the input of the function and the variables related to the quantities acquired by the first and/or the second sensor may be the output of the further regression function.
- the data processing unit may then be configured to determine, based on the further regression function and based on one or more predetermined accepted ranges for the first and/or the second axle data, when, preferably expressed in number of operating hours of the axle, at least one of first and/or the second axle data is expected to lie outside their accepted range.
- the data processing unit may be configured to detect the at least one axle failure mode based on a predetermined table which assigns to each set of detected anomalies a predetermined set of axle failure modes.
- axle arrangement is presently proposed, in particular an axle arrangement for an off-highway vehicle.
- the proposed axle arrangement comprises:
- a differential for example a central differential
- the sensor system may include two or more of the following sensors:
- At least one temperature sensor disposed inside the wheel hub or inside at least one of the wheel hubs and/or disposed inside the differential;
- At least one ferrous debris sensor disposed inside the wheel hub or inside at least one of the wheel hubs;
- At least one dielectricity sensor disposed inside the wheel hub or inside at least one of the wheel hubs; and at least one viscosity sensor disposed inside the wheel hub or disposed inside at least one of the wheel hubs.
- Fig. 1 shows an axle for an off-highway vehicle including a differential, semi axles and wheel hubs;
- Fig. 2 schematically illustrates a sensor system according to the invention
- Fig. 3 depicts different sensors that may be used to determine information that may be indicative of different damaging factors or axle failure modes
- Fig. 4 shows locations on an axle for an off-highway vehicle at which the sensors shown in Fig. 2 may be mounted;
- Fig. 5 shows a sectional side view and a front view of one of the wheel hubs shown in Fig. 4;
- Fig. 6 shows a cross sectional view of the central differential shown in Fig. 4;
- Fig. 7 shows the connections between the sensors and the data processing unit shown in Fig. 2;
- Fig. 8 schematically illustrates work steps of an algorithm used to identify an
- Fig. 9 schematically depicts a multiclass classification
- Fig. 10 shows measured vibrational data of the axle shown in Fig. 4 and vibrational data provided by a theoretical model of the axle;
- Fig. 11 shows a trend of an average oil warm-up time over the lifetime of the axle shown in Fig. 4;
- Fig. 12 illustrates the evolution of the abundance of ferrous debris in the lubrication oil disposed within the axle of Fig. 4;
- Fig. 13 schematically illustrates the detection of an axle failure mode based on one or more detected anomalies
- Fig. 14 shows a predetermined table assigning detected anomalies to axle failure modes
- Fig. 15 shows various configurations of sensor sub-networks.
- FIG.l An architecture of an axle arrangement for an OH vehicle is shown in Fig.l.
- the traction torque is delivered to the axle by a shaft that connects the mechanical transmission to a differential.
- the differential may be arranged in the center of the axle or off the center of the axle.
- the shafts transmit the traction torque to the wheel hub.
- a planetary gear system is disposed within each of the wheel hubs, the planetary gear systems transferring the traction torque to the wheels.
- the friction between the mechanical components in the axle (such as at least one of shafts, gears, bearings, and bushings) is reduced by using a lubrication oil.
- the oil is distributed across the whole axle due to the movement of its internal rotating parts.
- rotating components may include at least one of gears, bushings, bearings, and shafts.
- wear of rotating components that evolves with a slow dynamic (such as compared to the vehicle dynamics) and may include at least one of adhesive wear, abrasive wear, surface fatigue, fretting, erosion, corrosion;
- the rate at which the oil degrades may depend on at least one of:
- axle maintenance is usually carried out based on regular time-intervals (i.e. after a certain amount of operation hours), and includes pre-defined operations such as (but not limited to): the check and change of the lubricant oil, the greasing of rotating components, and the check of the magnetic oil drain plug that is used to capture metallic contaminants dispersed in the lubrication oil.
- metallic contaminants typically include residuals from the manufacturing process or may be produced by the wear of the rotating components.
- the time-fixed maintenance of axles is however far from being optimal since the wear of mechanical components may depend mainly on how the vehicle has been used. Indeed, after a certain amount of operation hours, the mechanical components typically wear more rapidly if the driveline is put under high mechanical stress or if the vehicle is used under extreme environmental conditions, such as very high and/or very low temperatures. High stresses may be exerted on the axle when pulling heavy trailers, travelling across uneven terrains, or when carrying heavy loads. Extreme environmental conditions such as very high and/or very low temperatures typically alter the properties of the lubrication oil, thus accelerating the wear of the mechanical components of the axle.
- Fig. 2 schematically shows a sensor system 1 according to the invention.
- the sensor system 1 comprises a data processing unit 2 in communication with a memory 3.
- the data processing unit 2 is in communication with at least one of an IMU 4, a temperature sensor 5, a debris sensor 6 that may additionally be configured to measure a dielectric constant of the lubrication oil, and a viscosity sensor 7.
- the data processing unit 2, the memory 3, and the sensors 4, 5, 6, 7 may be in communication through wire-bound or wireless communication channels 8. It is understood that in alternative embodiments not depicted here the sensor system 1 may include only one of the sensors 4, 5, 6, 7 or subsets of the sensors 4, 5, 6, 7.
- the presently proposed sensor system 1 is innovative in regard to at least one of: the approach used to mount the components of the sensor system 1 in or on the axle; the methodology followed to fuse the acquired information and/or to discriminate between the different failure modes; and the methodology used to detect and/or predict axle failure modes.
- the sensor system 1 may include a set of sensors and/or transducers that are located or disposed in or on the axle, preferably in order to maximize the robustness of the collected information.
- the location of each sensor relative to the axle may affect the repeatability of the acquisition of information and of the signal-to-noise ratio (SNR).
- SNR signal-to-noise ratio
- a location is optimal for installing a given sensor if it allows maximizing the repeatability of the measurement and maximizing the SNR.
- the set of sensors mounted in or on the axle may depend on the observables intended to be measured or on the type of data intended to be acquired. The various sensors and the information acquired by these sensors are summarized in Fig.3.
- Fig. 4 depicts a possible location of each sensor inside or on the axle mechanical frame, focusing not only on the sensor/transducer itself but also on the system used to condition the measurement. Specifically, Fig. 4 depicts a vehicle axle comprising a differential, semi axles 11, and wheel hubs 12.
- the ideal location for the IMUs 4 is as close as possible to the bearings and gears disposed inside the differential box and/or inside the wheel hub, so that anomalous periodic vibrations caused by worn or damaged gears, bearings, etc. may be sensed more easily.
- Such location can be inside or on the central differential and/or on one or both wheel hubs.
- Fig. 5 shows a sectional view (left) and a front view (right) of one of the wheel hubs 12 shown in Fig. 4.
- the IMU 4 can be placed in position C3 on the wheel hub 12 (see Fig.5, left) where it is close enough to the rotating parts of the wheel hub 12 and where it may be protected from external es.
- the location C3-Fig.5 is close to the sensors in position Cl-Fig.5 and in position C2-Fig.5, thus facilitating the electrical connection of multiple sensors mounted inside the wheel hub 12 (the signal routing from the wheel hub 12 through the axle will be detailed further below).
- Fig. 6 shows a cross sectional view of the central differential 10 shown in Fig. 4.
- the ideal position of the IMU 4 on the central differential 10 is the location B-Fig.6 since the latter is easily accessible for the installation of the IMU 4 and the SNR is typically higher, for example due to the local stiffness of the axle at this position.
- the measured vibrations are likely to be less sensitive to small bumps of the road.
- the IMU 4 in this position it is typically still possible to sense anomalous periodic vibration patterns caused by worn rotating components inside the central differential box, and to sense large shocks caused by, for example, unsafe maneuvers of the vehicle during which the rear wheels of the vehicle may lift from the ground.
- the location B-Fig.6 (close to or at the sun gear of the differential 10) is generally preferable for the reasons given above.
- the temperature sensor 5 may comprise at least one of a conventional resistance
- thermometer and a thermocouple which may be placed in direct contact with the oil in order to measure the oil temperature.
- the temperature sensor 5 is preferably disposed at the bottom (location Al.Fig-6) since most of the oil will gather in this location. It is generally beneficial to have more oil close to the temperature sensor 5 because a higher mass of liquid results in a higher thermal inertia which typically stabilizes the measurement.
- the ideal location for the temperature sensor 5 inside the wheel hub could possibly be at position Cl-Fig.5.
- the temperature sensor 5 When located in this position, the temperature sensor 5 is typically immersed in the oil during normal operation of the axle 9, so that it may sense the average temperature of the oil (here the fluid is not stagnant but stirred by the rotation of the hub and planet gears).
- the temperature sensor 5 in placed in this position it is typically possible to detect when the level of the oil is or falls below a minimum level since in this case the temperature sensor 5 is usually no longer wetted by the oil and measures the temperature of the air (which, in general, will be lower than the oil temperature).
- temperature sensors may be integrated in the oil debris sensors as an extra functionality, and location Cl-Fig.5 is the preferred location for installing such sensors, as will be described further below.
- the debris sensor 6 should preferably be placed close to the rotating components and immersed in the oil.
- the debris sensor 6 is disposed inside the central differential box (location Al-Fig.6) and/or in or on one or both of the wheel hubs 12 (location Cl-Fig.5).
- the location Cl-Fig.5 in the wheel hub 12 is well suited for installing an oil debris sensor 6 because in this position it will be submerged in the oil, and the oil is continuously stirred by the rotation of the hub and gears. Thanks to the turbulent flow of the oil in this zone, it will be easier to trap and sense metallic debris. If the oil debris sensor 6 is placed in the location Cl-Fig.5, it will also be possible to determine when the level of the lubrication oil falls below the minimum threshold, and if there are oil leakages. This functionality is enabled by two facts: almost all oil debris sensors known from the prior art can measure the dielectric constant of the oil, and the oil may reach the location Cl-Fig.5 when it is at its minimum level.
- the oil debris sensor 6 measures a drop of the dielectric constant it will mean that it is no longer wetted by the oil (note that oil has a higher dielectric constant than air). Therefore, a drop in the measured dielectric constant may indicate that the oil level has fallen below the minimum threshold.
- a drop in the dielectric constant of the lubrication oil can be measured not only when the oil is below a critical level, but also when the axle is tilted, e.g. when the vehicle is traveling on a slope.
- the information on the dielectric constant of the lubrication oil may be merged with the information acquired by the IMU 4, so that it can be recognized when the debris sensor 6 is not wetted or not completely wetted by the lubrication oil, such as when the axle 9 is tilted.
- Measuring the viscosity of the lubrication oil is a rapid way of determining its condition, with particular focus on the aging status of the oil.
- Three main types of viscocity sensors or three main methodologies for measuring the viscosity of the oil are known from the prior art: mechanical viscometers, electromechanical viscometers, and acoustic wave viscosity sensors. The latter are suitable to be installed in the axle 9 because of their compact dimensions, their resistance to harsh conditions such as vibrations, shocks, usage over a wide temperature range, and wide measurement range.
- the viscosity sensor 7 is configured or is used to measure the average viscosity of the lubrication oil.
- a well suited position for the viscosity sensor 7 inside the wheel hub 12 is the location C2 -Fig.5 since in this position at least one or all of the following requirements are typically fulfilled: the sensor is usually always wetted by oil; the sensor is exposed to a turbulent flow of oil, the turbulence being due to the movement of the gears; stagnant points at which the local properties of the liquid might be not representative of its average properties are avoided; and the viscosity sensor 7 is positioned as far away as possible from the oil debris sensor 6.
- the latter may be beneficial since magnetic oil debris sensors may generate a magnetic field that may attract the metallic debris dispersed in the oil.
- the physical properties of the oil may be altered, so that a viscosity measurement near the debris sensor 6 may possibly not be representative of the average viscosity of the oil inside the axle.
- the location A2-Fig.6 typically satisfies at least one or all of the above-mentioned requirements.
- One data processing unit, placed on the central differential box, may be used to acquire and process the axle data acquired by at least one or all of the sensors 4, 5, 6, 7 in the sensor network (Fig.7).
- the exact location of the data processing unit 2 is usually application dependent and should be determined such that the device is protected from dangerous external factors (mud, water, etc.).
- the data processing unit 2 may be an industrial microcontroller and may be configured to receive or acquire electromagnetic signals from the sensor network, process information such as information based on the received electromagnetic signals from the sensor network, and output the results, e. g. on or via the vehicle CAN bus. Such data can be utilized by vehicle ECUs for a wide range of tasks, such as (but not limited to): diagnostics, prognostics, control algorithms etc.
- the data processing unit 2 may also be configured to acquire information from the CAN bus and to use this information to extend the information available for assessing the condition of the axle arrangement (as explained in the next section).
- a differential node typically includes a simplified version of the data processing unit 2.
- the differential node may act as a proxy since it may communicate to the data processing unit 2 (for example via a dedicated bus) the measurement data acquired by at least one of one or more wheel hub nodes and/or one or more sensors located or disposed inside the differential 10 of the axle.
- no mathematical operations or algorithms need to be carried out inside the differential nodes.
- a node on each wheel hub 12 may be used to group the signals acquired or received from the sensors, thereby simplifying the information flow across the axle 9 and providing modularity to the sensor system 1.
- the wheel hub nodes may then communicate the acquired measurement data to the data processing unit 2 (or to the differential node).
- the communication of data between sensors, wheel hub nodes, and the data processing unit 2 can be wire-bound, wireless, or both.
- the chosen technology should preferably be compatible with the requirements of the data logging system. For instance, if the IMU 4 acquires data at a high sampling rate (such as at a rate higher than 100 Hz) a wired communication between the IMU 4, the wheel hub node and the data processing unit 2 is usually preferred.
- the proposed sensor system 1 may be configured or programmed to perform a two step approach aimed at monitoring the health status of the rotating components of the axle 9: an intelligent data processing methodology, and a procedure used to identify the failure mode. All mathematical computations may be performed by the data processing unit 2.
- the data processing unit 2 is typically configured or programmed to process and/or to interpret the measured data. These operations are usually carried out using one or more of the innovative procedures described in this document.
- the proposed approach can be adapted to various operating conditions of the vehicle (e.g. to varying external temperatures), and even to variations of maintenance of services (e.g. if different greases or lubrication oils are used).
- the monitoring of the mechanical integrity of the axle 9 and of the wear of its mechanical components using vibration analysis typically relies on a temporal and/or on a spectral analysis of measured data, such as data acquired by the IMU 4.
- the recorded vibrations may be caused by one or more of the following factors: vibrations of the vehicle engine (which may excite the vehicle frame), vibrations of the transmission, patches of the tire, compliance of the tire, roughness of the road, movement of the suspensions, dynamics of the vehicle, or wear of the rotating components of the driveline (i.e. transmission and axles).
- the problem of determining the status of the axle or axle arrangement typically consists in discriminating which of the recorded vibrations/accelerations are caused by wear of the rotating components or by a damage of the mechanical frame of the axle (such as a deformation of the axle frame), and which are not.
- This task may be formulated as a classification problem. Any classification algorithm can be used for this purpose, keeping in mind that the critical aspect is represented by the training of the classifier. For the sake of clarity and without loss of generality, a simple classification algorithm which may be run on the data processing unit 2 of the presently proposed system 1 will now be described by way of example (see Fig. 8).
- the algorithm may start by acquiring the current status of the vehicle, e.g. via the CAN bus.
- the vehicle status may include at least one of or all of: the speed of one or more vehicle wheels, the speed of one or more transmission shafts, and the engine speed.
- the accelerometer or accelerometers of the IMU 4 may acquire acceleration/vibration data at a sampling frequency that is preferably at least twice the maximum gear mesh frequency such as the number of teeth of the gear multiplied by the rotational speed of the gear.
- the sampled status is referred to as s(tk), and the accelerations is referred to as a(tk) (see Fig. 8).
- a signal processing layer (SPL) of the data processing unit 2 may process the measurement data a(tk) acquired by the IMU 4, for example by transforming the measurement data a(tk) in a state space suitable for the classification.
- the transformation carried out by the data processing unit 2 may include spectral analysis techniques which may include at least one of or all of: Fourier's transform, envelope analysis, kurtosis, spectral subtraction, wavelet decomposition , etc.
- the output of the SPL may include a feature array comprising information on the data acquired by the IMU 4.
- the classification may be aimed at detecting unexpected features or components in the current feature vector that may be caused by worn out rotating components and/or by a damaged axle frame, for example.
- a classification algorithm may establish one or more boundaries that group a set of points based on a set of criteria (Fig.9).
- a critical aspect of classification systems is the definition of a robust reference data set with which the newly measured axle data acquired by the IMU 4 is to be compared.
- the reference data set may be a model or the output of a model that may be updated based on the current status of the vehicle including at least one of or all of: a speed of one or more vehicle wheels, a speed of one or more gearbox shafts, a traction torque, etc.
- LM Learned Model
- the classification algorithm may be run by the data processing unit 2 and may be configured to determine whether the measured feature array acquired by the IMU 4 contains any pattern included in the LM.
- Fig. 10 shows a set 13 of measured feature arrays f(tk-3), f(tk+3), possibly after they have been processed by the data processing unit 2.
- the arrays f(tk-3), f(tk+3) may be the fourier spectra of measured vibration or acceleration data a(tk-3), a(tk+3).
- Fig. 10 further illustrates reference data 14 which may be provided by a model of a damaged axle.
- the reference data 14 shows that different damages Dl, DN of an axle may be associated with different features in the fourier spectra that may be acquired by the IMU 4 and the data processing unit 2.
- the different damages Dl, DN may be associated with peaks 15 of different amplitudes at different frequencies of the spectrum.
- the different damages Dl, DN in Fig. 10 may represent or may be associated with different worn out rotating components inside the axle 9, for example.
- the spectral feature 15 associated with the second damage D2 is also present in the acceleration/vibration measurement data f(tk) acquired by the IMU 4 at time tk.
- f(tk) features a peak 16 of a similar amplitude and at a similar frequency as the feature 15 of the damage D2.
- the classification algorithm run by the data processing unit 2 may be configured to detect that the feature included in the spectrum associated with D2 is also present in the measured spectrum f(tk).
- the data processing unit 2 may be configured to detect that the rotating components of the axle 9 feature an anomaly known from LM.
- the LM can be generated using one or more of the following approaches:
- Supervised learning a skilled user may create a correlation between different wear modes and measured feature arrays.
- unsupervised learning in machine learning theory it is possible to find several approaches to implement unsupervised learning (in a more general way also called reinforcement learning). These approaches may be implemented on the data processing unit 2. For the sake of clarity, a simple implementation of unsupervised learning is described in the following.
- the data processing unit 2 may be configured or programmed to record the measured feature arrays during a time span long enough to be representative of different operating conditions to which the axle 9 is exposed, but also short enough to ensure that the mechanical properties of the axle are not deteriorating while the LM is being generated.
- time span may include and/or may be limited to the first quarter of the total axle lifetime (for example, as estimated or predetermined by the axle manufacturer).
- any recorded feature array that deviates from the predicted LM may be classified as anomalous and an anomaly may be detected (also referred to as the raising of a flag in the following), thus requiring an inspection of the wear of the axle.
- the LM may be extended by adding feature arrays to the LM. For example, these added feature arrays may be recorded immediately after the periodic maintenances of the axle 9.
- Hybrid learning the previously described techniques may be combined in order to improve the overall accuracy of the LM (and so of the classification). For instance, theoretical models can be combined with unsupervised learning in order to be able to identify damage modes not yet described by the theoretic model, while the theoretical models may still being be to discriminate between the most relevant wear modes. This methodology is typically the most complete. Note that the overall performance of the classification algorithm may possibly be enhanced by sharing learned models and
- the output of the data processing carried out on the data acquired by the IMU 4 typically comprises two boolean flags Simu,wear and Simu,damage which state whether the rotating components of the axle are worn and/or whether the axle mechanical frame is damaged, for example broken or deformed.
- the vehicle may possibly be utilized in extremely cold and hot environments.
- the vehicle may possibly be utilized in extremely cold and hot environments.
- temperature sensor 5 may be used for one or both of the following applications: 1. detect overheating of rotating components;
- the latter functionality may be based on the concept that an aged oil warms-up more quickly than a fresh oil.
- the warm-up time may be defined as the duration of a time period that begins when the engine of the vehicle is started and that ends when the oil
- the average warm-up time may be determined using any known filtering methodology (e.g. moving average).
- the innovative intelligent algorithm run by the data processing unit 2 may autonomously learn the nominal average warm-up time of the lubrication oil, for example under different operating conditions. Furthermore, the data processing unit 2 may be configured or programmed to determine if the warm up time falls below a threshold value, in which case an anomaly may be detected (or, equivalently, a flag may be raised). As described in the next section, this flag may be merged with the information collected by one or more of the other sensors in the network, and a feedback may be provided to an operator of the vehicle comprising the axle 9.
- the estimation of the nominal warm-up time may be carried out after each oil change (Fig.ll), and it may last for a time span that may include and/or that may be limited to a fraction (approx. 20 -30%) of the average oil change interval time.
- the latter is typically provided by the axle manufacturer, but it can also be decided a priori based on the specific application.
- the critical threshold on the average warm-up time is typically application dependent, and it may be selected or set according to experimental tests carried out in the laboratory and aimed at identifying the maximum acceptable aging of the lubrication oil. Note that the threshold should be chosen as a compromise between a good oil quality (that is achieved with a low threshold), and reduced maintenance costs (i.e. too low thresholds may require frequent oil changes).
- the output provided by the temperature analysis may include an anomaly detection and/or a flag Stemp that is raised if or once the oil
- Oil debris sensors are usually configured to estimate the amount of debris dispersed in the lubrication oil and/or the dielectric constant of the lubrication oil. These two measurements are discussed in the following. 1) Ferrous debris in the lubrication oil
- the dispersion of metallic debris in the lubrication oil is a phenomenon that may depend on the life of the axle and/or stresses the axle is subjected to. Due to the variability of these two factors, it is difficult to define an upper limit for the debris oil contamination.
- the information collected from the debris sensor 6 may be an indication of the amount of dispersed fine and coarse particles (e.g. %, or parts per million).
- the particle dispersion is a measurement which may not be robust enough since during a normal axle lifecycle a high debris contamination may not always be associated with the wear of the mechanical components of the axle 9.
- Fig.12 shows the typical trend of the fine and coarse debris contamination in the oil, as well as time derivative (called rate in Fig. 12).
- rate in Fig. 12 For instance, in the beginning (tl) the level of contaminants in the lubrication oil is typically higher with respect to a nominal condition due to the presence of small manufacturing residues (such as chip produced during machining processes, or chemical products used to paint the axle).
- the wear of rotating components may increase, for example up to a point where bearings and gears start to deteriorate (t2 and t3).
- each maintenance step may reset the amount of debris in the oil (since the oil is changed and the sensor is cleaned), however the time derivative of debris contamination is generally a more stable indicator since it is generally increasing in time due to the degenerative nature of the wearing mechanisms.
- One or more of the following three anomaly notifications or flags may be provided by the data processing here described:
- I. Sdebr,contam states if the dispersion of fine debris in the lubrication oil exceeds a threshold, for example a predetermined threshold, and the physical properties of the oil are degrading.
- a threshold can be set to define the maximum tolerable debris contamination, for example based on experimental tests.
- Sdebr,wearFine the information on the rate of fine debris contamination may be filtered (thus avoiding instantaneous peaks in the signal due to noise) and/or monitored in order to detect whether wear of the rotating components is increasing anomalously.
- Sdebr,wearCoarse the flag may be raised if coarse debris is detected. This is an event that typically requires an immediate maintenance of the axle in order to avoid further damage.
- a debris sensor may typically be used to distinguish coarse debris from fine debris.
- the debris sensor 6 includes a Hall- type sensor for detecting a change in a magnetic field produced by a magnet of the sensor, the rate at which the magnetic field changes due to the presence of ferrous particles in the lubrication oil typically increases as the size of the ferrous particles increases.
- the dielectric constant of a fluid or liquid typically depends on its temperature, moisture, and level of contamination.
- the nominal value of the oil viscosity should preferably not be set a priori since the lubrication oil might change between consecutive maintenance steps (e.g. the chemical composition of the oil may change).
- the procedure followed to monitor the dielectric constant of the lubrication oil may be based on the same intelligent algorithm developed for monitoring the oil temperature described further above. After each maintenance, the system may learn, e. g. for a given time span, the average nominal dielectric constant of the oil, and may then monitor the deviation of the current dielectric constant from the average nominal value. If the current dielectric constant diverges excessively from its nominal value, for example by more than a predetermined threshold, a flag Sdebr,diel may be raised.
- the viscosity of the oil may be measured in order to determine whether the oil has aged and/or has to be replaced.
- the oil viscosity is mainly affected by one or more of the following:
- aged oil usually exhibits a larger viscosity
- oil temperature oil viscosity usually decreases with oil temperature
- an intelligent algorithm is proposed that is configured to automatically learn a model of the oil viscosity and to use this model to assess and/or to predict oil aging.
- the automatic learning of a model of the oil viscosity may be formulated as a regression problem.
- a regression problem may include a statistical approach for estimating
- At least one of or all of the oil temperature, the abundance of debris dispersed in the oil, and the dielectric constant of the oil measured at a given time instant tk may be correlated to oil the viscosity measured at the same time instant tk (named output).
- Any state-of-the- art regression algorithm may be used (e.g. Least Square Minimization, Neural Networks, Gaussian Processes, Support Vector Machines, etc.).
- the regression algorithm typically includes one or more of the following steps:
- Regression measured oil temperature, abundance of debris dispersed in the oil, dielectric constant of the oil, and viscosity of the oil (preferably all acquired at the same time instant) may be used to reconstruct a relation between inputs and output.
- the output includes the oil viscosity, while the inputs may include one or more of the oil temperature, the abundance of debris dispersed in the oil, and the dielectric constant of the oil.
- each set of measurements in the training set may include inputs and outputs (acquired at a given time instant).
- the training set can be acquired for instance (but not limited to) during a predefined time span or time period that may start after the vehicle maintenance has been completed, and may last for and/or which may be limited to a fraction of the Mean Time To Maintain as estimated by the axle manufacturer. After each maintenance of the axle, the training set can be redefined or expanded.
- the preferred management of the training set is application dependent, but in general it is a preferable to continuously expand the training set in order to have more data available for the learning phase.
- the result of the regression typically includes a model that may correlate inputs with outputs based on a mathematical expression or a set of logic rules.
- Examples of data fusion algorithms may include one or more of: Bayesian filters, Kalman filter, Particle filters, etc.
- the current measured viscosity of the oil may be compared with the current estimated viscosity. If the absolute value of the difference between the measured viscosity and extrapolated viscosity is greater than a predefined threshold, a boolean flag Svisc may be raised stating that the properties of the oil have deteriorated.
- the threshold can be selected a priori based on laboratory tests aimed at identifying the maximum allowed oil aging.
- the failure mode of the system may be identified.
- the proposed procedure is described for a subset of devices in the sensor network (e.g. the transducers placed in the wheel hub, or in the central differential 10). It is understood that this approach can be extended to other subsets of sensors in the network, preferably to all possible subsets of sensors in the network, including to all sensors.
- the innovative heuristic methodology is based on the concept that for some failure modes measurements carried out by two or more sensors in the sensor network are correlated.
- Fig.13 defines the information to be acquired for each damaging factor (i.e. failure mode), including the sensors to be used. By travelling backward this logical path it is possible to discriminate which failure mode is present. For instance, suppose that flags Simu,damage and Sdebr, wearCoarse have been raised, for example based on the data measured by two or more sensors in the network.
- Fig. 13 depicts an example of the logical procedure that may be applied in order to identify the corresponding failure mode. For each flag the information provided is identified. In the example depicted in Fig. 13 this information includes: “shocks on the axle and the wheel hub", and "coarse metallic debris dispersed in the lubrication oil".
- the intersection or pairing of the information provided identifies the failure mode which is present in the axle or axle arrangement.
- the axle failure mode includes the mode "breakage of rotating components".
- the approach described herein may be extended to each damaging factor or axle failure mode, thus obtaining the correlations between flags and failure modes shown in Fig. 14.
- the estimation of the residual lifetime of the axle system may be estimated using a methodology that can be generalized to all subsets of the sensors/transducers in the sensor network, including to all sensors/transducers in the sensor network.
- the signal may include the information that is used to raise on ore more warning flags according to the data processing procedure described above, such as one or more of the following: i) IMU: the IMU signal may include the descriptors of vibrational measurements (for instance -and without loss of generality-spectral components) caused by worn rotating components and a damaged axle frame.
- thermometer signal may include the warm-up time of the oil.
- Oil debris sensor the oil debris sensors signal may include one or more of the abundance of fine debris dispersed in the oil, the rate of change of the abundance of fine debris dispersed in the oil, the abundance of coarse debris dispersed in the oil, and the dielectric constant of the oil.
- Oil viscosity sensor may include the absolute difference between the viscosity estimated from one ore more models and the measured viscosity.
- Estimating the residual lifetime may be approached as a regression problem of one or more of the above-mentioned sensor signals, where the domain of the regression function may be defined over time or over the distance travelled by the vehicle.
- the regression algorithm may include the regression algorithm described above (data processing of the
- thermometer it can be performed with any state -of-the-art regression
- the learning phase can be carried out after each maintenance of the transmission, and it may last and/or it may be limited to a fraction of the average Mean Time To Maintain, for example as defined by the
- the learned model may be used to estimate the value of the signal at a given future time instant (or future position). By inverting the learned model it is also possible to estimate when in the future time or after what distance travelled by the vehicle the signal will reach a threshold value, such as a predetermined threshold value, and to raise the error flag associated with the corresponding failure mode. If multiple signals are monitored and for each of them a time-to-raise (or space-to-raise) is predicted, it is possible to combine the estimations to predict when a given failure mode will occur.
- the data processing unit 2 may be configured or programmed to have auto-diagnosis capabilities, meaning that it may be configured or programmed to monitor the health status of the logged sensors, wheel nodes, and central differential nodes.
- the auto-diagnosis may be enhanced by the modularity of the sensor network. If a failure is detected (e.g. it is not possible to acquire a sensor at predefined time intervals), the data processing unit 2 may communicate the failure to the vehicle ECU with dedicated messages, for example sent via the CAN bus.
- the data processing unit 2 may be configured or programmed to adapt its functionalities based on recorded failures. For instance, if the IMU or another sensor in the sensor network breaks down, the data processing unit 2 may reduce the set of failure modes to be monitored to those failure modes that do not require the flags raised by the broken sensor and/or by the corresponding data processing procedure. The full functionalities may then be re-established if or once the broken sensor is replaced.
- the inertial measurement unit may be configured to reconstruct or detect the attitude of the vehicle. Typically, this functionality may be enabled only for sensor network configurations including more than one IMU, thus achieving safety-compliant redundancy.
- An alarm may be raised and sent to the vehicle ECU via the CAN bus if or when a longitudinal or lateral inclination angle measured by the IMU exceeds a threshold, such as a threshold predetermined by the vehicle manufacturer, and/or if or when a shock is measured by the accelerometers of the IMU. By doing so, the system may support or warn the driver in case the vehicle is in danger of tipping over.
- a threshold such as a threshold predetermined by the vehicle manufacturer
- the sensor network is a modular system in which each single sensor can be installed or removed according to the specific application.
- the preferred configuration of the sensor network requires a set of sensors (for example one or more IMUs, one or more
- thermometers one or more debris sensors, and one or more viscosity sensors.
- the sensors or at least some of the sensors may be disposed in the wheel hub or in each wheel hub and in a central differential box or in each differential box of the vehicle. In this way it is possible to monitor and predict the remaining lifetime of the principal components of all axles.
- the innovative sensor network is designed in order to maximize its modularity.
- the variants of the sensor network are described by means of sub-networks, sensor configurations, and axle locations.
- a sub-network may be defined as one of the following combinations of components (see Fig.4):
- a given sub-network can include all of the above-listed sensors, or a subset of sensors or transducers.
- the combination of sensors in the sub-network defines the capability of the proposed sensor system to detect a failure, to discriminate the damaging factor or failure mode, and to predict the residual lifetime of the axle system. If one or more sensors are eliminated from the full configuration, it may in some cases not be possible to distinguish one or more damaging factors or failure modes from each other.
- the accelerometer e.g. by identifying a damage in C-Fig.5 when the IMU is placed in B-Fig.6.
- the system may identify the failure mode of the axle, but may not be able to locate the sub -network in which the damage has occurred.
- Thermometer, oil debris sensor, and viscosity sensor With this setup it is possible to monitor and/or predict the aging of the lubrication oil (damaging factor-4), contamination of the oil (df-5), the minimum level of oil (df-6), and overheating of the rotating components (df-7). In some cases, the wear of rotating components (df-1) and breakage of rotating components (df-2) can be sensed only locally (that is in the same sub-network). In these cases this configuration may therefore not be capable of sensing if the mechanical frame of the axle is damaged (df-3).
- IMU and oil debris sensor This configuration may identify all the damaging modes or failure modes except for the aging of the lubrication mode (df-4). Thus, the accuracy in detecting wear of rotating components (df-1) may possibly be lower as vibrations may in some instances depend on the status (i.e. viscosity) of the lubrication oil.
- the sensor system is not limited to the specific examples described above and may comprise further configurations or combinations of sensors.
- each sub-network is typically assigned a specific location within the axle arrangement.
- Fig.15 depicts possible locations and configurations of the sub-networks in or on the axles of a two-axle vehicle (these considerations can be extended for a vehicle with a higher number of axles):
- One sub-network of type-l and one (or more) sub-networks of type-ll Only one data processing unit is installed on the entire vehicle. The remaining axles typically include a central differential node in the central differential 10. This configuration further allows monitoring the health status of multiple central differentials. If the vehicle has more than two axles, more than one central differential node may be installed. In the latter case, the information collected by the data processing unit and the central differential nodes can be used to estimate and/or predict the health status of the differentials which are not monitored.
- One sub-network of type-l, one (or more) sub-network of type-ll, and one sub-network of type-Ill inside or one (or more) axle or axle arrangement This configuration further allows monitoring the health status of the central differential 10 and one wheel hub of two or more axles.
- the health status of the wheel hubs which are not monitored may be assessed based on the assumption that wheel hubs on the same axle exhibit the same degree of wear.
- the health status of the axles which are not monitored may be predicted based on data acquired from the monitored axles, in analogy with the assumptions made for configuration B and D.
- the data collected from two or more of the axles may be merged in order to improve the accuracy of the learned models and/or in order to improve the reliability in identifying and predicting the axle failure modes.
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US16/099,213 US11448567B2 (en) | 2016-05-06 | 2017-05-05 | Sensor system for monitoring a vehicle axle and for discriminating between a plurality of axle failure modes |
CN201780028093.0A CN109073506A (en) | 2016-05-06 | 2017-05-05 | Sensing system for monitoring axle and for being distinguished between multiple axis fault modes |
BR112018071911A BR112018071911A2 (en) | 2016-05-06 | 2017-05-05 | sensor system for monitoring a vehicle axle and for discerning between a plurality of axle failure modes and axle arrangement |
AU2017260387A AU2017260387A1 (en) | 2016-05-06 | 2017-05-05 | Sensor system for monitoring a vehicle axle and for discriminating between a plurality of axle failure modes |
KR1020187032181A KR20190002510A (en) | 2016-05-06 | 2017-05-05 | Sensor system for monitoring vehicle axles and distinguishing between multiple axle failure modes |
EP17724334.2A EP3452800A1 (en) | 2016-05-06 | 2017-05-05 | Sensor system for monitoring a vehicle axle and for discriminating between a plurality of axle failure modes |
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EP16425041.7A EP3242118A1 (en) | 2016-05-06 | 2016-05-06 | Sensor system for monitoring a vehicle axle and for discriminating between a plurality of axle failure modes |
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BR112018071911A2 (en) | 2019-02-05 |
EP3452800A1 (en) | 2019-03-13 |
AU2017260387A1 (en) | 2018-11-01 |
US11448567B2 (en) | 2022-09-20 |
CN109073506A (en) | 2018-12-21 |
US20200309641A1 (en) | 2020-10-01 |
KR20190002510A (en) | 2019-01-08 |
EP3242118A1 (en) | 2017-11-08 |
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