CN113959148B - Method and system for detecting cold air leakage of intelligent refrigeration equipment - Google Patents

Method and system for detecting cold air leakage of intelligent refrigeration equipment Download PDF

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CN113959148B
CN113959148B CN202111429827.0A CN202111429827A CN113959148B CN 113959148 B CN113959148 B CN 113959148B CN 202111429827 A CN202111429827 A CN 202111429827A CN 113959148 B CN113959148 B CN 113959148B
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detection result
humidity
information
cold air
preset
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CN113959148A (en
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夏阳
李红
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Sichuan Hongmei Intelligent Technology Co Ltd
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Sichuan Hongmei Intelligent Technology Co Ltd
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    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
    • F25REFRIGERATION OR COOLING; COMBINED HEATING AND REFRIGERATION SYSTEMS; HEAT PUMP SYSTEMS; MANUFACTURE OR STORAGE OF ICE; LIQUEFACTION SOLIDIFICATION OF GASES
    • F25DREFRIGERATORS; COLD ROOMS; ICE-BOXES; COOLING OR FREEZING APPARATUS NOT OTHERWISE PROVIDED FOR
    • F25D11/00Self-contained movable devices, e.g. domestic refrigerators
    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
    • F25REFRIGERATION OR COOLING; COMBINED HEATING AND REFRIGERATION SYSTEMS; HEAT PUMP SYSTEMS; MANUFACTURE OR STORAGE OF ICE; LIQUEFACTION SOLIDIFICATION OF GASES
    • F25DREFRIGERATORS; COLD ROOMS; ICE-BOXES; COOLING OR FREEZING APPARATUS NOT OTHERWISE PROVIDED FOR
    • F25D29/00Arrangement or mounting of control or safety devices
    • F25D29/003Arrangement or mounting of control or safety devices for movable devices
    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
    • F25REFRIGERATION OR COOLING; COMBINED HEATING AND REFRIGERATION SYSTEMS; HEAT PUMP SYSTEMS; MANUFACTURE OR STORAGE OF ICE; LIQUEFACTION SOLIDIFICATION OF GASES
    • F25DREFRIGERATORS; COLD ROOMS; ICE-BOXES; COOLING OR FREEZING APPARATUS NOT OTHERWISE PROVIDED FOR
    • F25D29/00Arrangement or mounting of control or safety devices
    • F25D29/005Mounting of control devices
    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
    • F25REFRIGERATION OR COOLING; COMBINED HEATING AND REFRIGERATION SYSTEMS; HEAT PUMP SYSTEMS; MANUFACTURE OR STORAGE OF ICE; LIQUEFACTION SOLIDIFICATION OF GASES
    • F25DREFRIGERATORS; COLD ROOMS; ICE-BOXES; COOLING OR FREEZING APPARATUS NOT OTHERWISE PROVIDED FOR
    • F25D29/00Arrangement or mounting of control or safety devices
    • F25D29/008Alarm devices
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01DMEASURING NOT SPECIALLY ADAPTED FOR A SPECIFIC VARIABLE; ARRANGEMENTS FOR MEASURING TWO OR MORE VARIABLES NOT COVERED IN A SINGLE OTHER SUBCLASS; TARIFF METERING APPARATUS; MEASURING OR TESTING NOT OTHERWISE PROVIDED FOR
    • G01D21/00Measuring or testing not otherwise provided for
    • G01D21/02Measuring two or more variables by means not covered by a single other subclass
    • FMECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
    • F25REFRIGERATION OR COOLING; COMBINED HEATING AND REFRIGERATION SYSTEMS; HEAT PUMP SYSTEMS; MANUFACTURE OR STORAGE OF ICE; LIQUEFACTION SOLIDIFICATION OF GASES
    • F25DREFRIGERATORS; COLD ROOMS; ICE-BOXES; COOLING OR FREEZING APPARATUS NOT OTHERWISE PROVIDED FOR
    • F25D2600/00Control issues
    • F25D2600/06Controlling according to a predetermined profile

Abstract

The invention provides a method and a system for detecting cold air leakage of an intelligent refrigeration device, wherein the method comprises the following steps: when the door switch sensor detects that the intelligent refrigeration equipment opens or closes the door, generating and sending trigger information; after receiving the trigger information, the central processing unit acquires humidity information, temperature change information within a preset time span and humidity change information within a preset time span in the intelligent refrigeration equipment; the central processing unit generates a first detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value; classifying based on a machine learning classifier to obtain a second detection result; determining a final detection result according to the first detection result and the second detection result; and the central processing unit generates a detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value. The invention can accurately and efficiently detect whether the cold air of the intelligent refrigeration equipment leaks.

Description

Method and system for detecting cold air leakage of intelligent refrigeration equipment
Technical Field
The disclosure relates to the field of intelligent refrigeration equipment detection, in particular to a method and a system for detecting cold air leakage of intelligent refrigeration equipment.
Background
Along with the increasing popularization rate of intelligent refrigerator products and the increasing demand on the convenience of use of the products, the method solves the problems that a user intelligent refrigerator cannot timely inform and treat the user intelligent refrigerator after cold air in the refrigerator leaks due to various reasons, and the refrigerator freezes due to the leakage of the cold air, stored goods are decayed, electricity is wasted, and the like.
Therefore, how to accurately and efficiently detect whether the cold air of the intelligent refrigeration equipment leaks becomes a technical problem to be solved urgently.
Disclosure of Invention
The embodiment of the disclosure aims to provide a method and a system for detecting leakage of cold air of an intelligent refrigeration device, which can accurately and efficiently detect whether the cold air of the intelligent refrigeration device leaks.
In a first aspect, the present invention provides a method for detecting cold air leakage of an intelligent refrigeration device, comprising:
when the door switch sensor detects that the intelligent refrigeration equipment opens or closes the door, generating and sending trigger information;
after receiving the trigger information, the central processing unit acquires humidity information, temperature change information within a preset time span and humidity change information within a preset time span in the intelligent refrigeration equipment;
the central processing unit generates a first detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value;
classifying based on a machine learning classifier according to the humidity information, the temperature change information within the preset time length and the humidity change information within the preset time length to obtain a second detection result;
and determining a final detection result according to the first detection result and the second detection result.
Further, the preset humidity threshold comprises a preset humidity upper limit threshold;
the step that the central processing unit generates a detection result of the cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value comprises the following steps:
after receiving the trigger information, the central processing unit determines that the humidity information continuously rises within a preset first time period, and when the humidity information is greater than a preset humidity upper limit threshold value, a detection result used for representing leakage of the cold air of the intelligent refrigeration equipment is generated.
Further, the preset humidity threshold comprises a preset humidity target threshold;
the step that the central processing unit generates a detection result of the leakage of the cold air of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value comprises the following steps:
after the triggering information is received, the central processing unit generates a detection result for representing the leakage of the cold air of the intelligent refrigeration equipment when the humidity information is determined not to reach the preset humidity target threshold value in the preset second time period.
Further, the method for detecting cold air leakage of intelligent refrigeration equipment further comprises the following steps:
the alarm module is receiving the testing result perhaps behind the testing result, the generation is used for the sign intelligence refrigeration plant air conditioning takes place the alarm information of revealing.
Further, the method for detecting cold air leakage of the intelligent refrigeration equipment further comprises the following steps:
and the central processing unit reports the detection result or the detection result to a cloud server.
Further, the step of classifying based on a machine learning classifier to obtain a second detection result according to the humidity information, the temperature change information within a preset time span, and the humidity change information within a preset time span includes:
inputting the humidity information, the temperature change information within a preset time span and the humidity change information within the preset time span into a support vector machine for classification to obtain a second detection result;
wherein the kernel function of the support vector machine is any one of the following kernel functions:
(a) Linear kernel function: k (x, x) i )=(x,x i )
(b) Polynomial kernel function: k (x, x) i )=[(x,x i )+1] d Wherein d is an order
(c) Gauss radial basis kernel function:
Figure BDA0003379850850000021
(d) Sigmoid kernel: k (x, x) i )=tanh[s(x,x i )+c]
The step of determining the final detection result according to the first detection result and the second detection result comprises:
when the first detection result and the second detection result are consistent, the final detection result is the first detection result or the second detection result;
and when the first detection result is inconsistent with the second detection result, the final detection result is a detection result which is used for representing leakage of the cold air of the intelligent refrigeration equipment in the first detection result and the second detection result.
In a second aspect, the present invention provides an intelligent refrigeration equipment cold air leakage detection system, comprising:
the door switch sensor is used for detecting the door opening or closing action of the intelligent refrigeration equipment and generating and sending trigger information when detecting the door opening or closing;
the central processing unit is used for acquiring humidity information in the intelligent refrigeration equipment after receiving the trigger information, generating temperature information, temperature change information within a preset time length and humidity change information within a preset time length for cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value, and generating a first detection result for the cold air leakage of the intelligent refrigeration equipment according to the humidity information and the preset humidity threshold value; classifying based on a machine learning classifier according to the humidity information, the temperature change information within the preset time span and the humidity change information within the preset time span to obtain a second detection result; and determining a final detection result according to the first detection result and the second detection result.
Further, the preset humidity threshold comprises a preset humidity upper limit threshold and a preset humidity target threshold;
the central processing unit is used for receiving behind the trigger information, confirming humidity information continuously rises in predetermineeing first time quantum, and is in when humidity information is greater than and predetermines humidity upper limit threshold value, the generation is used for the sign intelligence refrigeration plant cold air takes place the testing result of revealing, perhaps/and, is confirming when humidity information all does not reach and predetermine humidity target threshold value in predetermineeing the second time quantum, the generation is used for the sign intelligence refrigeration plant cold air takes place the testing result of revealing.
Further, the intelligent cold air leakage detection system for the refrigeration equipment further comprises:
and the alarm module is used for receiving the detection result or after the detection result, generating alarm information for representing leakage of the cold air of the intelligent refrigeration equipment.
Further, the intelligent cold air leakage detection system for the refrigeration equipment further comprises: the cloud server and the humidity sensor are arranged in the intelligent refrigeration equipment;
the central processing unit is further used for inputting the humidity information, the temperature change information within the preset time span and the humidity change information within the preset time span into a support vector machine for classification to obtain a second detection result; when the first detection result is consistent with the second detection result, the final detection result is the first detection result or the second detection result; when the first detection result and the second detection result are inconsistent, the final detection result is a detection result used for representing leakage of cold air of the intelligent refrigeration equipment in the first detection result and the second detection result, wherein a kernel function of the support vector machine is any one of the following kernel functions:
(a) Linear kernel function: k (x, x) i )=(x,x i )
(b) Polynomial kernel function: k (x, x) i )=[(x,x i )+1] d Wherein d is an order
(c) Gauss radial basis kernel function:
Figure BDA0003379850850000031
(d) Sigmoid kernel function: k (x, x) i )=tanh[s(x,x i )+c]。
According to the cold air leakage detection method and system for the intelligent refrigeration equipment, the current humidity value in the intelligent refrigeration equipment is collected in real time, the central processing unit carries out cold air leakage detection according to the humidity threshold value and the current humidity value to generate a first detection result of the cold air leakage of the intelligent refrigeration equipment, and a second detection result is obtained by classifying the cold air leakage detection method and system based on a machine learning classifier according to the humidity information, the temperature change information within a preset time length and the humidity change information within the preset time length; according to the first detection result and the second detection result, the final detection result is determined, and whether the cold air of the intelligent refrigeration equipment leaks or not can be accurately and efficiently detected.
Drawings
In order to more clearly illustrate the embodiments of the present invention or the technical solutions in the prior art, the drawings used in the description of the embodiments or the prior art will be briefly introduced below, and it is obvious that the drawings in the following description are some embodiments of the present invention, and for those skilled in the art, other drawings can be obtained according to these drawings without creative efforts.
Fig. 1 is a flowchart of an intelligent refrigeration device cold air leakage detection method according to an embodiment of the present disclosure.
Fig. 2 is a flowchart of a cold air leakage detection method for an intelligent refrigeration device according to a second embodiment of the present disclosure.
Fig. 3 is a schematic block diagram of an intelligent refrigeration device cold air leakage detection system according to a third embodiment of the present disclosure.
Detailed Description
Embodiments of the present invention will be described in detail below with reference to the accompanying drawings.
It should be noted that, in the case of no conflict, the features in the following embodiments and examples may be combined with each other; moreover, all other embodiments that can be derived by one of ordinary skill in the art from the embodiments disclosed herein without making any creative effort fall within the scope of the present disclosure.
It is noted that various aspects of the embodiments are described below within the scope of the appended claims. It should be apparent that the aspects described herein may be embodied in a wide variety of forms and that any specific structure and/or function described herein is merely illustrative. Based on the disclosure, one skilled in the art should appreciate that one aspect described herein may be implemented independently of any other aspects and that two or more of these aspects may be combined in various ways. For example, an apparatus may be implemented and/or a method practiced using any number of the aspects set forth herein. In addition, such an apparatus may be implemented and/or such a method may be practiced using other structure and/or functionality in addition to or other than one or more of the aspects set forth herein.
Fig. 1 is a flowchart of an intelligent refrigeration device cold air leakage detection method according to an embodiment of the present disclosure. As shown in fig. 1:
and S101, generating and sending trigger information when the door opening and closing sensor detects that the intelligent refrigeration equipment is opened or closed.
Step S102, after receiving the trigger information, the central processing unit acquires humidity information, temperature change information within a preset time length and humidity change information within the preset time length in the intelligent refrigeration equipment;
step S103, the central processing unit generates a first detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value;
step S104, classifying the humidity information, the temperature change information within a preset time length and the humidity change information within the preset time length based on a machine learning classifier to obtain a second detection result;
and step S105, determining a final detection result according to the first detection result and the second detection result.
Specifically, the step of classifying based on a machine learning classifier according to the humidity information, the temperature change information within a preset time length, and the humidity change information within the preset time length to obtain a second detection result includes:
inputting the humidity information, the temperature change information within a preset time length and the humidity change information within the preset time length into a support vector machine for classification to obtain a second detection result;
wherein the kernel function of the support vector machine is any one of the following kernel functions:
(a) Linear kernel function: k (x, x) i )=(x,x i )
(b) Polynomial kernel function: k (x, x) i )=[(x,x i )+1] d Wherein d is an order
(c) Gauss radial basis kernel function:
Figure BDA0003379850850000051
(d) Sigmoid kernel function: k (x, x) i )=tanh[s(x,x i )+c]
The step of determining the final detection result according to the first detection result and the second detection result comprises:
when the first detection result is consistent with the second detection result, the final detection result is the first detection result or the second detection result;
and when the first detection result is inconsistent with the second detection result, the final detection result is a detection result used for representing leakage of the cold air of the intelligent refrigeration equipment in the first detection result and the second detection result.
In the embodiment, a current humidity value in the intelligent refrigeration equipment is collected in real time, a central processing unit carries out cold air leakage detection according to a humidity threshold value and the current humidity value to generate a first detection result of the cold air leakage of the intelligent refrigeration equipment, and a machine learning classifier is used for classifying according to the humidity information, the temperature change information within a preset time length and the humidity change information within the preset time length to obtain a second detection result; whether the cold air of the intelligent refrigeration equipment is leaked or not can be accurately and efficiently detected according to the first detection result and the second detection result.
Fig. 2 is a flowchart of a cold air leakage detection method for an intelligent refrigeration device according to a second embodiment of the present disclosure. Fig. 2 is a preferred implementation of the embodiment shown in fig. 1, and as shown in fig. 2, specifically includes:
a01, detecting that the equipment is opened and closed;
step A02, when the opening and closing operations of the equipment are detected, the Soc central processing unit acquires the humidity value of the temperature and humidity sensor;
a03, continuously monitoring humidity by a Soc central processing unit through a humidity sensor and comparing the humidity with an acquired humidity value;
step A04, when the humidity continuously rises within a certain time and exceeds an alarm humidity upper limit value HH;
step A05, or the alarm humidity target value HT is not reached within a certain time range;
and A06, the alarm module sends an alarm and sends the alarm to a cloud end through the Soc central processing unit to remind a user.
In the embodiment, whether the door is opened or closed is detected through a door opening and closing sensor, and a humidity sensor acquires the current humidity in the refrigerator; soc central processing unit sets up humidity threshold value and target humidity value to compare with the humidity value that acquires, and send alarm information for the high in the clouds after judging that the refrigerator appears the air conditioning and leaks, the warning module is reported to the police after judging that the air conditioning leaks, thereby detects intelligent refrigeration plant air conditioning accurately high-efficiently and whether takes place to reveal.
Fig. 3 is a schematic block diagram of an intelligent refrigeration device cold air leakage detection system according to a third embodiment of the present disclosure. The method embodiments shown in fig. 1 and 2 can be used to explain the present embodiment. As shown in fig. 3: intelligent refrigeration equipment cold air leakage detection system includes: a door sensor 101; soc central processing unit 102: a humidity sensor; 103: and an alarm module 104; the door sensor module 101 is configured to detect whether there is a door opening or closing motion, and then send a door closing signal. And the Soc central processing unit 102 is used for setting a humidity threshold value and a target humidity value, comparing the humidity threshold value with the obtained humidity value, and sending alarm information to the cloud after judging that cold air leakage occurs in the refrigerator. And the humidity sensor module 103 is used for acquiring the humidity value in the refrigerator in real time. And the alarm module 104 is used for alarming after judging that the cold air leakage occurs.
As shown in fig. 3, the door sensor module 101 specifically includes a door opening and closing sensor 1011 for detecting door opening or door closing. The Soc central processing unit 102 includes a humidity threshold module 1021 and a humidity target value module 1022; a humidity threshold module 1021 for comparing with a humidity value obtained from a humidity sensor; the humidity target value module 1022 is used to compare the humidity value obtained from the humidity sensor. The humidity sensor module 103 includes a humidity sensor 1031 for acquiring a humidity value inside the refrigerator in real time. The alarm module 104 includes an alarm 1041 for alarming after the occurrence of cold air leakage. And the cloud (server) 105 is used for forwarding the alarm information sent by the Soc central processing unit to the user.
Specifically, the intelligent refrigeration device may be an intelligent refrigerator product or the like, and is not particularly limited herein.
This detection system is revealed to intelligence refrigeration plant air conditioning is through each unit collaborative work such as door sensor, humidity transducer, soc central processing unit, alarm module: the intelligent refrigerator that contains a sensor module detects there is the action of opening the door, closing the door, and Soc central processing unit passes through humidity transducer after a period and acquires current humidity in the refrigerator to continuously monitor humidity, appear continuously rising in the refrigerator when inside humidity appears for a period, or when not reaching the target humidity in the certain time, the refrigerator sends the warning and reminds the user through the high in the clouds.
In addition, the central processing unit can be further configured to obtain humidity information, temperature change information within a preset time span, and humidity change information within a preset time span in the intelligent refrigeration equipment after receiving the trigger information, and generate a first detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold; classifying based on a machine learning classifier according to the humidity information, the temperature change information within the preset time length and the humidity change information within the preset time length to obtain a second detection result; and determining a final detection result according to the first detection result and the second detection result.
Specifically, the central processing unit is further configured to input the information according to the humidity information, the temperature change information within a preset time length, and the humidity change information within the preset time length into a support vector machine for classification, so as to obtain a second detection result; when the first detection result is consistent with the second detection result, the final detection result is the first detection result or the second detection result; when the first detection result and the second detection result are inconsistent, the final detection result is a detection result used for representing leakage of cold air of the intelligent refrigeration equipment in the first detection result and the second detection result, wherein a kernel function of the support vector machine is any one of the following kernel functions:
(a) Linear kernel function: k (x, x) i )=(x,x i )
(b) Polynomial kernel function: k (x, x) i )=[(x,x i )+1] d Wherein d is an order
(c) Gauss radial basis kernel function:
Figure BDA0003379850850000071
(d) Sigmoid kernel function: k (x, x) i )=tanh[s(x,x i )+c]。
In this case, the program code itself read from the storage medium can realize the functions of any of the above-described embodiments, and thus the program code and the storage medium storing the program code constitute a part of the present invention.
Examples of the storage medium for supplying the program code include a floppy disk, a hard disk, a magneto-optical disk, an optical disk (e.g., CD-ROM, CD-R, CD-RW, DVD-ROM, DVD-RAM, DVD-RW, DVD + RW), a magnetic tape, a nonvolatile memory card, and a ROM. Alternatively, the program code may be downloaded from a server computer by a communications network.
Further, it should be clear that the functions of any one of the above-described embodiments may be implemented not only by executing the program code read out by the computer, but also by causing an operating system or the like operating on the computer to perform a part or all of the actual operations based on instructions of the program code.
Further, it is to be understood that the program code read out from the storage medium is written to a memory provided in an expansion board inserted into the computer or to a memory provided in an expansion unit connected to the computer, and then causes a CPU or the like mounted on the expansion board or the expansion unit to perform part or all of the actual operations based on instructions of the program code, thereby realizing the functions of any of the above-described embodiments.
It should be noted that not all steps and modules in the above flows and system structure diagrams are necessary, and some steps or modules may be omitted according to actual needs. The execution sequence of the steps is not fixed and can be adjusted according to the needs. The system structure described in the above embodiments may be a physical structure or a logical structure, that is, some modules may be implemented by the same physical entity, or some modules may be implemented by a plurality of physical entities, or some components in a plurality of independent devices may be implemented together.
In the above embodiments, the hardware unit may be implemented mechanically or electrically. For example, a hardware element may comprise permanently dedicated circuitry or logic (such as a dedicated processor, FPGA or ASIC) to perform the corresponding operations. A hardware element may also comprise programmable logic or circuitry (e.g., a general-purpose processor or other programmable processor) that may be temporarily configured by software to perform the corresponding operations. The specific implementation (mechanical, or dedicated permanent, or temporarily set) may be determined based on cost and time considerations.
While the invention has been particularly shown and described with reference to the preferred embodiments and drawings, it is not intended to be limited to the specific embodiments disclosed, and it will be understood by those skilled in the art that various other combinations of code approval means and various embodiments described above may be made, and such other embodiments are within the scope of the present invention.

Claims (8)

1. A cold air leakage detection method for an intelligent refrigeration device is characterized by comprising the following steps:
when the door switch sensor detects that the intelligent refrigeration equipment opens or closes the door, generating and sending trigger information;
after receiving the trigger information, the central processing unit acquires humidity information, temperature change information within a preset time length and humidity change information within a preset time length in the intelligent refrigeration equipment;
the central processing unit generates a first detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value;
classifying based on a machine learning classifier according to the humidity information, the temperature change information within the preset time length and the humidity change information within the preset time length to obtain a second detection result;
determining a final detection result according to the first detection result and the second detection result;
wherein the content of the first and second substances,
the step of classifying based on a machine learning classifier according to the humidity information, the temperature change information within the preset time length and the humidity change information within the preset time length to obtain a second detection result comprises the following steps:
inputting the humidity information, the temperature change information within a preset time span and the humidity change information within the preset time span into a support vector machine for classification to obtain a second detection result;
wherein the kernel function of the support vector machine is any one of the following kernel functions:
(a) Linear kernel function: k (x, x) i )=(x,x i )
(b) Polynomial kernel function: k (x, x) i )=[(x,x i )+1] d Wherein d is an order
(c) Gauss radial basis kernel function:
Figure FDA0003901966720000011
(d) Sigmoid kernel function: k (x, x) i )=tanh[s(x,x i )+c]
The step of determining the final detection result according to the first detection result and the second detection result comprises:
when the first detection result and the second detection result are consistent, the final detection result is the first detection result or the second detection result;
and when the first detection result is inconsistent with the second detection result, the final detection result is a detection result used for representing leakage of the cold air of the intelligent refrigeration equipment in the first detection result and the second detection result.
2. A cold air leakage detection method for an intelligent cold storage device as claimed in claim 1, wherein said preset humidity threshold comprises a preset upper humidity threshold;
the step that the central processing unit generates a detection result of the cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value comprises the following steps:
after receiving the trigger information, the central processing unit is determining that the humidity information continuously rises in a preset first time period, and when the humidity information is greater than a preset upper humidity threshold value, a detection result for representing leakage of the cold air of the intelligent refrigeration equipment is generated.
3. An intelligent cold air leakage detection method for a cold storage device according to claim 2, wherein the preset humidity threshold comprises a preset humidity target threshold;
the step that the central processing unit generates a detection result of the cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value comprises the following steps:
after the triggering information is received, the central processing unit generates a detection result for representing that the cold air of the intelligent refrigeration equipment leaks when the humidity information does not reach the preset humidity target threshold value in the preset second time period.
4. An intelligent cold air leakage detection method for a cold air storage device according to claim 3, further comprising:
the alarm module is receiving the testing result perhaps behind the testing result, the generation is used for the sign intelligence refrigeration plant air conditioning takes place the alarm information of revealing.
5. An intelligent cold air leakage detection method for a cold air storage device according to claim 4, further comprising:
and the central processing unit reports the detection result or the detection result to a cloud server.
6. The utility model provides an intelligence refrigeration plant air conditioning leaks detecting system which characterized in that includes:
the door opening and closing sensor is used for detecting the door opening or closing action of the intelligent refrigeration equipment and generating and sending trigger information when detecting the door opening or closing;
the central processing unit is used for acquiring humidity information, temperature change information within a preset time length and humidity change information within the preset time length in the intelligent refrigeration equipment after receiving the trigger information, and generating a first detection result of cold air leakage of the intelligent refrigeration equipment according to the humidity information and a preset humidity threshold value; classifying based on a machine learning classifier according to the humidity information, the temperature change information within the preset time length and the humidity change information within the preset time length to obtain a second detection result; determining a final detection result according to the first detection result and the second detection result;
the central processing unit is further used for inputting the humidity information, the temperature change information within a preset time length and the humidity change information within the preset time length into a support vector machine for classification to obtain a second detection result; when the first detection result and the second detection result are consistent, the final detection result is the first detection result or the second detection result; when the first detection result and the second detection result are inconsistent, the final detection result is a detection result used for representing leakage of cold air of the intelligent refrigeration equipment in the first detection result and the second detection result, wherein a kernel function of the support vector machine is any one of the following kernel functions:
(a) Linear kernel function: k (x, x) i )=(x,x i )
(b) Polynomial kernel function: k (x, x) i )=[(x,x i )+1] d Wherein d is an order
(c) Gauss radial basis kernel function:
Figure FDA0003901966720000031
(d) Sigmoid kernel function: k (x, x) i )=tanh[s(x,x i )+c]。
7. An intelligent cold air leakage detection system for a cold air storage device as claimed in claim 6, wherein said preset humidity threshold comprises a preset upper humidity threshold and a preset target humidity threshold;
the central processing unit is further used for receiving after the trigger information, confirming that the humidity information continuously rises in a preset first time period, and when the humidity information is larger than a preset humidity upper limit threshold value, generating and representing the detection result of leakage of the cold air of the intelligent refrigeration equipment, or/and, confirming that the humidity information does not reach a preset humidity target threshold value in a preset second time period, generating and representing the detection result of leakage of the cold air of the intelligent refrigeration equipment.
8. An intelligent cold air leakage detection system for a cold air storage device according to claim 7, further comprising:
and the alarm module is used for receiving the detection result or after the detection result, generating alarm information for representing leakage of the cold air of the intelligent refrigeration equipment.
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