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A Lithium Battery Fault Data Screening Method Constrained by Normalized Mutual Information Criterion

A battery fault and fault data technology, applied in the direction of measuring electricity, measuring electrical variables, design optimization/simulation, etc., can solve the problems of incomplete operating data, economic loss, lack of physical meaning, etc., and achieve fast calculation speed and high quality Data protection, the effect of improving the screening speed

Active Publication Date: 2021-07-23
CHONGQING UNIV OF POSTS & TELECOMM
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  • Claims
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AI Technical Summary

Problems solved by technology

However, the deep learning method relies on a large amount of data, and it is difficult to collect lithium battery failure data. The laboratory data cannot fully reflect the actual complex and uncertain working conditions of lithium batteries, and the operating data of the real traffic environment is incomplete and missing.
In this regard, perceptual generation can be used to increase the fault data of model training, but due to the uncertainty brought by random variables introduced in the generation process, the lithium battery fault data generated by perceptual generation may not be true and effective, lacking physical meaning, thus affecting the performance of the fault diagnosis model , causing unnecessary economic losses
In practice, low-efficiency manual methods are often used to screen out high-value data. To solve this problem, there is an urgent need for a method that can quickly and efficiently screen lithium battery failure data

Method used

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  • A Lithium Battery Fault Data Screening Method Constrained by Normalized Mutual Information Criterion
  • A Lithium Battery Fault Data Screening Method Constrained by Normalized Mutual Information Criterion
  • A Lithium Battery Fault Data Screening Method Constrained by Normalized Mutual Information Criterion

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Embodiment Construction

[0033] Embodiments of the present invention are described below through specific examples, and those skilled in the art can easily understand other advantages and effects of the present invention from the content disclosed in this specification. The present invention can also be implemented or applied through other different specific implementation modes, and various modifications or changes can be made to the details in this specification based on different viewpoints and applications without departing from the spirit of the present invention. It should be noted that the diagrams provided in the following embodiments are only schematically illustrating the basic concept of the present invention, and the following embodiments and the features in the embodiments can be combined with each other in the case of no conflict.

[0034] see Figure 1 ~ Figure 2 , figure 1 It is a flow chart of the overall structure of the lithium battery fault data screening method constrained by the...

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Abstract

The invention relates to a lithium battery fault data screening method constrained by a normalized mutual information criterion, belonging to the field of lithium battery fault diagnosis. The method includes the following steps: S1: collecting data: collecting real lithium battery fault data through a sensor, and generating candidate lithium battery fault data using a perception generation network; S2: extracting features of the lithium battery fault data by using fractional Fourier transform; S3: Using normalized mutual information as the screening measure of lithium battery fault data, calculate the normalized mutual information between the real lithium battery fault feature matrix A and the candidate lithium battery fault feature matrix B; S4: Use the fault diagnosis experiment to select the screening threshold. The invention can make the filtered lithium battery fault data real and effective, and can also improve the screening speed, thereby providing high-quality data guarantee for the deep learning method of fault diagnosis.

Description

technical field [0001] The invention belongs to the field of lithium battery fault diagnosis, and relates to deep learning, in particular to screening lithium battery fault data generated by perception by adopting fractional Fourier transform and normalized fault mutual information methods. Background technique [0002] At present, the fault diagnosis of lithium batteries through the combination of data-driven and deep learning is an effective method for lithium battery safety status monitoring. However, the deep learning method relies on a large amount of data, and it is difficult to collect lithium battery failure data. The laboratory data cannot fully reflect the actual complex and uncertain working conditions of the lithium battery, and the operating data of the real traffic environment is incomplete and missing. In this regard, perceptual generation can be used to increase the fault data of model training, but due to the uncertainty brought by random variables introduce...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01R31/36G06F30/27G06K9/62
CPCG01R31/36G06F18/214
Inventor 李鹏华邵子璇熊庆宇丁宝苍侯杰朱智勤张子健胡和煦
Owner CHONGQING UNIV OF POSTS & TELECOMM
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