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Visual image-based permanent magnet driving motor demagnetization fault diagnosis model construction method and fault diagnosis method and system

A fault diagnosis model and technology for fault diagnosis, applied in motor generator testing, computer parts, character and pattern recognition, etc., can solve problems such as inability to apply image occlusion, rotation, complex signal preprocessing, and low feature efficiency. Achieve the effect of effective fault high-dimensional features, avoid signal processing, and simple structure

Pending Publication Date: 2022-04-05
HUNAN UNIV
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0006] 1) Traditional feature extraction based on one-dimensional time domain or frequency domain signals requires complex signal preprocessing and strong professional requirements
[0007] 2) Global feature extraction cannot be applied to image occlusion, rotation, etc., and local features cannot take into account the low efficiency of features caused by comprehensive features

Method used

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  • Visual image-based permanent magnet driving motor demagnetization fault diagnosis model construction method and fault diagnosis method and system
  • Visual image-based permanent magnet driving motor demagnetization fault diagnosis model construction method and fault diagnosis method and system
  • Visual image-based permanent magnet driving motor demagnetization fault diagnosis model construction method and fault diagnosis method and system

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Embodiment 1

[0070] like figure 2 As shown, this embodiment is applied to a visual image-based permanent magnet drive motor demagnetization fault diagnosis method and system for electric vehicles, including signal acquisition, one-dimensional signal conversion to two-dimensional images, auto-encoder image feature extraction, and softmax classifier. three parts. Among them, the present embodiment chooses to build a softmax classifier. It should be understood that the softmax classifier is the best example of the present invention, but the present invention is not limited to this. On the basis of not departing from the concept of the present invention, selecting other classification network models is also feasible.

[0071] A method for diagnosing demagnetization faults of permanent magnet drive motors based on visual images provided by this embodiment includes the following steps:

[0072] 1) Collect the one-dimensional magnetic flux leakage signal of the motor as the original signal for...

Embodiment 2

[0104] This embodiment provides a system based on the above-mentioned fault diagnosis model construction method or fault diagnosis method, which includes:

[0105] The signal acquisition module is used to collect / acquire the magnetic flux leakage signal of the faulty motor under various faults. The magnetic flux leakage signal is a one-dimensional time domain signal. The signal acquisition module can be implemented by a software module, that is, used to acquire hardware The collected magnetic flux leakage signal can also be implemented in hardware, such as a magnetic flux sensor.

[0106] an image conversion module for converting the magnetic flux leakage signal into a two-dimensional Fourier spectrogram;

[0107] a feature extraction module for extracting global features and local features of the two-dimensional Fourier spectrogram;

[0108] The feature fusion module is used for feature fusion of global features and local features;

[0109] The fault diagnosis classifier bu...

Embodiment 3

[0113] This embodiment provides an electronic terminal including a processor and a memory connected to each other, the processor is programmed or configured to execute the method for constructing a fault diagnosis model for demagnetization of a permanent magnet synchronous motor or the demagnetization of a permanent magnet synchronous motor Troubleshooting method steps.

[0114] Wherein, when executing the method for constructing the demagnetization fault diagnosis model of the permanent magnet synchronous motor, specifically execute:

[0115] Step 1: collect the magnetic flux leakage signal of the faulty motor under various faults, and the magnetic flux leakage signal is a one-dimensional time domain signal;

[0116] Step 2: converting the magnetic flux leakage signal into a two-dimensional Fourier spectrogram;

[0117] Step 3: extract the global features and local features of the two-dimensional Fourier spectrogram, and perform feature fusion;

[0118] Step 4: The fused fe...

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Abstract

The invention discloses a visual image-based permanent magnet driving motor demagnetization fault diagnosis model construction method and a fault diagnosis method and system, and the method comprises the steps: enabling a motor surface magnetic leakage signal to serve as an original signal for fault diagnosis, converting the original signal into a two-dimensional Fourier spectrogram, and obtaining a two-dimensional Fourier spectrogram; and global features and local features are extracted and fused. And finally, constructing a classifier by using the fused features, and particularly, carrying out fault diagnosis by using a preferable softmax classifier. According to the invention, two-dimensional Fourier transform is adopted to convert a one-dimensional time domain signal into a spectrogram, and effective fault features hidden in the time domain signal are displayed; the visual features of the image are extracted through an auto-encoder method, the effectiveness of the features is improved, the softmax classifier which is simple in structure and small in calculation amount is adopted for fault diagnosis, and the problem of demagnetization fault diagnosis of the permanent magnet driving motor for the electric vehicle is effectively solved.

Description

technical field [0001] The invention relates to a motor demagnetization fault diagnosis technology, in particular to a visual image-based permanent magnet drive motor demagnetization fault diagnosis model construction method and a fault diagnosis method and system, which can be especially applied to electric vehicles. Background technique [0002] my country's new energy vehicle industry has gone through 20 years of development. my country has become the world's largest producer and consumer of new energy vehicles. Among them, the scale of pure electric vehicles accounts for more than 50% of the world, ranking first in the world. International advanced. With the continuous improvement of the intelligence and integration of new energy vehicles, their internal structures are becoming increasingly complex. In the past two years, the safety accidents of new energy vehicles have been increasing, and the industry has gradually changed from "mileage anxiety" to "safety anxiety". Sa...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62G01R31/34
Inventor 张晓飞谢金平宋殿义黄凤琴龙卓周俊鸿彭鑫
Owner HUNAN UNIV
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