Mechanical critical component virtual degradation index construction method based on distance metric learning

A technology of distance measurement and construction method, applied in neural learning methods, testing of mechanical components, testing of machine/structural components, etc., can solve problems such as expression, complex and changeable working environment, and reduced accuracy of key mechanical components, and achieve The effect of improving accuracy

Active Publication Date: 2018-11-06
XI AN JIAOTONG UNIV
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AI Technical Summary

Problems solved by technology

Excellent degradation indicators need to have good correlation, monotonicity and predictability, but affected by the quality of the original signal and signal processing methods, the physical degradation indicators directly extracted from the monitoring signal are often only valid for a certain stage of the degradation process. More sensitive, difficult to maintain a good trend throughout the degradation process
At the same time, the working environment of mechanical equipment is complex and changeable, and the physical degradation index is greatly affected by the working conditions, which is not conducive to the expression of degradation information of key mechanical components
The above shortcomings will lead to a reduction in the accuracy of early health monitoring and remaining life of key mechanical components

Method used

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  • Mechanical critical component virtual degradation index construction method based on distance metric learning
  • Mechanical critical component virtual degradation index construction method based on distance metric learning
  • Mechanical critical component virtual degradation index construction method based on distance metric learning

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Embodiment Construction

[0039] The present invention will be further elaborated below in conjunction with the accompanying drawings and embodiments.

[0040] refer to figure 1 , a method for constructing virtual degradation indicators of key mechanical components based on distance metric learning, including the following steps:

[0041] 1) Perform Fourier transform sequentially on the vibration signals collected during the life cycle of key mechanical components to obtain the frequency spectrum and power spectrum of the vibration signal. The degradation process of components is divided into three stages: normal operation, fault development and severe degradation;

[0042] 2) Extract the physical degradation indicators of the vibration signal from the time domain, frequency domain, and time-frequency domain respectively to form a set of candidate physical degradation indicators. Specific steps are as follows:

[0043] 2.1) Extract the time-domain degradation indicators of the vibration signal, whic...

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Abstract

The invention provides a mechanical critical component virtual degradation index construction method based on distance metric learning. First, time domain, frequency domain and time-frequency domain characteristics of a vibration signal of a mechanical critical component are extracted, dividing a degradation state of the mechanical critical component according to a frequency spectrum and a power spectrum, next, the relevance, monotonicity and predictability of each index are evaluated comprehensively, indices to which performance correspond is superior to root-mean-square values are selected to form feature vectors of the mechanical critical component are selected and distance metric learning is performed, then the feature vectors in a normal state are utilized to train an optimized self-organizing mapping neural network, inputting newly acquired vibration signal data, and calculating the distance between the eigenvectors and weight vectors of corresponding activation nodes, thereby establishing virtual degradation indices with enhanced minimum quantization error. The mechanical critical component virtual degradation index construction method based on distance metric learning synthesizes various physical degradation indices of multiple domains, can fully mine the degradation information of a critical component of mechanical equipment, and is beneficial to improving the accuracyof residual life prediction.

Description

technical field [0001] The invention belongs to the technical field of remaining life prediction and health management of mechanical equipment, and in particular relates to a method for constructing virtual degradation indicators of key mechanical components based on distance metric learning. Background technique [0002] Mechanical equipment often works in a complex and changeable environment, and its key components fail frequently. With the development of modern technology, the coupling relationship between key components of mechanical equipment is getting closer and closer. Once a component fails, it will cause the entire The failure or even paralysis of the mechanical system will cause serious economic losses and even casualties. Therefore, it is imminent to predict the remaining life of key mechanical components so that they can be maintained before failure and ensure the safe service of mechanical equipment. [0003] The remaining life prediction of key components of ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01M13/00G06N3/08
CPCG01M13/00G06N3/08
Inventor 雷亚国韩天宇牛善涛李乃鹏邢赛博闫涛
Owner XI AN JIAOTONG UNIV
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