Abstract

Targeting the problem of gearbox fault diagnosis, we proposed a novel semi-supervised approach based on collective anomaly detection. Based on the limited sample data, the principle of the approach is to detect whether a test dataset contains abnormal patterns by using data distribution as the metric. The sequence obeying unexpected distribution will be identified as collective anomaly, which may be generated by fault patterns. The approach consists of three steps. First, the mixture of multivariate Gaussian distribution is used to fit the structure of sample dataset and test dataset. Then, based on maximum likelihood estimate algorithm, we hope to search the optimal parameters which can fit the data distribution with the highest degree. Finally, the fixed point iteration algorithm is used to solve likelihood estimate functions. Experimental results demonstrate that the proposed approach can be used to find fault patterns of gearbox without the prior knowledge of their generated mechanisms.

Highlights

  • With the development of artificial intelligence technology, the research direction of fault diagnosis has changed to build an intelligent diagnosis system based on data driven and intelligent computing technologies

  • To solve the problems mentioned above, we propose a semi-supervised collective anomaly detection approach based on data distribution similarity metric and apply it in the fault diagnosis of vehicle gearbox

  • We have presented a semi-supervised vehicle gearbox fault diagnosis approach based on collective anomaly detection

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Summary

Introduction

With the development of artificial intelligence technology, the research direction of fault diagnosis has changed to build an intelligent diagnosis system based on data driven and intelligent computing technologies. Most research on fault diagnosis focus on semi-supervised anomaly detection approach [3], which detects unknown fault patterns according to a limited size of sample data. To solve the problems mentioned above, we propose a semi-supervised collective anomaly detection approach based on data distribution similarity metric and apply it in the fault diagnosis of vehicle gearbox. This algorithm consists of three parts: 1) mixture of multivariate Gaussian distributions is used to fit the distributions of sample dataset and test dataset.

Detection Framework
Collective Anomaly
Fixed Point Iteration Algorithm
Algorithm construction
Mixture of Multivariate Gaussian Distributions
Fixed point iteration algorithm
Experiment and analysis
Experimental results
Conclusions
Full Text
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