An Intelligent Fault Detection Method of Industrial Gearboxes With Robustness One-Class Support Matrix Machine Toward Multisource Nonideal Data | IEEE Journals & Magazine | IEEE Xplore

An Intelligent Fault Detection Method of Industrial Gearboxes With Robustness One-Class Support Matrix Machine Toward Multisource Nonideal Data


Abstract:

Various kinds of sensing data can be acquired for smart fault detection. Each signal source has spatial attributes and strong correlations exist between different data so...Show More

Abstract:

Various kinds of sensing data can be acquired for smart fault detection. Each signal source has spatial attributes and strong correlations exist between different data sources. However, most of the existing fault detection models are established in the vector domain, which would destroy the structure information embedded within multisource data. Besides, the nonideal data, especially strong-noise data and mislabeled data, will seriously affect the fault detection performance. Therefore, a matrix-form one-class model called robustness one-class support matrix machine (ROCSMM) is proposed for industrial gearbox fault detection under multisource nonideal data. ROCSMM extends the traditional one-class support vector machine to the matrix domain, which can retain the topological structure information of multisource data while improving the fault detection performance. Besides, an adaptive weight generation strategy is designed for ROCSMM according to the prior distribution of matrix samples. This strategy can eliminate the negative impact of nonideal data on ROCSMM to the greatest extent and improve the model's robustness. The experimental results indicate that the proposed model is superior to other cutting-edge models in the fault detection of industrial gearboxes.
Published in: IEEE/ASME Transactions on Mechatronics ( Volume: 29, Issue: 1, February 2024)
Page(s): 388 - 399
Date of Publication: 07 June 2023

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I. Introduction

As Critical transmission units, gearboxes are widely applied to versatile industrial facilities, such as aeroengines, wind turbines, and construction machinery. Gearbox failure is one of the leading causes of unexpected shutdown and safety accidents in industrial production [1], [2]. Therefore, timely and reliable detection of gearbox faults is of great significance to ensure the reliability and safety of the whole mechanical equipment [3], [4], [41].

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References

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