Prognostics of Induction Motor Shaft Based on Feature Importance and Least Square Support Vector Machine Regression

Author:

Susilo Didik Djoko,Widodo Achmad,Prahasto Toni,Nizam Muhammad

Abstract

This paper aims to present a prognostic method for induction motor shafts that experience fatigue failure in the keyway area, using motor vibration signals. Preprocessing the data to eliminate noise in raw signals is done by decomposing the signal, using discrete wavelet transforms. Prognostic indicator candidates are obtained through the selection of features based on its importance, which involve the superposition of monotonicity and trendability parameters. The prognostics model is built based on the least squares support vector machine regression approach. Remaining useful life (RUL) estimates of motor shafts were performed by fitting the sum of two exponential functions to the regression results and extrapolating over time until the specified failure threshold hits. The results of the study show that the proposed method can work satisfactorily to estimate the RUL of motor shaft. The best prognostic indicator namely the RMS, can be used to predict the motor shaft RUL since 50% of the time step before the end of the motor shaft life is error bound within 20%.

Publisher

Universiti Malaysia Pahang Publishing

Subject

Mechanical Engineering,Automotive Engineering

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Automatic Evaluation of Machine Translation Based on Linguistic Knowledge;2023 IEEE 4th Annual Flagship India Council International Subsections Conference (INDISCON);2023-08-05

2. Advanced Signal Processing Methods for Condition Monitoring;Archives of Computational Methods in Engineering;2022-10-26

3. Erratum to: Prognostics of Induction Motor Shaft Based on Feature Importance and Least Square Support Vector Machine Regression;International Journal of Automotive and Mechanical Engineering;2021-06-17

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