Robust algorithm to learn rules for classification: A fault diagnosis case study

IF 1.2 Q3 ENGINEERING, MECHANICAL FME Transactions Pub Date : 2023-01-01 DOI:10.5937/fme2303338b
A. Balaji, V. Sugumaran
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Abstract

Machine learning algorithms are used for building classifier models. The rule-based decision tree classifiers are popular ones. However, the performance of the decision tree classifier varies with hyperparameter tuning. The optimum hyperparameter values are obtained using either optimization algorithms or trial and error methods. The present study utilizes the MODLEM algorithm to overcome the drawbacks accounted for by decision tree algorithms. Eliminating hyperparameter tuning and producing results closer to standard decision tree algorithms makes MODLEM a robust classification algorithm. The robustness of the MODLEM algorithm is illustrated with the fault diagnosis case study. The case study is faults diagnosis of an automobile suspension system using vibration signals acquired at various fault conditions.
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鲁棒分类规则学习算法:故障诊断案例研究
机器学习算法用于构建分类器模型。基于规则的决策树分类器是比较流行的分类器。然而,决策树分类器的性能随超参数调优而变化。采用优化算法或试错法获得最优超参数值。本研究利用MODLEM算法克服了决策树算法的缺点。消除了超参数调优,产生的结果更接近标准决策树算法,使MODLEM成为一种鲁棒的分类算法。通过故障诊断实例分析,说明了MODLEM算法的鲁棒性。以某汽车悬架系统为例,利用在不同故障条件下采集的振动信号进行故障诊断。
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来源期刊
FME Transactions
FME Transactions ENGINEERING, MECHANICAL-
CiteScore
3.60
自引率
31.20%
发文量
24
审稿时长
12 weeks
期刊最新文献
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