机械故障诊断的集成学习方法

Joyal P Jose, T. Ananthan, N. Prakash
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引用次数: 0

摘要

最近,工业越来越关注机器故障诊断以避免停机。感应电动机(IM)广泛应用于制造和加工部门;然而,它们容易受到各种故障的影响。轴承故障是影响生产过程的最常见的IM故障之一。提出了一种基于振动信号分析的IM轴承故障检测集成模型。决策树(DT)、随机森林(RF)、支持向量机(SVM)、k近邻(KNN)和XGBoost (XGB)被认为是基本模型。使用数据记录仪从健康和故障的IMs中获取实时振动数据。利用具有时域和频域特征的基本模型进行故障检测。使用机器学习基础模型和投票分类器开发的集成模型提高了故障检测的准确性。KNN+XGB+SVM模型的准确率为99.2%,优于其他具有频域特征的集成模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Learning Methods for Machine Fault Diagnosis
Recently, industries have been focusing more on machine fault diagnostics to avoid downtime. Induction motors (IM) are widely employed in the manufacturing and process sectors; however, they are susceptible to various faults. Bearing failure is one of the most prevalent IM faults that affect the production process. This paper proposes an Ensemble model for detecting bearing faults in IM using vibration signal analysis. Decision Tree (DT), Random Forests (RF), Support Vector Machine (SVM), K-nearest neighbors (KNN), and XGBoost (XGB) are considered as base models. The real-time vibration data is acquired using the data logger from healthy and faulty IMs. Fault detection is performed using the base models with time and frequency domain features. The ensemble models developed using machine learning base models and voting classifier improved fault detection accuracy. The KNN+XGB+SVM model provided an accuracy of 99.2%, performing better than other ensemble models with frequency-domain features.
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