A Fault Diagnosis Method for Key Components of the CNC Machine Feed System Based on the DoubleEnsemble–LightGBM Model

Machines Pub Date : 2024-05-01 DOI:10.3390/machines12050305
Yiming Li, Yize Wang, Liuwei Lu, Lumeng Chen
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Abstract

To solve the problem of fault diagnosis for the key components of the CNC machine feed system under the condition of variable speed conditions, an intelligent fault diagnosis method based on multi-domain feature extraction and an ensemble learning model is proposed in this study. First, various monitoring signals including vibration signals, noise signals, and current signals are collected. Then, the monitoring signals are preprocessed and the time domain, frequency domain, and time–frequency domain feature indices are extracted to construct a multi-dimensional mixed-domain feature set. Finally, the feature set is entered into the constructed DoubleEnsemble–LightGBM model to realize the fault diagnosis of the key components of the feed system. The experimental results show that the model can achieve good diagnosis results under different working conditions for both the widely used dataset and the feed system test bench dataset, and the average overall accuracy is 91.07% and 98.06%, respectively. Compared with XGBoost and other advanced ensemble learning models, this method demonstrates better accuracy. Therefore, the proposed method provides technical support for the stable operation and intelligence of CNC machines.
基于双组合-光 GBM 模型的数控机床进给系统关键部件故障诊断方法
为解决变速条件下数控机床进给系统关键部件的故障诊断问题,本研究提出了一种基于多域特征提取和集合学习模型的智能故障诊断方法。首先,采集各种监测信号,包括振动信号、噪声信号和电流信号。然后,对监测信号进行预处理,提取时域、频域和时频域特征指数,构建多维混合域特征集。最后,将特征集输入所构建的 DoubleEnsemble-LightGBM 模型,实现对馈电系统关键部件的故障诊断。实验结果表明,该模型在不同工况下对广泛使用的数据集和饲料系统试验台数据集都能取得良好的诊断效果,平均总体准确率分别为 91.07% 和 98.06%。与 XGBoost 和其他先进的集合学习模型相比,该方法的准确率更高。因此,所提出的方法为数控机床的稳定运行和智能化提供了技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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