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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Application of audible sound signals for tool wear monitoring using machine learning techniques in end milling
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Application of audible sound signals for tool wear monitoring using machine learning techniques in end milling

机译:在铣床中使用机器学习技术在刀具磨损监测中的应用

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摘要

Due to the demands of Computer-Integrated Manufacturing (CIM), the Tool Condition Monitoring (TCM) system, as a major component of CIM, is essential to improve the production quality, optimize the labor and maintenance costs, and minimize the manufacturing loses with the increase in productivity. To look for a reliable, efficient, and cost-effective solution, various monitoring systems employing different types of sensing techniques have been developed to detect the tool conditions as well as to monitor the abnormal cutting states. This paper explores the use of audible sound signals as sensing approach to detect the cutting tool wear and failure during end milling operation by using the Support Vector Machine (SVM) learning model as a decision-making algorithm. In this study, sound signals collected during the machining process are analyzed through frequency domain to extract signal features that correlate actual cutting phenomenon. The SVM method seeks to provide a linguistic model for tool wear estimation from the knowledge embedded in this machine learning approach. The performance evaluation results of the proposed algorithm have shown accurate predictions in detecting tool wear under various cutting conditions with rapid response rate, which provides the good solution for in-process TCM. In addition, the proposed monitoring system trained with sufficient signals collected from different positions has been proved to be position independent to monitor the tool wear conditions.
机译:由于计算机集成制造(CIM)的要求,工具状况监测(TCM)系统作为CIM的主要组成部分,对于提高生产质量至关重要,优化劳动力和维护成本,并尽量减少制造失败提高生产率。为了寻找可靠,高效,经济高效的解决方案,已经开发出采用不同类型的传感技术的各种监测系统来检测工具条件以及监测异常切割状态。本文探讨了使用声音信号作为传感方法,通过使用支持向量机(SVM)学习模型作为决策算法,通过支持向量机(SVM)学习模型来检测切削刀具磨损和故障。在该研究中,通过频域分析在加工过程中收集的声音信号,以提取与实际切割现象相关的信号特征。 SVM方法旨在提供从本机学习方法中嵌入的知识的刀具磨损估算的语言模型。所提出的算法的性能评估结果表明,在具有快速响应速率的各种切割条件下检测工具磨损的准确预测,这为过程中的良好解决方案提供了良好的解决方案。此外,已证明从不同位置收集的充足信号培训的建议监测系统是独立于监测工具磨损条件的位置。

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