Health Monitoring of Milling Cutters with Nonlinear Entropy and Self-organizing Mapping

Jing Li, Bin Zhang, Haiqing Li
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引用次数: 0

Abstract

The cutter is one critical component in a milling tool, and its operational condition directly affects the part machining quality and production efficiency. In this paper, a new method for milling cutters health monitoring is proposed. The proposed method extracts nonlinear entropy features with adaptive decomposition of the original multi-sensor monitoring signals. Then the extracted features are selected and adaptively fused into a virtual health indicator (HI) by self-organizing mapping (SOM) network to characterize the operational health condition of the milling cutter. High speed milling data from 2010 prognostics and health management (PHM) challenge is studied to demonstrate performance of the presented method. Experimental results show that the approach can effectively integrate the online multi-sensor signals to reliably describe health degradation of the milling cutter.
基于非线性熵和自组织映射的铣刀健康监测
刀具是铣刀的关键部件,其工作状态直接影响到零件的加工质量和生产效率。提出了一种铣刀健康监测的新方法。该方法对原始多传感器监测信号进行自适应分解,提取非线性熵特征。然后通过自组织映射(SOM)网络选择提取的特征并自适应融合到虚拟健康指标(HI)中,以表征铣刀的运行健康状况。研究了2010年预测和健康管理(PHM)挑战中的高速铣削数据,以验证该方法的性能。实验结果表明,该方法能有效地整合在线多传感器信号,可靠地描述铣刀健康退化。
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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