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Artificial Neural Network Model for Tool Condition Monitoring in Stone Drilling

机译:石材钻探工具状况监测的人工神经网络模型

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摘要

This paper explores the possibility of tool wear classification in stone drilling. Wear model is based on Radial Basis Function Neural Network which links tool wear features extracted from motor drive current signals and acoustic emission signals with two wear levels – sharp and worn drill. Signals were measured during stone drilling under different cutting conditions, and then filtered before tool wear features extraction. Features were obtained from time and frequency domain. They have been analyzed individually and in combinations. The results indicate tool wear monitoring capacity of the proposed model in stone drilling, and its potential for simple and cost-effective integration with CNC machine tools.
机译:本文探讨了石头钻孔工具磨损分类的可能性。磨损模型基于径向基函数神经网络,该神经网络连接了从电动机驱动电流信号和两个磨损水平的声发射信号提取的工具磨损功能 - 尖锐且磨损的钻头。在不同切割条件下的石头钻井期间测量信号,然后在刀具磨损特征提取之前过滤。从时间和频域获得功能。他们已经单独分析和组合。结果表明,石材钻探所提出的模型的工具磨损监测能力,以及与CNC机床的简单且经济高效集成的潜力。

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