传感器融合与多项式分类器在刀具磨损监测中的应用

I. Deiab, K. Assaleh, F. Hammad
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引用次数: 1

摘要

本文提出了一种利用统计信号分析、模式识别和传感器融合来建模和预测刀具磨损的新方法。数据来自两个来源:声发射传感器(AE)和工具柱测功仪。这里使用的模式识别基于两种方法:人工神经网络(ANN)和多项式分类器(PC)。本文对神经网络(ANN)和多项式分类器(PC)预测刀具磨损进行了比较。对于所提出的案例研究;与人工神经网络相比,PC被证明在不影响预测精度的情况下显著减少了所需的训练时间。预测结果与实测的刀具磨损情况吻合良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of sensor fusion and polynomial classifiers to tool wear monitoring
This paper presents a novel approach to model and predict cutting tool wear using statistical signal analysis, pattern recognition and sensor fusion. The data are acquired from two sources: an acoustic emission sensor (AE) and a tool post dynamometer. The pattern recognition used here is based on two methods: artificial neural networks (ANN), and polynomial classifiers (PC). In this work we compare between cutting tool wear predicted by neural network (ANN) and polynomial classifiers (PC). For the case study presented; PC proved to significantly reduce the required training time compared to that required by an ANN without compromising the prediction accuracy. The predicted results compared well to the measured tool wear.
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