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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Grinding wheel wear monitoring based on wavelet analysis and support vector machine
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Grinding wheel wear monitoring based on wavelet analysis and support vector machine

机译:基于小波分析和支持向量机的砂轮磨损监测

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摘要

A novel grinding wheel wear monitoring system based on discrete wavelet decomposition and support vector machine is proposed. The grinding signals are collected by an acoustic emission (AE) sensor. A preprocessing method is presented to identify the grinding period signals from raw AE signals. Root mean square and variance of each decomposition level are designated as the feature vector using discrete wavelet decomposition. Various grinding experiments were performed on a surface grinder to validate the proposed classification system. The results indicate that the proposed monitoring system could achieve a classification accuracy of 99.39% with a cut depth of 10 μm, and 100% with a cut depth of 20 μm. Finally, several factors that may affect the classification results were discussed as well.
机译:提出了一种基于离散小波分解和支持向量机的砂轮磨损监测系统。磨削信号由声发射(AE)传感器收集。提出了一种从原始AE信号中识别磨削周期信号的预处理方法。使用离散小波分解将每个分解级别的均方根和方差指定为特征向量。在平面磨床上进行了各种磨削实验,以验证提出的分类系统。结果表明,所提出的监测系统在切割深度为10μm时可以达到99.39%的分类精度,在切割深度为20μm时可以达到100%的分类精度。最后,还讨论了可能影响分类结果的几个因素。

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