Grinding wheel wear monitoring based on wavelet analysis and support vector machine |
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Authors: | Zhensheng Yang Zhonghua Yu |
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Affiliation: | 1. Department of Mechanical Engineering, Zhejiang University, Hangzhou, 310027, People’s Republic of China
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Abstract: | 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. |
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