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Wear Condition Recognition of Lathe Tool Based on Singular Value Decomposition and Grey Target Decision Methods |
ZHU Jian-min,ZHAO Quan-long,HE Dan-dan |
University of Shanghai for Science and Technology, Shanghai 200093, China |
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Abstract In allusion to the problems that random noise interferes the time domain vibration signal extraction, and limited lathe tool wear condition recognition accuracy. This study proposed a time domain characteristics extraction method of tool wear signals which firstly extracts the time domain characteristics of the lathe tool vibration signal with wavelet packet transform and correlation coefficient methods, then denoises the time domain characteristics with singular value decomposition(SVD) method. The most relevant wear characteristics of lathe tool weariness are selected as reference characteristic sequence to calculate the similarity association degrees with other wear characteristic sequences. Then the weight of each time domain wear characteristics are gain through normalization process of similarity association degrees, and the comprehensive measurement of time domain characteristic of each wear signal are calculated with grey target decision method in order to determine the tool wear condition of the lathe tool. Experiment results indicate that the proposed method can filter the random noise effectively.
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Received: 20 July 2016
Published: 28 February 2017
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