基于小波变换的数控机床故障检测方法

Junying Liu
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引用次数: 0

摘要

针对传统数控机床故障检测方法检测精度低、检测时间长等问题,提出了一种基于小波变换的数控机床故障检测新方法。为了提高数控机床运行故障检测的有效性,采用小波变换方法提取数控机床运行故障信号的特征。根据特征提取结果,利用连续小波变换的卷积计算,根据故障信号的尺度结果完成数控机床的故障检测。实验结果表明,与传统的故障检测方法相比,该方法的检测精度和效率显著提高:最高检测精度为97%,最低检测时间仅为1.1s。
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Fault Detection Method of CNC Machine Tool Based on Wavelet Transform
In order to overcome the problems of low detection accuracy and long detection time of traditional fault detection methods for CNC machine tools, a new fault detection method for CNC machine tools based on wavelet transform is proposed in this paper. In order to improve the effectiveness of running fault detection of CNC machine tools, a wavelet transform method is used to extract the features of the running fault signals of CNC machine tools. According to the feature extraction results, the convolution calculation of the continuous wavelet transform is used to complete the fault detection of CNC machine tool according to the scale result of fault signal. The experimental results show that, compared with traditional fault detection methods, the detection accuracy and efficiency of this method is significantly better: the highest detection accuracy is 97%, and the lowest detection time is only 1.1s.
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