IDENTIFICATION OF END-MILLING CHATTER BASED ON COMPREHENSIVE FEATURE FUSION

Dialoke Ejiofor Matthew, Hongrui Cao, Jianghai Shi
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Abstract

The main barrier impeding the advancement of high-speed milling is chatter, which has a detrimental effect on the dimensional accuracy and quality of the finished workpiece. A reliable and precise chatter identification method is essential to improving the quality of machining. This paper presents a novel method for chatter identification using a comprehensive feature fusion of the Short-Time Fourier Transform (STFT) and the Fourier Synchrosqueezing Transform (FSST). The Wavelet Packet Transform (WPT) was used to pre-process the collected vibration and force signals. Wavelet packets with rich chatter information were then selected and reconstructed for further analysis. To reduce the effects of the rotating frequency and generate a hybrid spectrum with high resolution, a Gabor time-frequency filter is employed. As chatter indicators, standard deviation, skewness, and root mean square are computed. The proposed method's result shows superiority over conventional STFT and FSST across vibration and force signals, and we concluded that it is suitable and reliable for identifying chatter and useful for machining monitoring.
基于综合特征融合的立铣刀颤振识别
颤振是阻碍高速铣削技术发展的主要障碍,会对工件成品的尺寸精度和质量产生不利影响。可靠而精确的颤振识别方法对提高加工质量至关重要。本文提出了一种利用短时傅里叶变换(STFT)和傅里叶同步变换(FSST)的综合特征融合进行颤振识别的新方法。小波包变换 (WPT) 用于预处理收集到的振动和力信号。然后选择并重建具有丰富颤振信息的小波包,以便进一步分析。为减少旋转频率的影响并生成具有高分辨率的混合频谱,采用了 Gabor 时频滤波器。作为颤振指标,计算了标准偏差、偏斜度和均方根。在振动和力信号方面,拟议方法的结果显示优于传统的 STFT 和 FSST,我们得出结论,该方法适用于识别颤振且可靠,可用于加工监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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