路晨辉,王建华,刘海涛.基于声发射和支持向量机的插齿刀磨削砂轮状态监测*[J].,2025,44(2):505-512 |
基于声发射和支持向量机的插齿刀磨削砂轮状态监测* |
Condition monitoring of grinding wheels for gear shaping knives based on acoustic emission and support vector machines |
投稿时间:2023-10-17 修订日期:2025-03-01 |
中文摘要: |
磨削加工对于现代智能制造业起着至关重要的作用,砂轮的磨损直接影响到被加工工件表面质量,而砂轮磨损主要依靠经验判断很可能会导致效率低下和成本昂贵的问题。本文提出一种基于声发射和支持向量机的插刀磨砂轮钝化状态监测方法,首先分析了不同砂轮磨损状态下的声发射信号,AE信号时域RMS曲线和砂轮钝化能量的理论曲线划分砂轮钝化状态节点,对磨削插齿刀过程产生的时变非稳定AE信号进行滤波去噪,避免实验条件对AE信号的影响。利用小波包分解提取AE信号各频段有效特征,并对有效特征的选择进行了对比分析,最终选择对多频段小波包能量系数和时域特征进行拼接特征融合,建立在小样本性能较优的多分类模型SVM。最终,砂轮钝化状态识别准确率可达91%,能够满足实际加工需求。 |
英文摘要: |
Grinding process plays a crucial role for modern intelligent manufacturing industry, and the wear of grinding wheel directly affects the surface quality of the processed workpiece, while the grinding wheel wear mainly relies on empirical judgment is likely to lead to inefficiency and costly problems. In this paper, we propose a method for monitoring the passivation state of grinding wheels with inserted cutter based on acoustic emission and support vector machine, firstly, we analyze the acoustic emission signals under different grinding wheel wear states, and the theoretical curves of the time-domain RMS curves of the AE signals and the passivation energy of the wheels are divided into nodes of the passivation state of the wheels, and we perform the filtering and denoising of time-varying and non-stationary AE signals generated by grinding inserted cutter to avoid the impacts of the experimental conditions on the AE signals. The wavelet packet decomposition is used to extract the effective features of each frequency band of the AE signal, and the selection of effective features is compared and analyzed, and the final choice of the multi-band wavelet packet energy coefficients and time-domain features are spliced feature fusion, and the multi-classification model SVM is established with better performance in the small samples. Eventually, the accuracy of grinding wheel passivation state recognition is up to 91%, and it can meet the needs of actual processing. |
DOI:10.11684/j.issn.1000-310X.2025.02.026 |
中文关键词: 声发射 过程监测 支持向量机 砂轮状态监测 |
英文关键词: acoustic emission process monitoring support vector machine grinding wheel condition monitoring |
基金项目:陕西省智能制造科技重大专项-高精度复杂刀具复合加工装备研制及应用(2019zdzx01-02-02) |
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