摘要
针对微小深孔钻削刀具磨损状态检测的工程需求,提出了基于钻削声信号的麻花钻头磨损状态识别方法。根据不同磨损程度的麻花钻在钻削过程中的声信号,使用经验模态分解(empirical mode decomposition,EMD)将声信号分解成若干个固有模态函数(intrinsic mode functions,IMFs),通过时频联合分析探索刀具磨损与声信号特征之间的关联规律;再使用麻雀搜索算法(sparrow search algorithm,SSA)优化支持向量机(support vector machine,SVM)的参数,并利用SVM实现基于声信号特征的刀具磨损状态识别。实验结果表明,微小深孔钻头磨损程度与钻削声信号特征之间存在非线性耦合关系,声信号高频特征对钻头磨损程度的变化非常敏感;采用经过SSA优化后的SVM算法,基于优选的IMF特征能够准确识别钻削刀具磨损状态,识别准确率可达98.246%。
Aiming at the engineering requirements of wear state detection of small deep hole drilling tools,a wear state recognition method of twist drill head based on drilling acoustic signal was proposed.According to the acoustic signals of twist drills with different wear degrees during drilling,the acoustic signals were decomposed into several intrinsic mode functions(IMFs)by empirical mode decomposition(EMD),and the correlation between tool wear and acoustic signal characteristics was explored by time-frequency joint analysis.Then the parameters of support vector machine(SVM)were optimized by sparrow search algorithm(SSA),and the tool wear state recognition based on acoustic signal features was realized by SVM.The experimental results show that there is a nonlinear coupling relationship between the wear degree of micro-deep hole drill and the characteristics of drilling acoustic signal,and the high-frequency characteristics of acoustic signal are very sensitive to the change of drill wear degree.The SVM algorithm optimized by SSA can accurately identify the wear state of drilling tool based on the optimized IMF features,and the recognition accuracy can reach 98.246%.
作者
胡鸿志
覃畅
管芳
张洪波
安晟佳
HU Hong-zhi;QIN Chang;GUAN Fang;ZHANG Hong-bo;AN Sheng-jia(School of Electrical Engineering and Automatic, Guilin University of Electronic Technology, Guilin 541004, China;Key Laboratory of Guangxi Automatic Detection and Instrumentation, Guilin 541004, China)
出处
《科学技术与工程》
北大核心
2021年第25期10755-10761,共7页
Science Technology and Engineering
基金
广西自动检测技术与仪器重点实验室主任基金(YQ17116)
广西自然科学基金(2018GXNSFAA294071)。
关键词
刀具磨损识别
声信号
经验模态分解
麻雀搜索算法
支持向量机
tool wear recognition
acoustic signal
empirical mode decomposition
sparrow search algorithm
support vector machine