计量学报
計量學報
계량학보
ACTA METROLOGICA SINICA
2015年
3期
268-272
,共5页
朱坚民%战汉%张统超%王健
硃堅民%戰漢%張統超%王健
주견민%전한%장통초%왕건
计量学%刀具磨损状态判别%声发射信号%自适应特征获取%灰色关联分析%小波包变换
計量學%刀具磨損狀態判彆%聲髮射信號%自適應特徵穫取%灰色關聯分析%小波包變換
계량학%도구마손상태판별%성발사신호%자괄응특정획취%회색관련분석%소파포변환
Metrology%Tool wear state recognition%Acoustic emission signal%Adaptive feature acquiring%Grey relational analysis%Wavelet packet transformation
针对刀具磨损状态判别方法在变化的加工条件下判别正确率低的问题,通过实时采集刀具的切削声发射信号,提出了一种自适应获取声发射信号中刀具磨损状态特征的方法和基于磨损状态特征数据序列之间灰色关联分析结果的刀具磨损状态判别方法。以4把 WNMG080408-TM T9125型号车刀在 ZCK20数控车床上进行了车刀的切削磨损实验和磨损状态判别,实验结果表明:该方法能够自适应获取车刀的磨损状态特征,车刀的磨损状态判别结果与实际相符,具有较高的判别正确率。
針對刀具磨損狀態判彆方法在變化的加工條件下判彆正確率低的問題,通過實時採集刀具的切削聲髮射信號,提齣瞭一種自適應穫取聲髮射信號中刀具磨損狀態特徵的方法和基于磨損狀態特徵數據序列之間灰色關聯分析結果的刀具磨損狀態判彆方法。以4把 WNMG080408-TM T9125型號車刀在 ZCK20數控車床上進行瞭車刀的切削磨損實驗和磨損狀態判彆,實驗結果錶明:該方法能夠自適應穫取車刀的磨損狀態特徵,車刀的磨損狀態判彆結果與實際相符,具有較高的判彆正確率。
침대도구마손상태판별방법재변화적가공조건하판별정학솔저적문제,통과실시채집도구적절삭성발사신호,제출료일충자괄응획취성발사신호중도구마손상태특정적방법화기우마손상태특정수거서렬지간회색관련분석결과적도구마손상태판별방법。이4파 WNMG080408-TM T9125형호차도재 ZCK20수공차상상진행료차도적절삭마손실험화마손상태판별,실험결과표명:해방법능구자괄응획취차도적마손상태특정,차도적마손상태판별결과여실제상부,구유교고적판별정학솔。
Aiming at the low recognition rate under changing processing conditions of the existing tool wear state recognition methods,according to real-time acquisition of acoustic emission signal,an adaptive tool wear state features extraction method from acoustic emission signal and a tool wear state recognition method based on grey relational analysis between wear state feature data sequences are proposed. Experiment with four WNMG080408-TM T9125 type turning tools on ZCK20 digital controlled lathe was conducted and tool wear state recognition was implemented,the results show that the proposed methods are able to acquire the turning tools’wear state feature effectively and adaptively,and the tools wear state recognition results are consistent with the actual condition,and a high recognition rate is achieved.