Adaptive control of machining process based on extended entropy square error and wavelet neural network  被引量:2

Adaptive control of machining process based on extended entropy square error and wavelet neural network

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作  者:赖兴余 叶邦彦 李伟光 鄢春艳 

机构地区:[1]School of Mechanical Engineering,South China University of Technology [2]Dept.of Mechatronical Engineering,Guangdong Institute of Science and Technology

出  处:《Journal of Harbin Institute of Technology(New Series)》2007年第3期349-353,共5页哈尔滨工业大学学报(英文版)

基  金:Sponsored by the Natural Science Foundation of Guangdong Province(Grant No.06025546);the National Natural Science Foundation of China(Grant No.50305005).

摘  要:Combining information entropy and wavelet analysis with neural network,an adaptive control system and an adaptive control algorithm are presented for machining process based on extended entropy square error(EESE)and wavelet neural network(WNN).Extended entropy square error function is defined and its availability is proved theoretically.Replacing the mean square error criterion of BP algorithm with the EESE criterion,the proposed system is then applied to the on-line control of the cutting force with variable cutting parameters by searching adaptively wavelet base function and self adjusting scaling parameter,translating parameter of the wavelet and neural network weights.Simulation results show that the designed system is of fast response,non-overshoot and it is more effective than the conventional adaptive control of machining process based on the neural network.The suggested algorithm can adaptively adjust the feed rate on-line till achieving a constant cutting force approaching the reference force in varied cutting conditions,thus improving the machining efficiency and protecting the tool.Combining information entropy and wavelet analysis with neural network, an adaptive control system and an adaptive control algorithm are presented for machining process based on extended entropy square error (EESE) and wavelet neural network (WNN). Extended entropy square error function is defined and its availability is proved theoretically. Replacing the mean square error criterion of BP algorithm with the EESE criterion, the proposed system is then applied to the on-line control of the cutting force with variable cutting parameters by searching adaptively wavelet base function and self adjusting scaling parameter, translating parameter of the wavelet and neural network weights. Simulation results show that the designed system is of fast response, non-overshoot and it is more effective than the conventional adaptive control of machining process based on the neural network. The suggested algorithm can adaptively adjust the feed rate on-line till achieving a constant cutting force approaching the reference force in varied cutting conditions, thus improving the machining efficiency and protecting the tool.

关 键 词:machining process adaptive control extended entropy square error wavelet neural network 

分 类 号:TP273[自动化与计算机技术—检测技术与自动化装置]

 

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