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微细电火花加工间隙放电状态智能检测方法的研究
引用本文:周明,贾振元,郭丽莎,王瑞利.微细电火花加工间隙放电状态智能检测方法的研究[J].电加工与模具,2005(6):17-22.
作者姓名:周明  贾振元  郭丽莎  王瑞利
作者单位:大连理工大学精密与特种加工教育重点实验室,辽宁大连,116024
摘    要:针对微细电火花加工中的高频、微能、单一信号严重畸变等特点,提出了利用电压、电流信号的互补性特点,运用模糊逻辑控制规则,得出采样点的状态值,然后采用LVQ神经网络的分类功能,将采样点的状态值转化成加工间隙状态中所属的状态矢量,最后通过统计模型,得出电火花加工极间放电状态。。

关 键 词:电火花加工  神经模糊控制  放电状态检测
修稿时间:2005年6月20日

The Study on the Discrimination of Electrical Discharging States in Micro-EDM
Zhou Ming,Jia Zhenyuan,Guo Lisha,Wang Ruili.The Study on the Discrimination of Electrical Discharging States in Micro-EDM[J].Electromachining & Mould,2005(6):17-22.
Authors:Zhou Ming  Jia Zhenyuan  Guo Lisha  Wang Ruili
Abstract:High frequency and small electric power of micro-EDM cause the waveforms of voltage and current highly distorted,thus indistinguishable by the commonly used EDM discriminating methods.Upon such knowledge of this,a new method is presented in this paper,where the fuzzy logic rules are used to combine the complementary signals from voltage and current taken as the two inputs to the fuzzy system and deduce a value in a range representing the discharging state of the sampled point.Learning vector quantification(LVQ) neural network architecture is adopted to convert this value of the sampled point deduced from the fuzzy system to the corresponding discharging state vector.After the statistical generalization of the points in a set of pulses,the ratio between the elements in the vector clarifies the discharging state of the gap between electrode and workpiece.
Keywords:EDM  neural-fuzzy control  discrimination of discharging gap
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