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Autoregressive model and power spectrum characteristics of current signal in high frequency group pulse micro-electrochemical machining

机译:高频群脉冲微电化学加工中电流信号的自回归模型和功率谱特性

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摘要

The identification of the inter-electrode gap size in the high frequency group pulse micro-electrochemical machining (HGPECM) is mainly discussed. The auto-regressive(AR) model of group pulse current flowing across the cathode and the anode are created under different situations with different processing parameters and inter-electrode gap size. The AR model based on the current signals indicates that the order of the AR model is obviously different relating to the different processing conditions and the inter-electrode gap size; Moreover, it is different about the stability of the dynamic system, i.e. the white noise response of the Green's function of the dynamic system is diverse. In addition, power spectrum method is used in the analysis of the dynamic time series about the current signals with different inter-electrode gap size, the results show that there exists a strongest power spectrum peak, characteristic power spectrum(CPS), to the current signals related to the different inter-electrode gap size in the range of 0 appox 5 kHz. Therefore, the CPS of current signals can implement the identification of the inter-electrode gap.
机译:主要讨论了高频群脉冲微电化学加工(HGPECM)中电极间间隙尺寸的确定。在不同的情况下,以不同的加工参数和电极间间隙尺寸,建立了流过阴极和阳极的群脉冲电流的自回归模型。基于电流信号的AR模型表明,由于不同的加工条件和电极间间隙的大小,AR模型的阶数明显不同。此外,动态系统的稳定性也不同,即动态系统的格林函数的白噪声响应是多种多样的。另外,采用功率谱方法对电极间间隙大小不同的电流信号的动态时间序列进行分析,结果表明存在一个最强的功率谱峰,即特征功率谱(CPS)。与不同的电极间间隙尺寸相关的信号,范围为0 appox 5 kHz。因此,电流信号的CPS可以实现电极间间隙的识别。

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