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SIGNED LEAST MEAN KURTOSIS-BASED ADAPTIVE LINE ENHANCER

机译:签名最少的久身病的自适应线增强剂

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Based on the aim of the characteristic of error kurtosis and signed-error, a novel algorithm of sign least mean kurtosis based adaptive line enhancer (SLMKBALE) is proposed.Simulation results have shown that the computational load of the proposed SLMKBALE algorithm is much lower than that of the LMKBALE(least mean kurtosis based adaptive line enhancer) and as many as that of LMSBALE(least mean square based adaptive line enhancer), and the SLMKBALE algorithm has better ability to hand non-Gaussian and enhancing signal spectrum in comparison with the LMSBALE, SLMSBALE(signed LMSBALE), LMFBALE (least mean fourth based adaptive line enhancer) and LMK-^sBALE algorithm and that the mean square error(MSE) of the proposed algorithm is the lowest in all algorithms when the MSE converges. Therefore, the SLMKBALE algorithm is useful and reliable.
机译:基于误差kurtosis和签名误差的特​​征的目的,提出了一种新颖的标签最低指基于峰的自适应线增强剂(SLMKBale)的算法。仿效结果表明,所提出的SLMKbale算法的计算负荷远低于LMKBale(最小值基于峰的自适应线增强器)和LMSbale(最小平均基于平均的自适应线增强器)的那种,并且SLMKbale算法具有更好的手动非高斯和增强信号谱的能力与LMSBale,SLMSbale(签名LMSbale),LMFbale(最小值三分之一的自适应线增强器)和LMK-^ Sbale算法,并且所提出的算法的平均误差(MSE)是MSE收敛时所有算法中最低的。因此,SLMKbale算法有用可靠。

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