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Improved Varient for FOC-based Adaptive Filter for Chaotic Time Series Prediction

机译:基于FOC的自适应滤波器的改进变量,用于混沌时间序列预测

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An improved normalized fractional least mean square (iNFLMS) has been proposed in this study. Least mean square (LMS) and fractional LMS (FLMS) are both prone to the problem of sensitivity to the input. In the proposed algorithm, the sensitivity of the FLMS to the input is reduced by normalization. The summation of the fractional and conventional gradients is made convex to obtain better convergence rate and keeping minimum error in steady state. To make the algorithm less computationally expensive, the gamma function is now absorbed into the fractional learning rate. Through the experiment it is quite clear that the efficacy of the proposed method is promising considering the parameters of steady-state error and convergence rate when compared to that of LMS, FLMS, MFLMS and NFLMS algorithm.
机译:这项研究中提出了一种改进的归一化分数最小均方(iNFLMS)。最小均方(LMS)和分数LMS(FLMS)都容易出现对输入敏感的问题。在提出的算法中,归一化降低了FLMS对输入的敏感度。使分数梯度和常规梯度的总和凸出,以获得更好的收敛速度并在稳态下保持最小误差。为了减少算法的计算开销,现在将伽马函数吸收到分数学习率中。通过实验,很明显,与LMS,FLMS,MFLMS和NFLMS算法相比,考虑到稳态误差和收敛速度的参数,所提方法的有效性是有希望的。

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