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Adaptive filtering-based multi-innovation gradient algorithm for input nonlinear systems with autoregressive noise

机译:具有自回归噪声的输入非线性系统的自适应滤波多创新梯度算法

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摘要

In this paper, by means of the adaptive filtering technique and the multi-innovation identification theory, an adaptive filtering-based multi-innovation stochastic gradient identification algorithm is derived for Hammerstein nonlinear systems with colored noise. The new adaptive filtering configuration consists of a noise whitening filter and a parameter estimator. The simulation results show that the proposed algorithm has higher parameter estimation accuracies and faster convergence rates than the multi-innovation stochastic gradient algorithm for the same innovation length. As the innovation length increases, the filtering-based multi-innovation stochastic gradient algorithm gives smaller parameter estimation errors than the recursive least squares algorithm.
机译:本文利用自适应滤波技术和多元创新识别理论,推导了基于Hammerstein非线性有色噪声系统的基于滤波的多元创新随机梯度识别算法。新的自适应滤波配置包括一个噪声白化滤波器和一个参数估计器。仿真结果表明,与相同长度的多创新随机梯度算法相比,该算法具有更高的参数估计精度和更快的收敛速度。随着创新长度的增加,与递归最小二乘算法相比,基于滤波的多重创新随机梯度算法给出的参数估计误差更小。

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