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首页> 外文期刊>Circuits and Systems II: Express Briefs, IEEE Transactions on >A New State-Regularized QRRLS Algorithm With a Variable Forgetting Factor
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A New State-Regularized QRRLS Algorithm With a Variable Forgetting Factor

机译:遗忘因子可变的状态正则化QRRLS新算法

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摘要

This brief proposes a new state-regularized (SR) and QR-decomposition-based (QRD) recursive least squares (RLS) adaptive filtering algorithm with a variable forgetting factor (VFF). It employs the estimated coefficients as prior information to minimize the exponentially weighted observation error, which leads to reduced variance over a conventional RLS algorithm and reduced bias over an $L_{2}$ -regularized RLS algorithm. To improve the tracking performance, a new measure of convergence status is introduced in controlling the forgetting factor. Consequently, the resultant SR-VFF-RLS algorithm stabilizes the update and adaptively selects the number of measurements by means of the VFF. Improved tracking performance, steady-state mean-square error, and robustness to power-varying inputs over conventional RLS algorithms can be achieved. Furthermore, the proposed algorithm can be implemented using QRD, which leads to a lower roundoff error and more efficient hardware realization than the direct implementation. The effectiveness of the proposed algorithm is demonstrated by computer simulations.
机译:本简介提出了一种新的基于状态正则化(SR)和基于QR分解(QRD)的递归最小二乘(RLS)自适应滤波算法,具有可变遗忘因子(VFF)。它使用估计的系数作为先验信息以最小化指数加权的观察误差,这导致与常规RLS算法相比减少了方差,并且与$ L_ {2} $正规化RLS算法相比减少了偏差。为了提高跟踪性能,在控制遗忘因子方面引入了一种新的收敛状态度量。因此,最终的SR-VFF-RLS算法可稳定更新并通过VFF自适应地选择测量次数。与传统的RLS算法相比,可以提高跟踪性能,稳态均方误差以及对功率变化输入的鲁棒性。此外,所提出的算法可以使用QRD来实现,与直接实现相比,它带来了更低的舍入误差和更高效的硬件实现。计算机仿真证明了该算法的有效性。

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