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An improved stochastic model of the NLMS algorithm for correlated input data

机译:关联输入数据的NLMS算法的改进随机模型

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This paper proposes an improved stochastic model for the normalized least-mean-square (NLMS) algorithm considering correlated input signals obtained from a spherically invariant random process (SIRP). A SIRP describes both Gaussian and a wide class of non-Gaussian processes, including the ones with Laplacian, K, and Gamma marginal density functions. Hence an approximate procedure for computing high-order hyperelliptic integrals arisen from the modeling process is developed. The resulting model outperforms other existing models discussed in the open literature. Through numerical simulations the accuracy of the proposed model is verified.
机译:本文提出了一种改进的随机模型,用于考虑从球不变随机过程(SIRP)获得的相关输入信号的标准化最小均方(NLMS)算法。 SIRP既描述了高斯过程,也描述了各种非高斯过程,包括具有Laplacian,K和Gamma边际密度函数的过程。因此,开发了一种用于计算由建模过程产生的高阶超椭圆形积分的近似程序。结果模型优于公开文献中讨论的其他现有模型。通过数值模拟,验证了所提模型的准确性。

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