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A nonlinear analytical model for the quantized LMS algorithm-the arbitrary step size case

机译:量化LMS算法的非线性分析模型-任意步长情况

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This paper extends conditional moment techniques previously developed for the study of nonlinear versions of the LMS algorithm to the study of the effects of quantizers in the finite precision case. Deterministic nonlinear recursions are derived for the mean and second moment matrix of the weight vector about the Wiener weight for white Gaussian data models and small algorithm step sizes /spl mu/. These recursions are solved numerically and shown to be in very close agreement with the Monte Carlo simulations during all phases of the adaptation process. A design example is presented that demonstrates how the theory can be used to select the number of quantizer bits and the adaptation step size /spl mu/ to yield a desired transient behavior and cancellation performance.
机译:本文将先前为研究LMS算法的非线性版本而开发的条件矩技术扩展到了有限精度情况下量化器效果的研究。对于白色高斯数据模型和较小的算法步长/ spl mu /,针对维纳权重,确定权重矢量的均值矩和二阶矩矩阵的确定性非线性递归。这些递归得到了数值求解,并且在适应过程的所有阶段都与蒙特卡洛模拟非常吻合。给出了一个设计示例,该示例演示了如何使用该理论选择量化位数和自适应步长/ spl mu /,以产生所需的瞬态行为和消除性能。

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