Adaptive system identification based on adaptation with data discarding

E. Eweda, H. El-Deen Ahmed, M. A. Bassiouney, A. El-Azim El-Mahdi
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引用次数: 1

Abstract

At high data rates, the adaptation processor of the adaptive filter may be unable to perform the multiplications required by the adaptation algorithm each baud interval. A direct, but expensive, solution of this problem is to use parallel processing. The present paper presents a simple alternative solution that is suitable for the case of adaptive system identification. The idea of the proposed method is to make one iteration for each several baud intervals. The idea is implemented as follows. With N being the number of adaptive filter coefficients, N successive input samples and the corresponding sample of the system output are injected to the adaptation processor to perform one iteration. Input and output samples that come before the termination of this iteration are discarded by the adaptation processor. After termination of the iteration, new N input samples and the corresponding output sample are injected to the adaptation processor and the procedure is repeated. The above idea is applied to both the LMS algorithm and the sign algorithm. The effect of data discarding on the transient performance of the identification procedure is studied by computer simulations for both white and correlated inputs of the system.
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基于数据丢弃自适应的自适应系统辨识
在高数据速率下,自适应滤波器的自适应处理器可能无法在每个波特间隔内执行自适应算法所需的乘法。这个问题的一个直接但昂贵的解决方案是使用并行处理。本文提出了一种简单的替代方案,适用于自适应系统辨识的情况。该方法的思想是对每几个波特间隔进行一次迭代。实现思路如下。以N为自适应滤波系数的个数,将连续的N个输入样本和对应的系统输出样本注入自适应处理器,进行一次迭代。在此迭代终止之前的输入和输出样本将被自适应处理器丢弃。迭代结束后,将新的N个输入样本和相应的输出样本注入自适应处理器,重复此过程。上述思想适用于LMS算法和符号算法。通过计算机仿真研究了数据丢弃对识别过程暂态性能的影响,并对系统的白输入和相关输入进行了仿真。
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