自适应滤波的时间延迟

G. Yin, Y.M. Zhu
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引用次数: 0

摘要

详细研究了延迟数据的自适应滤波。所开发的递归算法具有两个特点:允许延迟信号,并且可以通过流水线结构将并行实现纳入算法框架。所考虑的算法是经典自适应滤波方法的自然推广。结果表明,当出现延迟信号时,递归算法保持概率为1的收敛性。给出了一个简单的例子来证明其收敛性。结果表明,就收敛性而言,延迟不影响计算过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time delay in adaptive filtering
Adaptive filtering with delayed data is examined in detail. The recursive algorithm developed has two features: delayed signals are allowed, and parallel implementation via pipelining structure can be incorporated into the framework of the algorithm. The algorithm considered is a natural generalization of the classical adaptive filter procedures. It is shown that convergence with probability one is preserved when delayed signals appear in the recursive algorithm. A simple example is given to demonstrate the convergence properties. It is demonstrated that the delays do not harm the computation procedure as far as the convergence properties are concerned.<>
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