几种简化rls型算法的比较研究

J. H. Husøy, M. Abadi
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引用次数: 9

摘要

递归最小二乘(RLS)算法已成为“终极”自适应滤波算法,因为它是具有最佳收敛性能的自适应滤波算法。不幸的是,该算法的实际实现通常与高计算复杂度和/或较差的数值特性相关联。而不是专注于完整的RLS算法实现,旨在直接纠正这些问题,我们认为,使用简化或部分RLS算法可能是一个可行的替代完全RLS。我们特别指出,最近引入的两种算法,快速欧几里得方向搜索(fed)和递归自适应匹配追踪(RAMP)确实可以被解释为在复杂性和性能之间表现出良好权衡的部分RLS算法。我们通过一组全面的仿真结果来支持我们的演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative study of some simplified RLS-type algorithms
The recursive least squares (RLS) algorithm has established itself as the "ultimate" adaptive filtering algorithm in the sense that it is the adaptive filter exhibiting the best convergence behavior. Unfortunately, practical implementations of the algorithm are often associated with high computational complexity and/or poor numerical properties. Rather than focusing on full RLS algorithm implementations aiming directly at remedying these problems, we argue that the use of simplified or partial RLS algorithms may be a viable alternative to full RLS. In particular, we point out that two recently introduced algorithms, fast Euclidian direction search (FEDS) and recursive adaptive matching pursuit (RAMP) can indeed be interpreted as such partial RLS algorithms exhibiting a nice tradeoff between complexity and performance. We support our presentation by a comprehensive set of simulation results.
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