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Transient performance degradation of the LMS, RLS, sign, signed regressor, and sign-sign algorithms with data correlation

机译:具有数据相关性的LMS,RLS,正负号,正负号回归和正负号算法的瞬态性能下降

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摘要

The transient performance degradation, for correlated input data, is studied for various adaptive algorithms. The algorithms are least mean square (LMS), recursive least squares (RLS), sign (SA), signed regressor (SRA), and sign-sign (SSA). Analysis is performed for adaptive plant identification with stationary Gaussian inputs. A closed-form expression for the mean convergence time is derived for each algorithm. The degradation measure used is the ratio of convergence time for correlated data to the convergence time for white data. The LMS and SRA degradations are the same. The SA and SSA degradations are also the same. The smallest degradation occurs for RLS, the largest for LMS and SRA. The SRA, RLS, and LMS degradations are independent of plant-noise variance. The SA and SSA degradations increase with increased noise variance. The LMS and SRA degradations do not depend upon the weight initialization, RLS (SA and SSA) depends weakly (significantly) upon the weight initialization. The analytical results are supported by simulations.
机译:针对各种自适应算法,研究了相关输入数据的瞬态性能下降。该算法是最小均方(LMS),递归最小二乘(RLS),正负号(SA),正负号(SRA)和正负号(SSA)。使用固定的高斯输入对自适应植物识别进行分析。对于每种算法,得出了平均收敛时间的闭式表达式。所使用的降级度量是相关数据的收敛时间与白色数据的收敛时间之比。 LMS和SRA降级相同。 SA和SSA的降级也相同。对于RLS,降级最小,对于LMS和SRA,降级最大。 SRA,RLS和LMS降级与植物噪声方差无关。 SA和SSA的降级随着噪声方差的增加而增加。 LMS和SRA降级不依赖于权重初始化,RLS(SA和SSA)弱(显着)依赖于权重初始化。分析结果得到模拟的支持。

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