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Design and Analysis of Reward-Punishment based Variable Step Size LMS Algorithm in Rayleigh Faded Channel Estimation

机译:瑞利褪色信道估计中基于奖励惩罚的可变步长LMS算法的设计与分析

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Channel estimation in wireless communication system using various supervised learning algorithms traditionally involves two very popular algorithms namely Least Mean Square (LMS) and Recursive Least Square (RLS). The concept of variable step size adaptive algorithms came into picture later on to achieve a trade-off between convergence speed and mathematical complexity of these two algorithms (LMS and RLS). The family of variable step size least mean square (VSSLMS) algorithms consists of various members depending on their separate step size adaptation rule. In this paper, a new modified variable step size algorithm is proposed employing a simple mathematical adaptation strategy-the "reward-punishment" rule. The performance of the newly developed algorithm is analyzed in estimating an unknown time varying Rayleigh faded channel and compared with the performance of existing algorithms. The computer simulation shows that the "reward-punishment based variable step size least mean square" algorithm exhibits faster convergence rate compared to LMS and other competitors from VSSLMS family of algorithms and consequently acts as better trade-off between LMS and RLS algorithm. The mathematical complexity measured in terms of CPU time usage also indicates betterment over existing VSSLMS algorithms.
机译:使用各种监督学习算法的无线通信系统中的信道估计传统上涉及两个非常流行的算法,即最小均方(LMS)和递归最小二乘(RLS)。可变步长自适应算法的概念稍后进入图片,以实现这两种算法的收敛速度和数学复杂性之间的权衡(LMS和RLS)。可变步长尺寸最小均方(VSSLMS)算法的系列由各种成员组成,具体取决于其单独的步长调整规则。本文提出了一种新的修改变量步长算法,采用简单的数学适应策略 - “奖惩”规则。分析了新开发算法的性能,估计了不同瑞利褪色通道的未知时间和与现有算法的性能相比。计算机仿真表明,与来自VSSLMS系列算法的LMS和其他竞争者相比,“基于奖励基于惩罚基于惩罚的可变步长尺寸最小均方”算法并因此表现出LMS和RLS算法之间的更好折衷。根据CPU时间使用率测量的数学复杂性也表明了对现有VSSLMS算法的提高。

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