使用RLS和LMS算法预测和跟踪未知系统行为的自适应方法

IF 0.6 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Facta Universitatis-Series Electronics and Energetics Pub Date : 2021-02-28 DOI:10.2298/fuee2101133t
T. Tajdari
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引用次数: 0

摘要

本研究探讨递推最小二乘(RLS)和最小均方(LMS)自适应滤波算法预测和快速跟踪未知系统的能力。如果有其他并行系统必须同时遵循完全相同的行为,那么跟踪未知的系统行为是很重要的。自适应算法可以根据未知系统参数的变化对滤波器系数进行校正,使相同输入信号的滤波器输出与系统输出之间的误差最小。RLS和LMS算法分别设计,然后分别进行测试,给它们一个类似的输入信号,然后给未知系统。系统输出信号与自适应滤波器输出信号的差值显示了各滤波器在识别未知系统时的性能。这两种自适应滤波器能够跟踪系统的行为,但每一种都比另一种有一定的优势。与LMS算法相比,RLS算法具有收敛速度快、稳态误差小的优点,而LMS算法具有计算复杂度低的优点。
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Adaptive method to predict and track unknown system behaviors using RLS and LMS algorithms
This study investigates the ability of recursive least squares (RLS) and least mean square (LMS) adaptive filtering algorithms to predict and quickly track unknown systems. Tracking unknown system behavior is important if there are other parallel systems that must follow exactly the same behavior at the same time. The adaptive algorithm can correct the filter coefficients according to changes in unknown system parameters to minimize errors between the filter output and the system output for the same input signal. The RLS and LMS algorithms were designed and then examined separately, giving them a similar input signal that was given to the unknown system. The difference between the system output signal and the adaptive filter output signal showed the performance of each filter when identifying an unknown system. The two adaptive filters were able to track the behavior of the system, but each showed certain advantages over the other. The RLS algorithm had the advantage of faster convergence and fewer steady-state errors than the LMS algorithm, but the LMS algorithm had the advantage of less computational complexity.
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来源期刊
Facta Universitatis-Series Electronics and Energetics
Facta Universitatis-Series Electronics and Energetics ENGINEERING, ELECTRICAL & ELECTRONIC-
自引率
16.70%
发文量
10
审稿时长
20 weeks
期刊最新文献
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