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Efficient adaptive identification of linear-in-the-parameters nonlinear filters using periodic input sequences

机译:使用周期输入序列的参数线性非线性滤波器的有效自适应识别

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摘要

This paper introduces computationally efficient NLMS and RLS adaptive algorithms for identifying non-recursive, linear-in-the-parameters (LIP) nonlinear systems using periodic input sequences. The algorithms presented in the paper are exact and require a realtime computational effort of a single multiplication, an addition and a subtraction per input sample. The transient, steady state, and tracking behavior of the algorithms as well as the effect of model mismatch is studied in the paper. The low computational complexity, good performance and broad applicability make the approach of this paper a valuable alternative to the current techniques for nonlinear system identification.
机译:本文介绍了计算有效的NLMS和RLS自适应算法,用于使用周期输入序列来识别非递归,参数线性(LIP)非线性系统。本文提出的算法是精确的,并且需要对每个输入样本进行一次乘法,加法和减法的实时计算。本文研究了算法的瞬态,稳态和跟踪行为,以及模型不匹配的影响。低的计算复杂度,良好的性能和广泛的适用性使本文的方法成为当前非线性系统识别技术的一种有价值的替代方法。

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