Individually Weighted Modified Logarithmic Hyperbolic Sine Curvelet Based Recursive FLN for Nonlinear System Identification

IF 1.8 3区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Neetu Chikyal, Vasundhara, Chayan Bhar, Asutosh Kar, Mads Graesboll Christensen
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Abstract

Lately, an adaptive exponential functional link network (AEFLN) involving exponential terms integrated with trigonometric functional expansion is being introduced as a linear-in-the-parameters nonlinear filter. However, they exhibit degraded efficacy in lieu of non-Gaussian or impulsive noise interference. Therefore, to enhance the nonlinear modelling capability, here is a modified logarithmic hyperbolic sine cost function in amalgamation with the adaptive recursive exponential functional link network. In conjugation with this, a sparsity constraint motivated by a curvelet-dependent notion is employed in the suggested approach. Therefore, this paper presents an individually weighted modified logarithmic hyperbolic sine curvelet-based recursive exponential FLN (IMLSC-REF) for robust sparse nonlinear system identification. An individually weighted adaptation gain is imparted to several coefficients corresponding to the nonlinear adaptive model for accelerating the convergence rate. The weight update rule and the maximum criteria for the convergence factor are being further derived. Exhaustive simulation studies profess the effectiveness of the introduced algorithm in case of varied nonlinearity and for identifying as well as modelling the physical path of the acoustic feedback phenomenon of a behind-the-ear (BTE) hearing aid.

Abstract Image

基于单独加权修正对数双曲正弦曲线的递归 FLN 用于非线性系统识别
最近,一种自适应指数函数链路网络(AEFLN)作为一种参数线性非线性滤波器被引入,其中涉及与三角函数展开集成的指数项。然而,在非高斯或脉冲噪声干扰下,它们的功效会有所下降。因此,为了增强非线性建模能力,这里将改进的对数双曲正弦成本函数与自适应递归指数函数链接网络相结合。与此同时,在建议的方法中还采用了由小曲线相关概念激发的稀疏性约束。因此,本文提出了一种基于小曲线的单独加权修正对数双曲正弦递归指数功能链接网络(IMLSC-REF),用于鲁棒稀疏非线性系统识别。为加快收敛速度,对非线性自适应模型对应的几个系数赋予了单独加权的自适应增益。此外,还进一步推导出了权值更新规则和收敛因子的最大标准。详尽的模拟研究证明了所引入算法在不同非线性情况下的有效性,以及对耳背式(BTE)助听器声反馈现象的物理路径进行识别和建模的有效性。
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来源期刊
Circuits, Systems and Signal Processing
Circuits, Systems and Signal Processing 工程技术-工程:电子与电气
CiteScore
4.80
自引率
13.00%
发文量
321
审稿时长
4.6 months
期刊介绍: Rapid developments in the analog and digital processing of signals for communication, control, and computer systems have made the theory of electrical circuits and signal processing a burgeoning area of research and design. The aim of Circuits, Systems, and Signal Processing (CSSP) is to help meet the needs of outlets for significant research papers and state-of-the-art review articles in the area. The scope of the journal is broad, ranging from mathematical foundations to practical engineering design. It encompasses, but is not limited to, such topics as linear and nonlinear networks, distributed circuits and systems, multi-dimensional signals and systems, analog filters and signal processing, digital filters and signal processing, statistical signal processing, multimedia, computer aided design, graph theory, neural systems, communication circuits and systems, and VLSI signal processing. The Editorial Board is international, and papers are welcome from throughout the world. The journal is devoted primarily to research papers, but survey, expository, and tutorial papers are also published. Circuits, Systems, and Signal Processing (CSSP) is published twelve times annually.
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