利用AIW-PSO算法选择广义s变换的优化窗口

C. H. Beuter, M. Oleskovicz, C. I. Golfieri, Guilherme Spavieri, R. Fernandes
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引用次数: 1

摘要

本文通过对粒子群优化(PSO)算法的改进,提出了一种选择广义S-变换(GST)的优化分析窗口的方法。该算法的新版本称为基于最佳,最差和个人的自适应个体惯性权重(AIW-PSO),它使用惯性权重,其中在自适应过程中使用最佳和最差粒子的性能。通过使用AIW-PSO将GST应用于信号,其目标函数是最小化能量的集中,从而提供所建议的窗口选择。为了评估所提出方法的有效性,基于参数r、m、p和k,用GST分析了两个合成信号,并与文献中可用的S-Transform (ST)的标准版本和优化版本进行了比较。研究发现,与标准的非理想ST窗口相比,通过AIW-PSO算法优化的GST在时频表示(TFR)中提供了更好的响应,并且相对于优化版本的方法,在能量集中方面获得了额外的增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of the optimized window for the generalized s-transform using the AIW-PSO algorithm
This work proposes a method for the selection of the optimized window of analysis for the Generalized S- Transform (GST), through an adaptation in the Particle Swarm Optimization (PSO) algorithm. The new version of the algorithm, called Adaptive Individual Inertia Weight Based on Best, Worst and Individual (AIW-PSO), uses an inertia weight, where the performance of the best and the worst particle are employed in the adaptive process. The GST is applied to the signal by using AIW-PSO, whose objective function to be minimized is the concentration of energy that will provide the proposed window selection. To evaluate the efficacy of the proposed method, two synthetic signals were analysed by the GST, based on parameters r, m, p and k, and compared with the standard version and an optimized version of the S-Transform (ST) available in the literature. It was found that the GST, optimized via the AIW-PSO algorithm, provided a better response in the Time-Frequency Representation (TFR) when compared to the standard non-ideal ST window, as well as an additional gain in energy concentration relative to the optimized version approach.
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