Simultaneous computation of model order and parameter estimation for system identification based on opposition-based simulated Kalman filter

B. Muhammad, K. Z. M. Azmi, Z. Ibrahim, Ahmad Afif bin Mohd Faudzi, Dwi Pebrianti
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引用次数: 14

Abstract

System identification is a technique used to obtain a mathematical model of a system by performing analysis on input and output behavior of the system. Simultaneous Model Order and Parameter Estimation (SMOPE) has been proposed to address system identification problem efficiently using optimization algorithms. The technique enables the computation of model order and parameters values to be done concurrently. The performance of SMOPE has been tested using particle swarm optimization (PSO) and gravitational search algorithm. However, the performance was worse than conventional ARX method. Current optimum opposition-based simulated Kalman filter (COOBSKF) is an improved version of simulated Kalman filter (SKF) which employs the concept of current optimum opposition-based learning (COOBL). Therefore, the objective of this paper is to test the effectiveness of the COOBSKF in solving system identification problem throughout SMOPE. Experiments are conducted on six system identification problems. The obtained outcomes showed that the performance of the SMOPE using COOBSKF is better than other SMOPE-based approaches.
基于对抗的仿真卡尔曼滤波系统辨识中模型阶数的同时计算和参数估计
系统识别是一种通过对系统的输入和输出行为进行分析来获得系统数学模型的技术。同时模型阶数与参数估计(SMOPE)是一种利用优化算法有效解决系统辨识问题的方法。该技术可以实现模型阶数和参数值的并行计算。利用粒子群算法和引力搜索算法对SMOPE的性能进行了测试。但与传统的ARX方法相比,性能较差。基于当前最优对立的模拟卡尔曼滤波器(COOBSKF)是基于当前最优对立学习(COOBL)概念的模拟卡尔曼滤波器(SKF)的改进版本。因此,本文的目的是测试COOBSKF在整个SMOPE中解决系统识别问题的有效性。针对六个系统辨识问题进行了实验。得到的结果表明,使用COOBSKF的SMOPE的性能优于其他基于SMOPE的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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