基于粒子群优化技术的分数阶动力系统参数辨识

D. Maiti, R. Janarthanan, A. Konar
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引用次数: 9

摘要

这个贡献涉及分数阶动力系统的识别。系统辨识是指过程参数的估计,在控制理论中是必要的。准确的估计对于具有变化参数的系统尤其重要,这是物理过程的常见情况。实际过程通常是分数阶的,而不是理想的积分阶模型。本文提出了一种简单而优雅的估计分数阶过程参数的方法。通过粒子群算法生成和更新过程模型的总体,适应度函数为与实际观测值集的偏差平方和。结果表明,该方案具有较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter identification of a fractional order dynamical system using particle swarm optimization technique
This contribution deals with identification of fractional-order dynamical systems. System identification, which refers to estimation of process parameters, is a necessity in control theory. Accurate estimation is particularly important for systems having varying parameters, which is the usual case with physical processes. Real processes are usually of fractional order as opposed to the ideal integral order models. A simple and elegant scheme of estimating the parameters for such a fractional order process is proposed in this paper. A population of process models is generated and updated by PSO technique, the fitness function being the sum of squared deviations from the actual set of observations. Results show that the proposed scheme offers a high degree of accuracy.
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