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Parameter Estimation of Chaotic Dynamical Systems Using HEQPSO

机译:基于HEQPSO的混沌动力系统参数估计。

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摘要

In this study, a quantum-behaved particle swarm optimization (QPSO) based on hybrid evolution (HEQPSO) approach is proposed to estimate parameters of chaotic dynamic systems, in which the proposed HEQPSO algorithm combines the conceptions of genetic algorithm (GA) and adaptive annealing learning algorithm with the QPSO algorithm. That is, the mutation strategy in GA is used for conquering premature; adaptive decaying learning similar to simulated annealing (SA) is adopted for overcoming stagnation problem in searching optimal solutions. Three examples are illustrated to estimate parameters of chaotic dynamical systems using the proposed HEQPSO approach. From the numerical simulations and comparisons with other extant evolutionary methods in Lorenz system, the validity and superiority of the HEQPSO approach are verified. In addition, the effectiveness and robustness of parameter estimations for Chen and Rossler systems are demonstrated by the proposed HEQPSO approach.
机译:本研究提出了一种基于混合进化(HEQPSO)方法的量子行为粒子群算法(QPSO)来估计混沌动力学系统的参数,该算法结合了遗传算法(GA)和自适应退火的概念。 QPSO算法的学习算法。也就是说,GA中的变异策略用于征服早产;在搜索最优解时,采用类似于模拟退火(SA)的自适应衰减学习方法来克服停滞问题。举例说明了三个实例,以使用提出的HEQPSO方法估计混沌动力学系统的参数。通过数值模拟以及与Lorenz系统中其他现有演化方法的比较,验证了HEQPSO方法的有效性和优越性。此外,提出的HEQPSO方法证明了Chen和Rossler系统参数估计的有效性和鲁棒性。

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