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Empirically characteristic analysis of chaotic PID controlling particle swarm optimization

机译:混沌PID控制粒子群算法的经验特性分析

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摘要

Since chaos systems generally have the intrinsic properties of sensitivity to initial conditions, topological mixing and density of periodic orbits, they may tactfully use the chaotic ergodic orbits to achieve the global optimum or their better approximation to given cost functions with high probability. During the past decade, they have increasingly received much attention from academic community and industry society throughout the world. To improve the performance of particle swarm optimization (PSO), we herein propose a chaotic proportional integral derivative (PID) controlling PSO algorithm by the hybridization of chaotic logistic dynamics and hierarchical inertia weight. The hierarchical inertia weight coefficients are determined in accordance with the present fitness values of the local best positions so as to adaptively expand the particles’ search space. Moreover, the chaotic logistic map is not only used in the substitution of the two random parameters affecting the convergence behavior, but also used in the chaotic local search for the global best position so as to easily avoid the particles’ premature behaviors via the whole search space. Thereafter, the convergent analysis of chaotic PID controlling PSO is under deep investigation. Empirical simulation results demonstrate that compared with other several chaotic PSO algorithms like chaotic PSO with the logistic map, chaotic PSO with the tent map and chaotic catfish PSO with the logistic map, chaotic PID controlling PSO exhibits much better search efficiency and quality when solving the optimization problems. Additionally, the parameter estimation of a nonlinear dynamic system also further clarifies its superiority to chaotic catfish PSO, genetic algorithm (GA) and PSO.
机译:由于混沌系统通常具有对初始条件,拓扑混合和周期轨道密度的内在属性,因此它们可以巧妙地使用混沌遍历轨道以高概率实现全局最优或更接近给定成本函数。在过去的十年中,它们越来越受到全世界学术界和行业协会的关注。为了提高粒子群优化(PSO)的性能,我们在本文中提出了一种通过混沌逻辑动力学和层次惯性权重的混合来控制PSO算法的混沌比例积分微分算法。根据局部最佳位置的当前适应度值确定层次惯性权重系数,以自适应地扩展粒子的搜索空间。此外,混沌逻辑映射不仅用于替换影响收敛行为的两个随机参数,而且还用于对全局最佳位置进行混沌局部搜索,从而通过整个搜索轻松避免粒子的过早行为。空间。此后,对混沌PID控制PSO的收敛分析正在深入研究。经验仿真结果表明,与其他几种混沌PSO算法(如带逻辑图的混沌PSO,带帐篷图的混沌PSO和带有逻辑图的混沌cat鱼PSO)相比,混沌PID控制PSO在求解优化时表现出更好的搜索效率和质量。问题。此外,非线性动力学系统的参数估计还进一步阐明了其对混沌cat鱼PSO,遗传算法(GA)和PSO的优越性。

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