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Optimal Tuning of PID Controller using Adaptive Hybrid Particle Swarm Optimization Algorithm

机译:基于自适应混合微粒群算法的PID控制器优化调节。

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Particle swarm optimization (PSO) has proved its ability as an efficient search tool in many optimization problems. However, PSO is easy to be trapped into local minima due to its mechanism in information sharing. Under this circumstance, all the particles could quickly converge to a position by the attraction of the best particle; all particles could hardly be improved. To overcome premature convergence of the standard PSO algorithm, this paper presents an adaptive hybrid PSO, namely (AHPSO) by employing an adaptive mutation operator for local best particles instead of applying the mutation operator to the global best particle as has been done in previous work. The developed algorithm is a new approach which allows the swarm to be more diverse by making better exploration of the local search space instead of global search space investigated by previous researchers. The proposed algorithm holds on the properties of simple structure, fast convergence, and at the same time enhances the variety of the population, and extends the search space. It is applied to self-tuning of proportional-integral-derivative-(PID) controller in the ball and hoop system which represents a system of complex industrial processes. The results are compared with those obtained by applying standard PSO, and adaptive hybrid PSO based on global best particles. It has been shown that the developed AHPSO local best algorithm is faster in convergence and the obtained results are proved to have higher fitness than the other two algorithms.
机译:粒子群优化(PSO)已证明其可以作为许多优化问题中的有效搜索工具的能力。但是,由于PSO的信息共享机制,它很容易陷入局部最小值。在这种情况下,所有粒子都可以通过吸引最佳粒子而迅速收敛到一个位置。所有粒子都很难得到改善。为克服标准PSO算法的过早收敛,本文提出了一种自适应混合PSO,即(AHPSO),方法是对局部最佳粒子采用自适应变异算子,而不是像以前的工作一样将变异算子应用于全局最佳粒子。所开发的算法是一种新方法,它可以通过更好地探索本地搜索空间而不是先前研究人员研究的全局搜索空间,使群体更加多样化。该算法具有结构简单,收敛速度快的特点,同时增加了种群的多样性,扩大了搜索空间。它用于表示复杂工业过程系统的球箍系统中的比例积分微分(PID)控制器的自整定。将结果与应用标准PSO和基于全局最佳粒子的自适应混合PSO所获得的结果进行比较。结果表明,所开发的AHPSO局部最优算法收敛速度较快,与其他两种算法相比,具有较高的适用性。

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