选择合适的微分进化和粒子群优化方法来优化PI级联控制

K. Zielinski, M. Joost, R. Laur, B. Orlik
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引用次数: 5

摘要

鲁棒控制是控制理论中一个被广泛研究的领域,鲁棒控制问题的解析解往往导致复杂的控制结构。另一方面,对于像PI级联控制l这样的简单结构,这里没有解析解,这导致需要易于使用的优化算法。差分进化算法和粒子群算法具有解的实值表示、快速收敛和易于使用等优点,非常适合于求解该问题。然而,这两种算法都存在7种变体,从文献中还不清楚哪一种表现最好。因此,本文采用差分进化和不同邻域拓扑的粒子群优化策略对PI级联控制进行优化。性能比较表明,两种算法都能解决该优化问题,但特别是使用差分进化时,不同策略的最佳解的质量有所不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Choosing suitable variants of Differential Evolution and Particle Swarm Optimization for the optimization of a PI cascade control
Robust control is an intensively studied field in control theory where analytical solutions for robust control problems often lead to complicated control structures. On the other hand, for simple structures like the PI cascade control l here are no analytical solutions which leads to the need of easy-to-use optimization algorithms. Differential evolution and particle swarm optimization are well suited for this problem because of the real-valued representation of solutions, fast convergence behavior and ease of use. However, seven al variants exist for both algorithms, and from literature if does not become clear which one performs best. Therefore, in this paper several strategies of differential evolution an d different neighborhood topologies for particle swarm optimization are applied for the optimization of a PI cascade control. A performance comparison shows that both algorithms are able to solve this optimization problem but especially using differential evolution the quality of the best solution varies for different strategies.
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