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Design of multivariable PID controllers using real-coded population-based extremal optimization

机译:基于实数编码的极值优化设计多变量PID控制器

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The issue of designing and tuning an effective and efficient multivariable PID controller for a multivariable control system to obtain high-quality performance is of great theoretical importance and practical significance. As a novel evolutionary algorithm inspired from statistical physics and coevolution, extremal optimization (EO) has successfully applied to a variety of optimization problems while the applications of E0 into the design of multivariable PID and PI controllers are relatively rare. This paper presents a novel real-coded population-based EO (RPEO) method for the design of multivariable PID and PI controllers. The basic idea behind RPEO is based on population-based iterated optimization process consisting of the following key operations including generation of a real-coded random initial population by encoding the parameters of a multivariable PID or PI controller into a set of real values, evaluation of the individual fitness by using a novel and reasonable control performance index, generation of new population based on multi-non-uniform mutation and updating the population by accepting the new population unconditionally. From the perspectives of simplicity and accuracy, the proposed RPEO algorithm is demonstrated to outperform other reported popular evolutionary algorithms, such as real-coded genetic algorithm (RGA) with multi-crossover or simulated binary crossover, differential evolution (DE), modified particle swarm optimization (MPSO), probability based discrete binary PSO (PBPSO), and covariance matrix adaptation evolution strategy (CMAES) by the experimental results on the benchmark multivariable binary distillation column plant. (C) 2014 Elsevier B.V. All rights reserved.
机译:为多变量控制系统设计和调整有效,高效的多变量PID控制器以获得高质量性能的问题具有重要的理论意义和现实意义。极值优化(EO)作为一种受统计物理学和协同进化启发的新颖进化算法,已成功地应用于各种优化问题,而E0在多变量PID和PI控制器设计中的应用相对较少。本文提出了一种新颖的基于实数编码的基于种群的EO(RPEO)方法,用于设计多变量PID和PI控制器。 RPEO的基本思想基于基于种群的迭代优化过程,该过程包括以下关键操作,包括通过将多变量PID或PI控制器的参数编码为一组实数值,生成实编码随机初始种群,通过使用新颖合理的控制绩效指标来实现个体适应性,基于多重非均匀突变生成新种群,并通过无条件接受新种群来更新种群。从简单性和准确性的角度来看,所提出的RPEO算法表现出优于其他已报道的流行进化算法,例如具有多重交叉或模拟二进制交叉的实编码遗传算法(RGA),差分进化(DE),改进的粒子群算法优化(MPSO),基于概率的离散二元PSO(PBPSO)和协方差矩阵适应进化策略(CMAES),这是通过在基准多变量二元蒸馏塔设备上进行的实验结果得出的。 (C)2014 Elsevier B.V.保留所有权利。

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