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首页> 外文期刊>Intelligent automation and soft computing >CHAOTIC DIFFERENTIAL EVOLUTION ALGORITHM BASED ON COMPETITIVE COEVOLUTION AND ITS APPLICATION TO DYNAMIC OPTIMIZATION OF CHEMICAL PROCESSES
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CHAOTIC DIFFERENTIAL EVOLUTION ALGORITHM BASED ON COMPETITIVE COEVOLUTION AND ITS APPLICATION TO DYNAMIC OPTIMIZATION OF CHEMICAL PROCESSES

机译:基于竞争进化的混沌微分进化算法及其在化学过程动态优化中的应用

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摘要

A chaotic differential evolution algorithm based on competition coevolution is proposed to improve the performance of the differential evolution (DE) algorithm. In the proposed algorithm (named CO-CDE), at first the population is divided into several sub-populations, each sub-population evolves individually, using different differential schemes. At the end of the evolution each subpopulation will have one individual with best fitness. After that all the individuals with best fitness compete with each other, at this time the fitness of one individual is defined as the number of times one individual is superior to others. Therefore one individual with best fitness is picked out and its information is shared by the whole population. To avoid premature convergence and raise the probability of escaping from local optima, a chaotic evolutionary operation based on chaotic variables is introduced into the algorithm and implemented to the whole population. The simulation experiment shows that the CO-CDE algorithm generally outperforms the original differential evolution algorithm for a suite of benchmark functions. Furthermore, the CO-CDE algorithm is applied to a dynamic optimization of chemical process. Experimental results have proved the proposed approach effective, statistically consistent, and promising.
机译:为了提高差分进化算法的性能,提出了一种基于竞争协同进化的混沌差分进化算法。在提出的算法(称为CO-CDE)中,首先将种群分为几个子种群,每个子种群使用不同的差分方案分别进化。在进化的最后,每个亚群将拥有一个最适合的个体。此后,所有具有最佳适应性的个体彼此竞争,此时,将一个个体的适应性定义为一个个体优于另一个个体的次数。因此,挑选出一个最适合的人,其信息将被整个人群共享。为了避免过早收敛并提高逃避局部最优的可能性,将基于混沌变量的混沌进化运算引入算法中,并实现到整个种群。仿真实验表明,对于一组基准函数,CO-CDE算法通常优于原始的差分进化算法。此外,CO-CDE算法被应用于化学过程的动态优化。实验结果证明了该方法的有效性,统计一致性和前景。

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