首页> 外文会议>Intelligent Control and Automation, 2006. WCICA 2006. The Sixth World Congress on >Aromatic Hydrocarbon Isomerization Process Optimization based on IDE and AOS
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Aromatic Hydrocarbon Isomerization Process Optimization based on IDE and AOS

机译:基于IDE和AOS的芳烃异构化工艺优化

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Based on artificial neural networks model, the aromatic hydrocarbon isomerization process optimization is a large-scale and nonlinear optimization problem. According to the character of the optimization problem, a novel intelligent differential evolution (IDE) algorithm containing an adaptive mutation operator, in which the mutation probability is determined according to the evolved generations, and an adaptive optimization strategy (AOS) of adaptive extended operation constraint conditions were proposed to optimize operation conditions. Satisfactory result was obtained. The adaptive mutation operator makes the individuals diversity at the initial generations to overcome the premature, and reduces the mutation probability gradually during the evolutionary process to preserve the excellent individuals at the terminal generations and enhance the probability of obtained the global optimal solution. The comparison results demonstrate that IDE's on-line and off-line performances are all superior to those of DE, the probability of obtained the global optimal solution is larger than that of DE, and that the parameter sensitivity degree of IDE is lower than that of DE.
机译:基于人工神经网络模型,芳烃异构化过程的优化是一个大规模的非线性优化问题。根据优化问题的特点,提出了一种新的智能差分进化算法,该算法包含一个自适应变异算子,该变异算子根据进化代确定变异概率,以及一种自适应扩展操作约束的自适应优化策略。提出了优化操作条件的条件。获得满意的结果。自适应变异算子使个体在初代具有多样性以克服早熟,并在进化过程中逐渐降低变异概率,以在末代保留优秀个体并提高获得全局最优解的概率。比较结果表明,IDE的在线和离线性能均优于DE,IDE的全局最优解的概率大于DE,并且IDE的参数敏感性程度低于DE。 DE。

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