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Multi-objective optimization for the periodic operation of the naphtha pyrolysis process using a new parallel hybrid algorithm combining NSGA-II with SQP

机译:使用NSGA-II和SQP的新型并行混合算法对石脑油热解过程的周期性操作进行多目标优化

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摘要

Nowadays naphtha pyrolysis is the most important process for ethylene production, which can bring along another important monomer, namely propylene. The demand of both the ethylene and propylene has recently increased dramatically and naphtha pyrolysis is indispensable to satisfy the demand of both crucial products simultaneously, resulting in a typical multi-objective optimization problem. The nondominated sorting genetic algorithm (NSGA-II), which has been successfully applied to many multi-objective optimization problems, cannot efficiently generate the Pareto set which spreads as widely as the true Pareto front in a limited time, meanwhile, its convergence process is rather slow and could not meet the speed requirement when used for the complicated industrial problem mentioned above. To efficiently solve the multi-objective optimization problem of the industrial complicated chemical processes, this paper first proposed a new parallel hybrid multi-objective optimization algorithm combing NSGA-II with SQP (Successive Quadratic Programming) used to improve the efficiency of the NSGA-II and the quality of the Pareto-optimal set. Then the multi-objective operation optimization model of naphtha pyrolysis was established, and at last the application of the proposed algorithm to improve the performance of an industrial naphtha pyrolysis process was presented and analyzed.
机译:如今,石脑油热解是生产乙烯最重要的过程,它可以带来另一个重要的单体,即丙烯。乙烯和丙烯的需求最近都急剧增加,并且石脑油热解对于同时满足两种关键产物的需求是必不可少的,从而导致典型的多目标优化问题。已成功应用于许多多目标优化问题的非支配排序遗传算法(NSGA-II)无法有效地生成在有限的时间内像真实的Pareto前沿那样广泛散布的Pareto集。当用于上述复杂的工业问题时,速度相当慢并且不能满足速度要求。为了有效解决工业复杂化学过程的多目标优化问题,本文首先提出了一种新的并行混合多目标优化算法,该算法将NSGA-II与SQP(成功二次规划)相结合,以提高NSGA-II的效率。以及帕累托最优集的质量。然后建立了石脑油热解的多目标运行优化模型,最后提出并分析了该算法在提高工业石脑油热解性能方面的应用。

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