On the solution of petrochemical blending problems with classical metaheuristics

ORiON Pub Date : 2016-12-08 DOI:10.5784/32-2-520
L. Venter, S. E. Visagie
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引用次数: 0

Abstract

In this paper a comparison of classical metaheuristic techniques over different sizes of petrochemical blending problems is presented. Three problems are taken from the literature and used for initial comparisons and parameter setting. A fourth instance of real world size is then introduced and the best performing algorithm of each type is then applied to it. Random search techniques, such as blind random search and local random search, deliver fair results for the smaller instances. Within the class of genetic algorithms the best results for all three problems were obtained using ranked fitness assignment with tournament selection. Good results are also obtained by means of continuous tabu search approaches. A simulated annealing approach also yielded fair results. Comparisons of the results for the different approaches shows that the tabu search technique delivers the best results with respect to solution quality and execution time for all of the three smaller problems under consideration. However, simulated annealing delivers the best result with respect to solution quality and execution time for the introduced real world size problem.
用经典元启发式方法求解石油化工共混问题
本文比较了经典的元启发式方法在不同尺寸的石油化工共混问题上的应用。从文献中选取了三个问题,用于初始比较和参数设置。然后引入现实世界大小的第四个实例,然后将每种类型中性能最好的算法应用于它。随机搜索技术,如盲随机搜索和局部随机搜索,可以为较小的实例提供公平的结果。在遗传算法中,采用带比赛选择的分级适应度分配方法获得了三个问题的最佳结果。采用连续禁忌搜索方法也取得了较好的结果。模拟退火方法也得到了合理的结果。对不同方法的结果进行比较表明,禁忌搜索技术在解决方案质量和执行时间方面为考虑的所有三个较小问题提供了最佳结果。然而,对于引入的现实世界尺寸问题,模拟退火在解决质量和执行时间方面提供了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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