调度过程中双准则目标的混合遗传算法

IF 0.9 Q4 ENGINEERING, INDUSTRIAL
B. Raghavendra
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引用次数: 0

摘要

多目标问题的调度问题已经引起了研究者的兴趣。在过去的几十年里,各种经典的技术已经发展到解决多目标问题,但进化优化如遗传算法、粒子群、禁忌搜索等方法正在成功地应用。研究人员报告说,这些算法的混合提高了解决方案的效率和有效性。遗传算法与帕累托优化相结合,用于寻找双准则目标的最佳解。许多应用涉及许多目标函数,应用帕累托前方法可能有大量的潜在解。从这么大的集合中选择一个可行的解决方案对于决策者来说很难得到正确的解决方案。本文提出了帕累托前排序法,在遗传算法中选择产生新种群集所需子代的最佳亲本。采用基于遗传算法的Pareto前排序法,求解了最小化机器空闲和惩罚成本的双准则调度目标。算法在Matlab中进行了编码,并对交叉概率分别为0.6、0.7、0.8、0.9进行了仿真。模拟得到的结果令人鼓舞,交叉概率为0.6。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid genetic algorithm for bi-criteria objectives in scheduling process
Scheduling of multiobjective problems has gained the interest of the researchers. Past many decades, various classical techniques have been developed to address the multiobjective problems, but evolutionary optimizations such as genetic algorithm, particle swarm, tabu search method and many more are being successfully used. Researchers have reported that hybrid of these algorithms has increased the efficiency and effectiveness of the solution. Genetic algorithms in conjunction with Pareto optimization are used to find the best solution for bi-criteria objectives. Numbers of applications involve many objective functions, and appli- cation of the Pareto front method may have a large number of potential solutions. Selecting a feasible solution from such a large set is difficult to arrive the right solution for the decision maker. In this paper Pareto front ranking method is proposed to select the best parents for producing offspring’s necessary to generate the new populations sets in genetic algorithms. The bi-criteria objectives minimizing the machine idleness and penalty cost for scheduling process is solved using genetic algorithm based Pareto front ranking method. The algorithm is coded in Matlab, and simulations were carried out for the crossover probability of 0.6, 0.7, 0.8, and 0.9. The results obtained from the simulations are encouraging and consistent for a crossover probability of 0.6.
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来源期刊
CiteScore
2.80
自引率
21.40%
发文量
0
期刊介绍: Management and Production Engineering Review (MPER) is a peer-refereed, international, multidisciplinary journal covering a broad spectrum of topics in production engineering and management. Production engineering is a currently developing stream of science encompassing planning, design, implementation and management of production and logistic systems. Orientation towards human resources factor differentiates production engineering from other technical disciplines. The journal aims to advance the theoretical and applied knowledge of this rapidly evolving field, with a special focus on production management, organisation of production processes, management of production knowledge, computer integrated management of production flow, enterprise effectiveness, maintainability and sustainable manufacturing, productivity and organisation, forecasting, modelling and simulation, decision making systems, project management, innovation management and technology transfer, quality engineering and safety at work, supply chain optimization and logistics. Management and Production Engineering Review is published under the auspices of the Polish Academy of Sciences Committee on Production Engineering and Polish Association for Production Management.
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