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Ant colony optimisation with parameterised search space for the job shop scheduling problem

机译:带有参数化搜索空间的蚁群优化解决车间作业调度问题

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摘要

The job-shop scheduling problem (JSSP) is known to be NP-hard. Due to its complexity, many metaheuristic algorithm approaches have arisen. Ant colony metaheuristic algorithm, lately proposed, has successful application to various combinatorial optimisation problems. In this study, an ant colony optimisation algorithm with parameterised search space is developed for JSSP with an objective of minimising makespan. The problem is modelled as a disjunctive graph where arcs connect only pairs of operations related rather than all operations are connected in pairs to mitigate the increase of the spatial complexity. The proposed algorithm is compared with a multiple colony ant algorithm using 20 benchmark problems. The results show that the proposed algorithm is very accurate by generating 12 optimal solutions out of 20 benchmark problems, and mean relative errors of the proposed and the multiple colony ant algorithms to the optimal solutions are 0.93% and 1.24%, respectively.
机译:作业车间调度问题(JSSP)已知为NP难题。由于其复杂性,出现了许多元启发式算法方法。最近提出的蚁群元启发式算法已成功应用于各种组合优化问题。在这项研究中,针对JSSP开发了一种带有参数化搜索空间的蚁群优化算法,目的是最大程度地减少制造时间。该问题被建模为析取图,其中弧仅连接相关的操作对,而不是所有操作成对连接,以减轻空间复杂性的增加。将该算法与使用20个基准问题的多菌群蚁群算法进行了比较。结果表明,所提出的算法在20个基准问题中产生12个最优解,具有很高的精确度,所提算法和多重菌群算法对该最优解的平均相对误差分别为0.93%和1.24%。

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