使用Lion优化算法最小化单台机器上的作业完成时间的总绝对偏差

Reza Yazdani , Mirpouya Mirmozaffari , Elham Shadkam , Mohammad Taleghani
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引用次数: 7

摘要

调度是一个决策过程,在服务和生产行业中发挥着重要作用。有效的调度可以帮助企业在竞争激烈的市场中生存。单机调度是调度研究领域中一个重要的优化问题。它可以在从制造业到计算机科学的各种现实工程问题中找到。由于单机调度问题的高度复杂性,开发近似方法,特别是元启发式算法来解决这些问题引起了人们的广泛关注。本研究采用狮子优化算法(LOA)求解具有维护活动的单机问题,其目标是最小化编译时间的总绝对偏差(TADC)。在调度文献中,ttac作为目标函数的研究很少。为了评估LOA的性能,将其与一组著名的元启发式进行比较。因此,产生了一组问题,并进行了全面的实验分析。计算实验结果表明了所提优化方法的优越性。
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Minimizing total absolute deviation of job completion times on a single machine with maintenance activities using a Lion Optimization Algorithm

Scheduling is a decision-making process that plays an important role in the service and production industries. Effective scheduling can assist companies to survive in the competitive market. Single machine scheduling is an important optimization problem in the scheduling research area. It can be found in a wide range of real-world engineering problems, from manufacturing to computer science. Due to the high complexity of single machine scheduling problems, developing approximation methods, particularly metaheuristic algorithms, for solving them have absorbed considerable attention. In this study, a Lion Optimization Algorithm (LOA) is employed to solve a single machine with maintenance activities, where the objective is to minimize the Total Absolute Deviation of Compilation Times (TADC). In the scheduling literature, TADC as an objective function has hardly been studied. To evaluate the performance of the LOA, it was compared against a set of well-known metaheuristics. Therefore, a set of problem was generated, and a comprehensive experimental analysis was conducted. The results of computational experiments indicate the superiority of the proposed optimization method.

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