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Multi-objective flow shop scheduling problem with stochastic parameters: fuzzy goal programming approach

机译:带有随机参数的多目标流水车间调度问题:模糊目标规划方法

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Flow shop scheduling problem with stochastic parameters is dealt with in this paper. A multi-objective mixed integer linear programming model is proposed in this concern which can generate non-permutation schedules. To provide a more realistic model, process time and release time are considered stochastic variables with normal distribution. The objective functions are minimising three performance measures including maximum completion time (Makespan), total flow time and total tardiness. Chance constrained programming (CCP) approach and fuzzy goal programming (FGP) are applied to deal with the stochastic parameters and multi-objective function. Due to the complexity of the problem, we have implemented an adapted genetic algorithm to solve large-sized problem. According to the computational experiments, the GA can reach good-quality solutions in reasonable computational time, and can be used to solve large scale problems effectively.
机译:研究了带有随机参数的流水车间调度问题。为此,提出了一种多目标混合整数线性规划模型,该模型可以生成非置换调度。为了提供更现实的模型,将处理时间和发布时间视为具有正态分布的随机变量。目标功能是最小化三个性能度量,包括最大完成时间(Makespan),总流程时间和总拖延时间。应用机会约束规划(CCP)方法和模糊目标规划(FGP)来处理随机参数和多目标函数。由于问题的复杂性,我们已经实现了一种自适应遗传算法来解决大型问题。根据计算实验,遗传算法可以在合理的计算时间内达到高质量的解,可以有效地解决大规模问题。

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