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Job shop rescheduling by using multi-objective genetic algorithm

机译:使用多目标遗传算法的作业车间调度

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In current manufacturing systems, production is a very dynamic process with many unexpected events and continuously emerging new requirements. Researchers have developed a wide variety of procedures and heuristics for solving these scheduling problems, called rescheduling. Most proposed approaches are often derived by making simplifying assumptions. As a consequence, the approach is not in accordance with functioning of the real manufacturing system. Such approaches are frequently not suitable and flexible enough to respond efficiently to fast changes in the environment. In this paper, we focus on a practical solution of rescheduling by using mathematical modeling and interactive adaptive-weight evolutionary algorithm. We extend the rescheduling problem to a multi-objective optimization model. We formulate several objectives for corresponding requirement, such as due date, capability, transportation cost, set up cost and available resources etc. We can select the necessary one objective or some objectives for the manufacturing flexibility. However, for traditional approaches of multi-objective optimization problems, researchers focused on the solutions diversity. For the multi-objective rescheduling problem (moJSRS), we have to consider not only the solutions diversity, but also adapting the objectives alternative. We will propose an interactive adaptive-weight evolutionary algorithm with adapting the characteristics of a multi-objective job shop rescheduling problem. Some practical test instances will be demonstrated the effectiveness and efficiency of the proposed algorithm.
机译:在当前的制造系统中,生产是一个非常动态的过程,具有许多意外事件和不断出现的新要求。研究人员已经开发出各种各样的程序和启发式方法来解决这些调度问题,称为重新调度。大多数提议的方法通常是通过简化假设而得出的。结果,该方法不符合实际制造系统的功能。这样的方法通常不适合并且不够灵活以不能有效地响应环境的快速变化。在本文中,我们专注于通过使用数学建模和交互式自适应权重进化算法进行重新计划的实用解决方案。我们将重新计划问题扩展到多目标优化模型。我们为相应的需求制定了几个目标,例如到期日期,功能,运输成本,设置成本和可用资源等。我们可以为制造灵活性选择必要的一个目标或一些目标。但是,对于传统的多目标优化问题方法,研究人员将重点放在了解决方案多样性上。对于多目标重新计划问题(moJSRS),我们不仅要考虑解决方案的多样性,而且还要考虑替代目标。我们将提出一种交互式自适应加权进化算法,以适应多目标作业车间调度问题的特征。一些实际的测试实例将证明所提出算法的有效性和效率。

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