Comparing MILP, CP, and A* for multiple stacker crane scheduling

Fredrik Hagebring, Oskar Wigström, B. Lennartson, S. Ware, R. Su
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引用次数: 3

Abstract

This paper describes an optimisation model for the scheduling of a system consisting of three stacker cranes that are restricted to the same track. To improve the efficiency of the solution methods, a novel simplification of the model is presented, which has a low impact on the quality of the solution but greatly decreases its complexity. This model is then used to benchmark several popular solution methods, including both optimal and approximate methods. Some are based on monolithic models, whereas others solve the problem in phases by using sub-problem formulations. The result presented in this paper shows that evaluated solution methods have complementary strengths and weaknesses. Constraint Programming (CP) is very efficient on small scale problems, while Mixed Integer Linear Programming (MILP) scales much better when the number of movement orders increases. However, none of these methods are able to solve large instances of the problem to optimality. To handle the complexity of the problem, approximate solution methods are the only viable option. In this paper we show that promising results can be obtained even with simple methods using well known search algorithms such as A* and Tabu-search. However, preliminary results on more advanced search algorithms show that further improvements may be achieved, allowing the solution of very large problem instances.
多垛机调度的MILP、CP和A*的比较
本文描述了一个由限制在同一轨道上的三台堆垛起重机组成的系统的调度优化模型。为了提高求解方法的效率,提出了一种新的模型简化方法,该方法对解的质量影响较小,但大大降低了解的复杂度。然后使用该模型对几种常用的求解方法进行基准测试,包括最优方法和近似方法。有些基于整体模型,而另一些则通过使用子问题公式分阶段解决问题。本文的研究结果表明,评价的求解方法具有互补的优点和缺点。约束规划(CP)在小规模问题上是非常有效的,而混合整数线性规划(MILP)在运动阶数增加时具有更好的扩展性。然而,这些方法都不能将大型实例的问题解决到最优。为了处理问题的复杂性,近似解法是唯一可行的选择。在本文中,我们证明了即使使用众所周知的搜索算法(如A*和禁忌搜索)的简单方法也可以获得有希望的结果。然而,对更高级的搜索算法的初步结果表明,进一步的改进可能会实现,允许解决非常大的问题实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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