An estimation of distribution algorithm for combinatorial optimization problems

R. Pérez-Rodríguez
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引用次数: 2

Abstract

This paper considers solving more than one combinatorial problem considered some of the most difficult to solve in the combinatorial optimization field, such as the job shop scheduling problem (JSSP), the vehicle routing problem with time windows (VRPTW), and the quay crane scheduling problem (QCSP). A hybrid metaheuristic algorithm that integrates the Mallows model and the Moth-flame algorithm solves these problems. Through an exponential function, the Mallows model emulates the solution space distribution for the problems; meanwhile, the Moth-flame algorithm is in charge of determining how to produce the offspring by a geometric function that helps identify the new solutions. The proposed metaheuristic, called HEDAMMF (Hybrid Estimation of Distribution Algorithm with Mallows model and Moth-Flame algorithm), improves the performance of recent algorithms. Although knowing the algebra of permutations is required to understand the proposed metaheuristic, utilizing the HEDAMMF is justified because certain problems are fixed differently under different circumstances. These problems do not share the same objective function (fitness) and/or the same constraints. Therefore, it is not possible to use a single model problem. The aforementioned approach is able to outperform recent algorithms under different metrics for these three combinatorial problems. Finally, it is possible to conclude that the hybrid metaheuristics have a better performance, or equal in effectiveness than recent algorithms.
组合优化问题的一种分布估计算法
本文考虑了组合优化领域中最难解决的几个组合问题,如作业车间调度问题(JSSP)、带时间窗的车辆路径问题(VRPTW)和码头起重机调度问题(QCSP)。结合Mallows模型和Moth-flame算法的混合元启发式算法解决了这些问题。Mallows模型通过指数函数模拟问题的解空间分布;与此同时,蛾焰算法负责通过一个几何函数来确定如何产生后代,该函数有助于识别新的解决方案。提出的元启发式算法,称为HEDAMMF(混合估计分布算法与Mallows模型和Moth-Flame算法),提高了现有算法的性能。虽然要理解所提出的元启发式方法需要知道排列的代数,但利用HEDAMMF是合理的,因为在不同的情况下,某些问题的解决方式不同。这些问题并不具有相同的目标函数(适应度)和/或相同的约束条件。因此,不可能使用单个模型问题。上述方法能够在这三个组合问题的不同度量下优于最近的算法。最后,可以得出结论,混合元启发式算法具有更好的性能,或者与最近的算法相同的有效性。
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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