求解舰队现代化问题的离散微分进化算法

Ismail M. Ali, H. Turan, S. Elsawah
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引用次数: 0

摘要

差分进化由于其强大的基于欧几里得距离的学习概念,在连续领域中成功地解决了优化问题。虽然这影响了它在求解一些有置换变量的问题时的适用性,但一些研究表明,它可以适用于有效地求解基于置换的问题。针对具有离散参数的舰队现代化问题,提出了一种改进的差分演化设计方法。在这个问题中,需要若干现代化行动将一支军事力量从一支过时的舰队转变为一支更现代化的舰队,其目标是在预先确定的规划期内以最小的成本最大限度地部署部队。该方法结合了一种新的解表示、一种改进的修复启发式方法、一种改进的突变算子和映射方法,以有效地处理目标问题的离散特征,并结合仿真模型来评估生成的解的适应度。为了判断其性能,所提出的算法已被实施来解决一个案例研究,该案例研究解决了澳大利亚陆军最近的舰队现代化战略,以在未来十年和持续的过程中对其部队进行资本重组。实验结果表明,该算法能提供更高效的机队现代化调度方案,分别比其他两种比较算法的方案提高29.32%和51.43%。
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A Discrete Differential Evolution Algorithm for a Military Fleet Modernization Problem
Differential evolution has a long track record of successfully solving optimization problems in continuous domain due it its powerful Euclidean distance-based learning concept. Although this affects its suitability for solving several problems with permutation variables, several studies show that it can be applicable for effectively solving permutation-based problems. In this paper, an improved design of differential evolution is introduced to solve a military fleet modernization problem with discrete parameters. In this problem, several modernization oper-ations are required to transition a military force from an outdated fleet to a more modern one with the objective of maximizing the force's deployment at the minimum cost over a pre-determined planning period. The proposed differential evolution incorporates a new solution representation, a proposed repairing heuristic method, a modified mutation operator and mapping method for efficiently tackling the discrete characteristics of the targeted problem and is coupled with a simulation model to evaluate the fitness of the generated solutions. To judge its performance, the proposed algorithm has been implemented to solve a case study that addresses recent fleet modernization strategies of the Australian Army to recapitalize its forces over the next decade and in a continual process. The experimental results show that the proposed algorithm can provide more efficient fleet modernization schedules which are 29.32% and 51.43% better than those obtained by other two comparative algorithms.
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