求解聚类最短路径树问题的有效多因子进化算法

Huynh Thi Thanh Binh, Pham Dinh Thanh, Tran Ba Trung, Le Phuong Thao
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引用次数: 7

摘要

由于灌溉系统、配电网和电缆网络优化的需要,集群最短路径树问题(CSTP)引起了研究界的广泛关注和兴趣。对于这类具有较大维数的NP-Hard问题,通常采用近似方法。基于生物进化的进化算法已被证明在寻找各个领域问题的近似解方面是有效的。多因子进化算法(multi - factor evolution algorithm, MFEA)是近年来应用最广泛的人工智能领域之一,其在求解优化问题方面的表现非常有前景。MFEA与传统遗传算法(GA)的主要区别在于前者可以同时解决多个任务,并利用多任务问题中的隐式遗传迁移,而后者一次解决一个问题,利用一个搜索空间。考虑到这些特点,本文提出了CSTP任务的MFEA,以及新的遗传算子:种群初始化算子、交叉算子和突变算子。此外,本文还介绍了一种新的解码方案,用于从MFEA的统一表示中导出阶乘解,这是影响MFEA任何变体性能的关键因素。为了检验所提出的技术的效率,在广泛的不同实例集上进行了实验,结果表明,所提出的算法在大多数测试用例中优于现有的启发式算法。在实验结果部分,我们还指出了哪些情况允许所提出的算法具有良好的性能。
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Effective Multifactorial Evolutionary Algorithm for Solving the Cluster Shortest Path Tree Problem
Arising from the need of all time for optimization of irrigation systems, distribution network and cable network, the Cluster Shortest Path Tree Problem (CSTP) has been attracting a lot of attention and interest from the research community. For such an NP-Hard problem with a great dimensionality, the approximation approach is usually taken. Evolutionary Algorithms, based on biological evolution, has been proved to be effective in finding approximate solutions to problems of various fields. The multifactorial evolutionary algorithm (MFEA) is one of the most recently exploited realms of EAs and its performance in solving optimization problems has been very promising. The main difference between the MFEA and the traditional Genetic Algorithm (GA) is that the former can solve multiple tasks at the same time and take advantage of implicit genetic transfer in a multitasking problem, while the latter solves one problem and exploit one search space at a time. Considering these characteristics, this paper proposes a MFEA for CSTP tasks, together with novel genetic operators: population initialization, crossover, and mutation operators. Furthermore, a novel decoding scheme for deriving factorial solutions from the unified representation in the MFEA, which is the key factor to the performance of any variant of the MFEA, is also introduced in this paper. For examining the efficiency of the proposed techniques, experiments on a wide range of diverse sets of instances were implemented and the results showed that the proposed algorithms outperformed an existing heuristic algorithm for most of the testing cases. In the experimental results section, we also pointed out which cases allowed for a good performance of the proposed algorithm.
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