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A memory efficient stochastic evolution based algorithm for the multi-objective shortest path problem

机译:基于内存的随机多目标最短路径问题的随机进化算法

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Multi-objective shortest path (MOSP) problem aims to find the shortest path between a pair of source and a destination nodes in a network. This paper presents a stochastic evolution (StocE) algorithm for solving the MOSP problem. The proposed algorithm is a single-solution-based evolutionary algorithm (EA) with an archive for storing several non-dominant solutions. The solution quality of the proposed algorithm is comparable to the established population-based EAs. In StocE, the solution replaces its bad characteristics as the generations evolve. In the proposed algorithm, different sub-paths are the characteristics of the solution. Using the proposed perturb operation, it eliminates the bad sub-paths from generation to generation. The experiments were conducted on huge real road networks. The proposed algorithm is comparable to well-known single-solution and population-based EAs. The single-solution-based EAs are memory efficient, whereas, the population-based EAs are known for their good solution quality. The performance measures were the solution quality, speed and memory consumption, assessed by the hypervolume (HV) metric, total number of evaluations and memory requirements in megabytes. The HV metric of the proposed algorithm is superior to that of the existing single-solution and population-based EAs. The memory requirements of the proposed algorithm is at least half than the EAs delivering similar solution quality. The proposed algorithms also executes more rapidly than the existing single-solution-based algorithms. The experimental results show that the proposed algorithm is suitable for solving MOSP problems in embedded systems.
机译:多目标最短路径(MOSP)问题旨在找到网络中一对源节点和目标节点之间的最短路径。本文提出了一种用于解决MOSP问题的随机进化算法(StocE)。所提出的算法是基于单解决方案的进化算法(EA),带有用于存储多个非主要解决方案的档案。所提出算法的解决方案质量与已建立的基于人口的EA相当。在StocE中,随着世代的发展,该解决方案取代了其不良特性。在提出的算法中,不同的子路径是解决方案的特征。使用建议的扰动操作,它消除了一代代之间的不良子路径。实验是在巨大的真实道路网络上进行的。所提出的算法可与众所周知的单解决方案和基于总体的EA媲美。基于单解决方案的EA具有高存储效率,而基于总体的EA以其良好的解决方案质量而闻名。性能度量包括解决方案质量,速度和内存消耗,通过超量(HV)指标评估,评估总数和内存需求(以兆字节为单位)。所提出算法的HV度量优于现有的单解决方案和基于人口的EA。所提出算法的内存要求至少是提供类似解决方案质量的EA的一半。与现有的基于单解决方案的算法相比,所提出的算法的执行速度也更快。实验结果表明,该算法适用于解决嵌入式系统中的MOSP问题。

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