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Multicriteria Network Design Using Evolutionary Algorithm

机译:使用进化算法的多准则网络设计

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摘要

In this paper, we revisit a general class of multi-criteria multi-constrained network design problems and attempt to solve, in a novel way, with Evolutionary Algorithms (EAs). A major challenge to solving such problems is to capture possibly all the (representative) equivalent and diverse solutions. In this work, we formulate, without loss of generality, a bi-criteria bi- constrained communication network topo-logical design problem. Two of the primary objectives to be optimized are network delay and cost subject to satisfaction of reliability and flow-constraints. This is a NP-hard problem so we use a hybrid approach (for initialization of the population) along with EA. Furthermore, the two-objective optimal solution front is not known a priori. Therefore, we use a multiobjective EA which produces diverse solution space and monitors convergence; the EA has been demonstrated to work effectively across complex problems of unknown nature. We tested this approach for designing networks of different sizes and found that the approach scales well with larger networks. Results thus obtained are compared with those obtained by two traditional approaches namely, the exhaustive search and branch exchange heuristics.
机译:在本文中,我们将回顾一类多准则多约束网络设计问题,并尝试以一种新颖的方式来解决进化算法(EA)。解决此类问题的主要挑战是捕获所有(代表)等效和多样化的解决方案。在这项工作中,我们在不失一般性的前提下制定了一个双标准的双约束通信网络拓扑设计问题。要优化的两个主要目标是网络延迟和成本,要满足可靠性和流量约束的要求。这是一个NP难题,因此我们将混合方法(用于初始化种群)与EA一起使用。此外,先验未知两个目标的最优解前沿。因此,我们使用一个多目标EA,它可以产生不同的解决方案空间并监控收敛;实践证明,EA可以有效解决未知性质的复杂问题。我们测试了此方法以设计不同大小的网络,发现该方法可与较大的网络很好地扩展。将由此获得的结果与通过两种传统方法即穷举搜索和分支交换启发法获得的结果进行比较。

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