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A multi-population hybrid biased random key genetic algorithm for hop-constrained trees in nonlinear cost flow networks

机译:非线性成本流网络中跳数受限树的多种群混合有偏随机密钥遗传算法

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摘要

Genetic algorithms and other evolutionary algorithms have been successfully applied to solve constrained minimum spanning tree problems in a variety of communication network design problems. In this paper, we enlarge the application of these types of algorithms by presenting a multi-population hybrid genetic algorithm to another communication design problem. This new problem is modeled through a hop-constrained minimum spanning tree also exhibiting the characteristic of flows. All nodes, except for the root node, have a nonnegative flow requirement. In addition to the fixed charge costs, nonlinear flow dependent costs are also considered. This problem is an extension of the well know NP-hard hop-constrained Minimum Spanning Tree problem and we have termed it hop-constrained minimum cost flow spanning tree problem. The efficiency and effectiveness of the proposed method can be seen from the computational results reported.
机译:遗传算法和其他进化算法已成功应用于解决各种通信网络设计问题中的约束最小生成树问题。在本文中,我们通过向另一种通信设计问题提出一种多种群混合遗传算法来扩大这些算法的应用范围。这个新问题是通过跳数受限的最小生成树建模的,该树也显示了流量的特征。除根节点外,所有节点都具有非负流量要求。除了固定的装料成本外,还考虑了非线性流量相关的成本。此问题是众所周知的NP硬跳受限最小生成树问题的扩展,我们称其为跳受限最小成本流生成树问题。从报告的计算结果可以看出该方法的效率和有效性。

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