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A multi-objective optimization model for a reliable generalized flow network design

机译:可靠的广义流网设计的多目标优化模型

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Design of a reliable network in presence of flow loss has become the primary objective of today's network designers. However, there are other important conflicting objectives that hinder the process of efficient network design. This study proposes a multi-objective optimization model for reliable communication flow networks, including maximizing the network reliability, minimizing total cost, and maximizing network flow, simultaneously. The total cost comprises the cost of construction of network arcs and the cost of flow, while arcs may fail to operate in full-capacity and may only function to a fraction of their capacity. The reliability-based network-design is modeled as a mixed-integer linear programming and solved by three metaheuristic multi-objective methods namely multi-objective particle swarm optimization (MOPSO) and two versions of non-dominated sorting genetic algorithm (Le., NSGA-II and NSGA-III). In order to select the best compromise solution from the Pareto front members, a fuzzy-based mechanism is utilized. Finally, in order to measure the performance of the three algorithms, several numerical examples in small and large-scale are solved. The computational results indicate that NSGA-III is superior to MOPSO and NSGA-II in terms of convergence rate and running time especially for large-scale problems.
机译:在存在流量损失的情况下,设计可靠的网络已成为当今网络设计人员的主要目标。但是,还有其他重要的冲突目标阻碍了高效网络设计的过程。这项研究提出了一个可靠的通信流网络的多目标优化模型,包括同时最大化网络可靠性,最小化总成本和最大化网络流量。总成本包括网络电弧的建设成本和流量成本,而电弧可能无法满负荷运行,并且只能发挥其容量的一小部分。基于可靠性的网络设计被建模为混合整数线性规划,并通过三种元启发式多目标方法(即多目标粒子群优化(MOPSO))和两种版本的非支配排序遗传算法(例如,NSGA)进行求解-II和NSGA-III)。为了从Pareto前端成员中选择最佳折衷解决方案,使用了基于模糊的机制。最后,为了衡量这三种算法的性能,求解了几个小规模和大规模的数值示例。计算结果表明,NSGA-III在收敛速度和运行时间方面优于MOPSO和NSGA-II,特别是对于大规模问题。

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