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Performance of Metaheuristic Algorithms for the Controller Placement Problem in SDN

机译:元启发式算法在SDN控制器布局问题中的性能

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Software Defined Networks (SDN) have the potential to improve network resource utilization through its logically centralized architecture. However, the growing interest on its large-scale deployment has raised issues regarding how to better place one or more (physical) SDN controllers under conflicting network performance metrics, which naturally leads to multiobjective optimization problems. This paper presents a performance comparison between two metaheuristic optimization algorithms: the Non-dominated Sorting Genetic Algorithm II (NSGA-II) and the Pareto Simulated Annealing (PSA) by taking into account both latency and bandwidth in the objective function. Both algorithms present good results in terms of accuracy, processing time, and lower utilization of computational resources. In particular, the NSGA-II algorithm showed better convergence properties and a better exploration of the search space.
机译:软件定义网络(SDN)可以通过其逻辑上集中的体系结构来提高网络资源利用率。但是,对其大规模部署的兴趣日益浓厚,引发了有关如何更好地将一个或多个(物理)SDN控制器置于冲突的网络性能指标下的问题,这自然会导致多目标优化问题。本文通过考虑目标函数中的等待时间和带宽,介绍了两种元启发式优化算法之间的性能比较:非主导排序遗传算法II(NSGA-II)和帕累托模拟退火(PSA)。两种算法在准确性,处理时间和较低的计算资源利用率方面均显示出良好的结果。特别是,NSGA-II算法显示出更好的收敛性和对搜索空间的更好探索。

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