论文标题

基于遗传的雾化菌落优化与分层聚类及其在雾服务放置中的影响

Genetic-based fog colony optimization hybridized with hierarchical clustering and its influence in the placement of fog services

论文作者

Talavera, Francisco, Lera, Isaac, Juiz, Carlos, Guerrero, Carlos

论文摘要

将雾器设备组织成雾菌群的组织减少了雾域的复杂性管理。对这种复杂性的主要影响因素之一是大量设备,即基础架构的高规模水平。雾菌落是雾器设备的子集,它们由独立于其他菌落进行管理。因此,参与殖民地管理的设备数量要小得多。先前的研究评估了雾集菌落布局对系统性能指标的影响。我们建议将分层聚类用作雾基础架构的雾集菌落布局的基本定义。从该分层聚类中获得的树状图包括所有菌落候选者。遗传算法负责选择优化了正在研究的两个性能指标的菌落候选者的子集:用户和应用程序之间的网络通信时间以及在每个菌群中内部管理应用程序放置的算法的执行时间。我们实施了NSGA-II,这是一种评估我们的建议的常见多目标方法。结果表明,诸如ga之类的元海拔脉络通过使用树状图来定义雾集菌落布局,从而改善了性能指标。研究了九种不同的实验场景,以不同的应用程序和雾设备的数量。在最坏的情况下,137代足以使GA的结果占据了使用两种对照算法获得的解决方案。在帕累托前沿的遗传溶液数量及其均匀分布也令人满意。

The organization of fog devices into fog colonies has reduced the complexity management of fog domains. One of the main influencing factors on this complexity is the large number of devices, i.e. the high scale level of the infrastructure. Fog colonies are subsets of fog devices that are managed independently from the other colonies. Thus, the number of devices involved in the management of a colony is much smaller. Previous studies have evaluated the influence of the fog colony layout on system performance metrics. We propose to use a hierarchical clustering as the base definition of the fog colony layout of the fog infrastructure. The dendrogram obtained from this hierarchical clustering includes all the colony candidates. A genetic algorithm is in charge of selecting the subset of colony candidates that optimizes the two performance metrics under study: the network communication time between users and applications, and the execution time of the algorithms that manage internally the placement of the applications in each colony. We implemented the NSGA-II, a common multi-objective approach for GAs, to evaluate our proposal. The results show that a meta-heuristic such as a GA improves the performance metrics by defining the fog colony layout through the use of the dendrogram. Nine different experiment scenarios, varying the number of applications and fog devices, were studied. In the worst of the cases, 137 generations were enough to the results of the GA dominated the solutions obtained with two control algorithms. The number of genetic solutions and their homogeneous distribution in the Pareto front were also satisfactory.

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