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Load balancing strategy in software defined network by improved whale optimization algorithm

机译:通过改进的鲸井优化算法将软件定义网络中的负载平衡策略

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From the recent study, it is observed that even though cloud computing grants the greatest performance in the case of storage, computing, and networking services, the Internet of Things (IoT) still suffers from high processing latency, awareness of location, and least mobility support. To address these issues, this paper integrates fog computing and Software-Defined Networking (SDN). Importantly, fog computing does the extension of computing and storing to the network edge that could minimize the latency along with mobility support. Further, this paper aims to incorporate a new optimization strategy to address the "Load balancing" problem in terms of latency minimization. A new Thresholded-Whale Optimization Algorithm (T-WOA) is introduced for the optimal selection of load distribution coefficient (time allocation for doing a task). Finally, the performance of the proposed model is compared with other conventional models concerning latency. The simulation results prove that the SDN based T-WOA algorithm could efficiently minimize the latency and improve the Quality of Service (QoS) in Software Defined Cloud/Fog architecture.
机译:从最近的一项研究中,据观察,即使云计算在存储,计算和网络服务的情况下授予最大的性能,事情(物联网)仍然存在高处理延迟,地点意识和最小移动性的互联网支持。为解决这些问题,本文集成了雾计算和软件定义的网络(SDN)。重要的是,FOG计算执行计算和存储到网络边缘的扩展,该网络边缘可以最小化延迟以及移动性支持。此外,本文旨在纳入新的优化策略,以解决延迟最小化的“负载平衡”问题。引入了一种新的阈值鲸优化算法(T-WOA),用于最佳选择负载分布系数(用于执行任务的时间分配)。最后,将所提出的模型的性能与关于延迟的其他传统模型进行比较。仿真结果证明了基于SDN的T-WOA算法可以有效地最小化延迟和提高软件定义云/雾架中的服务质量(QoS)。

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