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Energy Efficiency Opposition-Based Learning and Brain Storm Optimization for VNF-SC Deployment in IoT

机译:IOT中VNF-SC部署的能效基于反对的学习和脑风暴优化

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Network Function Virtualization (NFV) can provide the resource according to the request and can improve the flexibility of the network. It has become the key technology of the Internet of Things (IoT). Resource scheduling for the virtual network function service chain (VNF-SC) is the key issue of the NFV. Energy consumption is an important indicator for the IoT; we take the energy consumption into the objective and define a novel objective to satisfying different objectives of the decision-maker. Due to the complexity of VNF-SC deployment problem, through taking into consideration of the heterogeneity of nodes (each node only can provide some specific VNFs), and the limitation of resources in each node, a novel optimal model is constructed to define the problem of VNF-SC deployment problem. To solve the optimization model effectively, a weighted center opposition-based learning is introduced to brainstorm optimization to find the optimal solution (OBLBSO). To show the efficiency of the proposed algorithm, numerous of simulation experiments have been conducted. Experimental results indicate that OBLBSO can improve the accuracy of the solution than compared algorithm.
机译:网络功能虚拟化(NFV)可以根据请求提供资源,可以提高网络的灵活性。它已成为事物互联网(物联网)的关键技术。虚拟网络功能服务链(VNF-SC)的资源调度是NFV的关键问题。能源消耗是IOT的重要指标;我们将能源消耗纳入目标,并确定一个小说目标,以满足决策者的不同目标。由于VNF-SC部署问题的复杂性,通过考虑节点的异构性(每个节点只能提供一些特定的VNF),以及每个节点中的资源的限制,构建了一种新颖的最佳模型来定义问题VNF-SC部署问题。为了有效地解决优化模型,引入了加权中心的基于反对的学习,以头脑风暴优化以找到最佳解决方案(oblbso)。为了表明所提出的算法的效率,已经进行了许多模拟实验。实验结果表明,除了比较算法的情况下,橡树可以提高解决方案的准确性。

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