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Using Markov Learning Utilization Model for Resource Allocation in Cloud of Thing Network

机译:使用Markov学习利用模型来网络云中的资源分配

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摘要

The integration of the Internet of Things (IoT) and cloud environment has led to the creation of Cloud of Things, which has given rise to new challenges in IoT area. In this paper, using the Markov model learning method and calculating the need probability of each object to resources shortly to reduce latency and maximize network utilization, allocating resources in the fog layer has been possible and processed. By using simulations in the CloudSim platform, it is examined the processor productivity for the number of tasks, the workflow overhead for the number of tasks, physical machine's energy consumption for the number of tasks, the data locality for the number of tasks, resource utilization for the number of tasks, and completion of task for the number of tasks and compared with the SMDP (SemiMarkov decision processes) and MDP methods, results show that the proposed research is effective and promising.
机译:事物互联网(物联网)和云环境的整合导致了创建事物的云,这对IoT地区的新挑战产生了困境。 在本文中,使用Markov模型学习方法并计算每个对象的需要概率,以便减少延迟和最大化网络利用率,因此可以进行分配和处理雾层中的资源。 通过在CloudSim平台中使用模拟,它被检测到任务数量的处理器生产力,任务数量的工作流程开销,物理机器的任务数量的能耗,任务数量的数据局部,资源利用率 对于任务数量以及任务数量的任务以及与SMDP(Semimarkov决策过程)和MDP方法进行比较,结果表明,拟议的研究是有效和有前途的。

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