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首页> 外文期刊>International journal of communication systems >A dynamic fog service provisioning approach for IoT applications
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A dynamic fog service provisioning approach for IoT applications

机译:IOT应用程序动态迷雾服务配置方法

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摘要

Internet of Things (IoT) is an ecosystem that can improve the life quality of humans through smart services, thereby facilitating everyday tasks. Connecting to cloud and utilizing its services are now public and common, and the experts seek to find some ways to complete cloud computing to use it in IoT, which in next decades will make everything online. Fog computing, where the cloud computing expands to the edge of the network, is one way to achieve the objectives of delay reduction, immediate processing, and network congestion. Since IoT devices produce variations of workloads over time, IoT application services will experience traffic trace fluctuations. So knowing about the distribution of future workloads required to handle IoT workload while meeting the QoS constraint. As a result, in the context of fog computing, the main objective of resource management is dynamic resource provisioning such that it avoids the excess or dearth of provisioning. In the present work, we first propose a distributed computing framework for autonomic resource management in the context of fog computing. Then, we provide a customized version of a provisioning system for IoT services based on control MAPE-k loop. The system makes use of a reinforcement learning technique as decision maker in planning phase and support vector regression technique in analysis phase. At the end, we conduct a family of simulation-based experiments to assess the performance of our introduced system. The average delay, cost, and delay violation are decreased by 1.95%, 11%, and 5.1%, respectively, compared with existing solutions.
机译:事情互联网(物联网)是一种通过智能服务来改善人类生活质量的生态系统,从而促进日常任务。连接到云并利用其服务现在公开,共同,专家们寻求找到一些方法来完成云计算在IoT中使用它,在未来几十年中将在线使其成为所有内容。雾计算,其中云计算扩展到网络边缘,是实现延迟减少,立即处理和网络拥塞目标的一种方法。由于IOT设备随着时间的推移产生工作负载的变化,因此IOT应用程序服务将遇到流量跟踪波动。因此,了解在满足QoS约束时处理IoT工作负载所需的未来工作负载所需的分发。结果,在雾计算的上下文中,资源管理的主要目标是动态资源配置,以避免供应的过剩或缺乏。在目前的工作中,我们首先在雾计算上提出了一种用于自主资源管理的分布式计算框架。然后,我们为基于控制Mape-k循环提供IOT服务的配置系统的自定义版本。该系统利用加强学习技术作为决策者在规划阶段和支持分析阶段支持向量回归技术。最后,我们开展了一家基于模拟的实验,以评估我们引入的系统的表现。与现有解决方案相比,平均延迟,成本和延迟违规分别下降1.95%,11%和5.1%。

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