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Intelligent workload allocation in IoT-Fog-cloud architecture towards mobile edge computing

机译:IOT-FOG云架构对移动边缘计算的智能工作量分配

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摘要

Because of the tremendous growth in the number of smart vehicular devices and 5G mobile technologies, the Internet of Things (IoT) has experienced rapid expansion. This has led to a considerable increase in the volume of sensory data produced from, but not limited to, monitoring devices, traffic congestion in cities, safety, and pollution control. Cloud computing can deal with the corresponding workload by providing virtually unlimited computational resources. But, given the importance of the quality of service and security in delay-sensitive requests, other solutions like fog computing have also been introduced to speed up processing and management of sensory data in real scenarios like smart grid and IoT. Processing workloads at the network edge reduces the delay in mobile edge computing, but it highly increases the consuming power. Therefore, there is an urgent need for the improvement of the energy model of fog devices at the network edge. This paper is an attempt to modify this model using the green energy concept and reduce both delay and power consumption in multi-sensorial frameworks in secure IoT systems. In the proposed method, a Genetic Algorithm (GA) is used for handling a large number of requests and the corresponding quality and security limitations. Simulation results show that the proposed method can simultaneously reduce the delay and the power consumption of edge devices compared to a baseline strategy.
机译:由于智能车辆设备数量和5G移动技术的数量巨大增长,事物互联网(物联网)经历了快速扩张。这导致了从,但不限于监测设备,城市,安全性和污染控制中的交通拥堵的感觉数据的体积相当大的增加。云计算可以通过提供几乎无限制的计算资源来处理相应的工作负载。但是,鉴于延迟敏感请求中服务质量和安全性的重要性,还引入了像雾计算等其他解决方案,以加快智能电网和物联网等真实方案中的感官数据的处理和管理。在网络边缘的处理工作负载减少了移动边缘计算的延迟,但它高度增加了消耗功率。因此,迫切需要改进网络边缘处的雾设备的能量模型。本文试图使用绿色能源概念修改此模型,并在安全物联网系统中减少多传感器框架中的延迟和功耗。在所提出的方法中,遗传算法(GA)用于处理大量请求和相应的质量和安全限制。仿真结果表明,与基线策略相比,所提出的方法可以同时降低边缘设备的延迟和功耗。

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