雾云环境下物联网应用任务卸载的功耗性能优化模型

IF 0.5 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Rojin Naseri, A. Asadi, Mohammad Abdollahi Azgomi
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引用次数: 0

摘要

任务卸载是一种补偿物联网(IoT)资源限制的解决方案。确定卸货地点是非常重要的。物联网系统提供三层(物联网-雾-云)架构,并使用云和雾的位置进行任务卸载。在能耗和响应时间方面,雾是比云更适合任务卸载的位置,本文旨在优化物联网系统中的这些标准。本文采用排队理论对雾进行建模,利用二叉搜索算法和强化学习策略迭代算法根据雾的可用性确定雾的最小服务器数量。为了评估不同参数对雾损失的影响,考虑了不同的情景。与最慢服务器优先、最快服务器优先和随机选择服务器的策略相比,所提出的调度策略的结果提高了31%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model for Power-Performance Optimization in Fog-Cloud Environment by Task Off-Loading of IoT Applications
Task offloading is a solution to compensate for resource constraints on the Internet of Things (IoT). Deciding on the location of offloading is very important. The IoT systems provide a three-tier (IoT-fog-cloud) architecture and use the locations of cloud and fog for task offloading. Fog is a more suitable location for task offloading than cloud in terms of energy consumption and response time, and this paper aims to optimize these criteria in IoT systems. In this paper, fog is modeled by queuing theory, and the minimum number of its servers is determined based on its availability by the binary search algorithm and reinforcement learning policy iteration algorithm. Different scenarios are considered for evaluating the impact of different parameters on the cost of the fog. The proposed dispatch policy improves the results by 31% compared to the policies of Slowest Server First, Fastest Server First, and Randomly Chosen Server.
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来源期刊
CiteScore
1.70
自引率
14.30%
发文量
17
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