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Energy-Efficient Resource Allocation in Fog Computing Supported IoT with Min-Max Fairness Guarantees

机译:雾计算支持物联网中的节能资源分配,具有最小-最大公平性保证

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Internet of things (IoT) are envisioned to be an essential in our daily lives, but most IoT devices (IDs) are battery powered and have limited resource. Recently, fog computing (FC) has been proposed to support IoT systems, where part or all of the data are offloaded from IDs to fog nodes for processing or computation. In this paper, we propose to optimise the partial computation offloading in an OFDMA based FC IoT system, while ensuring fairness among IoT links with respect to their energy consumption. In particular, we minimize the energy consumption of the worst-case link by jointly optimizing the size of offloaded data and the assignment of subcarriers, while guaranteeing the rate requirement. The formulated min-max energy efficiency optimization problem (MEP) is solved using Lagrangian dual decomposition and subgradient projection, bases on which we propose an iterative algorithm. Our simulation results show that the proposed resource allocation algorithm is more energy efficient than the existing algorithms for FC supported IoT, while achieving fairness among IoT links.
机译:物联网(IoT)被认为是我们日常生活中必不可少的,但是大多数IoT设备(ID)都是电池供电的,并且资源有限。最近,提出了雾计算(FC)以支持IoT系统,其中部分或全部数据从ID转移到雾节点以进行处理或计算。在本文中,我们建议在基于OFDMA的FC IoT系统中优化部分计算分流,同时确保IoT链接之间的能耗平衡。特别是,我们在保证速率要求的同时,通过联合优化卸载数据的大小和子载波的分配,将最坏情况的链路的能耗降至最低。使用拉格朗日对偶分解和次梯度投影法解决了制定的最小-最大能效优化问题(MEP),并在此基础上提出了一种迭代算法。我们的仿真结果表明,所提出的资源分配算法比FC支持的IoT的现有算法具有更高的能源效率,同时实现了IoT链接之间的公平性。

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