Energy Efficient Distributed Learning in Integrated Fog-Cloud Computing Enabled IoT Networks

Mohammed S. Al-Abiad, Md. Zoheb Hassan, Md. Jahangir Hossain
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引用次数: 1

Abstract

We investigate resource allocation scheme to reduce the energy consumption of distributed learning (DL) in the integrated fog-cloud computing enabled Internet of things (IoT) networks. In the envisioned system, IoT devices are connected with the cloud server (CS) via multiple fog access points (F-APs). We consider that local models are trained at the F-APs based on the collected data from the IoT devices and the F-APs collaborate with the CS for updating the model parameters. Our objective is to minimize the overall energy-consumption of F-APs subject to overall computation and communication time constraint. Towards this goal, we devise a joint optimization problem of scheduling of IoT devices with the F-APs, transmit power allocation, computation frequency allocation at the F-APs and decouple it into two subproblems. In the first subproblem, we optimize the IoT device scheduling and power allocation, while in the second subproblem, we optimize the computation frequency allocation. We develop a conflict graph based solution to iteratively solve the two subproblems. Numerical results reveal a considerable performance improvement of the proposed solution in terms of energy consumption minimization over the existing solutions.
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集成雾云计算支持的物联网网络中的节能分布式学习
我们研究了在集成雾云计算支持的物联网(IoT)网络中减少分布式学习(DL)能耗的资源分配方案。在设想的系统中,物联网设备通过多个雾接入点(f - ap)与云服务器(CS)连接。我们认为,基于从物联网设备收集的数据,f - ap在f - ap上训练本地模型,f - ap与CS合作更新模型参数。我们的目标是在总体计算和通信时间限制下最小化f - ap的总体能耗。为此,我们设计了一个物联网设备与f - ap调度的联合优化问题,在f - ap上分配发射功率,分配计算频率,并将其解耦为两个子问题。在第一个子问题中,我们优化了物联网设备的调度和功率分配,在第二个子问题中,我们优化了计算频率的分配。我们提出了一种基于冲突图的方法来迭代求解这两个子问题。数值结果表明,在能量消耗最小化方面,所提出的解决方案与现有解决方案相比有相当大的性能改进。
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