Computation Offloading and Resource Allocation in Mobile Edge Computing via Reinforcement Learning

Danfeng Wang, Jian Zhao
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引用次数: 3

Abstract

This paper considers the computation offloading and resource allocation for system sum cost minimization in a mobile edge computing (MEC)network. The computation offloading decision of the user equipments (UEs)can be made through wireless link to access the MEC server. Our intent is to minimize the weighted sum cost of the system, which takes into account the energy consumption and time delay, for both task processing and data transmissions, subject to the force delay requirement of the devices. We first formulate the problem as a mixed-integer and non-convex optimization scheme. Enlightened by the superior performance of reinforcement learning (RL)on solving resource control problems, we put forward a novel RL-based scheme for computation offloading and resource allocation in MEC network. Specifically, the MEC node is considered as an “agent”, which first makes decision on whether to offloading the computing task to the MEC server, and then utilizes convex optimization algorithms to settle the radio spectrum and computation resource scheduling problem in each decision phase. The simulation results present that the RL-based method can achieve better computation offloading and resource allocation performance compared to those of local computing and remote computing modes. It also achieves very similar or slightly better performance compared to the genetic algorithm based method.
基于强化学习的移动边缘计算计算卸载与资源分配
研究了移动边缘计算网络中系统总成本最小化的计算卸载和资源分配问题。用户设备的计算卸载决策可以通过无线链路接入MEC服务器。我们的目的是在设备强制延迟要求的前提下,将系统的加权和成本最小化,同时考虑任务处理和数据传输的能量消耗和时间延迟。我们首先将问题表述为一个混合整数和非凸优化方案。受强化学习(RL)在解决资源控制问题上的优越性能的启发,我们提出了一种新的基于强化学习的MEC网络计算卸载和资源分配方案。具体而言,将MEC节点视为一个“代理”,首先决定是否将计算任务卸载给MEC服务器,然后利用凸优化算法解决每个决策阶段的无线电频谱和计算资源调度问题。仿真结果表明,与本地计算和远程计算模式相比,基于rl的方法可以实现更好的计算卸载和资源分配性能。与基于遗传算法的方法相比,它也实现了非常相似或稍微更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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