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Dynamic Computation Offloading and Resource Allocation for Multi-user Mobile Edge Computing

机译:多用户移动边缘计算的动态计算卸载与资源分配

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We study the problem of dynamic computation offloading and resource allocation in mobile edge computing (MEC) systems consisting of multiple mobile users (MUs) with stochastic task arrivals and wireless channels. Each MU can execute its task either locally or remotely in an MEC server. The objective is to identify the optimum scheduling scheme that can minimize the long-term average weighted sum of energy consumption and delay of all MUs, under the constraints of limited transmission power per MU and limited computation resources at the MEC server. The optimum design is performed with respect to three decision parameters: whether to offload a given task, how much transmission power to be allocated for offloading, and how much MEC resources to be allocated for an offloaded task. We propose to solve the problem by developing a dynamic scheduling strategy based on deep reinforcement learning (DRL) with deep deterministic policy gradient (DDPG). Simulation results show that the proposed algorithm outperforms other existing strategies such as deep Q-network (DQN).
机译:我们研究了由多个移动用户(MUC)组成的移动边缘计算(MEC)系统中的动态计算卸载和资源分配问题,随机任务到达和无线信道。每个MU可以在MEC服务器中本地或远程执行其任务。该目的是识别最佳调度方案,其可以在MEC服务器上每亩的有限传输功率和有限的计算资源的限制下最小化所有MU的长期平均加权和所有MU的延迟。关于三个决策参数执行最佳设计:是否卸载给定任务,以便卸载到卸载的传输功率,以及用于卸载任务的MEC资源。我们建议通过基于深度加强学习(DRL)的动态调度策略来解决具有深度确定性政策梯度(DDPG)的动态调度策略。仿真结果表明,该算法优于深度Q-Network(DQN)等其他现有策略。

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