Research on Task Offloading and Typical Application Based on Deep Reinforcement Learning and Device-Edge-Cloud Collaboration

Lingqiu Zeng, Han Hu, Qingwen Han, L. Ye, Yu Lei
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Abstract

The ever evolving intelligent transportation systems may be able to provide low latency and high-quality service for intelligent connected vehicles (ICVs) on the basis of device-edge-cloud architecture. To match the requirement of vehicle-oriented task computing, the task offloading technology has received extensive attention, while making correct and fast offloading decisions to improve highly dynamic vehicular users’ experience is still a considerable challenge. In this paper, we study a device-edge-cloud architecture, where tasks from vehicles can be partially offloaded with a dynamically offloading proportion. To deal with this problem, we firstly introduce SPSO (serial particle swarm optimization) algorithm to search optimal connected MEC (Multi-Access Edge Computing) node. Then we further design a novel offloading strategy based on the deep Q network (DQN), prioritized experience replay based double deep Q-learning network (PERDDQN), which considers priority weight of the sample and sampling probability in loss function definition. A typical complex task, bus remote takeover, is selected to verify the performance of proposed approach. Simulation results show that PERDDQN has lower system cost, faster convergence speed and higher task success rate than the other comparison algorithms.
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基于深度强化学习和设备-边缘-云协作的任务卸载与典型应用研究
不断发展的智能交通系统可以在设备边缘-云架构的基础上为智能互联车辆(ICV)提供低延迟和高质量的服务。为满足面向车辆的任务计算需求,任务卸载技术受到广泛关注,而如何正确、快速地进行任务卸载决策以改善高动态车辆用户体验仍是一个相当大的挑战。在本文中,我们研究了一种设备边缘云架构,在这种架构中,来自车辆的任务可以通过动态卸载比例进行部分卸载。为了解决这个问题,我们首先引入了 SPSO(串行粒子群优化)算法来搜索最优连接的 MEC(多接入边缘计算)节点。然后,我们进一步设计了一种基于深度 Q 网络(DQN)的新型卸载策略,即基于双深度 Q 学习网络的优先经验重放(PERDDQN),该策略在损失函数定义中考虑了样本的优先权重和采样概率。我们选择了一个典型的复杂任务--公交车远程接管--来验证所提方法的性能。仿真结果表明,与其他比较算法相比,PERDDQN 具有更低的系统成本、更快的收敛速度和更高的任务成功率。
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