In remote regions (e.g., mountain and desert), cellular networks are usually sparsely deployed or unavailable. With the appearance of new applications (e.g., industrial automation and environment monitoring) in remote regions, resource-constrained terminals become unable to meet the latency requirements. Meanwhile, offloading tasks to urban terrestrial cloud (TC) via satellite link will lead to high delay. To tackle above issues, Satellite Edge Computing architecture is proposed, i.e., users can offload computing tasks to visible satellites for executing. However, existing works are usually limited to offload tasks in pure satellite networks, and make offloading decisions based on the predefined models of users. Besides, the runtime consumption of existing algorithms is rather high. In this paper, we study the task offloading problem in satellite-terrestrial edge computing networks, where tasks can be executed by satellite or urban TC. The proposed Deep Reinforcement learning-based Task Offloading (DRTO) algorithm can accelerate learning process by adjusting the number of candidate locations. In addition, offloading location and bandwidth allocation only depend on the current channel states. Simulation results show that DRTO achieves near-optimal offloading cost performance with much less runtime consumption, which is more suitable for satellite-terrestrial network with fast fading channel.
翻译:在偏远区域(如山区和沙漠),蜂窝网络通常部署很少或没有,在偏远区域(如山区和沙漠),蜂窝网络通常部署很少或没有。随着偏远地区出现新的应用(如工业自动化和环境监测),资源紧张的终端无法满足潜伏要求。与此同时,通过卫星连接向城市地面云(TC)卸载任务将导致很大的延迟。为了解决上述问题,提议了卫星电磁计算结构,即用户可以将计算任务卸载到可见的卫星上执行。然而,现有的工程通常限于卸载纯卫星网络中的任务,并根据预先确定的用户模式作出卸载决定。此外,对现有算法的运行时间消耗相当高。在本文中,我们研究了卫星地缘边端计算网络中卸载任务的任务,而卫星或城市计算网络可执行的任务。拟议的深加固学习任务卸载算法可以通过调整候选地点的数量来加快学习过程。此外,卸载位置和带宽分配的卸载仅取决于当前频道状态,而卫星轨道的运行时间则不太合适,而模拟结果显示,离轨道的运行速度更慢。