Unmanned aerial vehicles (UAVs) can assist mobile edge computing (MEC) networks to enhance ground users' communication in emergencies. However, how to provide good quality of service (QoS) to ground users for a long time is still a tricky problem due to the limited battery capacity and computing power of UAVs. Therefore, we take advantage of reconfigurable intelligent surface (RIS) for UAV-MEC networks and propose a joint task offloading and resource allocation strategy. The strategy aims to minimize the energy consumption of the UAV by jointly optimizing task offloading decisions, allocation of UAVs' computing resources, communication resource allocation, and phase shift of RIS. Considering the non-convex optimization and computational complexity of the above optimization problem, we first model the target problem using the Markov decision process (MDP) and then solve it efficiently using a double deep Q network (DDQN). Simulation results show that our proposed solution outperforms other benchmark test solutions.
Lin TanSongtao GuoPengzhan ZhouZhufang KuangXianlong Jiao
Chuangchuang ZhangSiquan LiuHongyong YangGuanghai CuiFuliang LiXingwei Wang
Ya GaoHaoran ZhangFei YuYujie XiaYongpeng Shi
Zhe YuYanmin GongShimin GongYuanxiong Guo
Hongbo JiangXingxia DaiZhu XiaoArun Iyengar