Federated Deep Actor-Critic-Based Task Offloading in Air-Ground Electricity IoT
Date
2021-01-01Author
Zhang, SunxuanLiao, Haijun
Zhou, Zhenyu
Wang, Yang
Zhang, Hui
Wang, Xiaoyan
Mumtaz, Shahid
Guizani, Mohsen
...show more authors ...show less authors
Metadata
Show full item recordAbstract
The integration of air-ground electricity internet of things (AGE-IoT) and machine learning, enables flexible network coverage and intelligent task offloading. However, dynamics of AGE-IoT networks, incomplete information, and resource allocation coupling are still major challenges in achieving intelligent AGE-IoT. In this paper, we investigate a joint multi-timescale task offloading and power control optimization problem to minimize the queuing delay of all the EIoT devices under the long-term constraint of energy consumption. We firstly decompose the joint optimization problem and transform it to large-timescale task offloading optimization and small-timescale power control optimization. Then, we propose a fed-erated deep actor-critic-based task offloading algorithm (FDAC) with two actor-critic networks for multi-timescale optimization. Numerical results show that FDAC has excellent performances in queuing delay and energy consumption compared with existing algorithms.
Collections
- Computer Science & Engineering [2402 items ]