Federated Deep Actor-Critic-Based Task Offloading in Air-Ground Electricity IoT
التاريخ
2021-01-01المؤلف
Zhang, SunxuanLiao, Haijun
Zhou, Zhenyu
Wang, Yang
Zhang, Hui
Wang, Xiaoyan
Mumtaz, Shahid
Guizani, Mohsen
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البيانات الوصفية
عرض كامل للتسجيلةالملخص
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.
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