Edge Intelligence for Energy-efficient Computation Offloading and Resource Allocation in 5G Beyond
November 17, 2020 ยท Declared Dead ยท ๐ IEEE Transactions on Vehicular Technology
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Authors
Yueyue Dai, Ke Zhang, Sabita Maharjan, Yan Zhang
arXiv ID
2011.08442
Category
cs.LG: Machine Learning
Cross-listed
eess.SP
Citations
168
Venue
IEEE Transactions on Vehicular Technology
Last Checked
4 months ago
Abstract
5G beyond is an end-edge-cloud orchestrated network that can exploit heterogeneous capabilities of the end devices, edge servers, and the cloud and thus has the potential to enable computation-intensive and delay-sensitive applications via computation offloading. However, in multi user wireless networks, diverse application requirements and the possibility of various radio access modes for communication among devices make it challenging to design an optimal computation offloading scheme. In addition, having access to complete network information that includes variables such as wireless channel state, and available bandwidth and computation resources, is a major issue. Deep Reinforcement Learning (DRL) is an emerging technique to address such an issue with limited and less accurate network information. In this paper, we utilize DRL to design an optimal computation offloading and resource allocation strategy for minimizing system energy consumption. We first present a multi-user end-edge-cloud orchestrated network where all devices and base stations have computation capabilities. Then, we formulate the joint computation offloading and resource allocation problem as a Markov Decision Process (MDP) and propose a new DRL algorithm to minimize system energy consumption. Numerical results based on a real-world dataset demonstrate that the proposed DRL-based algorithm significantly outperforms the benchmark policies in terms of system energy consumption. Extensive simulations show that learning rate, discount factor, and number of devices have considerable influence on the performance of the proposed algorithm.
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