Online Learning for Offloading and Autoscaling in Energy Harvesting Mobile Edge Computing
March 17, 2017 ยท Declared Dead ยท ๐ IEEE Transactions on Cognitive Communications and Networking
"No code URL or promise found in abstract"
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Authors
Jie Xu, Lixing Chen, Shaolei Ren
arXiv ID
1703.06060
Category
cs.LG: Machine Learning
Cross-listed
cs.NI
Citations
313
Venue
IEEE Transactions on Cognitive Communications and Networking
Last Checked
3 months ago
Abstract
Mobile edge computing (a.k.a. fog computing) has recently emerged to enable in-situ processing of delay-sensitive applications at the edge of mobile networks. Providing grid power supply in support of mobile edge computing, however, is costly and even infeasible (in certain rugged or under-developed areas), thus mandating on-site renewable energy as a major or even sole power supply in increasingly many scenarios. Nonetheless, the high intermittency and unpredictability of renewable energy make it very challenging to deliver a high quality of service to users in energy harvesting mobile edge computing systems. In this paper, we address the challenge of incorporating renewables into mobile edge computing and propose an efficient reinforcement learning-based resource management algorithm, which learns on-the-fly the optimal policy of dynamic workload offloading (to the centralized cloud) and edge server provisioning to minimize the long-term system cost (including both service delay and operational cost). Our online learning algorithm uses a decomposition of the (offline) value iteration and (online) reinforcement learning, thus achieving a significant improvement of learning rate and run-time performance when compared to standard reinforcement learning algorithms such as Q-learning. We prove the convergence of the proposed algorithm and analytically show that the learned policy has a simple monotone structure amenable to practical implementation. Our simulation results validate the efficacy of our algorithm, which significantly improves the edge computing performance compared to fixed or myopic optimization schemes and conventional reinforcement learning algorithms.
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