Lyapunov-guided Deep Reinforcement Learning for Stable Online Computation Offloading in Mobile-Edge Computing Networks
Suzhi Bi, Liang Huang, Hui Wang, and Ying-Jun Angela Zhang

TL;DR
This paper introduces LyDROO, a novel Lyapunov-guided deep reinforcement learning framework for stable, efficient online computation offloading in mobile-edge computing networks with dynamic conditions.
Contribution
It proposes a new framework combining Lyapunov optimization and DRL to solve multi-stage stochastic MINLP problems in MEC networks without future knowledge.
Findings
Achieves optimal computation performance in simulations.
Ensures queue stability and low latency.
Suitable for real-time MEC applications.
Abstract
Opportunistic computation offloading is an effective method to improve the computation performance of mobile-edge computing (MEC) networks under dynamic edge environment. In this paper, we consider a multi-user MEC network with time-varying wireless channels and stochastic user task data arrivals in sequential time frames. In particular, we aim to design an online computation offloading algorithm to maximize the network data processing capability subject to the long-term data queue stability and average power constraints. The online algorithm is practical in the sense that the decisions for each time frame are made without the assumption of knowing future channel conditions and data arrivals. We formulate the problem as a multi-stage stochastic mixed integer non-linear programming (MINLP) problem that jointly determines the binary offloading (each user computes the task either locally…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Age of Information Optimization · Advanced Wireless Communication Technologies
