3.8 Proceedings Paper

Deep Reinforcement Learning based Service Migration Strategy for Edge Computing

Publisher

IEEE
DOI: 10.1109/SOSE.2019.00025

Keywords

Edge Computing; service migration; reinforcement learning; Deep Q Network; cost

Funding

  1. National Key Research and Development Program of China [2016YFE0204500]
  2. Industrial Internet Innovation a nd Development Project 2018 of China

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Edge Computing (EC) is an emerging technology to cope with the unprecedented growth of user demands for access to low-latency computation and content data. However, user mobility and limited coverage of Edge Computing Server (ECS) result in service discontinuity and reduce Quality of Service (QoS). Service migration has a great potential to address this issue. In the scenario of service migration, how to choose the optimal migration strategy and communication strategy is a key challenge. In this paper, we innovatively propose solving the service migration using reinforcement learning based model which can take a long-term goal into consideration and make service migration and communication decisions more efficient. we consider a single-user EC system with exploiting predefined movement of user, where user passes through many ECSs and its corresponding Virtual Machine (VM) in ECS decides the migration strategy and communication strategy. We design a Reinforcement Learning (RL)-based framework for a single-user EC service migration system. Q-learning based and Deep Q Network (DQN) based themes are analyzed in detail respectively. Simulation results shows that our RL-based system can achieve the optimal result compared with other two methods under different system parameters.

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