학술논문

DRL-based Service Migration for MEC Cloud-Native 5G and beyond Networks
Document Type
Conference
Source
2023 IEEE 9th International Conference on Network Softwarization (NetSoft) Network Softwarization (NetSoft), 2023 IEEE 9th International Conference on. :62-70 Jun, 2023
Subject
Communication, Networking and Broadcast Technologies
Training
Cloud computing
Multi-access edge computing
5G mobile communication
Reinforcement learning
Quality of service
Throughput
Multi-access Edge Computing
Beyond 5G
Cloud-Native network
AI/ML
OpenAirInterface
Kubernetes
Language
ISSN
2693-9789
Abstract
Multi-access Edge Computing (MEC) has been considered one of the most prominent enablers for low-latency access to services provided over the telecommunications network. Nevertheless, client mobility, as well as external factors which impact the communication channel can severely deteriorate the eventual user-perceived latency times. Such processes can be averted by migrating the provided services to other edges, while the end-user changes their base station association as they move within the serviced region. In this work, we start from an entirely virtualized cloud-native 5G network based on the OpenAirInterface platform and develop our architecture for providing seamless live migration of edge services. On top of this infrastructure, we employ a Deep Reinforcement Learning (DRL) approach that is able to proactively relocate services to new edges, subject to the user’s multi-cell latency measurements and the workload status of the servers. We evaluate our scheme in a testbed setup by emulating mobility using realistic mobility patterns and workloads from real-world clusters. Our results denote that our scheme is capable sustain low-latency values for the end users, based on their mobility within the serviced region.