SYAIITLGNEAug 30, 2022

Evolutionary Deep Reinforcement Learning for Dynamic Slice Management in O-RAN

arXiv:2208.14394v221 citationsh-index: 21
Originality Incremental advance
AI Analysis

This addresses network quality of service for wireless communication systems, but it is an incremental improvement over existing DRL methods.

The paper tackles dynamic slice management in O-RAN to meet service demands under changing conditions, proposing an evolutionary-based deep reinforcement learning (EDRL) framework that outperforms a DRL baseline by 62.2% in simulation results.

The next-generation wireless networks are required to satisfy a variety of services and criteria concurrently. To address upcoming strict criteria, a new open radio access network (O-RAN) with distinguishing features such as flexible design, disaggregated virtual and programmable components, and intelligent closed-loop control was developed. O-RAN slicing is being investigated as a critical strategy for ensuring network quality of service (QoS) in the face of changing circumstances. However, distinct network slices must be dynamically controlled to avoid service level agreement (SLA) variation caused by rapid changes in the environment. Therefore, this paper introduces a novel framework able to manage the network slices through provisioned resources intelligently. Due to diverse heterogeneous environments, intelligent machine learning approaches require sufficient exploration to handle the harshest situations in a wireless network and accelerate convergence. To solve this problem, a new solution is proposed based on evolutionary-based deep reinforcement learning (EDRL) to accelerate and optimize the slice management learning process in the radio access network's (RAN) intelligent controller (RIC) modules. To this end, the O-RAN slicing is represented as a Markov decision process (MDP) which is then solved optimally for resource allocation to meet service demand using the EDRL approach. In terms of reaching service demands, simulation results show that the proposed approach outperforms the DRL baseline by 62.2%.

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