NILGNov 14, 2022

Reinforcement Learning Based Resource Allocation for Network Slices in O-RAN Midhaul

arXiv:2211.07466v117 citationsh-index: 44
Originality Incremental advance
AI Analysis

This addresses resource allocation for network slicing in 5G O-RAN, which is incremental as it applies RL to a known problem.

The study tackled resource allocation for network slices in O-RAN midhaul by applying reinforcement learning, resulting in improved throughput with higher peak rates for eMBB traffic and shorter transmission times for URLLC compared to baselines.

Network slicing envisions the 5th generation (5G) mobile network resource allocation to be based on different requirements for different services, such as Ultra-Reliable Low Latency Communication (URLLC) and Enhanced Mobile Broadband (eMBB). Open Radio Access Network (O-RAN), proposes an open and disaggregated concept of RAN by modulizing the functionalities into independent components. Network slicing for O-RAN can significantly improve performance. Therefore, an advanced resource allocation solution for network slicing in O-RAN is proposed in this study by applying Reinforcement Learning (RL). This research demonstrates an RL compatible simplified edge network simulator with three components, user equipment(UE), Edge O-Cloud, and Regional O-Cloud. This simulator is later used to discover how to improve throughput for targeted network slice(s) by dynamically allocating unused bandwidth from other slices. Increasing the throughput for certain network slicing can also benefit the end users with a higher average data rate, peak rate, or shorter transmission time. The results show that the RL model can provide eMBB traffic with a high peak rate and shorter transmission time for URLLC compared to balanced and eMBB focus baselines.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes