Programmable and Customized Intelligence for Traffic Steering in 5G Networks Using Open RAN Architectures
Andrea Lacava, Michele Polese, Rajarajan Sivaraj, Rahul Soundrarajan,, Bhawani Shanker Bhati, Tarunjeet Singh, Tommaso Zugno, Francesca Cuomo,, Tommaso Melodia

TL;DR
This paper introduces ns-O-RAN, a software framework for developing AI-driven traffic steering in 5G networks using Open RAN, enabling large-scale data collection and testing of deep reinforcement learning control policies.
Contribution
It presents the first integrated simulation and real-world framework for data-driven xApps and introduces a novel user-specific traffic steering handover method using advanced neural networks.
Findings
The xApp improves throughput and spectral efficiency by 50% on average.
Large-scale data collection enables effective training of deep reinforcement learning models.
The framework facilitates development and testing of AI-based control policies in 5G networks.
Abstract
5G and beyond mobile networks will support heterogeneous use cases at an unprecedented scale, thus demanding automated control and optimization of network functionalities customized to the needs of individual users. Such fine-grained control of the Radio Access Network (RAN) is not possible with the current cellular architecture. To fill this gap, the Open RAN paradigm and its specification introduce an open architecture with abstractions that enable closed-loop control and provide data-driven, and intelligent optimization of the RAN at the user level. This is obtained through custom RAN control applications (i.e., xApps) deployed on near-real-time RAN Intelligent Controller (near-RT RIC) at the edge of the network. Despite these premises, as of today the research community lacks a sandbox to build data-driven xApps, and create large-scale datasets for effective AI training. In this…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Communication Technologies · Full-Duplex Wireless Communications
MethodsBalanced Selection · Spatio-temporal stability analysis
