NIAIDec 30, 2024

Open RAN-Enabled Deep Learning-Assisted Mobility Management for Connected Vehicles

arXiv:2412.21161v12 citationsh-index: 2Has CodeICOIN
Originality Incremental advance
AI Analysis

This addresses mobility management for connected vehicles in 5G/6G networks, but it is incremental as it builds on existing Open RAN and deep learning approaches.

The paper tackled communication interruptions in connected vehicles during handovers by proposing an Open RAN and deep learning-based solution, achieving reduced latency compared to standard 3GPP procedures.

Connected Vehicles (CVs) can leverage the unique features of 5G and future 6G/NextG networks to enhance Intelligent Transportation System (ITS) services. However, even with advancements in cellular network generations, CV applications may experience communication interruptions in high-mobility scenarios due to frequent changes of serving base station, also known as handovers (HOs). This paper proposes the adoption of Open Radio Access Network (Open RAN/O-RAN) and deep learning models for decision-making to prevent Quality of Service (QoS) degradation due to HOs and to ensure the timely connectivity needed for CV services. The solution utilizes the O-RAN Software Community (OSC), an open-source O-RAN platform developed by the collaboration between the O-RAN Alliance and Linux Foundation, to develop xApps that are executed in the near-Real-Time RIC of OSC. To demonstrate the proposal's effectiveness, an integrated framework combining the OMNeT++ simulator and OSC was created. Evaluations used real-world datasets in urban application scenarios, such as video streaming transmission and over-the-air (OTA) updates. Results indicate that the proposal achieved superior performance and reduced latency compared to the standard 3GPP HO procedure.

Foundations

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

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