Artificial Intelligence in Vehicular Wireless Networks: A Case Study
Using ns-3
- URL: http://arxiv.org/abs/2203.05449v1
- Date: Thu, 10 Mar 2022 16:20:54 GMT
- Title: Artificial Intelligence in Vehicular Wireless Networks: A Case Study
Using ns-3
- Authors: Matteo Drago, Tommaso Zugno, Federico Mason, Marco Giordani, Mate
Boban and Michele Zorzi
- Abstract summary: We present an ns-3 simulation framework, able to implement AI algorithms for the optimization of wireless networks.
Our pipeline consists of: (i) a new geometry-based mobility-dependent channel model for V2X; (ii) all the layers of a 5G-NR-compliant protocol stack; and (iii) a new application to simulate V2X data transmission.
- Score: 18.54699818319184
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Artificial intelligence (AI) techniques have emerged as a powerful approach
to make wireless networks more efficient and adaptable. In this paper we
present an ns-3 simulation framework, able to implement AI algorithms for the
optimization of wireless networks. Our pipeline consists of: (i) a new
geometry-based mobility-dependent channel model for V2X; (ii) all the layers of
a 5G-NR-compliant protocol stack, based on the ns3-mmwave module; (iii) a new
application to simulate V2X data transmission, and (iv) a new intelligent
entity for the control of the network via AI. Thanks to its flexible and
modular design, researchers can use this tool to implement, train, and evaluate
their own algorithms in a realistic and controlled environment. We test the
behavior of our framework in a Predictive Quality of Service (PQoS) scenario,
where AI functionalities are implemented using Reinforcement Learning (RL), and
demonstrate that it promotes better network optimization compared to baseline
solutions that do not implement AI.
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