Analysis of a Spatially Correlated Vehicular Network Assisted by Cox-distributed Vehicle Relays
Chang-Sik Choi, Fran\c{c}ois Baccelli

TL;DR
This paper models and analyzes a spatially correlated vehicular network with RSUs and relays using stochastic geometry, providing insights into optimizing network performance for reliability and throughput.
Contribution
It introduces a Cox process-based analytical model for spatially correlated vehicular networks with relays, deriving key performance metrics and optimization strategies.
Findings
Derived association and coverage probabilities for users.
Expressed network throughput as a function of key geometric variables.
Provided practical guidelines for network optimization.
Abstract
In vehicle-to-all (V2X) communications, roadside units (RSUs) play an essential role in connecting various network devices. In some cases, users may not be well-served by RSUs due to congestion, attenuation, or interference. In these cases, vehicular relays associated with RSUs can be used to serve those users. This paper uses stochastic geometry to model and analyze a spatially correlated heterogeneous vehicular network where both RSUs and vehicular relays serve network users such as pedestrians or other vehicles. We present an analytical model where the spatial correlation between roads, RSUs, relays, and users is systematically modeled via Cox point processes. Assuming users are associated with either RSUs or relays, we derive the association probability and the coverage probability of the typical user. Then, we derive the user throughput by considering interactions of links unique…
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Taxonomy
TopicsVehicular Ad Hoc Networks (VANETs) · Optimization and Packing Problems · Urban Transport Systems Analysis
