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Fading Improves Connectivity in Vehicular Ad-hoc Networks (1910.05317v2)

Published 8 Oct 2019 in cs.NI

Abstract: Connectivity analysis is a crucial metric for network performance in vehicular ad-hoc networks (VANETs). Although VANET connectivity has been intensively studied and investigated under no-fading channel models for their simplicity, these models do not represent real-world scenarios that suffer channel impairments. The connectivity probability in a multipath propagation environment is too challenging to be caught by a closed formula due to the emerging complexity associated with the randomness in a fading channel. This leads to contradicting statements about the impact of fading on VANET connectivity. In this paper, we numerically estimate the connectivity probability using graph-based Monte-Carlo simulations aiming for better understanding of the connectivity in fading channels. The results show that Rayleigh-fading channels reinforce the connectivity compared to no-fading models at the same level of transmitting power and vehicle densities. While these findings may seem counterintuitive, they agree with similar behavior that was reported earlier in other ad-hoc networks. Using simulations and stochastic analysis, we thoroughly investigate this effect and provide an intuitive interpretation of the positive impact of fading on connectivity.

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