Abstract

Effective communication in vehicular networks depends on the scheduling of wireless channel resources. There are two types of channel resource scheduling in Release 14 of the 3GPP, i.e., (1) controlled by eNodeB and (2) a distributed scheduling carried out by every vehicle, known as Autonomous Resource Selection (ARS). The most suitable resource scheduling for vehicle safety applications is the ARS mechanism. ARS includes (a) counter selection (i.e., specifying the number of subsequent transmissions) and (b) resource reselection (specifying the reuse of the same resource after counter expiry). ARS is a decentralized approach for resource selection. Therefore, resource collisions can occur during the initial selection, where multiple vehicles might select the same resource, hence resulting in packet loss. ARS is not adaptive towards vehicle density and employs a uniform random selection probability approach for counter selection and reselection. As a result, it can prevent some vehicles from transmitting in a congested vehicular network. To this end, the paper presents Truly Autonomous Resource Selection (TARS) for vehicular networks. TARS considers resource allocation as a problem of locally detecting the selected resources at neighbor vehicles to avoid resource collisions. The paper also models the behavior of counter selection and resource block reselection on resource collisions using the Discrete Time Markov Chain (DTMC). Observation of the model is used to propose a fair policy of counter selection and resource reselection in ARS. The simulation of the proposed TARS mechanism showed better performance in terms of resource collision probability and the packet delivery ratio when compared with the LTE Mode 4 standard and with a competing approach proposed by Jianhua He et al.

Highlights

  • The convergence of wireless communication and vehicular networks has spurred road safety applications and use cases for safer and efficient traveling on roads [1,2]

  • The model for Truly Autonomous Resource Selection (TARS) was implemented in MATLAB, and its performance was compared with the Long-Term Evolution (LTE) Mode 4 standard and a competing autonomous resource selection approach proposed and described in [14]

  • This paper presented TARS, a resource selection mechanism that identifies resource collisions locally using a crypto-hash function

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Summary

Introduction

The convergence of wireless communication and vehicular networks has spurred road safety applications and use cases for safer and efficient traveling on roads [1,2]. It is argued that the uniform random selection probability for counter selection and reselection of the same resources is an unfair approach, as it can circumvent some vehicles during transmission in congested vehicular networks. While the periodic transmission of vehicle safety messages and the broadcast nature cannot be given up, the mechanisms for resource selection can be deployed such that the collisions in ARS are reduced and the resource selection is fair towards all vehicles in congested vehicular networks. To this end, the paper presents a Truly Autonomous Resource Selection (TARS) mechanism for vehicular networks.

Related Work
D2D Communication
LTE-V2V Mode 4
Anatomy of RB in Mode 4
OFDM symbols
Resource Selection
System Description
System Model
Proposed Approach
RB Selection
Counter Selection
RB Reselection
Algorithm
Performance Evaluation
Findings
Conclusions
Full Text
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