Back to Search Start Over

Big Data Driven Vehicular Networks

Authors :
Cheng, Nan
Lyu, Feng
Chen, Jiayin
Xu, Wenchao
Zhou, Haibo
Zhang, Shan
Xuemin
Shen
Publication Year :
2018

Abstract

Vehicular communications networks (VANETs) enable information exchange among vehicles, other end devices and public networks, which plays a key role in road safety/infotainment, intelligent transportation system, and self-driving system. As the vehicular connectivity soars, and new on-road mobile applications and technologies emerge, VANETs are generating an ever-increasing amount of data, requiring fast and reliable transmissions through VANETs. On the other hand, a variety of VANETs related data can be analyzed and utilized to improve the performance of VANETs. In this article, we first review the VANETs technologies to efficiently and reliably transmit the big data. Then, the methods employing big data for studying VANETs characteristics and improving VANETs performance are discussed. Furthermore, we present a case study where machine learning schemes are applied to analyze the VANETs measurement data for efficiently detecting negative communication conditions.<br />Comment: Accepted by IEEE Network Magazine. 5 Figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1804.04203
Document Type :
Working Paper