A comprehensive survey on clustering in vehicular networks: Current solutions and future challenges

Muddasar Ayyub*, Alma Oracevic, Rasheed Hussain, Ammara Anjum Khan, Zhongshan Zhang

*Corresponding author for this work

Research output: Contribution to journalShort surveypeer-review

48 Citations (Scopus)

Abstract

Vehicular networks are on the verge of deployment, thanks to the advancements in computation and communication technologies. This breed of ad hoc networks leverages vehicles as nodes with Vehicle-to-anything (V2X) communication paradigm. Clustering is considered one of the most important techniques used to enhance network stability, reliability, and scalability. Furthermore, clustering employs bandwidth optimization by reducing the overhead and transmission delay and helps in mitigating the hidden node problem. To date, extensive research has been done to address clustering issues in vehicular networks, and several surveys have also been published in the literature. However, a holistic approach towards clustering in vehicular networks is still lacking. In this regard, we conduct a comprehensive survey on the recent advancements in the clustering schemes for vehicular networks. We take a holistic approach to classify the algorithms by focusing on, (i) the objective of clustering mechanisms (i.e., reliability, scalability, stability, routing overhead, and delay), (ii) general-purpose clustering algorithms, (iii) application-based (i.e., QoS, MAC, security, etc.) clustering, and iv) technology-based clustering (machine learning-based, nature-inspired, fuzzy logic-based and software-defined networking-based clustering). We investigate the existing clustering mechanisms keeping in mind the factors such as cluster formation, maintenance, and management. Additionally, we present a comprehensive set of parameters for selecting cluster heads and the role of enabling technologies for cluster maintenance. Finally, we identify future research trends in clustering techniques for vehicular networks and their various breeds. This survey will act as a one-stop shop for the researchers, practitioners, and system designers to select the right clustering mechanism for their applications, services, or for their research. As a result of this survey, we can see that clustering is heavily dependent on the underlying application, context, environment, and communication paradigm. Furthermore, clustering in vehicular networks can greatly benefit from enabling technologies such as artificial intelligence.

Original languageEnglish
Article number102729
JournalAd Hoc Networks
Volume124
DOIs
Publication statusPublished - 1 Jan 2022

Keywords

  • Clustering
  • Connected car
  • Intelligent Transportation System
  • VANET
  • Vehicular networks

Fingerprint

Dive into the research topics of 'A comprehensive survey on clustering in vehicular networks: Current solutions and future challenges'. Together they form a unique fingerprint.

Cite this