Big data applications in intelligent transport systems: a bibliometric analysis and review

Abstract Big Data applications have transformed Intelligent Transport Systems (ITS), enabling improvements in traffic management, safety, and efficiency. This study presents a bibliometric analysis and review of the recent advancements of big data applications in ITS. For this bibliometric analysis,...

Full description

Saved in:
Bibliographic Details
Main Authors: Mahbub Hassan, Hridoy Deb Mahin, Abdullah Al Nafees, Arpita Paul, Saikat Sarkar Shraban
Format: Article
Language:English
Published: Springer 2025-03-01
Series:Discover Civil Engineering
Subjects:
Online Access:https://doi.org/10.1007/s44290-025-00205-z
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850023298555969536
author Mahbub Hassan
Hridoy Deb Mahin
Abdullah Al Nafees
Arpita Paul
Saikat Sarkar Shraban
author_facet Mahbub Hassan
Hridoy Deb Mahin
Abdullah Al Nafees
Arpita Paul
Saikat Sarkar Shraban
author_sort Mahbub Hassan
collection DOAJ
description Abstract Big Data applications have transformed Intelligent Transport Systems (ITS), enabling improvements in traffic management, safety, and efficiency. This study presents a bibliometric analysis and review of the recent advancements of big data applications in ITS. For this bibliometric analysis, the Scopus database was utilized due to its extensive resources. Various tools, such as RStudio, VOSviewer, Excel, and Python, were used to analyze data and identify trends, patterns, and relationships in the selected articles through performance analysis and science mapping. The study examined 447 articles published between 2014 and 2023. The analysis indicates that research in this field has experienced exponential growth annually, although it experienced setbacks in 2020 due to the global pandemic before regaining momentum. While the number of research publications has risen sharply, the slower growth in citations highlights the need for a greater focus on producing higher-quality research. Our investigation revealed that the most significant research efforts focused on traffic flow prediction, traffic anomaly prediction, traffic safety, the integration of big data with the Internet of Things (IoT) and the Internet of Vehicles (IoV). China, United States, and Canada were the primary contributors to this field, with China conducting the majority of studies. We summarized and critically reviewed the most cited papers, as well as those that present the most significant innovations in this field. We found that ethical, privacy, and security concerns related to the use of Big Data in ITS have received limited attention. This work aims to serve as a valuable resource for researchers and practitioners, encouraging innovation and the development of more effective and sustainable transportation solutions.
format Article
id doaj-art-6fd891e5bc314d59b654cd5a2ddd849c
institution DOAJ
issn 2948-1546
language English
publishDate 2025-03-01
publisher Springer
record_format Article
series Discover Civil Engineering
spelling doaj-art-6fd891e5bc314d59b654cd5a2ddd849c2025-08-20T03:01:24ZengSpringerDiscover Civil Engineering2948-15462025-03-012113710.1007/s44290-025-00205-zBig data applications in intelligent transport systems: a bibliometric analysis and reviewMahbub Hassan0Hridoy Deb Mahin1Abdullah Al Nafees2Arpita Paul3Saikat Sarkar Shraban4Faculty of Civil Engineering & Technology, Universiti Malaysia Perlis (UniMAP)Sylhet Engineering College (SEC), School of Applied Sciences & Technology, Shahjalal University of Science and TechnologySylhet Engineering College (SEC), School of Applied Sciences & Technology, Shahjalal University of Science and TechnologySylhet Engineering College (SEC), School of Applied Sciences & Technology, Shahjalal University of Science and TechnologySylhet Engineering College (SEC), School of Applied Sciences & Technology, Shahjalal University of Science and TechnologyAbstract Big Data applications have transformed Intelligent Transport Systems (ITS), enabling improvements in traffic management, safety, and efficiency. This study presents a bibliometric analysis and review of the recent advancements of big data applications in ITS. For this bibliometric analysis, the Scopus database was utilized due to its extensive resources. Various tools, such as RStudio, VOSviewer, Excel, and Python, were used to analyze data and identify trends, patterns, and relationships in the selected articles through performance analysis and science mapping. The study examined 447 articles published between 2014 and 2023. The analysis indicates that research in this field has experienced exponential growth annually, although it experienced setbacks in 2020 due to the global pandemic before regaining momentum. While the number of research publications has risen sharply, the slower growth in citations highlights the need for a greater focus on producing higher-quality research. Our investigation revealed that the most significant research efforts focused on traffic flow prediction, traffic anomaly prediction, traffic safety, the integration of big data with the Internet of Things (IoT) and the Internet of Vehicles (IoV). China, United States, and Canada were the primary contributors to this field, with China conducting the majority of studies. We summarized and critically reviewed the most cited papers, as well as those that present the most significant innovations in this field. We found that ethical, privacy, and security concerns related to the use of Big Data in ITS have received limited attention. This work aims to serve as a valuable resource for researchers and practitioners, encouraging innovation and the development of more effective and sustainable transportation solutions.https://doi.org/10.1007/s44290-025-00205-zIntelligent transport systemsBig dataSmart transportationBibliometric analysis
spellingShingle Mahbub Hassan
Hridoy Deb Mahin
Abdullah Al Nafees
Arpita Paul
Saikat Sarkar Shraban
Big data applications in intelligent transport systems: a bibliometric analysis and review
Discover Civil Engineering
Intelligent transport systems
Big data
Smart transportation
Bibliometric analysis
title Big data applications in intelligent transport systems: a bibliometric analysis and review
title_full Big data applications in intelligent transport systems: a bibliometric analysis and review
title_fullStr Big data applications in intelligent transport systems: a bibliometric analysis and review
title_full_unstemmed Big data applications in intelligent transport systems: a bibliometric analysis and review
title_short Big data applications in intelligent transport systems: a bibliometric analysis and review
title_sort big data applications in intelligent transport systems a bibliometric analysis and review
topic Intelligent transport systems
Big data
Smart transportation
Bibliometric analysis
url https://doi.org/10.1007/s44290-025-00205-z
work_keys_str_mv AT mahbubhassan bigdataapplicationsinintelligenttransportsystemsabibliometricanalysisandreview
AT hridoydebmahin bigdataapplicationsinintelligenttransportsystemsabibliometricanalysisandreview
AT abdullahalnafees bigdataapplicationsinintelligenttransportsystemsabibliometricanalysisandreview
AT arpitapaul bigdataapplicationsinintelligenttransportsystemsabibliometricanalysisandreview
AT saikatsarkarshraban bigdataapplicationsinintelligenttransportsystemsabibliometricanalysisandreview