Research Article

Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database

Volume: 7 Number: 3 September 30, 2024
EN

Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database

Abstract

Machine-learning air pollution prediction studies are widespread worldwide. This study examines the use of machine learning to predict air pollution, its current state, and its expected growth in India. Scopus was used to search 326 documents by 984 academics published in 231 journals between 2007 and 2023. Biblioshiny and Vosviewer were used to discover and visualise prominent authors, journals, research papers, and trends on these issues. In 2018, interest in this topic began to grow at a rate of 32.1 percent every year. Atmospheric Environment (263 citations), Procedia Computer Science (251), Atmospheric Pollution Research (233) and Air Quality, Atmosphere, and Health (93 citations) are the top four sources, according to the Total Citation Index. These journals are among those leading studies on using machine learning to forecast air pollution. Jadavpur University (12 articles) and IIT Delhi (10 articles) are the most esteemed institutions. Singh Kp's 2013 "Atmospheric Environment" article tops the list with 134 citations. The Ministry of Electronics and Information Technology and the Department of Science and Technology are top Indian funding agency receive five units apiece, demonstrating their commitment to technology. The authors' keyword co-occurrence network mappings suggest that machine learning (127 occurrences), air pollution (78 occurrences), and air quality index (41) are the most frequent keywords. This study predicts air pollution using machine learning. These terms largely mirror our Scopus database searches for "machine learning," "air pollution," and "air quality," showing that these are among the most often discussed issues in machine learning research on air pollution prediction. This study helps academics, professionals, and global policymakers understand "air pollution prediction using machine learning" research and recommend key areas for further research.

Keywords

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References

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Details

Primary Language

English

Subjects

Air Pollution Modelling and Control , Air Pollution and Gas Cleaning , Air Pollution Processes and Air Quality Measurement

Journal Section

Research Article

Publication Date

September 30, 2024

Submission Date

February 9, 2024

Acceptance Date

April 20, 2024

Published in Issue

Year 2024 Volume: 7 Number: 3

APA
Ansari, A., & Quaff, A. R. (2024). Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database. Environmental Research and Technology, 7(3), 356-377. https://doi.org/10.35208/ert.1434390
AMA
1.Ansari A, Quaff AR. Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database. ERT. 2024;7(3):356-377. doi:10.35208/ert.1434390
Chicago
Ansari, Asif, and Abdur Rahman Quaff. 2024. “Bibliometric Analysis of Indian Research Trends in Air Quality Forecasting Research Using Machine Learning from 2007–2023 Using Scopus Database”. Environmental Research and Technology 7 (3): 356-77. https://doi.org/10.35208/ert.1434390.
EndNote
Ansari A, Quaff AR (September 1, 2024) Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database. Environmental Research and Technology 7 3 356–377.
IEEE
[1]A. Ansari and A. R. Quaff, “Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database”, ERT, vol. 7, no. 3, pp. 356–377, Sept. 2024, doi: 10.35208/ert.1434390.
ISNAD
Ansari, Asif - Quaff, Abdur Rahman. “Bibliometric Analysis of Indian Research Trends in Air Quality Forecasting Research Using Machine Learning from 2007–2023 Using Scopus Database”. Environmental Research and Technology 7/3 (September 1, 2024): 356-377. https://doi.org/10.35208/ert.1434390.
JAMA
1.Ansari A, Quaff AR. Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database. ERT. 2024;7:356–377.
MLA
Ansari, Asif, and Abdur Rahman Quaff. “Bibliometric Analysis of Indian Research Trends in Air Quality Forecasting Research Using Machine Learning from 2007–2023 Using Scopus Database”. Environmental Research and Technology, vol. 7, no. 3, Sept. 2024, pp. 356-77, doi:10.35208/ert.1434390.
Vancouver
1.Asif Ansari, Abdur Rahman Quaff. Bibliometric analysis of Indian research trends in air quality forecasting research using machine learning from 2007–2023 using Scopus database. ERT. 2024 Sep. 1;7(3):356-77. doi:10.35208/ert.1434390

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