Bibliometric Analysis of Indian Research Trends in Air Quality Forecasting research using machine learning from 2007-2023 using Scopus database

A. Ansari, A. R. Quaff
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引用次数: 0

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.
使用 Scopus 数据库,利用机器学习对 2007-2023 年印度空气质量预测研究趋势进行文献计量分析
机器学习空气污染预测研究在全球范围内非常普遍。本研究探讨了机器学习在预测印度空气污染方面的应用、现状及其预期增长。研究使用 Scopus 搜索了 984 位学者在 2007 年至 2023 年期间发表在 231 种期刊上的 326 篇文献。Biblioshiny 和 Vosviewer 用于发现和可视化有关这些问题的著名作者、期刊、研究论文和趋势。2018年,人们对这一主题的兴趣开始以每年32.1%的速度增长。根据总引文索引,《大气环境》(263 次引用)、《Procedia Computer Science》(251 次引用)、《Atmospheric Pollution Research》(233 次引用)和《Air Quality, Atmosphere, and Health》(93 次引用)是排名前四位的来源。这些期刊是利用机器学习预测空气污染的主要研究期刊之一。贾达夫普尔大学(12 篇文章)和德里印度理工学院(10 篇文章)是最受尊敬的机构。Singh Kp 2013 年发表的 "Atmospheric Environment"(大气环境)一文以 134 次引用位居榜首。印度电子与信息技术部和科学技术部是印度获得资助最多的机构,各获得 5 个单位的资助,这表明了它们对技术的承诺。作者的关键词共现网络映射表明,机器学习(127 次出现)、空气污染(78 次出现)和空气质量指数(41 次出现)是出现频率最高的关键词。这项研究利用机器学习预测空气污染。这些词在很大程度上反映了我们在 Scopus 数据库中对 "机器学习"、"空气污染 "和 "空气质量 "的搜索,表明这些是机器学习研究中最常讨论的空气污染预测问题。本研究有助于学术界、专业人士和全球政策制定者了解 "利用机器学习进行空气污染预测 "的研究,并就进一步研究的关键领域提出建议。
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