School of Public Health, Lanzhou University, Lanzhou, China.
Department of Health Research Methods, Evidence and Impact, Faculty of Health Sciences, McMaster University, Hamilton, ON, Canada.
Front Public Health. 2022 Sep 7;10:933665. doi: 10.3389/fpubh.2022.933665. eCollection 2022.
Artificial intelligence (AI) has become widely used in a variety of fields, including disease prediction, environmental monitoring, and pollutant prediction. In recent years, there has also been an increase in the volume of research into the application of AI to air pollution. This study aims to explore the latest trends in the application of AI in the field of air pollution.
All literature on the application of AI to air pollution was searched from the Web of Science database. CiteSpace 5.8.R1 was used to analyze countries/regions, institutions, authors, keywords and references cited, and to reveal hot spots and frontiers of AI in atmospheric pollution.
Beginning in 1994, publications on AI in air pollution have increased in number, with a surge in research since 2017. The leading country and institution were China ( = 524) and the Chinese Academy of Sciences ( = 58), followed by the United States ( = 455) and Tsinghua University ( = 33), respectively. In addition, the United States (0.24) and the England (0.27) showed a high degree of centrality. Most of the identified articles were published in journals related to environmental science; the most cited journal was , which reached nearly 1,000 citations. There were few collaborations among authors, institutions and countries. The hot topics were machine learning, air pollution and deep learning. The majority of the researchers concentrated on air pollutant concentration prediction, particularly the combined use of AI and environmental science methods, low-cost air quality sensors, indoor air quality, and thermal comfort.
Researches in the field of AI and air pollution are expanding rapidly in recent years. The majority of scholars are from China and the United States, and the Chinese Academy of Sciences is the dominant research institution. The United States and the England contribute greatly to the development of the cooperation network. Cooperation among research institutions appears to be suboptimal, and strengthening cooperation could greatly benefit this field of research. The prediction of air pollutant concentrations, particularly PM, low-cost air quality sensors, and thermal comfort are the current research hotspot.
人工智能(AI)已广泛应用于多个领域,包括疾病预测、环境监测和污染物预测。近年来,应用 AI 进行空气污染研究的数量也有所增加。本研究旨在探索 AI 在空气污染领域的最新应用趋势。
从 Web of Science 数据库中搜索所有关于 AI 在空气污染中应用的文献。使用 CiteSpace 5.8.R1 分析国家/地区、机构、作者、关键词和参考文献,揭示大气污染中 AI 的热点和前沿。
自 1994 年以来,有关 AI 在空气污染方面的出版物数量不断增加,自 2017 年以来研究呈激增趋势。领先的国家和机构是中国(=524)和中国科学院(=58),其次是美国(=455)和清华大学(=33)。此外,美国(0.24)和英国(0.27)的中心度较高。已识别文章大多发表在与环境科学相关的期刊上;被引频次最高的期刊是《Science》,达到近 1000 次。作者、机构和国家之间的合作较少。热点话题是机器学习、空气污染和深度学习。大多数研究人员集中在大气污染物浓度预测方面,特别是人工智能与环境科学方法、低成本空气质量传感器、室内空气质量和热舒适度的结合使用。
近年来,AI 和空气污染领域的研究迅速扩展。大多数学者来自中国和美国,中国科学院是主导的研究机构。美国和英国对合作网络的发展贡献很大。研究机构之间的合作似乎并不理想,加强合作将极大地促进这一研究领域的发展。大气污染物浓度的预测,特别是 PM 的预测、低成本空气质量传感器和热舒适度是当前的研究热点。