0
Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Environmental Sources Sign in to save

The application of machine learning to air pollution research: A bibliometric analysis

Ecotoxicology and Environmental Safety 2023 48 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 50 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Yunzhe Li, Zhipeng Sha, Zhipeng Sha, Xuejun Liu Aohan Tang, K. W. T. Goulding, Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu Xuejun Liu

Summary

Researchers conducted a bibliometric analysis of 2,962 studies on machine learning applied to air pollution research from 1990 to 2021, finding that publications surged after 2017, with most research focused on pollutant characterization, short-term forecasting, detection improvement, and emission control. The analysis reveals that machine learning is becoming a powerful tool for understanding atmospheric chemistry and managing air quality, though global collaboration remains limited.

Machine learning (ML) is an advanced computer algorithm that simulates the human learning process to solve problems. With an explosion of monitoring data and the increasing demand for fast and accurate prediction, ML models have been rapidly developed and applied in air pollution research. In order to explore the status of ML applications in air pollution research, a bibliometric analysis was made based on 2962 articles published from 1990 to 2021. The number of publications increased sharply after 2017, comprising approximately 75% of the total. Institutions in China and United States contributed half of all publications with most research being conducted by individual groups rather than global collaborations. Cluster analysis revealed four main research topics for the application of ML: chemical characterization of pollutants, short-term forecasting, detection improvement and optimizing emission control. The rapid development of ML algorithms has increased the capability to explore the chemical characteristics of multiple pollutants, analyze chemical reactions and their driving factors, and simulate scenarios. Combined with multi-field data, ML models are a powerful tool for analyzing atmospheric chemical processes and evaluating the management of air quality and deserve greater attention in future.

Sign in to start a discussion.

Share this paper