Literature DB >> 23535697

Predicting submicron air pollution indicators: a machine learning approach.

Gaurav Pandey1, Bin Zhang, Le Jian.   

Abstract

The regulation of air pollutant levels is rapidly becoming one of the most important tasks for the governments of developing countries, especially China. Submicron particles, such as ultrafine particles (UFP, aerodynamic diameter ≤ 100 nm) and particulate matter ≤ 1.0 micrometers (PM1.0), are an unregulated emerging health threat to humans, but the relationships between the concentration of these particles and meteorological and traffic factors are poorly understood. To shed some light on these connections, we employed a range of machine learning techniques to predict UFP and PM1.0 levels based on a dataset consisting of observations of weather and traffic variables recorded at a busy roadside in Hangzhou, China. Based upon the thorough examination of over twenty five classifiers used for this task, we find that it is possible to predict PM1.0 and UFP levels reasonably accurately and that tree-based classification models (Alternating Decision Tree and Random Forests) perform the best for both these particles. In addition, weather variables show a stronger relationship with PM1.0 and UFP levels, and thus cannot be ignored for predicting submicron particle levels. Overall, this study has demonstrated the potential application value of systematically collecting and analysing datasets using machine learning techniques for the prediction of submicron sized ambient air pollutants.

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Year:  2013        PMID: 23535697     DOI: 10.1039/c3em30890a

Source DB:  PubMed          Journal:  Environ Sci Process Impacts        ISSN: 2050-7887            Impact factor:   4.238


  2 in total

Review 1.  A systematic review of data mining and machine learning for air pollution epidemiology.

Authors:  Colin Bellinger; Mohomed Shazan Mohomed Jabbar; Osmar Zaïane; Alvaro Osornio-Vargas
Journal:  BMC Public Health       Date:  2017-11-28       Impact factor: 3.295

2.  Assessing and Validating the Ability of Machine Learning to Handle Unrefined Particle Air Pollution Mobile Monitoring Data Randomly, Spatially, and Spatiotemporally.

Authors:  Asmaa Alazmi; Hesham Rakha
Journal:  Int J Environ Res Public Health       Date:  2022-08-16       Impact factor: 4.614

  2 in total

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