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A Review of Air Quality Modeling

Authors :
Hervé Delbarre
Yann Ben Maissa
Mohamed El Haziti
Yijun Lin
Yao-Yi Chiang
Anton Sokolov
Khaoula Karroum
Source :
MAPAN. 35:287-300
Publication Year :
2020
Publisher :
Springer Science and Business Media LLC, 2020.

Abstract

Air quality models (AQMs) are useful for studying various types of air pollutions and provide the possibility to reveal the contributors of air pollutants. Existing AQMs have been used in many scenarios having a variety of goals, e.g., focusing on some study areas and specific spatial units. Previous AQM reviews typically cover one of the forming elements of AQMs. In this review, we identify the role and relevance of every component for building AQMs, including (1) the existing techniques for building AQMs, (2) how the availability of the various types of datasets affects the performance, and (3) common validation methods. We present recommendations for building an AQM depending on the goal and the available datasets, pointing out their limitations and potentials. Based on more than 40 works on air quality, we concluded that the main utilized methods in air pollution estimation are land-use regression (LUR), machine learning, and hybrid methods. In addition, when incorporating LUR methods with traffic variables, it gives promising results; however, when using kriging or inverse distance weighting techniques, the monitoring stations measurements of air pollution data are enough to have good results. We aim to provide a short manual for people who want to build an AQM given the constraints at hands such as the availability of datasets and technical/computing resources.

Details

ISSN :
09749853 and 09703950
Volume :
35
Database :
OpenAIRE
Journal :
MAPAN
Accession number :
edsair.doi...........c84db6cd29b7b887d0fd68097430162b
Full Text :
https://doi.org/10.1007/s12647-020-00371-8