Literature DB >> 32268284

A multi-city air pollution population exposure study: Combined use of chemical-transport and random-Forest models with dynamic population data.

Claudio Gariazzo1, Giuseppe Carlino2, Camillo Silibello3, Matteo Renzi4, Sandro Finardi3, Nicola Pepe3, Paola Radice3, Francesco Forastiere5, Paola Michelozzi4, Giovanni Viegi6, Massimo Stafoggia4.   

Abstract

Cities are severely affected by air pollution. Local emissions and urban structures can produce large spatial heterogeneities. We aim to improve the estimation of NO2, O3, PM2.5 and PM10 concentrations in 6 Italian metropolitan areas, using chemical-transport and machine learning models, and to assess the effect on population exposure by using information on urban population mobility. Three years (2013-2015) of simulations were performed by the Chemical-Transport Model (CTM) FARM, at 1 km resolution, fed by boundary conditions provided by national-scale simulations, local emission inventories and meteorological fields. A downscaling of daily air pollutants at higher resolution (200 m) was then carried out by means of a machine learning Random-Forest (RF) model, considering CTM and spatial-temporal predictors, such as population, land-use, surface greenness and vehicular traffic, as input. RF achieved mean cross-validation (CV) R2 of 0.59, 0.72, 0.76 and 0.75 for NO2, PM10, PM2.5 and O3, respectively, improving results from CTM alone. Mean concentration fields exhibited clear geographical gradients caused by climate conditions, local emission sources and photochemical processes. Time series of population weighted exposure (PWE) were estimated for two months of the year 2015 and for five cities, by combining population mobility data (derived from mobile phone traffic volumes data), and concentration levels from the RF model. PWE_RF metric better approximated the observed concentrations compared with the predictions from either CTM alone or CTM and RF combined, especially for pollutants exhibiting strong spatial gradients, such as NO2. 50% of the population was estimated to be exposed to NO2 concentrations between 12 and 38 μg/m3 and PM10 between 20 and 35 μg/m3. This work supports the potential of machine learning methods in predicting air pollutant levels in urban areas at high spatial and temporal resolutions.
Copyright © 2020 The Authors. Published by Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Dispersion model; Gaseous pollutants; Machine learning; Particulate matter; Population mobility; Urban area

Year:  2020        PMID: 32268284     DOI: 10.1016/j.scitotenv.2020.138102

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  4 in total

1.  Short-Term Effects of Air Pollution on Cardiovascular Hospitalizations in the Pisan Longitudinal Study.

Authors:  Salvatore Fasola; Sara Maio; Sandra Baldacci; Stefania La Grutta; Giuliana Ferrante; Francesco Forastiere; Massimo Stafoggia; Claudio Gariazzo; Camillo Silibello; Giuseppe Carlino; Giovanni Viegi; On Behalf Of The Beep Collaborative Group
Journal:  Int J Environ Res Public Health       Date:  2021-01-28       Impact factor: 3.390

2.  Deep Ensemble Machine Learning Framework for the Estimation of PM2.5 Concentrations.

Authors:  Wenhua Yu; Shanshan Li; Tingting Ye; Rongbin Xu; Jiangning Song; Yuming Guo
Journal:  Environ Health Perspect       Date:  2022-03-07       Impact factor: 11.035

3.  Investigation of COVID-19-related lockdowns on the air pollution changes in augsburg in 2020, Germany.

Authors:  Xin Cao; Xiansheng Liu; Hadiatullah Hadiatullah; Yanning Xu; Xun Zhang; Josef Cyrys; Ralf Zimmermann; Thomas Adam
Journal:  Atmos Pollut Res       Date:  2022-08-21       Impact factor: 4.831

4.  Long-term exposure to particulate matter was associated with increased dementia risk using both traditional approaches and novel machine learning methods.

Authors:  Yuan-Horng Yan; Ting-Bin Chen; Chun-Pai Yang; I-Ju Tsai; Hwa-Lung Yu; Yuh-Shen Wu; Winn-Jung Huang; Shih-Ting Tseng; Tzu-Yu Peng; Elizabeth P Chou
Journal:  Sci Rep       Date:  2022-10-12       Impact factor: 4.996

  4 in total

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