Journal
SCIENCE OF THE TOTAL ENVIRONMENT
Volume 634, Issue -, Pages 1269-1277Publisher
ELSEVIER
DOI: 10.1016/j.scitotenv.2018.03.324
Keywords
Air pollution; Machine learning; Distance decay effect; Prenatal exposure; Land use regression
Categories
Funding
- JSPS KAKENHI [15H04790]
- Grants-in-Aid for Scientific Research [15H04790] Funding Source: KAKEN
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Adequate spatial and temporal estimates of NO2 concentrations are essential for proper prenatal exposure assessment. Here, we develop a spatiotemporal land use random forest (LURF) model of the monthly mean NO2 over four years in a metropolitan area of Japan. The overall objective is to obtain accurate NO2 estimates for use in prenatal exposure assessments. We use random forests to convey the non-linear relationship between NO2 concentrations and predictor variables, and compare the prediction accuracy with that of a linear regression. In addition, we include the distance decay effect of emission sources on NO2 concentrations for more efficient model construction. The prediction accuracy of the LURF model is evaluated through a leave-one-monitor-out cross validation. We obtain a high R-2 value of 0.79, which is better than that of the conventional land use regression model using linear regression (R-2 of 0.73). We also evaluate the LURF model via a temporal and overall cross validation and obtain R-2 values of 0.84 and 0.92, respectively. We successfully integrate temporal and spatial components into our model, which exhibits higher accuracy than spatial models constructed individually for each month. Our findings illustrate the advantage of using a LURF to model the spatiotemporal variability of NO2 concentrations. (C) 2018 Elsevier B.V. All rights reserved.
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