Predicting spatio-temporal concentrations of PM2.5 using land use and meteorological data in Yangtze River Delta, China

  • Dongyang Yang
  • , Debin Lu
  • , Jianhua Xu*
  • , Chao Ye
  • , Jianan Zhao
  • , Guanghui Tian
  • , Xinge Wang
  • , Nina Zhu
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

34 Scopus citations

Abstract

The prediction of PM2.5 concentrations with high spatiotemporal resolution has been suggested as a potential method for data collection to assess the health effects of exposure. This work predicted the weekly average PM2.5 concentrations in the Yangtze River Delta, China, by using a spatio-temporal model. Integrating land use data, including the areas of cultivated land, construction land, and forest land, and meteorological data, including precipitation, air pressure, relative humidity, temperature, and wind speed, we used the model to estimate the weekly average PM2.5 concentrations. We validated the estimated effects by using the cross-validated R2 and Root mean square error (RMSE); the results showed that the model performed well in capturing the spatiotemporal variability of PM2.5 concentration, with a reasonably large R2 of 0.86 and a small RMSE of 8.15 (μg/m3). In addition, the predicted values covered 94% of the observed data at the 95% confidence interval. This work provided a dataset of PM2.5 concentration predictions with a spatiotemporal resolution of 3 km × week, which would contribute to accurately assessing the potential health effects of air pollution.

Original languageEnglish
Pages (from-to)2445-2456
Number of pages12
JournalStochastic Environmental Research and Risk Assessment
Volume32
Issue number8
DOIs
StatePublished - 1 Aug 2018

Keywords

  • PM
  • Spatio-temporal modeling
  • Weekly average PM concentrations
  • Yangtze River Delta

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