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A data science approach for spatiotemporal modelling of low and resident air pollution in Madrid (Spain): Implications for epidemiological studies
Affiliation:1. European Commission, Joint Research Centre (JRC), Seville, Spain;2. Laboratório de Engenharia de Processos, Ambiente, Biotecnologia e Energia (LEPABE), Departamento de Engenharía Qum´ ica, Faculdade de Engenharia, Universidade do Porto, Rua Dr. Roberto Frias, Porto 4200-465, Portugal;3. Knowledge Engineering and Machine Learning group at Intelligent Data Science and Artificial Intelligence Research Center, Department of Statistics and Operations Research, Research Institute on Science and Technology for Sustainability, Universitat Politècnica de Catalunya-BarcelonaTech, C/ Jordi Girona 1-3, Barcelona 08034, Spain
Abstract:Model developments to assess different air pollution exposures within cities are still a key challenge in environmental epidemiology. Background air pollution is a long-term resident and low-level concentration pollution difficult to quantify, and to which population is chronically exposed. In this study, hourly time series of four key air pollutants were analysed using Hidden Markov Models to estimate the exposure to background pollution in Madrid, from 2001 to 2017. Using these estimates, its spatial distribution was later analysed after combining the interpolation results of ordinary kriging and inverse distance weighting. The ratio of ambient to background pollution differs according to the pollutant studied but is estimated to be on average about six to one. This methodology is proposed not only to describe the temporal and spatial variability of this complex exposure, but also to be used as input in new modelling approaches of air pollution in urban areas.
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