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Integrating large-scale stationary and local mobile measurements to estimate hyperlocal long-term air pollution using transfer learning methods
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4683488
Author(s) Yuan, Z.; Kerckhoffs, J.; Shen, Y.; de Hoogh, K.; Hoek, G.; Vermeulen, R.
Author(s) at UniBasel de Hoogh, Kees
Year 2023
Title Integrating large-scale stationary and local mobile measurements to estimate hyperlocal long-term air pollution using transfer learning methods
Journal Environmental research
Volume 228
Pages / Article-Number 115836
Mesh terms Air Pollutants, analysis; Particulate Matter, analysis; Nitrogen Dioxide, analysis; Environmental Monitoring, methods; Air Pollution, analysis; Machine Learning
Abstract Mobile air quality measurements are collected typically for several seconds per road segment and in specific timeslots (e.g., working hours). These short-term and on-road characteristics of mobile measurements become the ubiquitous shortcomings of applying land use regression (LUR) models to estimate long-term concentrations at residential addresses. This issue was previously found to be mitigated by transferring LUR models to the long-term residential domain using routine long-term measurements in the studied region as the transfer target (local scale). However, long-term measurements are generally sparse in individual cities. For this scenario, we propose an alternative by taking long-term measurements collected over a larger geographical area (global scale) as the transfer target and local mobile measurements as the source (Global2Local model). We empirically tested national, airshed countries (i.e., national plus neighboring countries) and Europe as the global scale in developing Global2Local models to map nitrogen dioxide (NO(2)) concentrations in Amsterdam. The airshed countries scale provided the lowest absolute errors, and the Europe-wide scale had the highest R(2). Compared to a "global" LUR model (trained exclusively with European-wide long-term measurements), and a local mobile LUR model (using mobile data from Amsterdam only), the Global2Local model significantly reduced the absolute error of the local mobile LUR model (root-mean-square error, 6.9 vs 12.6 mug/m(3)) and improved the percentage explained variances compared to the global model (R(2), 0.43 vs 0.28, assessed by independent long-term NO(2) measurements in Amsterdam, n = 90). The Global2Local method improves the generalizability of mobile measurements in mapping long-term residential concentrations with a fine spatial resolution, which is preferred in environmental epidemiological studies.
ISSN/ISBN 1096-0953
URL https://doi.org/10.1016/j.envres.2023.115836
edoc-URL https://edoc.unibas.ch/94910/
Full Text on edoc Available
Digital Object Identifier DOI 10.1016/j.envres.2023.115836
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/37028540
ISI-Number WOS:000990652100001
Document type (ISI) Journal Article
 
   

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