Integrating Augmented In Situ Measurements and a Spatiotemporal Machine Learning Model To Back Extrapolate Historical Particulate Matter Pollution over the United Kingdom: 1980-2019.

Liu, Riyang; Ma, Zongwei; Gasparrini, Antonio; de la Cruz, Arturo; Bi, Jun; Chen, Kai; (2023) Integrating Augmented In Situ Measurements and a Spatiotemporal Machine Learning Model To Back Extrapolate Historical Particulate Matter Pollution over the United Kingdom: 1980-2019. Environmental science & technology, 57 (51). pp. 21605-21615. ISSN 0013-936X DOI: https://doi.org/10.1021/acs.est.3c05424

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