2017
DOI: 10.1002/2017gl075710
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Estimating Ground‐Level PM2.5 by Fusing Satellite and Station Observations: A Geo‐Intelligent Deep Learning Approach

Abstract: Fusing satellite observations and station measurements to estimate ground‐level PM2.5 is promising for monitoring PM2.5 pollution. A geo‐intelligent approach, which incorporates geographical correlation into an intelligent deep learning architecture, is developed to estimate PM2.5. Specifically, it considers geographical distance and spatiotemporally correlated PM2.5 in a deep belief network (denoted as Geoi‐DBN). Geoi‐DBN can capture the essential features associated with PM2.5 from latent factors. It was tra… Show more

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Cited by 339 publications
(195 citation statements)
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“…Meanwhile, the site‐based CV results of the AOD‐PM modeling report a larger decrease (from 0.79 to 0.72 for R 2 ) than the Ref‐PM modeling. It is worth noting that the site‐based CV approach, which uses a spatial hold‐out validation strategy, can reflect the spatial predictive power more adequately (T. Li, Shen, Yuan et al, ). Hence, the results indicate that the Ref‐PM modeling approach has a superior spatial predictive power than AOD‐PM modeling.…”
Section: Resultsmentioning
confidence: 99%
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“…Meanwhile, the site‐based CV results of the AOD‐PM modeling report a larger decrease (from 0.79 to 0.72 for R 2 ) than the Ref‐PM modeling. It is worth noting that the site‐based CV approach, which uses a spatial hold‐out validation strategy, can reflect the spatial predictive power more adequately (T. Li, Shen, Yuan et al, ). Hence, the results indicate that the Ref‐PM modeling approach has a superior spatial predictive power than AOD‐PM modeling.…”
Section: Resultsmentioning
confidence: 99%
“… PM2.5=f(),,,,,,,,,,,,R1R3R7anglesRHWSTMPPBLPSNDVISPM2.5TPM2.5DIS, where f () means the estimation function. S ‐ PM 2.5 , T ‐ PM 2.5 , DIS denote the geographical correlation of PM 2.5 (see our previous study for details of their calculation, T. Li, Shen, Yuan et al, ). S ‐ PM 2.5 and T ‐ PM 2.5 take the spatial and temporal autocorrelation of PM 2.5 into consideration, and DIS is incorporated to reflect the spatial heterogeneity of unevenly distributed stations.…”
Section: Deep Learning Based Ref‐pm Modeling For Pm25 Estimationmentioning
confidence: 99%
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“…Additionally, the geographical correlation of PM2.5 were incorporated into the DBN model (Geoi-DBN) (Li et al, 2017a). Because the nearby PM2.5 from neighbouring stations and the PM2.5 observations from prior days for the same station are informative for estimating PM2.5.…”
Section: Deep Learning For the Satellite-based Pm25 Estimationmentioning
confidence: 99%