Data level and decision level fusion of satellite multi-sensor AOD retrievals for improving PM2.5 estimations, a study on Tehran
Ali Mirzaei, Hossein Bagheri, Mehran Sattari

TL;DR
This study explores the fusion of satellite AOD products from MODIS and VIIRS sensors using machine learning to enhance PM2.5 estimation accuracy and spatial coverage in Tehran.
Contribution
It introduces a novel fusion approach at data and decision levels for satellite AOD products to improve PM2.5 estimation accuracy.
Findings
Data level fusion improved accuracy metrics (R2=0.64)
Decision level fusion of Deep Blue products achieved higher accuracy (R2=0.81)
Fusion strategies enhance PM2.5 estimation from satellite data
Abstract
One of the techniques for estimating the surface particle concentration with a diameter of fewer than 2.5 micrometers (PM2.5) is using aerosol optical depth (AOD) products. Different AOD products are retrieved from various satellite sensors, like MODIS and VIIRS, by various algorithms, such as Deep Blue and Dark Target. Therefore, they do not have the same accuracy and spatial resolution. Additionally, the weakness of algorithms in AOD retrieval reduces the spatial coverage of products, particularly in cloudy or snowy areas. Consequently, for the first time, the present study investigated the possibility of fusing AOD products from observations of MODIS and VIIRS sensors retrieved by Deep Blue and Dark Target algorithms to estimate PM2.5 more accurately. For this purpose, AOD products were fused by machine learning algorithms using different fusion strategies at two levels: the data…
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Taxonomy
MethodsMasked autoencoder · Balanced Selection
