TY - JOUR
T1 - 100 m PM2.5 mapping from SDGSAT-1 TOA reflectance
T2 - Model development and -evaluation
AU - Bai, Kaixu
AU - Zheng, Zhe
AU - Qiu, Songyun
AU - Li, Ke
AU - Shao, Liuqing
AU - Liu, Chaoshun
AU - Chang, Ni Bin
N1 - Publisher Copyright:
© 2025 Elsevier Inc.
PY - 2025/12/1
Y1 - 2025/12/1
N2 - Satellite-based fine-resolution (∼100 m) PM2.5 mapping remains challenging because broadband multispectral imagery struggles to decouple land and atmospheric signals, limiting accurate local emission source detection in regions with sparse ground monitoring networks. Here, we introduce LAD-GAT, a novel deep learning framework for 100 m-resolution PM2.5 estimation from SDGSAT-1––the first science satellite mission dedicated to the UN Sustainable Development Goals. Specifically, LAD-GAT builds a high-dimensional scene-attribute graph by combining PM2.5-relevant geographical features, meteorological dynamics, top-of-the-atmosphere (TOA) reflectance, and estimated surface reflectance (SR). A specialized land-atmosphere decoupling (LAD) module is introduced to separate latent aerosol signals from ground surface contributions, and a graph attention network (GAT) models nonlinear associations between in-situ PM2.5 observations and the input graph structure. In 10-fold cross-validation, LAD-GAT achieved RMSE = 5.042 μg m−3 (R2 = 0.875) using SDGSAT-1 TOA reflectance, and RMSE = 9.428 μg m−3 (R2 = 0.862) with Sentinel-2 TOA reflectance. Incorporating daily SR yielded an 8.68 % accuracy gain over TOA reflectance alone and outperformed multi-day composites by 7.27 %, highlighting the benefit of accounting for SR dynamics in fine-scale PM2.5 mapping. Overall, leveraging the proposed novel LAD-GAT method, SDGSAT-derived PM2.5 estimates rival those from Sentinel-2, providing fine-scale data to better support SDG 11.6.2 monitoring and targeted air-quality interventions.
AB - Satellite-based fine-resolution (∼100 m) PM2.5 mapping remains challenging because broadband multispectral imagery struggles to decouple land and atmospheric signals, limiting accurate local emission source detection in regions with sparse ground monitoring networks. Here, we introduce LAD-GAT, a novel deep learning framework for 100 m-resolution PM2.5 estimation from SDGSAT-1––the first science satellite mission dedicated to the UN Sustainable Development Goals. Specifically, LAD-GAT builds a high-dimensional scene-attribute graph by combining PM2.5-relevant geographical features, meteorological dynamics, top-of-the-atmosphere (TOA) reflectance, and estimated surface reflectance (SR). A specialized land-atmosphere decoupling (LAD) module is introduced to separate latent aerosol signals from ground surface contributions, and a graph attention network (GAT) models nonlinear associations between in-situ PM2.5 observations and the input graph structure. In 10-fold cross-validation, LAD-GAT achieved RMSE = 5.042 μg m−3 (R2 = 0.875) using SDGSAT-1 TOA reflectance, and RMSE = 9.428 μg m−3 (R2 = 0.862) with Sentinel-2 TOA reflectance. Incorporating daily SR yielded an 8.68 % accuracy gain over TOA reflectance alone and outperformed multi-day composites by 7.27 %, highlighting the benefit of accounting for SR dynamics in fine-scale PM2.5 mapping. Overall, leveraging the proposed novel LAD-GAT method, SDGSAT-derived PM2.5 estimates rival those from Sentinel-2, providing fine-scale data to better support SDG 11.6.2 monitoring and targeted air-quality interventions.
KW - Air quality
KW - Graph attention network
KW - PM
KW - SDGSAT-1 satellite
KW - Satellite remote sensing
KW - Sustainable development goals
UR - https://www.scopus.com/pages/publications/105014402418
U2 - 10.1016/j.rse.2025.114977
DO - 10.1016/j.rse.2025.114977
M3 - 文章
AN - SCOPUS:105014402418
SN - 0034-4257
VL - 330
JO - Remote Sensing of Environment
JF - Remote Sensing of Environment
M1 - 114977
ER -