A Physically Constrained Deep-Learning Fusion Method for Estimating Surface NO Concentration from Satellite and Ground Monitors.

Journal: Environmental science & technology
PMID:

Abstract

Accurate estimation of atmospheric chemical concentrations from multiple observations is crucial for assessing the health effects of air pollution. However, existing methods are limited by imbalanced samples from observations. Here, we introduce a novel deep-learning model-measurement fusion method (DeepMMF) constrained by physical laws inferred from a chemical transport model (CTM) to estimate NO concentrations over the Continental United States (CONUS). By pretraining with spatiotemporally complete CTM simulations, fine-tuning with satellite and ground measurements, and employing a novel optimization strategy for selecting proper prior emission, DeepMMF delivers improved NO estimates, showing greater consistency and daily variation alignment with observations (with NMB reduced from -0.3 to -0.1 compared to original CTM simulations). More importantly, DeepMMF effectively addressed the sample imbalance issue that causes overestimation (by over 100%) of downwind or rural concentrations in other methods. It achieves a higher of 0.98 and a lower RMSE of 1.45 ppb compared to surface NO observations, overperforming other approaches, which show values of 0.4-0.7 and RMSEs of 3-6 ppb. The method also offers a synergistic advantage by adjusting corresponding emissions, in agreement with changes (-10% to -20%) reported in the NEI between 2019 and 2020. Our results demonstrate the great potential of DeepMMF in data fusion to better support air pollution exposure estimation and forecasting.

Authors

  • Jia Xing
    State Key Joint Laboratory of Environmental Simulation and Pollution Control, School of Environment, Tsinghua University, Beijing 100084, China.
  • Bok H Baek
    Center for Spatial Information Science and Systems, George Mason University, Fairfax, Virginia 22030, United States.
  • Siwei Li
    School of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430079, China.
  • Chi-Tsan Wang
    Center for Spatial Information Science and Systems, George Mason University, Fairfax, Virginia 22030, United States.
  • Ge Song
    Department of Neurosurgery, People's Hospital of Hanzhong City, Hanzhong 723000, Shaanxi, China.
  • Siqi Ma
    Center for Spatial Information Science and Systems, George Mason University, Fairfax, Virginia 22030, United States.
  • Shuxin Zheng
    School of Economics and Business, Changzhou Vocational Institute of Textile and Garment, Changzhou, China.
  • Chang Liu
    Key Lab of Cell Differentiation and Apoptosis of Ministry of Education, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
  • Daniel Tong
    Center for Spatial Information Science and Systems, George Mason University, Fairfax, Virginia 22030, United States.
  • Jung-Hun Woo
    Graduate School of Environmental Studies, Seoul National University, Seoul 08826, Korea.
  • Tie-Yan Liu
    Microsoft Research Asia, Beijing 100080, China.
  • Joshua S Fu
    Department of Civil and Environmental Engineering, The University of Tennessee, Knoxville, Tennessee 37996, United States.