Automated Machine Learning to Evaluate the Information Content of Tropospheric Trace Gas Columns for Fine Particle Estimates Over India: A Modeling Testbed

Author:

Zheng Zhonghua123ORCID,Fiore Arlene M.3456ORCID,Westervelt Daniel M.357ORCID,Milly George P.3ORCID,Goldsmith Jeff58,Karambelas Alexandra3ORCID,Curci Gabriele910ORCID,Randles Cynthia A.1112,Paiva Antonio R.11ORCID,Wang Chi13,Wu Qingyun14,Dey Sagnik1516ORCID

Affiliation:

1. Department of Earth and Environmental Sciences The University of Manchester Manchester UK

2. National Center for Atmospheric Research Boulder CO USA

3. Lamont‐Doherty Earth Observatory Columbia University Palisades NY USA

4. Department of Earth and Environmental Sciences Columbia University New York NY USA

5. Data Science Institute Columbia University New York NY USA

6. Department of Earth, Atmospheric and Planetary Sciences Massachusetts Institute of Technology Cambridge MA USA

7. NASA Goddard Institute for Space Studies New York NY USA

8. Department of Biostatistics Columbia University New York NY USA

9. Department of Physical and Chemical Sciences University of L'Aquila L'Aquila Italy

10. Center of Excellence in Telesensing of Environment and Model Prediction of Severe Events (CETEMPS) University of L'Aquila L'Aquila Italy

11. ExxonMobil Technology and Engineering Company Annandale NJ USA

12. Now at International Methane Emissions Observatory United Nations Environment Program Paris France

13. Microsoft Corporation Redmond WA USA

14. College of Information Sciences and Technology Pennsylvania State University State College PA USA

15. Centre for Atmospheric Sciences Indian Institute of Technology Delhi Hauz Khas New Delhi India

16. Centre of Excellence for Research on Clean Air Indian Institute of Technology Delhi Hauz Khas New Delhi India

Abstract

AbstractIndia is largely devoid of high‐quality and reliable on‐the‐ground measurements of fine particulate matter (PM2.5). Ground‐level PM2.5 concentrations are estimated from publicly available satellite Aerosol Optical Depth (AOD) products combined with other information. Prior research has largely overlooked the possibility of gaining additional accuracy and insights into the sources of PM using satellite retrievals of tropospheric trace gas columns. We evaluate the information content of tropospheric trace gas columns for PM2.5 estimates over India within a modeling testbed using an Automated Machine Learning (AutoML) approach, which selects from a menu of different machine learning tools based on the data set. We then quantify the relative information content of tropospheric trace gas columns, AOD, meteorological fields, and emissions for estimating PM2.5 over four Indian sub‐regions on daily and monthly time scales. Our findings suggest that, regardless of the specific machine learning model assumptions, incorporating trace gas modeled columns improves PM2.5 estimates. We use the ranking scores produced from the AutoML algorithm and Spearman’s rank correlation to infer or link the possible relative importance of primary versus secondary sources of PM2.5 as a first step toward estimating particle composition. Our comparison of AutoML‐derived models to selected baseline machine learning models demonstrates that AutoML is at least as good as user‐chosen models. The idealized pseudo‐observations (chemical‐transport model simulations) used in this work lay the groundwork for applying satellite retrievals of tropospheric trace gases to estimate fine particle concentrations in India and serve to illustrate the promise of AutoML applications in atmospheric and environmental research.

Funder

ExxonMobil Research and Engineering Company

Publisher

American Geophysical Union (AGU)

Subject

General Earth and Planetary Sciences,Environmental Chemistry,Global and Planetary Change

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