An AI Approach to Integrating Climate, Hydrology, and Agriculture Models

Authors

Belete Berhanu
School of Civil and Environmental Engineering, Addis Ababa Institute of Technology, Addis Ababa University
Ethiopia Bisrat Zeleke
Department of Earth and Environment, Florida International University
Yolanda Gil
Information Sciences Institute, Viterbi School of Engineering, University of Southern California
Deborah Khider
Information Sciences Institute,Viterbi School of Engineering,University of Southern California
Maximiliano Osorio
Information Sciences Institute,Viterbi School of Engineering,University of Southern California
Varun Ratnakar
Information Sciences Institute, Viterbi School of Engineering,University of Southern California
Hernán Vargas
Information Sciences Institute, Viterbi School of Engineering, University of Southern California

Synopsis

Understanding the interactions between natural processes and human activities poses major challenges as it requires the integration of models and data across disparate disciplines. It typically takes many months and even years create valid end-to-end simulations as the different models need to be configured in consistent ways so their results can be meaningfully interpreted. MINT is a novel framework that uses AI for model integration. MINT captures extensive knowledge about models and data, including their requirements and constraints. MINT guides a user to pose a well-formed modeling question, select and configure models, find appropriate datasets, set up scenarios and parameters, run the simulations, and visualize the results. MINT currently includes climate, hydrology, and agriculture models for different areas of Ethiopia, Kenya, and South Sudan. Our goal is to understand droughts through integrating meteorological, hydrological, and agricultural analyses.

SIAIA22
Published
February 17, 2024
Online ISSN
2582-3922