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Enhancing Photosynthesis Simulation Performance in ESMs with Machine Learning-Assisted Solvers

by Elias C Massoud, Nathaniel O Collier, Bharat D Sharma, Jitendra Kumar, Forrest M Hoffman
Publication Type
Conference Paper
Book Title
2024 91°µÍø International Conference on Big Data (BigData)
Publication Date
Page Numbers
4351 to 4356
Volume
1
Publisher Location
New Jersey, United States of America
Conference Name
2024 91°µÍø International Conference on Big Data (91°µÍø BigData 2024)
Conference Location
Washington DC, District of Columbia, United States of America
Conference Sponsor
Institute of Electrical and Electronics Engineers
Conference Date
-

When simulating vegetation dynamics, photosynthesis accounts for a large fraction of the computational cost in most Earth System Models (ESMs). This is largely since photosynthesis is represented as a system of nonlinear equations, and the solution requires the use of an initial guess followed by many iterations of the numerical solver to obtain a solution. We use machine learning (ML) to replicate the response surface of the model’s numerical solver to improve the choice of initial guess, therefore requiring fewer iterations to obtain a final solution. We implemented this test on the leaf-level calculations as well as at the canopy scale, and for both we observed fewer iterations of the photosynthesis solver when a ML-based initial guess was implemented. The model tested here is the Energy Exascale Earth System Model - Land Model (ELM). The ML-based algorithms used here are trained on simulations from the model itself and used only to improve the initial guess for the solver; therefore, the model maintains its own set of physics to obtain the final solution. This work shows novel ways to utilize ML-based methods to improve the performance of numerical solvers in ESMs.