Published June 21, 2023 | Version v2
Journal article Open

A differentiable, physics-informed ecosystem modeling and learning framework for large-scale inverse problems

Description

diffEcosys

The Differentiable Ecosystem Model (a hybrid, physics-informed machine learning system for ecosystem modeling). This release contains example codes and datasets similar to those used to produce some work in the following paper:

Aboelyazeed, D., Xu, C., Hoffman, F. M., Liu, J., Jones, A. W., Rackauckas, C., Lawson, K. E., and Shen, C.: A differentiable, physics informed ecosystem modeling and learning framework for large-scale inverse problems: demonstration with photosynthesis simulations, Biogeosciences (Accepted, 2023) [preprint] https://doi.org/10.5194/bg-2022-211.

Instructions

Please read this Instruction file which includes detailed instructions for running the released codes

If you have any questions for this code release, feel free to contact us by dmf5963@psu.edu (Doaa Aboelyazeed) or cshen@engr.psu.edu (Chaopeng Shen)

Files

diffEcosys.zip

Files (505.7 kB)

Name Size Download all
md5:4a944a8e95b2420cff650c2dc9c01c83
269.2 kB Preview Download
md5:e388cd351523bbec58a177993434426f
236.6 kB Preview Download