Achieving Conservation of Energy in Neural Network Emulators for Climate Modeling
Details
Serval ID
serval:BIB_B08FB90B497B
Type
Inproceedings: an article in a conference proceedings.
Collection
Publications
Institution
Title
Achieving Conservation of Energy in Neural Network Emulators for Climate Modeling
Title of the conference
ICML 2019 Workshop. Climate Change: How Can AI Help?
Publication state
Published
Issued date
15/06/2019
Language
english
Abstract
Artificial neural-networks have the potential to emulate cloud processes with higher accuracy than the semi-empirical emulators currently used in climate models. However, neural-network models do not intrinsically conserve energy and mass, which is an obstacle to using them for long-term climate predictions. Here, we propose two methods to enforce linear conservation laws in neural-network emulators of physical models: Constraining (1) the loss function or (2) the architecture of the network itself. Applied to the emulation of explicitly-resolved cloud processes in a prototype multi-scale climate model, we show that architecture constraints can enforce conservation laws to satisfactory numerical precision, while all constraints help the neural-network better generalize to conditions outside of its training set, such as global warming.
Create date
21/02/2023 14:36
Last modification date
15/10/2023 14:25