Predicting Ocean Variables Using PINNs And Transformer Architecture
Loading...
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
IISER Mohali
Abstract
The prediction of ocean variables, such as temperature and velocity, poses significant chal-
lenges due to the complex and dynamic nature of the ocean. The prediction models face lim-
itations and uncertainties, stemming from the nonlinear interactions of oceanic processes.
Seawater temperature, in particular, plays a crucial role in marine ecosystems and global
climate dynamics, underscoring the importance of accurately predicting it. Our study aims
to explore the efficacy of physics-informed neural networks, and leveraging a Transformer-
based architecture combined with convolutional neural networks, for predicting sea surface
temperature using short-wave radiation data. It demonstrates the promise of transformer-
based models for ocean variable prediction, with ongoing efforts aimed at refining model
architecture and training strategies to achieve more robust and accurate predictions. How-
ever, challenges persist in optimizing model performance. Further exploration is needed to
enhance model reliability and reduce prediction errors, potentially by incorporating addi-
tional variables and exploring alternative training mechanisms.
Description
Under Embargo Period