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Deep spatial transformers for autoregressive data-driven forecasting of geophysical turbulence

Authors :
Mustafa Mustafa
Ashesh Chattopadhyay
Pedram Hassanzadeh
Karthik Kashinath
Source :
CI
Publication Year :
2020
Publisher :
California Digital Library (CDL), 2020.

Abstract

A deep spatial transformer based encoder-decoder model has been developed to autoregressively predict the time evolution of the upper layer’s stream function of a two-layered quasi-geostrophic (QG) system without any information about the lower layer’s stream function. The spatio-temporal complexity of QG flow is comparable to the complexity of 500hPa Geopotential Height (Z500) of fully coupled climate models or even the Z500 which is observed in the atmosphere, based on the instantaneous attractor dimension metric. The ability to predict autoregressively, the turbulent dynamics of QG is the first step towards building data-driven surrogates for more complex climate models. We show that the equivariance preserving properties of modern spatial transformers incorporated within a convolutional encoder-decoder module can predict up to 9 days in a QG system (outperforming a baseline persistence model and a standard convolutional encoder decoder with a custom loss function). The proposed data-driven model remains stable for multiple years thus promising us of a stable and physical data-driven climate model.

Subjects

Subjects :
bepress|Physical Sciences and Mathematics
EarthArXiv|Physical Sciences and Mathematics|Oceanography and Atmospheric Sciences and Meteorology
bepress|Physical Sciences and Mathematics|Physics
EarthArXiv|Physical Sciences and Mathematics|Environmental Sciences
Computer science
EarthArXiv|Physical Sciences and Mathematics|Physics|Fluid Dynamics
EarthArXiv|Physical Sciences and Mathematics|Physics
bepress|Physical Sciences and Mathematics|Physics|Fluid Dynamics
bepress|Physical Sciences and Mathematics|Earth Sciences
Geopotential height
02 engineering and technology
EarthArXiv|Physical Sciences and Mathematics|Earth Sciences
bepress|Physical Sciences and Mathematics|Oceanography and Atmospheric Sciences and Meteorology|Atmospheric Sciences
bepress|Physical Sciences and Mathematics|Oceanography and Atmospheric Sciences and Meteorology|Climate
bepress|Physical Sciences and Mathematics|Earth Sciences|Geophysics and Seismology
Dimension (vector space)
020204 information systems
bepress|Physical Sciences and Mathematics|Oceanography and Atmospheric Sciences and Meteorology
Attractor
Stream function
0202 electrical engineering, electronic engineering, information engineering
EarthArXiv|Physical Sciences and Mathematics|Mathematics|Dynamical Systems
bepress|Physical Sciences and Mathematics|Environmental Sciences
bepress|Physical Sciences and Mathematics|Mathematics
bepress|Physical Sciences and Mathematics|Computer Sciences|Artificial Intelligence and Robotics
EarthArXiv|Physical Sciences and Mathematics|Computer Sciences|Artificial Intelligence and Robotics
bepress|Physical Sciences and Mathematics|Computer Sciences
EarthArXiv|Physical Sciences and Mathematics|Computer Sciences
EarthArXiv|Physical Sciences and Mathematics|Oceanography and Atmospheric Sciences and Meteorology|Climate
Function (mathematics)
bepress|Physical Sciences and Mathematics|Mathematics|Dynamical Systems
EarthArXiv|Physical Sciences and Mathematics
EarthArXiv|Physical Sciences and Mathematics|Oceanography and Atmospheric Sciences and Meteorology|Atmospheric Sciences
Autoregressive model
EarthArXiv|Physical Sciences and Mathematics|Mathematics
Metric (mathematics)
EarthArXiv|Physical Sciences and Mathematics|Earth Sciences|Geophysics and Seismology
020201 artificial intelligence & image processing
Climate model
Algorithm

Details

Database :
OpenAIRE
Journal :
CI
Accession number :
edsair.doi.dedup.....156c45b3c80894ef8c55b2a8e11e6dde
Full Text :
https://doi.org/10.31223/osf.io/cqmb2