Concrete Autoencoder for the Reconstruction of Sea Temperature Field from Sparse Measurements

Author:

Lobashev Alexander A.1ORCID,Turko Nikita A.2ORCID,Ushakov Konstantin V.23ORCID,Kaurkin Maxim N.3ORCID,Ibrayev Rashit A.234ORCID

Affiliation:

1. Skolkovo Institute of Science and Technology, 30 Bolshoy Boulevard, Moscow 121205, Russia

2. Moscow Institute of Physics and Technology, 9 Institutskiy Per., Dolgoprudny 141701, Russia

3. Shirshov Institute of Oceanology, Russian Academy of Sciences, 36 Nakhimovsky Prospekt, Moscow 117997, Russia

4. Marchuk Institute of Numerical Mathematics, Russian Academy of Sciences, 8 Gubkin Str., Moscow 119333, Russia

Abstract

This paper presents a new method for finding the optimal positions for sensors used to reconstruct geophysical fields from sparse measurements. The method is composed of two stages. In the first stage, we estimate the spatial variability of the physical field by approximating its information entropy using the Conditional Pixel CNN network. In the second stage, the entropy is used to initialize the distribution of optimal sensor locations, which is then optimized using the Concrete Autoencoder architecture with the straight-through gradient estimator for the binary mask and with adversarial loss. This allows us to simultaneously minimize the number of sensors and maximize reconstruction accuracy. We apply our method to the global ocean under-surface temperature field and demonstrate its effectiveness on fields with up to a million grid cells. Additionally, we find that the information entropy field has a clear physical interpretation related to the mixing between cold and warm currents.

Funder

Shirshov Institute of Oceanology, Russian Academy of Sciences

Foundation for the Advancement of Theoretical Physics and Mathematics

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

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