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Latent assimilation with implicit neural representations for unknown dynamics

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Data assimilation is crucial in a wide range of applications, but it often faces challenges such as high computational costs due to data dimensionality and incomplete understanding of underlying mechanisms. To address these challenges, this study presents a novel assimilation framework, termed Latent Assimilation with Implicit Neural Representations (LAINR). By introducing Spherical Implicit Neural Representations (SINR) along with a data-driven uncertainty estimator of the trained neural networks, LAINR enhances efficiency in assimilation process. Experimental results indicate that LAINR holds certain advantage over existing methods based on AutoEncoders, both in terms of accuracy and efficiency.

Zhuoyuan Li, Bin Dong, Pingwen Zhang• 2023

Related benchmarks

TaskDatasetResultRank
Data AssimilationExample 2 Advection-diffusion-reaction system
Relative Error (ERel,1:T)22.13
12
Data AssimilationLorenz-96 Delta t = 0.1
Relative RMSE0.7254
11
Data AssimilationLorenz-96 Delta t = 0.2
Relative RMSE0.659
11
Data Assimilation100-dimensional nonlinear toy dynamical system (test)
Relative Error (1:T)21.106
10
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