A Lagrangian Conditional Gaussian Koopman Network for Data Assimilation and Prediction
Zhongrui Wang, Chuanqi Chen, Jin-Long Wu, Nan Chen

TL;DR
This paper introduces LaCGKN, a novel data-driven framework that efficiently performs Lagrangian data assimilation and prediction by embedding flow dynamics into a low-dimensional stochastic model, avoiding ensemble methods.
Contribution
The paper develops LaCGKN, a structure-preserving neural network that encodes Eulerian flow dynamics in a latent space for joint data assimilation and prediction from Lagrangian observations.
Findings
Achieves accurate flow prediction without ensemble methods.
Handles varying numbers of tracers through permutation equivariance.
Reduces model complexity with low-rank latent transition parameterization.
Abstract
Lagrangian data assimilation aims to recover hidden Eulerian flow fields from sparse, indirect observations of moving tracers. This problem is challenging because tracer trajectories are nonlinearly coupled with the underlying flow, making posterior inference computationally intractable in realistic, high-dimensional systems. In this work, we develop a Lagrangian conditional Gaussian Koopman network (LaCGKN), a structure-preserving, data-driven framework for joint data assimilation and prediction from Lagrangian observations. LaCGKN embeds Eulerian flow dynamics into a low-dimensional latent space governed by a nonlinear stochastic system with conditional Gaussian structure, enabling analytic posterior updates without ensemble forecasting. Unlike existing conditional Gaussian Koopman formulations that assume direct Eulerian observations, the Lagrangian setting imposes additional demands…
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Taxonomy
TopicsModel Reduction and Neural Networks · Generative Adversarial Networks and Image Synthesis · Meteorological Phenomena and Simulations
