Data assimilation and discrepancy modeling with shallow recurrent decoders
Yuxuan Bao, J. Nathan Kutz

TL;DR
This paper introduces DA-SHRED, a machine learning framework that improves data assimilation for complex physical systems by bridging simulation and real sensor data, recovering missing dynamics, and enhancing state reconstruction accuracy.
Contribution
The paper presents a novel shallow recurrent decoder approach that integrates sensor data with simulation models, incorporating sparse nonlinear dynamics identification to recover missing system behaviors.
Findings
Successfully closes the simulation-to-real gap in complex systems
Recovers missing dynamics in high-dimensional spatiotemporal fields
Enhances state estimation accuracy with physics-informed corrections
Abstract
The requirements of modern sensing are rapidly evolving, driven by increasing demands for data efficiency, real-time processing, and deployment under limited sensing coverage. Complex physical systems are often characterized through the integration of a limited number of point sensors in combination with scientific computations which approximate the dominant, full-state dynamics. Simulation models, however, inevitably neglect small-scale or hidden processes, are sensitive to perturbations, or oversimplify parameter correlations, leading to reconstructions that often diverge from the reality measured by sensors. This creates a critical need for data assimilation, the process of integrating observational data with predictive simulation models to produce coherent and accurate estimates of the full state of complex physical systems. We propose a machine learning framework for Data…
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Taxonomy
TopicsModel Reduction and Neural Networks · Gaussian Processes and Bayesian Inference · Generative Adversarial Networks and Image Synthesis
