LAtent Phase Inference from Short time sequences using SHallow REcurrent Decoders (LAPIS-SHRED)
Yuxuan Bao, Xingyue Zhang, J. Nathan Kutz

TL;DR
LAPIS-SHRED is a modular deep learning framework that reconstructs and forecasts full spatiotemporal dynamics from sparse, short-term observations across various complex physical systems.
Contribution
It introduces a three-stage pipeline combining simulation-trained models and temporal sequence learning for efficient spatiotemporal reconstruction from minimal data.
Findings
Successfully applied to turbulent flows, propulsion physics, combustion transients, and environmental data.
Supports bidirectional inference and extreme observational constraints.
Lightweight and modular architecture suitable for operational use.
Abstract
Reconstructing full spatio-temporal dynamics from sparse observations in both space and time remains a central challenge in complex systems, as measurements can be spatially incomplete and can be also limited to narrow temporal windows. Yet approximating the complete spatio-temporal trajectory is essential for mechanistic insight and understanding, model calibration, and operational decision-making. We introduce LAPIS-SHRED (LAtent Phase Inference from Short time sequence using SHallow REcurrent Decoders), a modular architecture that reconstructs and/or forecasts complete spatiotemporal dynamics from sparse sensor observations confined to short temporal windows. LAPIS-SHRED operates through a three-stage pipeline: (i) a SHRED model is pre-trained entirely on simulation data to map sensor time-histories into a structured latent space, (ii) a temporal sequence model, trained on…
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