LAtent Phase Inference from Short time sequences using SHallow REcurrent Decoders (LAPIS-SHRED)
arXiv cs.LG / 4/2/2026
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Key Points
- LAPIS-SHRED is a modular ML framework that reconstructs and/or forecasts full spatio-temporal dynamics from sparse sensor observations available only over short time windows.
- The method uses a three-stage pipeline: a SHRED model is pre-trained on simulation data to encode sensor time-histories into a structured latent space, then a temporal model learns to propagate latent states forward/backward to cover unobserved time regions.
- At deployment, the system freezes the pre-trained SHRED and uses the temporal model to produce complete spatio-temporal trajectories from hyper-sparse real observations, including extreme cases like single-frame terminal inputs.
- The architecture is designed to support bidirectional inference and to leverage data assimilation and multiscale reconstruction capabilities through its modular design.
- Evaluations on six physics-oriented experiments (e.g., turbulent flows, propulsion physics, combustion transients, and satellite environmental fields) suggest the approach is lightweight and suitable for operational scenarios with strict observation constraints.
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