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.

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 simulation-derived latent trajectories, learns to propagate latent states forward or backward in time to span unobserved temporal regions from short observational time windows, and (iii) at deployment, only a short observation window of hyper-sparse sensor measurements from the true system is provided, from which the frozen SHRED model and the temporal model jointly reconstruct or forecast the complete spatiotemporal trajectory. The framework supports bidirectional inference, inherits data assimilation and multiscale reconstruction capabilities from its modular structure, and accommodates extreme observational constraints including single-frame terminal inputs. We evaluate LAPIS-SHRED on six experiments spanning complex spatio-temporal physics: turbulent flows, multiscale propulsion physics, volatile combustion transients, and satellite-derived environmental fields, highlighting a lightweight, modular architecture suited for operational settings where observation is constrained by physical or logistical limitations.