Physics-Informed Latent Neural Operator for Real-time Predictions of time-dependent parametric PDEs
Sharmila Karumuri, Lori Graham-Brady, Somdatta Goswami

TL;DR
This paper introduces PI-Latent-NO, a physics-informed neural operator that efficiently learns low-dimensional representations of PDE solutions, enabling real-time, physics-consistent predictions without labeled data.
Contribution
It develops a novel physics-informed latent neural operator framework with end-to-end training, integrating PDE constraints directly into the learning process.
Findings
Achieves significant speedups over traditional models.
Demonstrates accuracy and scalability on various parametric PDEs.
Eliminates the need for labeled training data.
Abstract
Deep operator network (DeepONet) has shown significant promise as surrogate models for systems governed by partial differential equations (PDEs), enabling accurate mappings between infinite-dimensional function spaces. However, when applied to systems with high-dimensional input-output mappings arising from large numbers of spatial and temporal collocation points, these models often require heavily overparameterized networks, leading to long training times. Latent DeepONet addresses some of these challenges by introducing a two-step approach: first learning a reduced latent space using a separate model, followed by operator learning within this latent space. While efficient, this method is inherently data-driven and lacks mechanisms for incorporating physical laws, limiting its robustness and generalizability in data-scarce settings. In this work, we propose PI-Latent-NO, a…
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Taxonomy
TopicsAdvanced Data Processing Techniques · Time Series Analysis and Forecasting · Neural Networks and Applications
