Tensor decomposition-based neural operator with dynamic mode decomposition for parameterized time-dependent problems

Deep operator networks (DeepONets), as a powerful tool to approximate nonlinear mappings between different function spaces, have gained significant attention recently for applications in modeling parameterized partial differential equations. However, limited by the poor extrapolation ability of pure...

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Bibliographic Details
Published in:Journal of computational physics Vol. 533; p. 113996
Main Authors: Chen, Yuanhong, Lin, Yifan, Sun, Xiang, Yuan, Chunxin, Gao, Zhen
Format: Journal Article
Language:English
Published: Elsevier Inc 15.07.2025
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ISSN:0021-9991
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Summary:Deep operator networks (DeepONets), as a powerful tool to approximate nonlinear mappings between different function spaces, have gained significant attention recently for applications in modeling parameterized partial differential equations. However, limited by the poor extrapolation ability of purely data-driven neural operators, these models tend to fail in predicting solutions with high accuracy outside the training time interval. To address this issue, a novel operator learning framework, TDMD-DeepONet, is proposed in this work, based on tensor train decomposition (TTD) and dynamic mode decomposition (DMD). We first demonstrate the mathematical agreement of the representation of TTD and DeepONet. Then the TTD is performed on a higher-order tensor consisting of given spatial-temporal snapshots collected under a set of parameter values to generate the parameter-, space- and time-dependent cores. DMD is then utilized to model the evolution of the time-dependent core, which is combined with the space-dependent cores to represent the trunk net. Similar to DeepONet, the branch net employs a neural network, with the parameters as inputs and outputs merged with the trunk net for prediction. Furthermore, the feature-enhanced TDMD-DeepONet (ETDMD-DeepONet) is proposed to improve the accuracy, in which an additional linear layer is incorporated into the branch network compared with TDMD-DeepONet. The input to the linear layer is obtained by projecting the initial conditions onto the trunk network. The proposed methods' good performance is demonstrated through several classical examples, in which the results demonstrate that the new methods are more accurate in forecasting solutions than the standard DeepONet. •TDMD-DeepONet is developed to solve parameterized PDEs using tensor and dynamic mode decomposition.•The TDMD-DeepONet exhibits more exceptional capacity for extrapolation over time than the DeepONet.•The ETDMD-DeepONet integrates parameter-derived features to enhance prediction accuracy.•A simple error analysis reveals branch net and DMD as the main sources of prediction error.
ISSN:0021-9991
DOI:10.1016/j.jcp.2025.113996