Volume 6, Issue 4
pETNNs: Partial Evolutionary Tensor Neural Networks for Solving Time-Dependent Partial Differential Equations

Tunan Kao, He Zhang, Lei Zhang & Jin Zhao

CSIAM Trans. Appl. Math., 6 (2025), pp. 862-891.

Published online: 2025-09

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  • Abstract

We present partial evolutionary tensor neural networks (pETNNs), a novel approach for solving time-dependent partial differential equations with high accuracy and capable of handling high-dimensional problems. Our architecture incorporates tensor neural networks and evolutionary parametric approximation. A posteriori error bound is proposed to support the extrapolation capabilities. In numerical implementations, we adopt a partial update strategy to achieve a significant reduction in computational cost while maintaining precision and robustness. Notably, as a low-rank approximation method of complex dynamical systems, pETNNs enhance the accuracy of evolutionary deep neural networks and empower computational abilities to address high-dimensional problems. Numerical experiments demonstrate the superior performance of the pETNNs in solving complex time-dependent equations, including the incompressible Navier-Stokes equations, high-dimensional heat equations, high-dimensional transport equations, and dispersive equations of higher-order derivatives.

  • AMS Subject Headings

65M99, 65L05, 68T07

  • Copyright

COPYRIGHT: © Global Science Press

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@Article{CSIAM-AM-6-862, author = {Kao , TunanZhang , HeZhang , Lei and Zhao , Jin}, title = {pETNNs: Partial Evolutionary Tensor Neural Networks for Solving Time-Dependent Partial Differential Equations}, journal = {CSIAM Transactions on Applied Mathematics}, year = {2025}, volume = {6}, number = {4}, pages = {862--891}, abstract = {

We present partial evolutionary tensor neural networks (pETNNs), a novel approach for solving time-dependent partial differential equations with high accuracy and capable of handling high-dimensional problems. Our architecture incorporates tensor neural networks and evolutionary parametric approximation. A posteriori error bound is proposed to support the extrapolation capabilities. In numerical implementations, we adopt a partial update strategy to achieve a significant reduction in computational cost while maintaining precision and robustness. Notably, as a low-rank approximation method of complex dynamical systems, pETNNs enhance the accuracy of evolutionary deep neural networks and empower computational abilities to address high-dimensional problems. Numerical experiments demonstrate the superior performance of the pETNNs in solving complex time-dependent equations, including the incompressible Navier-Stokes equations, high-dimensional heat equations, high-dimensional transport equations, and dispersive equations of higher-order derivatives.

}, issn = {2708-0579}, doi = {https://doi.org/10.4208/csiam-am.SO-2024-0048}, url = {http://global-sci.org/intro/article_detail/csiam-am/24505.html} }
TY - JOUR T1 - pETNNs: Partial Evolutionary Tensor Neural Networks for Solving Time-Dependent Partial Differential Equations AU - Kao , Tunan AU - Zhang , He AU - Zhang , Lei AU - Zhao , Jin JO - CSIAM Transactions on Applied Mathematics VL - 4 SP - 862 EP - 891 PY - 2025 DA - 2025/09 SN - 6 DO - http://doi.org/10.4208/csiam-am.SO-2024-0048 UR - https://global-sci.org/intro/article_detail/csiam-am/24505.html KW - Time-dependent partial differential equations, tensor neural networks, evolutionary deep neural networks, high-dimensional problems. AB -

We present partial evolutionary tensor neural networks (pETNNs), a novel approach for solving time-dependent partial differential equations with high accuracy and capable of handling high-dimensional problems. Our architecture incorporates tensor neural networks and evolutionary parametric approximation. A posteriori error bound is proposed to support the extrapolation capabilities. In numerical implementations, we adopt a partial update strategy to achieve a significant reduction in computational cost while maintaining precision and robustness. Notably, as a low-rank approximation method of complex dynamical systems, pETNNs enhance the accuracy of evolutionary deep neural networks and empower computational abilities to address high-dimensional problems. Numerical experiments demonstrate the superior performance of the pETNNs in solving complex time-dependent equations, including the incompressible Navier-Stokes equations, high-dimensional heat equations, high-dimensional transport equations, and dispersive equations of higher-order derivatives.

Kao , TunanZhang , HeZhang , Lei and Zhao , Jin. (2025). pETNNs: Partial Evolutionary Tensor Neural Networks for Solving Time-Dependent Partial Differential Equations. CSIAM Transactions on Applied Mathematics. 6 (4). 862-891. doi:10.4208/csiam-am.SO-2024-0048
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