SHoP: A Deep Learning Framework for Solving High-order Partial Differential Equations
From MaRDI portal
Publication:6436926
arXiv2305.10033MaRDI QIDQ6436926
Author name not available (Why is that?)
Publication date: 17 May 2023
Abstract: Solving partial differential equations (PDEs) has been a fundamental problem in computational science and of wide applications for both scientific and engineering research. Due to its universal approximation property, neural network is widely used to approximate the solutions of PDEs. However, existing works are incapable of solving high-order PDEs due to insufficient calculation accuracy of higher-order derivatives, and the final network is a black box without explicit explanation. To address these issues, we propose a deep learning framework to solve high-order PDEs, named SHoP. Specifically, we derive the high-order derivative rule for neural network, to get the derivatives quickly and accurately; moreover, we expand the network into a Taylor series, providing an explicit solution for the PDEs. We conduct experimental validations four high-order PDEs with different dimensions, showing that we can solve high-order PDEs efficiently and accurately.
Has companion code repository: https://github.com/harrypotterxtx/shop
This page was built for publication: SHoP: A Deep Learning Framework for Solving High-order Partial Differential Equations
Report a bug (only for logged in users!)Click here to report a bug for this page (MaRDI item Q6436926)