Solving High Dimensional Partial Differential Equations Using Tensor Neural Network and A Posteriori Error Estimators
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In this paper, based on the combination of tensor neural network and a posteriori error estimator, a novel type of machine learning method is proposed to solve high-dimensional boundary value problems with homogeneous and non-homogeneous Dirichlet or Neumann type of boundary conditions and eigenvalue problems of the second-order elliptic operator. The most important advantage of the tensor neural network is that the high dimensional integrations of tensor neural networks can be computed with high accuracy and high efficiency. Based on this advantage and the theory of a posteriori error estimation, the a posteriori error estimator is adopted to design the loss function to optimize the network parameters adaptively. The applications of tensor neural network and the a posteriori error estimator improve the accuracy of the corresponding machine learning method. The theoretical analysis and numerical examples are provided to validate the proposed methods.
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Regularity Analysis and Tensor Neural Network Methods for Quasiperiodic Elliptic Equations
Tensor neural networks with projection solve quasiperiodic elliptic equations after proving regularity under Diophantine conditions and a source-term restriction.
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