144 research outputs found
Adaptive trajectories sampling for solving PDEs with deep learning methods
In this paper, we propose a new adaptive technique, named adaptive
trajectories sampling (ATS), which is used to select training points for the
numerical solution of partial differential equations (PDEs) with deep learning
methods. The key feature of the ATS is that all training points are adaptively
selected from trajectories that are generated according to a PDE-related
stochastic process. We incorporate the ATS into three known deep learning
solvers for PDEs, namely the adaptive derivative-free-loss method (ATS-DFLM),
the adaptive physics-informed neural network method (ATS-PINN), and the
adaptive temporal-difference method for forward-backward stochastic
differential equations (ATS-FBSTD). Our numerical experiments demonstrate that
the ATS remarkably improves the computational accuracy and efficiency of the
original deep learning solvers for the PDEs. In particular, for some specific
high-dimensional PDEs, the ATS can even improve the accuracy of the PINN by two
orders of magnitude.Comment: 18 pages, 12 figures, 42 reference
A Linear Finite Element Method for a Second Order Elliptic Equation in Non-Divergence Form with Cordes Coefficients
In this paper, we develop a gradient recovery based linear (GRBL) finite
element method (FEM) and a Hessian recovery based linear (HRBL) FEM for second
order elliptic equations in non-divergence form. The elliptic equation is
casted into a symmetric non-divergence weak formulation, in which second order
derivatives of the unknown function are involved. We use gradient and Hessian
recovery operators to calculate the second order derivatives of linear finite
element approximations. Although, thanks to low degrees of freedom (DOF) of
linear elements, the implementation of the proposed schemes is easy and
straightforward, the performances of the methods are competitive. The unique
solvability and the seminorm error estimate of the GRBL scheme are
rigorously proved. Optimal error estimates in both the norm and the
seminorm have been proved when the coefficient is diagonal, which have been
confirmed by numerical experiments. Superconvergence in errors has also been
observed. Moreover, our methods can handle computational domains with curved
boundaries without loss of accuracy from approximation of boundaries. Finally,
the proposed numerical methods have been successfully applied to solve fully
nonlinear Monge-Amp\`{e}re equations
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