Finite Volume Least-Squares Neural Network (FV-LSNN) Method for Scalar Nonlinear Hyperbolic Conservation Laws
In [4], we introduced the least-squares ReLU neural network (LSNN) method for solving the linear advection-reaction problem with discontinuous solution and showed that the number of degrees of freedom for the LSNN method is significantly less than that of traditional mesh-based methods. The LSNN method is a discretization of an equivalent least-squares (LS) formulation in the class of neural network functions with the ReLU activation function; and evaluation of the LS functional is done by using numerical integration and proper numerical differentiation. By developing a novel finite volume approximation (FVA) to the divergence operator, this paper studies the LSNN method for scalar nonlinear hyperbolic conservation laws. The FVA introduced in this paper is tailored to the LSNN method and is more accurate than traditional, well-studied FV schemes used in mesh-based numerical methods. Numerical results of some benchmark test problems with both convex and non-convex fluxes show that the finite volume LSNN (FV-LSNN) method is capable of computing the physical solution for problems with rarefaction waves and capturing the shock of the underlying problem automatically through the free hyper-planes of the ReLU neural network. Moreover, the method does not exhibit the common Gibbs phenomena along the discontinuous interface.
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