Neural network potential-energy surfaces in chemistry: a tool for large-scale simulations

J Behler - Physical Chemistry Chemical Physics, 2011 - pubs.rsc.org
The accuracy of the results obtained in molecular dynamics or Monte Carlo simulations
crucially depends on a reliable description of the atomic interactions. A large variety of …

Implicit neural representations with periodic activation functions

V Sitzmann, J Martel, A Bergman… - Advances in neural …, 2020 - proceedings.neurips.cc
Implicitly defined, continuous, differentiable signal representations parameterized by neural
networks have emerged as a powerful paradigm, offering many possible benefits over …

Deepreach: A deep learning approach to high-dimensional reachability

S Bansal, CJ Tomlin - 2021 IEEE International Conference on …, 2021 - ieeexplore.ieee.org
Hamilton-Jacobi (HJ) reachability analysis is an important formal verification method for
guaranteeing performance and safety properties of dynamical control systems. Its …

Multiscale topology optimization using neural network surrogate models

DA White, WJ Arrighi, J Kudo, SE Watts - Computer Methods in Applied …, 2019 - Elsevier
We are concerned with optimization of macroscale elastic structures that are designed
utilizing spatially varying microscale metamaterials. The macroscale optimization is …

A machine learning prediction of academic performance of secondary school students using radial basis function neural network

OA Olabanjo, AS Wusu, M Manuel - Trends in Neuroscience and Education, 2022 - Elsevier
Background Predictive models for academic performance forecasting have been a useful
tool in the improvement of the administrative, counseling and instructional personnel of …

Physics informed neural fields for smoke reconstruction with sparse data

M Chu, L Liu, Q Zheng, E Franz, HP Seidel… - ACM Transactions on …, 2022 - dl.acm.org
High-fidelity reconstruction of dynamic fluids from sparse multiview RGB videos remains a
formidable challenge, due to the complexity of the underlying physics as well as the severe …

Numerical solution of differential equations using multiquadric radial basis function networks

N Mai-Duy, T Tran-Cong - Neural networks, 2001 - Elsevier
This paper presents mesh-free procedures for solving linear differential equations (ODEs
and elliptic PDEs) based on multiquadric (MQ) radial basis function networks (RBFNs) …

[HTML][HTML] Inverse differential quadrature method for structural analysis of composite plates

HM Khalid, SO Ojo, PM Weaver - Computers & Structures, 2022 - Elsevier
A novel two-dimensional inverse differential quadrature method is proposed to approximate
the solution of high-order system of differential equations. A critical aspect of the proposed …

[HTML][HTML] Multilayer perceptrons and radial basis function neural network methods for the solution of differential equations: a survey

M Kumar, N Yadav - Computers & Mathematics with Applications, 2011 - Elsevier
Since neural networks have universal approximation capabilities, therefore it is possible to
postulate them as solutions for given differential equations that define unsupervised errors …

[PDF][PDF] Multiquadric radial basis function approximation methods for the numerical solution of partial differential equations

SA Sarra, EJ Kansa - Advances in Computational Mechanics, 2009 - scottsarra.org
Radial Basis Function (RBF) methods have become the primary tool for interpolating
multidimensional scattered data. RBF methods also have become important tools for solving …