A framework for a mesh-free numerical solver of differential equations is presented in this paper. Development of the solver is derived from machine learning techniques using artificial neural networks with Gaussian radial basis functions for their neurons. The proposed method incrementally develops an approximation through the optimization of a scalar condensed form of the differential equations. Unlike traditional solvers that require grids, volumes, or meshes, along with corresponding connectivity data, the proposed framework requires only a list of independent variable values to approximate the solution. Because of this, there is no need for the derivation or inversion of system matrices. Results are presented demonstrating the stability and accuracy of the proposed method and it is demonstrated that the spatial error estimate can exceed that of traditional methods.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Radial Basis Function Artificial Neural-Network-Inspired Numerical Solver


    Contributors:

    Published in:

    Publication date :

    2016-06-13


    Size :

    14 pages




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English




    Application of Artificial Fish Swarm Algorithm in Radial Basis Function Neural Network

    Zhou, Yuhong / Duan, Jiguang / Shao, Limin | BASE | 2016

    Free access


    Diagnosing priori unknown faults by radial basis function neural network

    Dalmi, I. / Kovacs, L. / Lorant, I. et al. | Tema Archive | 2000



    A Radial Basis Function Neural Network Approach to Traffic Flow Forecasting

    Wang, X.-H. / Xiao, J.-M. / IEEE | British Library Conference Proceedings | 2003