Title :
Finite-element neural networks for solving differential equations
Author :
Ramuhalli, Pradeep ; Udpa, Lalita ; Udpa, Satish S.
Author_Institution :
Dept. of Electr. & Comput. Eng., Michigan State Univ., East Lansing, MI, USA
Abstract :
The solution of partial differential equations (PDE) arises in a wide variety of engineering problems. Solutions to most practical problems use numerical analysis techniques such as finite-element or finite-difference methods. The drawbacks of these approaches include computational costs associated with the modeling of complex geometries. This paper proposes a finite-element neural network (FENN) obtained by embedding a finite-element model in a neural network architecture that enables fast and accurate solution of the forward problem. Results of applying the FENN to several simple electromagnetic forward and inverse problems are presented. Initial results indicate that the FENN performance as a forward model is comparable to that of the conventional finite-element method (FEM). The FENN can also be used in an iterative approach to solve inverse problems associated with the PDE. Results showing the ability of the FENN to solve the inverse problem given the measured signal are also presented. The parallel nature of the FENN also makes it an attractive solution for parallel implementation in hardware and software.
Keywords :
computational complexity; feedforward neural nets; finite element analysis; inverse problems; partial differential equations; FEM; PDE; finite-difference method; finite-element method; finite-element neural network; inverse problem; partial differential equation; Computational efficiency; Computational geometry; Differential equations; Finite difference methods; Finite element methods; Inverse problems; Neural networks; Numerical analysis; Partial differential equations; Solid modeling; Finite-element method (FEM); finite-element neural network (FENN); inverse problems; Algorithms; Computer Simulation; Finite Element Analysis; Models, Theoretical; Neural Networks (Computer); Numerical Analysis, Computer-Assisted;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2005.857945