Title :
Reconstructing nonlinear dynamical systems by neural network residual minimization method
Author :
Liaqat, Ali ; Kimoto, Masahide
Author_Institution :
Center for Climate Syst. Res., Tokyo Univ., Japan
Abstract :
A new neural network residual minimization training method for empirically reconstruction of dynamical systems has been proposed. An unknown dynamical system is expressed as a set of first order ordinary differential equations. An algorithm for training neural network over wider assimilation window is employed. The performance of the method is examined over prediction periods by applying it to the chaotic Lorenz model. A considerable improvement in prediction skill is obtained over the conventional methods. Its application to data from the real climate system is in progress.
Keywords :
chaos; climatology; differential equations; geophysics computing; learning (artificial intelligence); minimisation; neural nets; nonlinear dynamical systems; assimilation window; chaotic Lorenz model; empirically reconstruction; first order ordinary differential equations; neural network residual minimization method; nonlinear dynamical system; prediction periods; real climate system; Chaos; Feedforward neural networks; Feedforward systems; Minimization methods; Multi-layer neural network; Neural networks; Neurons; Nonlinear dynamical systems; Ocean temperature; Shape;
Conference_Titel :
Multitopic Conference, 2004. Proceedings of INMIC 2004. 8th International
Print_ISBN :
0-7803-8680-9
DOI :
10.1109/INMIC.2004.1492906