Title of article :
Design of Fault Detection Observer Based on Hyper Basis Function
Author/Authors :
Wen, Xin aculty of Aerospace Engineering - Shenyang Aerospace University , Zhang, Xingwang Faculty of Aerospace Engineering - Shenyang Aerospace University , Zhu, Yaping College Astronautics - Nanjing University of Aeronautics and Astronautics
Abstract :
In this paper, we propose the Hyper Basis Function (HBF) neural network on the basis of Radial Basis Function (RBF) neural network. Compared with RBF, HBF neural networks have a more generalized ability with different activation functions. A decision tree algorithm is used to determine the network center. Subsequently, we
design an adaptive observer based on HBF neural networks and propose a fault detection and diagnosis method based on the observer for the nonlinear modeling ability of the neural network. Finally, we apply this method to nonlinear systems. The sensitivity and stability of the observer for the failure of the nonlinear systems are proved
by simulation, which is beneficial for real-time online fault detection and diagnosis.
Keywords :
neural networks , hyper basis function , fault detection , observer
Journal title :
Astroparticle Physics