Title :
Real-time synthesis of linear state observers using a multilayer recurrent neural network
Author :
Wang, Jun ; Wu, Guang
Author_Institution :
Dept. of Ind. Technol., North Dakota Univ., Grand Forks, ND, USA
Abstract :
Presents a multilayer recurrent neural network for real-time synthesis of asymptotic state observers for linear dynamical systems. The proposed recurrent neural network is composed of two layers of artificial neurons. By solving two matrix equations using the two-layer recurrent neural network, the proposed recurrent neural network is able to determine the output gain matrix of a Luenberger (asymptotic) state observer in real time. The proposed multilayer recurrent neural network is shown to be capable of synthesizing asymptotic state observers with prespecified poles for linear time-varying dynamic systems. The operating characteristics of the recurrent neural network for state observation are demonstrated by use of two illustrative examples
Keywords :
continuous time systems; linear systems; matrix algebra; multilayer perceptrons; observers; time-varying systems; asymptotic state observers; linear dynamical systems; linear state observers; matrix equations; multilayer recurrent neural network; operating characteristics; output gain matrix; real-time synthesis; state observation; time-varying dynamic systems; two-layer recurrent neural network; Control systems; Equations; Linear systems; Monitoring; Multi-layer neural network; Network synthesis; Neural networks; Recurrent neural networks; State estimation; Vectors;
Conference_Titel :
Industrial Technology, 1994., Proceedings of the IEEE International Conference on
Conference_Location :
Guangzhou
Print_ISBN :
0-7803-1978-8
DOI :
10.1109/ICIT.1994.467113