Title :
Diagonal recurrent neural networks for dynamic systems control
Author :
Ku, Chao-Chee ; Lee, Kwang Y.
Author_Institution :
Dept. of Electr. & Comput. Eng., Pennsylvania State Univ., University Park, PA, USA
fDate :
1/1/1995 12:00:00 AM
Abstract :
A new neural paradigm called diagonal recurrent neural network (DRNN) is presented. The architecture of DRNN is a modified model of the fully connected recurrent neural network with one hidden layer, and the hidden layer comprises self-recurrent neurons. Two DRNN´s are utilized in a control system, one as an identifier called diagonal recurrent neuroidentifier (DRNI) and the other as a controller called diagonal recurrent neurocontroller (DRNC). A controlled plant is identified by the DRNI, which then provides the sensitivity information of the plant to the DRNC. A generalized dynamic backpropagation algorithm (DBP) is developed and used to train both DRNC and DRNI. Due to the recurrence, the DRNN can capture the dynamic behavior of a system. To guarantee convergence and for faster learning, an approach that uses adaptive learning rates is developed by introducing a Lyapunov function. Convergence theorems for the adaptive backpropagation algorithms are developed for both DRNI and DRNC. The proposed DRNN paradigm is applied to numerical problems and the simulation results are included
Keywords :
backpropagation; convergence; identification; neurocontrollers; recurrent neural nets; Lyapunov function; adaptive learning rates; convergence; convergence theorems; diagonal recurrent neural networks; diagonal recurrent neurocontroller; diagonal recurrent neuroidentifier; dynamic systems control; generalized dynamic backpropagation algorithm; hidden layer; self-recurrent neurons; Adaptive control; Backpropagation algorithms; Control systems; Convergence; Dynamic programming; Feedforward neural networks; Intelligent control; Neural networks; Neurons; Recurrent neural networks;
Journal_Title :
Neural Networks, IEEE Transactions on