Title :
Application of neuro-Kalman filtering to attitude estimation of platforms and space vehicles
Author_Institution :
Queen Mary & Westfield Coll., London Univ., UK
Abstract :
In this paper the on going work concerning the application of a particular hybrid neural network and Kalman filtering approach to the attitude estimation problem is presented. A neural network architecture for implementing observers and estimators has been developed. A synergistic approach is adopted not only in learning the weights but also in the development of the macro structure of the neural network. Based on this architecture extended Kalman filtering and neural network learning are combined and implemented to the attitude estimation problem
Keywords :
Kalman filters; State estimation; aerospace control; attitude control; neural nets; state estimation; Kalman filtering; aerospace control; attitude estimation; neural network; observers; space platforms; space vehicles; synergistic approach;
Conference_Titel :
High Accuracy Platform Control in Space, IEE Colloquium on
Conference_Location :
London