Title :
Design of neural networks for fast convergence and accuracy: dynamics and control
Author :
Maghami, Peiman G. ; Sparks, Dean W., Jr.
Author_Institution :
Guidance & Control Branch, NASA Langley Res. Center, Hampton, VA, USA
fDate :
1/1/2000 12:00:00 AM
Abstract :
A procedure for the design and training of artificial neural networks, used for rapid and efficient controls and dynamics design and analysis for flexible space systems, has been developed. Artificial neural networks are employed, such that once property trained, they provide a means of evaluating the impact of design changes rapidly. Specifically, two-layer feedforward neural networks are designed to approximate the functional relationship between the component/spacecraft design changes and measures of its performance or nonlinear dynamics of the system/components. A training algorithm, based on statistical sampling theory is presented, which guarantees that the trained networks provide a designer-specified degree of accuracy in mapping the functional relationship. Within each iteration of this statistical-based algorithm, a sequential design algorithm is used for the design and training of the feedforward network to provide rapid convergence to the network goals. Here, at each sequence a new network is trained to minimize the error of previous network. The proposed method should work for applications wherein an arbitrary large source of training data can be generated. Two numerical examples are performed on a spacecraft application in order to demonstrate the feasibility of the proposed approach
Keywords :
aerospace computing; aerospace control; feedforward neural nets; artificial neural networks; fast convergence; flexible space systems; functional relationship; neural networks; sequential design algorithm; statistical sampling theory; statistical-based algorithm; two-layer feedforward neural networks; Algorithm design and analysis; Artificial neural networks; Control systems; Convergence; Feedforward neural networks; Neural networks; Nonlinear dynamical systems; Sampling methods; Space vehicles; Training data;
Journal_Title :
Neural Networks, IEEE Transactions on