DocumentCode
2054411
Title
Shape estimation of inflatable space structures using neural network
Author
Peng, Fujun ; Hu, Yan-Ru ; Ng, Alfred
Author_Institution
Directorate of Spacecraft Eng., Canadian Space Agency, Saint-Hubert, Que.
fYear
2005
fDate
24-28 July 2005
Firstpage
1017
Lastpage
1022
Abstract
Inflatable space structures need to maintain in a desired shape in space in order to achieve satisfactory performance. The active shape control technique has shown its advantages in solving this problem. One difficulty to realize an active control system in space is how to establish a model that reflects the structure shapes under different environment and boundary tensions. This paper proposes a neural network scheme to estimate the shape of inflatable structures. A neural network is trained to map environment information and control tensions into the structure shape. After the neural network training completes, an estimation of the structure shape can be obtained by inputting the measured environment data and control variables to the neural network. Some validation studies have been conducted in laboratory on the estimation of the flatness of a rectangular Kapton membrane. The results showed the proposed scheme gave very good estimations of the membrane flatness
Keywords
aerospace control; aerospace materials; neural nets; shape control; active shape control; inflatable space structures; neural network; rectangular Kapton membrane; shape estimation; Aerospace engineering; Biomembranes; Control systems; Genetic algorithms; Neural networks; Shape control; Shape measurement; Space vehicles; Synthetic aperture radar; Temperature;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Intelligent Mechatronics. Proceedings, 2005 IEEE/ASME International Conference on
Conference_Location
Monterey, CA
Print_ISBN
0-7803-9047-4
Type
conf
DOI
10.1109/AIM.2005.1511143
Filename
1511143
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