Ingela Lind
SAAB Aeronautics, Linköping, Sweden
Alexandra Oprea
SAAB Aeronautics, Linköping, Sweden
Ladda ner artikelhttp://dx.doi.org/10.3384/ecp12076333Ingår i: Proceedings of the 9th International MODELICA Conference; September 3-5; 2012; Munich; Germany
Linköping Electronic Conference Proceedings 76:34, s. 333-338
Publicerad: 2012-11-19
ISBN: 978-91-7519-826-2
ISSN: 1650-3686 (tryckt), 1650-3740 (online)
Fuel tanks in fighter aircraft have an irregular shape which is given by a detailed CAD model. To simulate a fuel system with sufficient amount of detail to solve the design issues; necessary geometrical information need to be given in a compact and computationally fast form. A function approximation using radial basis functions is suggested; analyzed and compared with some other methods. The complete process from production scale CAD model to system simulation model is considered.
aircraft design; fuel systems simulation; geometrical representation; surrogate model; radial basis functions
[1] Gavel. H. (2007) On Aircraft Fuel Systems – Conceptual Design and Modeling. Dissertation No.1067; Division of Machine Design; Department of Mechanical Engineering; Linköpings University. ISBN 978-91-85643-04-2
[2] Lind. I. & Andersson. H. (2011) Model Based Systems Engineering for Aircraft Systems – How does Modelica Based Tools Fit? In proceedings of the 8th International Modelica Conference; Dresden; 2011
[3] Steinkellner S.; Andersson H.; Gavel H. and Krus P. Modeling and simulation of Saab Gripen’s vehicle systems; AIAA Modeling and Simulation Technologies Conference; Chicago; USA; AIAA 2009-6134; 2009
[4] Wikström J.; 3D Model of Fuel Tank for System Simulation: A methodology for combining CAD models with simulation tools; Masters thesis LIU-IEI-TEK-A—11/01201—SE; Linköpings University; 2011; http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-71370
[5] Buhmann; M. D. Radial Basis Functions; Acta Numerica (2000) 1—38.
doi: 10.1017/S0962492900000015.
[6] Chen. S.; Billings. S.A. & Lou. W. (1989) Orthogonal least squares methods and their application to non-linear system identification. Internal Journal of Control; 50:5; 1873-1896.
doi: 10.1080/00207178908953472.
[7] Chen. S.; Billings. S.A.; Cowan. C.F.N. & Grant. P.M. (1990) Practical identification of NARMAX models using radial basis functions. Internal Journal of Control; 52:6; 1327-1350.
doi: 10.1080/00207179008953599.
[8] Boyd; J.P.; Six strategies for defeating the Runge Phenomenon in Gaussian radial basis functions on a finite interval. Computers and Mathematics with Applications; 60 (2010); 3108-3122.
doi: .