Title :
Low-thrust mission trade studies with parallel, evolutionary computing
Author :
Lee, Seungwon ; Russell, Ryan P. ; Fink, Wolfgang ; Terrile, Richard J. ; Petropoulos, Anastassios E. ; Von Allmen, Paul
Author_Institution :
Jet Propulsion Lab., Pasadena, CA
Abstract :
New mission concepts are increasingly considering the use of ion propulsion for fuel-efficient navigation in deep space. The development of new low-thrust mission concepts requires efficient methods to rapidly determine feasibility and thoroughly explore trade spaces. This paper presents parallel, evolutionary computing methods to assess a trade-off between delivered payload mass and required flight time. The developed methods utilize a distributed computing environment in order to speed up computation, and use evolutionary algorithms to approximate optimal solutions. The methods are coupled with the Primer Vector theory, where a thrust control problem is transformed into a co-state control problem and the initial values of the co-state vector are optimized. The developed methods are applied to two mission scenarios: i) an orbit transfer around Earth and ii) a transfer between two distant retrograde orbits around Europa. The solutions found with the present methods are comparable to those obtained by other state-of-the-art trajectory optimizers. The required computational time can be up to several orders of magnitude shorter than that of other optimizers thanks to the utilization of the distributed computing environment, the significant reduction of the search space dimension with the primer vector theory, and the efficient and synergistic exploration of the remaining search space with evolutionary computing
Keywords :
aerospace computing; aerospace control; aerospace propulsion; evolutionary computation; ion engines; navigation; parallel processing; position control; space research; Primer Vector theory; costate control problem; costate vector optimization; deep space; distributed computing; evolutionary computing; flight time; fuel-efficient navigation; ion propulsion; low-thrust mission; orbit transfer; parallel computing; payload mass; search space dimension reduction; thrust control; trajectory optimization; Concurrent computing; Distributed computing; Earth; Evolutionary computation; Navigation; Optimization methods; Payloads; Propulsion; Space exploration; Space missions;
Conference_Titel :
Aerospace Conference, 2006 IEEE
Conference_Location :
Big Sky, MT
Print_ISBN :
0-7803-9545-X
DOI :
10.1109/AERO.2006.1656038