MGA trajectory planning with an ACO-inspired algorithm

Ceriotti, M. and Vasile, M. (2010) MGA trajectory planning with an ACO-inspired algorithm. Acta Astronautica, 67(9-10), pp. 1202-1217. (doi: 10.1016/j.actaastro.2010.07.001)

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Publisher's URL: http://dx.doi.org/10.1016/j.actaastro.2010.07.001

Abstract

Given a set of celestial bodies, the problem of finding an optimal sequence of swing-bys, deep space manoeuvres (DSM) and transfer arcs connecting the elements of the set is combinatorial in nature. The number of possible paths grows exponentially with the number of celestial bodies. Therefore, the design of an optimal multiple gravity assist (MGA) trajectory is a NP-hard mixed combinatorial-continuous problem. Its automated solution would greatly improve the design of future space missions, allowing the assessment of a large number of alternative mission options in a short time. This work proposes to formulate the complete automated design of a multiple gravity assist trajectory as an autonomous planning and scheduling problem. The resulting scheduled plan will provide the optimal planetary sequence and a good estimation of the set of associated optimal trajectories. The trajectory model consists of a sequence of celestial bodies connected by two-dimensional transfer arcs containing one DSM. For each transfer arc, the position of the planet and the spacecraft, at the time of arrival, are matched by varying the pericentre of the preceding swing-by, or the magnitude of the launch excess velocity, for the first arc. For each departure date, this model generates a full tree of possible transfers from the departure to the destination planet. Each leaf of the tree represents a planetary encounter and a possible way to reach that planet. An algorithm inspired by ant colony optimization (ACO) is devised to explore the space of possible plans. The ants explore the tree from departure to destination adding one node at the time: every time an ant is at a node, a probability function is used to select a feasible direction. This approach to automatic trajectory planning is applied to the design of optimal transfers to Saturn and among the Galilean moons of Jupiter. Solutions are compared to those found through more traditional genetic-algorithm techniques.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Ceriotti, Dr Matteo and Vasile, Dr Massimiliano
Authors: Ceriotti, M., and Vasile, M.
College/School:College of Science and Engineering > School of Engineering > Autonomous Systems and Connectivity
College of Science and Engineering > School of Engineering > Systems Power and Energy
Journal Name:Acta Astronautica
ISSN:0094-5765
Published Online:31 July 2010
Copyright Holders:Copyright © 2010 Elsevier
First Published:First published in Acta Astronautica 67(9-10):1202-1217
Publisher Policy:Reproduced in accordance with the copyright policy of the publisher

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