MGA trajectory planning with an ACO-inspired algorithm
Matteo Ceriotti, Massimiliano Vasile

TL;DR
This paper introduces an ACO-inspired algorithm for automated MGA trajectory planning, efficiently exploring complex combinatorial space to identify optimal planetary sequences and transfer paths for space missions.
Contribution
It formulates MGA trajectory design as an autonomous planning problem and applies an ACO-inspired method to effectively explore the solution space.
Findings
Successfully applied to Saturn transfer planning
Effective in exploring large combinatorial spaces
Provides near-optimal trajectories efficiently
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…
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Taxonomy
TopicsSpacecraft Dynamics and Control · Space Satellite Systems and Control · Spacecraft and Cryogenic Technologies
