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Optimization of very-low-thrust trajectories using evolutionary neurocontrol
Searching optimal interplanetary trajectories for low-thrust spacecraft is usually a difficult and time-consuming task that involves much experience and expert knowledge in astrodynamics and optimal control theory. This is because the convergence behavior of traditional local optimizers, which are b...
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Published in: | Acta astronautica 2005-07, Vol.57 (2), p.175-185 |
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description | Searching optimal interplanetary trajectories for low-thrust spacecraft is usually a difficult and time-consuming task that involves much experience and expert knowledge in astrodynamics and optimal control theory. This is because the convergence behavior of traditional local optimizers, which are based on numerical optimal control methods, depends on an adequate initial guess, which is often hard to find, especially for very-low-thrust trajectories that necessitate many revolutions around the sun. The obtained solutions are typically close to the initial guess that is rarely close to the (unknown) global optimum. Within this paper, trajectory optimization problems are attacked from the perspective of artificial intelligence and machine learning. Inspired by natural archetypes, a smart global method for low-thrust trajectory optimization is proposed that fuses artificial neural networks and evolutionary algorithms into so-called evolutionary neurocontrollers. This novel method runs without an initial guess and does not require the attendance of an expert in astrodynamics and optimal control theory. This paper details how evolutionary neurocontrol works and how it could be implemented. The performance of the method is assessed for three different interplanetary missions with a thrust to mass ratio
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doi_str_mv | 10.1016/j.actaastro.2005.03.004 |
format | article |
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source | Elsevier |
subjects | Astrodynamics Evolutionary Evolutionary algorithms Neurocontrol Optimal control Optimization Trajectories Trajectory optimization |
title | Optimization of very-low-thrust trajectories using evolutionary neurocontrol |
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