In this paper, a meta-reinforcement learning approach is used to generate a guidance algorithm capable of carrying out multi-target missions. Specifically, two models are trained to learn how to realize multiple fuel-optimal low-thrust rendezvous maneuvers between circular co-planar orbits with close radii. The first model is entirely based on a Multilayer Perceptron (MLP) neural network, while the second one also relies on a Long Short-Term Memory (LSTM) layer, which provides augmented generalization capability by incorporating memory-dependent internal states. The two networks are trained via Proximal Policy Optimization (PPO) on a wide distribution of transfers, which encompasses all possible trajectories connecting any pair of targets o...
The missed-thrust problem is a modern challenge in the field of mission design. While some methods e...
Future exploration and human missions on large planetary bodies (e.g., moon, Mars) will require adva...
Precision landing on large planetary bodies is an important technology that enables future human and...
This paper investigates the use of reinforcement learning for the optimal guidance of a spacecraft d...
This paper investigates the use of machine learning techniques for real-time optimal spacecraft guid...
This paper focuses on the use of meta-reinforcement learning for the autonomous guidance of a spacec...
The growing ferment towards enhanced autonomy on-board spacecrafts is driving the research of leadin...
This paper investigates the use of deep learning techniques for real-time optimal spacecraft guidanc...
This paper investigates the use of reinforcement learning for the robust design of low-thrust interp...
© 2020 IAA This paper proposes a novel adaptive guidance system developed using reinforcement meta-l...
Many far-reaching objectives and aspirations in space exploration are predicated on achieving a high...
This paper aims a developing a new feedback guidance algorithm for docking maneuvers in the cislunar...
© 2020 Elsevier Masson SAS We present a novel guidance law that uses observations consisting solely ...
Precision landing on large and small planetary bodies is a technology of utmost importance for futur...
We present a novel guidance law that uses observations consisting solely of seeker line of sight ang...
The missed-thrust problem is a modern challenge in the field of mission design. While some methods e...
Future exploration and human missions on large planetary bodies (e.g., moon, Mars) will require adva...
Precision landing on large planetary bodies is an important technology that enables future human and...
This paper investigates the use of reinforcement learning for the optimal guidance of a spacecraft d...
This paper investigates the use of machine learning techniques for real-time optimal spacecraft guid...
This paper focuses on the use of meta-reinforcement learning for the autonomous guidance of a spacec...
The growing ferment towards enhanced autonomy on-board spacecrafts is driving the research of leadin...
This paper investigates the use of deep learning techniques for real-time optimal spacecraft guidanc...
This paper investigates the use of reinforcement learning for the robust design of low-thrust interp...
© 2020 IAA This paper proposes a novel adaptive guidance system developed using reinforcement meta-l...
Many far-reaching objectives and aspirations in space exploration are predicated on achieving a high...
This paper aims a developing a new feedback guidance algorithm for docking maneuvers in the cislunar...
© 2020 Elsevier Masson SAS We present a novel guidance law that uses observations consisting solely ...
Precision landing on large and small planetary bodies is a technology of utmost importance for futur...
We present a novel guidance law that uses observations consisting solely of seeker line of sight ang...
The missed-thrust problem is a modern challenge in the field of mission design. While some methods e...
Future exploration and human missions on large planetary bodies (e.g., moon, Mars) will require adva...
Precision landing on large planetary bodies is an important technology that enables future human and...