© 2020 IAA This paper proposes a novel adaptive guidance system developed using reinforcement meta-learning with a recurrent policy and value function approximator. The use of recurrent network layers allows the deployed policy to adapt in real time to environmental forces acting on the agent. We compare the performance of the DR/DV guidance law, an RL agent with a non-recurrent policy, and an RL agent with a recurrent policy in four challenging environments with unknown but highly variable dynamics. These tasks include a safe Mars landing with random engine failure and a landing on an asteroid with unknown environmental dynamics. We also demonstrate the ability of a RL meta-learning optimized policy to implement a guidance law using observ...
Autonomous vehicle navigation in an unknown dynamic environment is crucial for both supervised- and ...
Future space missions require technological advances to meet more stringent requirements. Next gener...
© 2020, Univelt Inc. All rights reserved. Precision landing on large planetary bodies is an importan...
Current practice for asteroid close proximity maneuvers requires extremely accurate characterization...
In this paper, a meta-reinforcement learning approach is used to generate a guidance algorithm capab...
This paper focuses on the use of meta-reinforcement learning for the autonomous guidance of a spacec...
Future exploration and human missions on large planetary bodies (e.g., moon, Mars) will require adva...
Precision landing on large and small planetary bodies is a technology of utmost importance for futur...
© 2020 COSPAR This work develops a deep reinforcement learning based approach for Six Degree-of-Free...
Mobile robots that operate in human environments require the ability to safely navigate among humans...
Future missions to the Moon and Mars will require advanced guidance navigation and control algorithm...
Future missions to the Moon and Mars will require advanced Guidance, Navigation, and Control (GNC) a...
This paper deals with the guidance problem of close approaching small celestial bodies while autonom...
© 2020 Elsevier Masson SAS We present a novel guidance law that uses observations consisting solely ...
This paper investigates the use of reinforcement learning for the robust design of low-thrust interp...
Autonomous vehicle navigation in an unknown dynamic environment is crucial for both supervised- and ...
Future space missions require technological advances to meet more stringent requirements. Next gener...
© 2020, Univelt Inc. All rights reserved. Precision landing on large planetary bodies is an importan...
Current practice for asteroid close proximity maneuvers requires extremely accurate characterization...
In this paper, a meta-reinforcement learning approach is used to generate a guidance algorithm capab...
This paper focuses on the use of meta-reinforcement learning for the autonomous guidance of a spacec...
Future exploration and human missions on large planetary bodies (e.g., moon, Mars) will require adva...
Precision landing on large and small planetary bodies is a technology of utmost importance for futur...
© 2020 COSPAR This work develops a deep reinforcement learning based approach for Six Degree-of-Free...
Mobile robots that operate in human environments require the ability to safely navigate among humans...
Future missions to the Moon and Mars will require advanced guidance navigation and control algorithm...
Future missions to the Moon and Mars will require advanced Guidance, Navigation, and Control (GNC) a...
This paper deals with the guidance problem of close approaching small celestial bodies while autonom...
© 2020 Elsevier Masson SAS We present a novel guidance law that uses observations consisting solely ...
This paper investigates the use of reinforcement learning for the robust design of low-thrust interp...
Autonomous vehicle navigation in an unknown dynamic environment is crucial for both supervised- and ...
Future space missions require technological advances to meet more stringent requirements. Next gener...
© 2020, Univelt Inc. All rights reserved. Precision landing on large planetary bodies is an importan...