Closed-loop feedback-driven control laws can be used to solve low-thrust many-revolution trajectory design and guidance problems with minimal computational cost. Lyapunov-based control laws offer the benefits of increased stability whilst their optimality can be increased by tuning their parameters. In this paper, a reinforcement learning framework is used to make the parameters of the Lyapunov-based Q-law state-dependent, increasing its optimality. The Jacobian of these state-dependent parameters is available analytically and, unlike in other optimisation approaches, can be used to enforce stability throughout the transfer. The results focus on GTO–GEO and LEO–GEO transfers in Keplerian dynamics, including the effects of eclipses. The impa...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
This paper presents a robust technique for an Unmanned Aerial Vehicle (UAV) with the ability to fly ...
In recent years space missions for both scientific and commercial purposes have substantially increa...
Low-thrust many-revolution trajectory design and orbit transfers are becoming increasingly important...
Future missions to the Moon and beyond are likely to involve low-thrust propulsion technologies due ...
This paper investigates the use of reinforcement learning for the robust design of low-thrust interp...
This paper investigates the use of reinforcement learning for the optimal guidance of a spacecraft d...
Enhancements in evolutionary optimization techniques are rapidly growing in many aspects of engineer...
Future space missions require technological advances to meet more stringent requirements. Next gener...
Reinforcement learning entails many intuitive and useful approaches to solving various problems. Its...
While human presence in cislunar space continues to expand, so too does the demand for ‘lightweight’...
As the number of spacecraft and debris objects in orbit rapidly increases, active debris removal and...
This paper investigates the use of machine learning techniques for real-time optimal spacecraft guid...
© 2020 COSPAR This work develops a deep reinforcement learning based approach for Six Degree-of-Free...
This paper proposes a reinforcement learning (RL)-based six-degree-of-freedom (6-DOF) control scheme...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
This paper presents a robust technique for an Unmanned Aerial Vehicle (UAV) with the ability to fly ...
In recent years space missions for both scientific and commercial purposes have substantially increa...
Low-thrust many-revolution trajectory design and orbit transfers are becoming increasingly important...
Future missions to the Moon and beyond are likely to involve low-thrust propulsion technologies due ...
This paper investigates the use of reinforcement learning for the robust design of low-thrust interp...
This paper investigates the use of reinforcement learning for the optimal guidance of a spacecraft d...
Enhancements in evolutionary optimization techniques are rapidly growing in many aspects of engineer...
Future space missions require technological advances to meet more stringent requirements. Next gener...
Reinforcement learning entails many intuitive and useful approaches to solving various problems. Its...
While human presence in cislunar space continues to expand, so too does the demand for ‘lightweight’...
As the number of spacecraft and debris objects in orbit rapidly increases, active debris removal and...
This paper investigates the use of machine learning techniques for real-time optimal spacecraft guid...
© 2020 COSPAR This work develops a deep reinforcement learning based approach for Six Degree-of-Free...
This paper proposes a reinforcement learning (RL)-based six-degree-of-freedom (6-DOF) control scheme...
We present theoretical and numerical results concerning the problem to find the path that minimizes ...
This paper presents a robust technique for an Unmanned Aerial Vehicle (UAV) with the ability to fly ...
In recent years space missions for both scientific and commercial purposes have substantially increa...