This paper focuses on the trajectory tracking guidance problem for the Terminal Area Energy Management (TAEM) phase of the Reusable Launch Vehicle (RLV). Considering the continuous state and action space of this guidance problem, the Continuous Actor–Critic Learning Automata (CACLA) is applied to construct the guidance strategy of RLV. Two three-layer neuron networks are used to model the critic and actor of CACLA, respectively. The weight vectors of the critic are updated by the model-free Temporal Difference (TD) learning algorithm, which is improved by eligibility trace and momentum factor. The weight vectors of the actor are updated based on the sign of TD error, and a Gauss exploration is carried out in the actor. Finally, a Monte Carl...
A deep reinforcement learning-based computational guidance method is presented, which is used to ide...
The next generation of reusable launch vehicles (RLVs) require significant improvements in guidance...
This study presents an application of an actor-critic reinforcement learning method to a simple poin...
Reusable Launch Vehicles (RLVs) are the future of the space industry due to their low cost and relia...
This thesis presents a guidance scheme for the Terminal Area Energy Management (TAEM) and Approach a...
This thesis presents a method for the training of dynamic, recurrent neural networks to generate con...
The growing ferment towards enhanced autonomy on-board spacecrafts is driving the research of leadin...
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...
While human presence in cislunar space continues to expand, so too does the demand for ‘lightweight’...
A terminal area energy management (TAEM) guidance system for an unpowered reusable launch vehicle (R...
This paper aims a developing a new feedback guidance algorithm for docking maneuvers in the cislunar...
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...
Using reinforcement learning as a part of a Guidance, Navigation and Control (GNC) system is a relat...
A deep reinforcement learning-based computational guidance method is presented, which is used to ide...
The next generation of reusable launch vehicles (RLVs) require significant improvements in guidance...
This study presents an application of an actor-critic reinforcement learning method to a simple poin...
Reusable Launch Vehicles (RLVs) are the future of the space industry due to their low cost and relia...
This thesis presents a guidance scheme for the Terminal Area Energy Management (TAEM) and Approach a...
This thesis presents a method for the training of dynamic, recurrent neural networks to generate con...
The growing ferment towards enhanced autonomy on-board spacecrafts is driving the research of leadin...
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...
While human presence in cislunar space continues to expand, so too does the demand for ‘lightweight’...
A terminal area energy management (TAEM) guidance system for an unpowered reusable launch vehicle (R...
This paper aims a developing a new feedback guidance algorithm for docking maneuvers in the cislunar...
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...
Using reinforcement learning as a part of a Guidance, Navigation and Control (GNC) system is a relat...
A deep reinforcement learning-based computational guidance method is presented, which is used to ide...
The next generation of reusable launch vehicles (RLVs) require significant improvements in guidance...
This study presents an application of an actor-critic reinforcement learning method to a simple poin...