Spacecraft Autonomous Decision-Planning for Collision Avoidance: a Reinforcement Learning Approach
Nicolas Bourriez, Adrien Loizeau, Adam F. Abdin

TL;DR
This paper introduces a reinforcement learning-based autonomous decision-making system for spacecraft collision avoidance, aiming to reduce human intervention and improve response times in complex space environments.
Contribution
It develops a novel POMDP-based framework enabling onboard AI to learn stochastic policies for collision avoidance under uncertainty.
Findings
Effective learning of stochastic policies for CAMs
Handles epistemic and aleatory uncertainties
Enables autonomous, decentralized collision avoidance
Abstract
The space environment around the Earth is becoming increasingly populated by both active spacecraft and space debris. To avoid potential collision events, significant improvements in Space Situational Awareness (SSA) activities and Collision Avoidance (CA) technologies are allowing the tracking and maneuvering of spacecraft with increasing accuracy and reliability. However, these procedures still largely involve a high level of human intervention to make the necessary decisions. For an increasingly complex space environment, this decision-making strategy is not likely to be sustainable. Therefore, it is important to successfully introduce higher levels of automation for key Space Traffic Management (STM) processes to ensure the level of reliability needed for navigating a large number of spacecraft. These processes range from collision risk detection to the identification of the…
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Taxonomy
TopicsSpace Satellite Systems and Control · Distributed systems and fault tolerance · Spacecraft Design and Technology
MethodsClass-activation map
