Affiliation:
1. Air Force Institute of Technology, USA
2. Defense Threat Reduction Agency, USA
Abstract
Multi-agent systems are of ever-increasing importance in a contested space environment—use of multiple, cooperative satellites potentially increases positive mission outcomes on orbit, while autonomy becomes an ever-increasing requirement to increase reaction time to dynamic situations and lower the burden on space operators. This research explores multi-agent satellite swarm Guidance, Navigation, and Control (GNC) using deep reinforcement learning (DRL). DRL policies are trained to provide guidance inputs to agents in multi-agent swarm environments for completing complex, teamwork-focused objectives in geosynchronous orbit. An example scenario is explored for a group of satellite agents maneuvering to triangulate an object that is non-stationary in the relative orbit frame. Reward shaping is used to encourage learning guidance that positions swarm members to maximize triangulation accuracy, using angles-only observations for navigation relative to the target. Results show the policies successfully learn guidance through reward shaping to improve triangulation accuracy by a significant factor.
Funder
Air Force Research Laboratory
Subject
Engineering (miscellaneous),Modeling and Simulation
Reference31 articles.
1. National Air and Space Intelligence Center. Competing in space, 2018, https://www.nasic.af.mil/About-Us/Fact-Sheets/Article/1738710/competing-in-space/
2. Operational Reality of Collision Avoidance Manoeuvres
3. R Scott Erwin. A many-against-many spae game for AI player development, 2021https://www.hrl.com/news/2022/04/15/ai-system-will-use-capture-the-flag-to-train-space-operators-for-contested-space.