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The Safe Trusted Autonomy for Responsible Space Program

Authors :
Hobbs, Kerianne L.
Phillips, Sean
Simon, Michelle
Lyons, Joseph B.
Culbertson, Jared
Clouse, Hamilton Scott
Hamilton, Nathaniel
Dunlap, Kyle
Lippay, Zachary S.
Aurand, Joshua
Bell, Zachary I.
Hammack, Taleri
Ayres, Dorothy
Lim, Rizza
Publication Year :
2025

Abstract

The Safe Trusted Autonomy for Responsible Space (STARS) program aims to advance autonomy technologies for space by leveraging machine learning technologies while mitigating barriers to trust, such as uncertainty, opaqueness, brittleness, and inflexibility. This paper presents the achievements and lessons learned from the STARS program in integrating reinforcement learning-based multi-satellite control, run time assurance approaches, and flexible human-autonomy teaming interfaces, into a new integrated testing environment for collaborative autonomous satellite systems. The primary results describe analysis of the reinforcement learning multi-satellite control and run time assurance algorithms. These algorithms are integrated into a prototype human-autonomy interface using best practices from human-autonomy trust literature, however detailed analysis of the effectiveness is left to future work. References are provided with additional detailed results of individual experiments.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.05984
Document Type :
Working Paper