Using Learning in a Control Agent
نویسندگان
چکیده
The NASA Goddard Space Flight Center has undertaken an R&D project whose near-term objective is to achieve a higher level of autonomy in ground-based system operations. The multi-agent system, named LOGOS, is designed to replace human operators in the satellite ground control centers. This paper focuses on the on-going development of the control agent for LOGOS and the use of learning technologies to ensure the longterm success of LOGOS.
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