LLMSat: A Large Language Model-Based Goal-Oriented Agent for Autonomous Space Exploration
David Maranto

TL;DR
This paper investigates using Large Language Models as high-level controllers for autonomous spacecraft, evaluating their reasoning capabilities in complex space mission scenarios simulated in Kerbal Space Program.
Contribution
It introduces a novel architecture leveraging LLMs for spacecraft autonomy and assesses their performance in simulated deep space missions.
Findings
LLMs' reasoning abilities do not scale well with increasing mission complexity
Prompting frameworks can improve LLM performance in autonomous decision-making
Strategic authority levels of the agent influence mission success
Abstract
As spacecraft journey further from Earth with more complex missions, systems of greater autonomy and onboard intelligence are called for. Reducing reliance on human-based mission control becomes increasingly critical if we are to increase our rate of solar-system-wide exploration. Recent work has explored AI-based goal-oriented systems to increase the level of autonomy in mission execution. These systems make use of symbolic reasoning managers to make inferences from the state of a spacecraft and a handcrafted knowledge base, enabling autonomous generation of tasks and re-planning. Such systems have proven to be successful in controlled cases, but they are difficult to implement as they require human-crafted ontological models to allow the spacecraft to understand the world. Reinforcement learning has been applied to train robotic agents to pursue a goal. A new architecture for autonomy…
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Taxonomy
TopicsService-Oriented Architecture and Web Services · Distributed systems and fault tolerance · Advanced Software Engineering Methodologies
