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Risk-Sensitive Learning and Decision Making for Autonomous Space Robots

Marco Pavone
Stanford University

ESI18 Marco Pavone Quad Chart

This program will develop and demonstrate a risk-sensitive framework for learning and decision-making that allows intelligent physical systems (IPS) to operate in unknown and uncertain environments without continuous control or supervision. By combining a Bayesian approach to learning capable of rapid adaptation online, with a risk-sensitive decision-making approach that is capable of tunable conservatism based on online uncertainty, the framework will allow online learning and safe operation of new autonomous systems in space. The developed framework will be validated on representative scenarios, specifically (1) autonomous traversability assessment for rover navigation, and (2) robust grasping and manipulation of non-cooperative, free-floating objects. The research will be conducted at the Autonomous Systems Laboratory at Stanford and the Robotic AI and Learning Laboratory at UC Berkeley. Both labs combine expertise in online learning and scalable approaches to decision-making in unstructured environments.

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