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ICE-RASSOR: Intelligent Capabilities Enhanced NASA’s Regolith Advanced Surface Systems Operations Robot (RASSOR) is principally designed to mine and deliver regolith for In-Situ Resource Utilization (ISRU) processing. RAS-SOR’s design enables it to efficiently collect and deposit regolith, return collected material for processing, and myriad related ISRU activities. To reliably perform these operations on the lunar sur-face, RASSOR software and sensory systems need to be robust and maximize the information extracted from on-board sensing. Herein, we present preliminary findings from the Intelligent Capabilities Enhanced RASSOR project. We apply supervised learning using real data to estimate the soil mass collected without the need for mass flow rate monitors or other explicate sensing techniques. We also create a reduced-order simulation environment to develop autonomous trenching controllers via reinforcement learning and proto-type state estimation architectures. Our initial results suggest that excavated regolith mass can be inferred within 2.9% RMS error of full scale, and reinforcement learning for autonomous operations has learned viable trenching strategies and helped identify desirable sensing capabilities, arrangements, and considerations. Future work includes regolith mass estimation during dynamic operation, expanding our simulation to more complex environments, and transfer learning from simulation to hardware.
Document ID
20205008288
Acquisition Source
Kennedy Space Center
Document Type
Presentation
Authors
Michael A Dupuis
(Kennedy Space Center Merritt Island, Florida, United States)
Joseph M Cloud
(Kennedy Space Center Merritt Island, Florida, United States)
Date Acquired
October 1, 2020
Subject Category
Cybernetics, Artificial Intelligence And Robotics
Meeting Information
Meeting: Lunar Surface Innovation Consortium Virtual Fall Meeting
Location: Virtual Meeting
Country: US
Start Date: October 14, 2020
End Date: October 15, 2020
Sponsors: Johns Hopkins University Applied Physics Laboratory, Arizona State University
Funding Number(s)
WBS: 432938.09.01.06.20.06
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
Technical Review
Single Expert
Keywords
machine learning
rassor
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