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Mass Inferencing Model Creation And Deployment To Lunar Excavation Robot, RASSORNASA’s Regolith Advanced Surface Systems Operations Robot (RASSOR) Excavator is a teleoperated mobile robotic platform with a unique space regolith excavation capability. This research project developed functionality for inferencing regolith mass ingested during RASSOR operation, enhancing RASSOR’s ability to successfully complete ISRU missions. Radio wave propagation time to the Moon and back is ~2.56 seconds. Though teleoperation is possible with this delay, autonomous capability that enables RASSOR to plan and execute excavation missions intelligently and efficiently is preferred. To teleoperate or run autonomously, it is crucial for the quantity of regolith mass ingested by RASSOR to be available as a system state for efficient operation (e.g. knowledge of whether drums are full informs the task of highest priority, whether it be continuing to dig, or returning to a processing plant to offload regolith). A configurable data reduction and analysis pipeline was created to allow for straightforward incorporation of new data, such as that from lunar excavation, to improve model performance in new environments. Four distinct modeling approaches were employed in developing a mass inferencing approach that could work on RASSOR. All four models take in system states and output a mass prediction for each set of the robot’s bucket drums. Initial results from deployment to RASSOR and testing in a simulated lunar environment show that the models have <10% mean error during robot operation. Future work includes refinement of a model that estimates regolith mass in real-time during excavation as well as further testing of the developed models on the hardware.
Document ID
20210011226
Acquisition Source
Kennedy Space Center
Document Type
Contractor or Grantee Report
Authors
M A Dupuis
(Kennedy Space Center Merritt Island, Florida, United States)
N A Janmohamed
(Santa Monica College Santa Monica, California, United States)
Date Acquired
March 11, 2021
Publication Date
April 15, 2021
Subject Category
Cybernetics, Artificial Intelligence And Robotics
Computer Programming And Software
Lunar And Planetary Science And Exploration
Funding Number(s)
CONTRACT_GRANT: NNX13AJ45A
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
NASA Technical Management
Keywords
ROS
Machine Learning
Robotics
Modeling
In-Situ Resource Utilization
ISRU
Excavation
Regolith
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