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NASA Robotics Mining Competition

NASA Robotics Mining Competition. Ben Stinnett, ASU Dr. Srikanth Saripalli , ASU Tucson, AZ April 12, 2014. Overview: NASA Robotics Mining Competition Previous participation 2014 goals and objectives Conclusions. NASA Robotics Mining Competition.

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NASA Robotics Mining Competition

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  1. NASA Robotics Mining Competition Ben Stinnett, ASU Dr. SrikanthSaripalli, ASU Tucson, AZ April 12, 2014

  2. Overview: • NASA Robotics Mining Competition • Previous participation • 2014 goals and objectives • Conclusions

  3. NASA Robotics Mining Competition • Build a telerobotic or autonomous excavator • Mine and deposit at least 10kg of regolith simulant in 10 minutes • Maintain size and weight constraints • Complete a variety of systems engineering and STEM outreach tasks

  4. Previous Years – 2012 and 2013 Learning by doing: 2012 2013

  5. 2014 Goals and Objectives • Lightweight- make every kilogram count -Develop and fabricate the robot using robust yet lightweight materials Key Focus Areas: -Wheels -Frame -Collection mechanism

  6. 2014 Goals and Objectives • Collection Efficiency -Design and fabricate a collection mechanism to collect the regolith as efficiently as possible Key Focus Areas: -Minimize trips between mining area and collection bin -Scooping efficiency -Dust mitigation

  7. 2014 Goals and Objectives • A Fully Autonomous Vehicle -Develop a robust control system to enable fully autonomous operations. Key Focus Areas: -Sensor Integration -Closed loop operations -Teleoperation redundancy.

  8. Conclusions • After a 9th place finish in 2013, the team has learned a lot and improved on the shortcomings. • By saving weight, increasing collection efficiency, and attempting full autonomy, the team is capable of finishing in the top 3. • With 38 days left before the competition, the team is currently performing final tests and preparing to ship the robot.

  9. Thank you! This project would not be possible without the invaluable mentoring from Dr. SrikanthSaripalli, as well as the support of Arizona NASA Space Grant and the School of Earth and Space Exploration.

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