Ph.D. Dissertation Defense - Victor Aladele

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Event Details
  • Date/Time:
    • Tuesday August 16, 2022
      9:00 am - 11:00 am
  • Location: https://gatech.zoom.us/j/93901330028?pwd=ME1XMWN2WStXL0gwb2kxZHNaaHNadz09
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Summaries

Summary Sentence: Cooperative Manipulation Strategies for Multi-Robot Collaboration

Full Summary: No summary paragraph submitted.

TitleCooperative Manipulation Strategies for Multi-Robot Collaboration

Committee:

Dr. Seth Hutchinson, ECE, Chair, Advisor

Dr. Magnus Egerstedt, ECE

Dr. Ye Zhao, ME

Dr. Charles Kemp, BME

Dr. Danica Kragic Jensfelt, KTH, Sweden

Abstract: The demand for robots that are capable of performing complex tasks has soared in recent years; research interests in multi-robot systems have also risen. Despite significant advances in single-arm manipulation, the need for cooperative manipulation cannot be overlooked. This thesis presents strategies that enable multiple robots to perform collaborative tasks. More specifically, this thesis will address cooperative manipulation under the possibility of external disturbance. I propose two approaches: an impedance-based approach and a residual-reinforcement-learning-based approach. With respect to the impedance-based approach, I will focus on the concept of applied internal stress, on the jointly manipulated object, and how internal stress can be leveraged as a compensation mechanism for disturbance on a cooperative manipulation setup. I will present an impedance-based strategy that is used to determine how much compensation should be applied to the system. Additionally, I will present a decentralized approach to cooperative manipulation that is based on a residual reinforcement learning scheme. Residual reinforcement learning involves the superposition of a learned policy with a standard controller, in such a way that the input to the learned policy is informed by the output of the standard controller, or vice versa. I will show how a robot can compensate for unexpected partner behaviors without communicating with its partner(s). Finally, experimental demonstrations both in simulation and on the physical system will be presented. Although this work describes a multi-robot scenario, the experimental validation will be on a two-robot system. The physical system also includes mobile platforms that extend the workspace of the manipulators shown in simulation.

Additional Information

In Campus Calendar
No
Groups

ECE Ph.D. Dissertation Defenses

Invited Audience
Public
Categories
Other/Miscellaneous
Keywords
Phd Defense, graduate students
Status
  • Created By: Daniela Staiculescu
  • Workflow Status: Published
  • Created On: Aug 1, 2022 - 3:04pm
  • Last Updated: Aug 1, 2022 - 3:04pm