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An adaptivelearning control system for underwater robotic vehicles

Posted on:1996-02-27Degree:Ph.DType:Dissertation
University:University of Hawai'iCandidate:Choi, Song KFull Text:PDF
GTID:1468390014486819Subject:Engineering
Abstract/Summary:PDF Full Text Request
Underwater robotic vehicles (URVs) have become an important tool for numerous underwater tasks due to their greater speed, endurance, depth capability, and a higher factor of safety than human divers. However, most vehicle control system designs are based on simplified vehicle models and often result in poor vehicle performance due to the nonlinear and time-varying vehicle dynamics having parametric uncertainties. Conventional proportional-integral-derivative (PID) type controllers cannot provide good performance without fine-tuning the controller gains and may fail for sudden changes in the vehicle dynamics and its environment. Conventional adaptive control systems based on parameter adaptation techniques also fail in the presence of unmodeled dynamics.; This dissertation describes a new vehicle control system, using the bound estimation techniques, capable of learning and adapting to changes in the vehicle dynamics and parameters. The control system was extensively "wet-tested" on the Omni-Directional Intelligent Navigator (ODIN), a six degree-of-freedom, experimental underwater vehicle developed at the Autonomous Systems Laboratory, and its performance was compared with the performance of a conventional linear control system. The results showed the controller's ability to provide good performance in the presence of unpredictable changes in the vehicle dynamics and its environment, and its capabilities of learning and adaptation.
Keywords/Search Tags:Vehicle, Control system, Underwater
PDF Full Text Request
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