Online Model Identification For Underwater Vehicles Through Incremental Support Vector Regression

2017 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS)(2017)

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摘要
This paper presents an online technique which employs incremental support vector regression to learn the damping term of an underwater vehicle motion model, subject to dynamical changes in the vehicle's body. To learn the damping term, we use data collected from the robot's on-board navigation sensors and actuator encoders. We introduce a new sample-effficient methodology which accounts for adding new training samples, removing old samples, and outlier rejection. The proposed method is tested in a real-world experimental scenario to account for the model's dynamical changes due to a change in the vehicle's geometrical shape.
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关键词
sample-efficient methodology,on-board navigation sensors,dynamical changes,underwater vehicle motion model,damping term,online technique,incremental support vector regression,underwater vehicles,online model identification
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