Abstract
In this study, we consider a novel method of sensing the motion of a wave energy converter during testing in a wave flume under the influence of incoming waves. The wave energy converter considered in our research is an oscillating surge wave energy converter, which is a hinged paddle that responds to incoming waves. Motion sensing is normally done with inertial sensors, which can hinder the motion due to suspended cables that carry power and transmit signals. Our proposed method is contactless and can be implemented economically. A camera is used to record different marker patterns affixed to the moving paddle and the motion deduced by pose estimation algorithms. Fiducial markers are commonly used for robot localization and in augmented reality. There are many types of fiducial markers, including ArUco-type markers which are accurate, fast and robust. The system consists of markers attached to the paddle element and recorded using a machine vision camera. A pose estimation algorithm is then applied to the detected markers to estimate the tilt of the paddle. In this work, we examine the challenges of image acquisition and calibration for underwater targets, compare the motion obtained by this new system with a calibrated tilt sensor and identify areas where the new system may be superior.
Original language | American English |
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Number of pages | 9 |
State | Published - 2024 |
Event | UMERC + METS 2024 - Duluth, MN Duration: 7 Aug 2024 → 9 Aug 2024 |
Conference
Conference | UMERC + METS 2024 |
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City | Duluth, MN |
Period | 7/08/24 → 9/08/24 |
NREL Publication Number
- NREL/CP-5700-90409
Keywords
- computer vision
- fiducial marker
- OSWEC
- pose estimation
- wave energy converter
- wave tank experiments