主催: The Japan Society of Naval Architects and Ocean Engineers
会議名: 令和6年 日本船舶海洋工学会 秋季講演会
回次: 39
開催地: Yokohama City Port Opening Memorial Hall
開催日: 2024/11/21 - 2024/11/22
p. 71-77
The advent of autonomous marine systems has reshaped ocean observation, offering benefits such as reduced human exposure to harsh environments and enhanced spatiotemporal data collection. This paper presents a data-driven technique for estimating seakeeping models of small, unmanned surface vehicles (USVs) using motion measurements from onboard inertial sensors. The study highlights the limitations of traditional wave-to-motion transfer functions and the advantages of data-driven approaches in improving sea state estimation. A parameter estimation method is detailed, utilising closed-form expressions for response amplitude operators of simplified vessel models. The methodology is validated through a case study involving the NTNU AutoNaut USV, demonstrating accurate predictions of heave and pitch motions, although roll motion requires further refinement. The findings underscore the potential of data-driven methods in enhancing the fidelity of hydrodynamic models for USVs in complex wave environments.