4.7 Article

Error-state Kalman filter-based localization algorithm with velocity estimation for deep-sea mining vehicle

期刊

OCEAN ENGINEERING
卷 264, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.oceaneng.2022.112331

关键词

Deep-sea mining vehicle; Localization algorithm; Error-state Kalman filter; Vehicle slip; Sea trial

资金

  1. Science and Technology Com-mittee Shanghai Municipality
  2. Major Projects of Strategic Emerging Industries in Shanghai
  3. National Nature Science Foundation of China
  4. [19DZ1207300]
  5. [42206192]

向作者/读者索取更多资源

A localization algorithm named 'ESKF-slip' was developed and validated for deep-sea mining vehicles in this study. A localization system was established based on the algorithm for a newly designed deep-sea mining vehicle named Pioneer 1. Sea trials in the South China Sea demonstrated the feasibility and applicability of the proposed algorithm in obtaining accurate localization results for the deep-sea mining vehicle.
The deep-sea mining vehicle is one of the critical equipment of the deep-sea mining system, which is used to collect manganese nodules on the seafloor. When the deep-sea mining vehicles operates, a reliable localization system is essential. This study developed and validated a localization algorithm, named 'ESKF-slip', for deep-sea mining vehicles. The algorithm uses error-state Kalman filtering and incorporates velocity estimation using angle encoders, considering the effects of slip and sinkage. A localization system was established for a newly designed deep-sea mining vehicle named Pioneer 1based on the proposed localization algorithm. The hardware included an inertial measurement unit, an ultrashort baseline, a compass, and angle encoders of tracks, and the software framework was coded based on the Robot Operating System. Sea trials were performed in the South China Sea to validate the localization algorithm. The results show that the deep-sea mining vehicle could obtain accurate localization results in various complex navigations, demonstrating the feasibility and applicability of the proposed algorithm.

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