Research News
Mar 17, 2025
- Engineering
Docking assistance method for autonomous berthing by backward-time imitation learning and kernel density estimation based on AIS data
Autonomous berthing is desirable to assist or replace human operators to reduce the burden on navigation officers and resolve labor shortages. Over the past few decades, while researchers have proposed various methods to realize autonomous berthing, no online trajectory-planning method exists that reflects the intuition of skilled captains and is guaranteed to be constrained to terminal states. Additionally, most previous studies assumed a single reference trajectory, which tended to lack important information on the permissible deviation from the reference trajectory.
This study presents a docking assistance method that integrates backward-time imitation learning (BTIL) and kernel density estimation (KDE). BTIL enabled a computational agent to generate captain-like docking trajectories without tuning the objective functions while imposing implicit constraints on terminal states. The proposed method offered trajectory and guidance distributions by applying multidimensional KDE to the BTIL results. The trajectory distributions indicated the area through which the ship should pass for successful berthing, whereas the guidance distributions indicated the velocities the ship should maintain at arbitrary locations.
The performance of the docking assistance method was verified using Automatic Identification System (AIS) data from Shinmoji Port in Fukuoka Prefecture, Japan.
Paper information
Journal: Ocean Engineering
Title: Docking assistance method for autonomous berthing by backward-time imitation learning and kernel density estimation based on AIS data
DOI: 10.1016/j.oceaneng.2024.120122
Authors: Takefumi Higaki, Hirotada Hashimoto
Published: 25 December 2024
URL: https://doi.org/10.1016/j.oceaneng.2024.120122
Contact
Takefumi Higaki
Graduate School of Engineering
Email: higaki.marine[at]omu.ac.jp
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