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Digital-physical testbed for ship autonomy studies in the Marine Cybernetics Laboratory basin

Abstract

The algorithms developed for Maritime Autonomous Surface Ships (MASS) are often challenging to test on actual vessels due to high operational costs and safety considerations. Simulations offer a cost-effective alternative and eliminate risks, but they may not accurately represent real-world dynamics for the given tasks. Utilizing small-scale model ships and robotic vessels in conjunction with a laboratory basin provides an accessible testing environment for the early stages of validation processes. However, designing and developing a model vessel for a single test can be costly and cumbersome, and researchers often lack access to such infrastructure. To address these challenges and enable streamlined testing, we have developed an in-house testbed that facilitates the development, testing, verification, and validation of MASS algorithms in a digital-physical laboratory. This infrastructure includes a set of small-scale model vessels, a simulation environment for each vessel, a comprehensive testbed environment, and a digital twin in Unity. With this, we aim to establish a full design and verification pipeline that starts with high-fidelity simulation models of each model vessel, to the model-scale testing in the laboratory basin, allowing possibilities for moving towards semi-fullscale validation with R/V milliAmpere1 and full-scale validation with R/V Gunnerus. In this work, we present our progress on the development of this testbed environment and its components, demonstrating its effectiveness in enabling ship guidance, navigation, and control (GNC), including autonomy.

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@article{gezer2025_2505.06787,
  title={ Digital-physical testbed for ship autonomy studies in the Marine Cybernetics Laboratory basin },
  author={ Emir Cem Gezer and Mael Korentin Ivan Moreau and Anders Sandneseng Høgden and Dong Trong Nguyen and Roger Skjetne and Asgeir Sørensen },
  journal={arXiv preprint arXiv:2505.06787},
  year={ 2025 }
}
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