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Keyword: Forward Speed

paper

Machine Learning for Computation of Wave Added Resistance

Mostafa Amini-Afshar, Malte Mittendorf & Harry B. Bingham

We present a machine learning model for calculation of wave added resistance. The model training is performed using a large set of pre-calculated added resistance curves covering a broad range of ship hulls and operational conditions, i.e. forward speed, draft and relative wave heading. The underlying hydrodynamic model is the classical strip-theory where the wave added resistance is computed according to a modified version of Salvesen’s formulation. It is concluded that the developed data-driven model is able to produce a non-linear mapping between a set of operational conditions as well as the ship’s main particulars to the wave added resistance coefficient.

IWWWFB / 2025
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