MLLGOct 7, 2021

Ship Performance Monitoring using Machine-learning

arXiv:2110.03594v263 citations
Originality Synthesis-oriented
AI Analysis

This work addresses fuel efficiency and voyage planning for maritime operators, but it is incremental as it applies existing ML methods to a specific domain problem.

The paper tackled the problem of monitoring ship hydrodynamic performance over time due to fouling, using machine-learning methods on in-service data to predict changes through cleaning events, with probabilistic ANN performing best but simpler methods also yielding competitive results.

The hydrodynamic performance of a sea-going ship varies over its lifespan due to factors like marine fouling and the condition of the anti-fouling paint system. In order to accurately estimate the power demand and fuel consumption for a planned voyage, it is important to assess the hydrodynamic performance of the ship. The current work uses machine-learning (ML) methods to estimate the hydrodynamic performance of a ship using the onboard recorded in-service data. Three ML methods, NL-PCR, NL-PLSR and probabilistic ANN, are calibrated using the data from two sister ships. The calibrated models are used to extract the varying trend in ship's hydrodynamic performance over time and predict the change in performance through several propeller and hull cleaning events. The predicted change in performance is compared with the corresponding values estimated using the fouling friction coefficient ($ΔC_F$). The ML methods are found to be performing well while modelling the hydrodynamic state variables of the ships with probabilistic ANN model performing the best, but the results from NL-PCR and NL-PLSR are not far behind, indicating that it may be possible to use simple methods to solve such problems with the help of domain knowledge.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes