Journal of Marine Science and Engineering (Jul 2025)

Design of Virtual Sensors for a Pyramidal Weathervaning Floating Wind Turbine

  • Hector del Pozo Gonzalez,
  • Magnus Daniel Kallinger,
  • Tolga Yalcin,
  • José Ignacio Rapha,
  • Jose Luis Domínguez-García

DOI
https://doi.org/10.3390/jmse13081411
Journal volume & issue
Vol. 13, no. 8
p. 1411

Abstract

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This study explores virtual sensing techniques for the Eolink floating offshore wind turbine (FOWT), which features a pyramidal platform and a single-point mooring system that enables weathervaning to maximize power production and reduce structural loads. To address the challenges and costs associated with monitoring submerged components, virtual sensors are investigated as an alternative to physical instrumentation. The main objective is to design a virtual sensor of mooring hawser loads using a reduced set of input features from GPS, anemometer, and inertial measurement unit (IMU) data. A virtual sensor is also proposed to estimate the bending moment at the joint of the pyramid masts. The FOWT is modeled in OrcaFlex, and a range of load cases is simulated for training and testing. Under defined sensor sampling conditions, both supervised and physics-informed machine learning algorithms are evaluated. The models are tested under aligned and misaligned environmental conditions, as well as across operating regimes below- and above-rated conditions. Results show that mooring tensions can be estimated with high accuracy, while bending moment predictions also perform well, though with lower precision. These findings support the use of virtual sensing to reduce instrumentation requirements in critical areas of the floating wind platform.

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