STRUCTURAL HEALTH MONITORING OF WIND TURBINE BLADES USING VIBRATION-BASED DAMAGE DETECTION AND MACHINE LEARNING

Авторы

  • Laziz Abdulkhamidov Department of Mechanical Engineering Almalyk State Technical Institute, Almalyk city, Tashkent region, Uzbekistan Автор

Ключевые слова:

structural health monitoring; wind turbine blade; vibration-based damage detection; modal strain energy; random forest; machine learning; GFRP; delamination

Аннотация

Wind turbine blades are subjected to complex, time-varying aerodynamic and gravitational loads over 20-year design lives, making early damage detection essential to prevent catastrophic failure and reduce operation-and-maintenance (O&M) costs, which represent 20–35% of levelised cost of energy (LCOE) for onshore wind. This thesis develops and validates a vibration-based structural health monitoring (SHM) framework for a 45-metre GFRP wind turbine blade, combining high-fidelity finite element (FE) modelling with machine learning classification of damage scenarios. A full-scale FE model of the blade (ANSYS Mechanical, 180,000 shell elements) was validated against experimental modal analysis (EMA) data from a 1:10 scale laboratory specimen; first five natural frequencies matched within 3.2%. Damage scenarios (delamination at 25% and 60% span, trailing-edge debonding, leading-edge erosion) were simulated by selectively reducing element stiffness. Modal strain energy (MSE) damage indicators were extracted from the FE database of 1800 damage cases. A Random Forest (RF) classifier trained on MSE features achieved 96.8% damage detection accuracy and 91.3% location accuracy (5-class) in cross-validation. Deployment on a 5-node wireless sensor network (MEMS accelerometers, 1000 Hz sampling) on the physical specimen confirmed real-world detection of 40 mm × 40 mm artificial delaminations with 93% accuracy, validating the computational framework for field implementation.

Библиографические ссылки

Tchakoua, P., et al. (2014). Wind turbine condition monitoring: state-of-the-art review. Energies, 7(4), 2595–2630.

Farrar, C. R., & Worden, K. (2012). Structural Health Monitoring: A Machine Learning Perspective. Wiley.

Worden, K., et al. (2007). The fundamental axioms of structural health monitoring. Proceedings of the Royal Society A, 463(2082), 1639–1664.

van der Valk, P. L. C., & Rixen, D. J. (2014). An impulse based substructuring approach for impact hammer modal testing. Mechanical Systems and Signal Processing, 43(1–2), 148–169.

Brändle, M., et al. (2022). Machine-learning-based damage detection in composite wind turbine blades. Composite Structures, 285, 115244.

Опубликован

2026-06-08

Как цитировать

Abdulkhamidov, L. (2026). STRUCTURAL HEALTH MONITORING OF WIND TURBINE BLADES USING VIBRATION-BASED DAMAGE DETECTION AND MACHINE LEARNING. Инновационные исследования в современном мире, 5(19), 33-35. https://www.in-academy.uz/index.php/ZDIT/article/view/51605
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