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A transferable diagnosis method with incipient fault detection for a digital twin of wind turbine

Weifei Hu, Qing Jiao, Hongwei Liu, Kai Wang, Zhiyu Jiang, Jianwei Wu, Feiyun Cong, Guangbo Hao

2024Digital engineering.13 citationsDOIOpen Access PDF

Abstract

Accurate and transferable fault diagnosis methods have a critical role in constructing a digital twin (DT) of wind turbine (WT). These methods can be utilized to predict premature failures and to maintain a stable power supply. However, the infeasibility of obtaining enough degradation data with various failure mechanisms is one of major problems for WTs. This paper proposes a fault detection and diagnosis method for WTs using tools, including average integrated power spectral density (AIPSD), one-class support vector machine (OCSVM), and neural architecture optimization (NAO)-CapsNet, based on limited data. Moreover, a WT DT framework is designed for real-time condition monitoring of the WT during its lifecycle. Datasets collected from real-world WT gearboxes and pitch bearings are selected to verify the performance of the proposed method. The experimental results show that the developed method can not only trace when the fault occurred, but also obtain better diagnosis accuracy compared with other state-of-the-art methods. In addition, the proposed NAO-CapsNet trained by dataset from two WTs can be successfully transferred and applied to DT-based condition monitoring of another WT.

Topics & Concepts

TurbineFault (geology)Fault detection and isolationComputer scienceReliability engineeringEnvironmental scienceEngineeringGeologyAerospace engineeringSeismologyArtificial intelligenceActuatorMachine Fault Diagnosis TechniquesFault Detection and Control SystemsEngineering Diagnostics and Reliability
A transferable diagnosis method with incipient fault detection for a digital twin of wind turbine | Litcius