Electric Power ›› 2025, Vol. 58 ›› Issue (4): 90-97.DOI: 10.11930/j.issn.1004-9649.202409072

• Key Technologies for Transient Operation Control and Test Verification of Wind Turbines • Previous Articles     Next Articles

Fatigue Load Prediction of Wind Turbine Drive Train Based on CNN-BiLSTM

WANG Xiaodong1(), LI Qing1(), FU Deyi2, LIU Yingming1, WANG Ruojin1   

  1. 1. School of Electrical Engineering, Shenyang University of Technology, Shenyang 110870, China
    2. State Key Laboratory of Operation and Control of Renewable Energy & Storage Systems (China Electric Power Research Institute), Beijing 100192, China
  • Received:2024-09-18 Accepted:2024-12-17 Online:2025-04-23 Published:2025-04-28
  • Supported by:
    This work is supported by Science and Technology Project of SGCC (Research on Electromechanical Coupling Mechanism and Control Method of Wind Turbine During Grid Fault Considering Security Constraints, No.4000-202355454A-3-2-ZN).

Abstract:

The fatigue loads of operational wind turbine drivetrain systems are typically quantified using the rainflow counting method based on stress measurements at critical components, a process that is time-consuming and costly. This paper addresses the significant deviations observed in traditional fatigue load quantification models employed for control strategies and parameter optimization in operational wind turbines. We propose a fatigue load prediction model for the drivetrain system based on a convolutional neural network-bidirectional long short-term memory (CNN-BiLSTM) architecture, utilizing state data from wind turbines. First, we construct a fatigue load feature database using simulation data from OpenFAST under rated wind speed conditions and above, which is subsequently used for training and testing the model. We then compare the model's predicted data with actual data, employing relevant evaluation metrics to assess the predictive performance of the model, thereby validating its effectiveness. Finally, by comparing the prediction results with those from long short-term memory and deep neural network models, we demonstrate that the CNN-BiLSTM load prediction model significantly enhances the accuracy of load predictions for wind turbine drivetrain systems.

Key words: fatigue load, wind turbine, LSTM, load prediction, CNN-BiLSTM