LSTM Neural Networks Using the SMOTE Algorithm for Wind Turbine Fault Prediction

Author:

Oliveira Schmidt Júlio1,França Aires Lucas1,Hubner Guilherme Ricardo2,Pinheiro Humberto2,Tello Gamarra Daniel Fernando3

Affiliation:

1. Electrical Engineering Course, Federal University of Santa Maria , Santa Maria, Rio Grande do Sul 97105-900, Brazil

2. Power Electronics and Control Research Group, Federal University of Santa Maria , Santa Maria, Rio Grande do Sul 97105-900, Brazil

3. Automation and Applied Robotics Group, Federal University of Santa Maria , Santa Maria, Rio Grande do Sul 97105-900, Brazil

Abstract

Abstract This work proposes a method using a long short-term memory neural network as a diagnostic tool to detect wind turbine rotor mass imbalance. The method uses the synthetic minority oversampling technique for data augmentation in an unbalanced dataset. For this purpose, a 1.5 MW three-bladed wind turbine model was simulated at Turbsim, FAST, and Matlab Simulink to generate rotor speed data for different scenarios, simulating different wind speeds and creating a mass imbalance by changing the density of the blades in the software. Features extraction and power spectral density were also used to improve the Neural Network results. The results were compared to nine different classifiers with four different combinations of datasets and demonstrated that the technique is promising for mass imbalance detection.

Publisher

ASME International

Subject

Mechanical Engineering,Safety Research,Safety, Risk, Reliability and Quality

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