Mass Imbalance Diagnostics in Wind Turbines Using Deep Learning With Data Augmentation

Author:

Dabetwar Shweta1,Ekwaro-Osire Stephen2,Dias João Paulo3,Hübner Guilherme R.4,Franchi Claiton M.4,Pinheiro Humberto4

Affiliation:

1. Department of Mechanical Engineering, University of Massachusetts , 1 University Avenue, Lowell, MA 01852

2. Department of Mechanical Engineering, Texas Tech University , 805 Boston Avenue, Lubbock, TX 79409

3. Department of Civil and Mechanical Engineering, Shippensburg University of Pennsylvania , 1871 Old Main Drive, Shippensburg, PA 17257

4. Universidade Federal de Santa Maria, Power Electronics and Control Research Group , Santa Maria, Rio Grande do Sul 97105-900, Brazil

Abstract

Abstract Wind turbines suffer from mass imbalance due to manufacturing, installation, and severe climatic conditions. Condition monitoring systems are essential to reduce costs in the wind energy sector. Many attempts were made to improve the detection of faults at an early stage to plan predictive maintenance strategies, but effective methods have not yet been developed. Artificial intelligence has a huge potential in the wind turbine industry. However, several shortcomings related to the datasets still need to be overcome. Thus, the research question developed for this paper was “Can data augmentation and fusion techniques enhance the mass imbalance diagnostics methods applied to wind turbines using deep learning algorithms?” The specific aims developed were: (i) to perform sensitivity analysis on classification based on how many samples/sample frequencies are required for stabilized results; (ii) to classify the imbalance levels using Gramian angular summation field and Gramian angular difference field and compare against data fusion; and (iii) to classify the imbalance levels using data fusion for augmented data. Convolutional neural network (CNN) techniques were employed to detect rotor mass imbalance for a multiclass problem using the estimated rotor speed as an input variable. A 1.5-MW turbine model was considered and a database was built using the software turbsim, fast, and simulink. The model was tested under different wind speeds and turbulence intensities. The data augmentation and fusion techniques used along with CNN techniques showed improvement in the classification and hence the diagnostics of wind turbines.

Publisher

ASME International

Subject

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

Reference68 articles.

1. Prognostic Techniques Applied to Maintenance of Wind Turbines: A Concise and Specific Review;Renew. Sustain. Energy Rev.,2018

2. Wind Turbine Rotor Imbalance Detection Using Nacelle and Blade Measurements;Wind Energy,2015

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