A Wind Turbine Vibration Monitoring System for Predictive Maintenance Based on Machine Learning Methods Developed under Safely Controlled Laboratory Conditions

Author:

Granados David Pérez1ORCID,Ruiz Mauricio Alberto Ortega12ORCID,Acosta Joel Moreira3,Lara Sergio Arturo Gama4ORCID,Domínguez Roberto Adrián González3,Kañetas Pedro Jacinto Páramo1

Affiliation:

1. Engineering Department, CIIDETEC-Coyoacán, Universidad del Valle de México, Coyoacán 04910, Mexico

2. Research Centre for Biomedical Engineering, City, University of London, London EC1V 0HB, UK

3. Engineering Department, CIIDETEC-Tuxtla, Universidad del Valle de México, Tuxtla 29056, Mexico

4. Engineering Department, CIIDETEC-Toluca, Universidad del Valle de México, Toluca 52164, Mexico

Abstract

Wind energy is one of the most relevant clean energies today, so wind turbines must have good health and be reliable in operation. Current wind turbines have slender and elastic structures that can be easily damaged through vibrations and compromise their health; therefore, vibration monitoring is essential to ensure safe operation. Here, we present a method for simple wind turbine vibration monitoring in the laboratory by means of an accelerometer placed on a weathervane under different scenarios, with recording of different amplitudes of vibrations caused at a constant speed of 10 km/h. The variables, trends, and data captured during vibration monitoring were then used to implement a prediction system of synthetic failure using machine learning methods such as: Medium Trees, Cubic SVN, Logistic Regression Kernel, Optimized Neural Network, and Bagged Trees, with the last demonstrating an accuracy of up to 0.87%.

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

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