An approach for self evolving neural network based algorithm for fault prognosis in wind turbine

In recent years Supervisory Control and Data Acquisition (SCADA) system has been used to monitor the condition of wind turbine components. SCADA being an integral part of wind turbines comes at no extra cost and measures an array of signals. This paper proposes to use artificial neural networks (ANN) algorithm for analysis of SCADA data for condition monitoring of components. The first step to build an ANN model is to create the training data set. Here an automated process to decide the training data set has been presented. The approach reduces the number of samples in the training data set compared to the conventional method of hand picking the data set. Further the approach describes how the ANN model could be kept in tune with the changes in the operating conditions of the wind turbine by updating the ANN model. The fault prognosis obtained from the model can be used to optimize the maintenance scheduling activity.

[1]  Mohammed Kishk,et al.  Modelling System Failures to Optimise Wind Turbine Maintenance , 2007 .

[2]  Simon Haykin,et al.  Neural Networks and Learning Machines , 2010 .

[3]  Yingning Qiu,et al.  Monitoring wind turbine gearboxes , 2013 .

[4]  Miguel Ángel Sanz Bobi,et al.  SIMAP: Intelligent System for Predictive Maintenance: Application to the health condition monitoring of a windturbine gearbox , 2006 .

[5]  Paul Fleming,et al.  Use of SCADA Data for Failure Detection in Wind Turbines , 2011 .

[6]  F. P. Maciel Barbosa,et al.  Forecast of faults in a wind turbine gearbox , 2012 .

[7]  L. Bertling,et al.  Reliability-Centered Maintenance for Wind Turbines Based on Statistical Analysis and Practical Experience , 2012, IEEE Transactions on Energy Conversion.

[8]  Yongqian Liu,et al.  Smart Monitoring of Wind Turbines Using Neural Networks , 2009 .

[9]  David Infield,et al.  Online wind turbine fault detection through automated SCADA data analysis , 2009 .

[10]  Mohammed Kishk,et al.  Wind Turbine Maintenance Optimisation: Principles of Quantitative Maintenance Optimisation , 2007 .

[11]  Qiang Zhao,et al.  Fault predictive diagnosis of wind turbine based on LM arithmetic of Artificial Neural Network theory , 2011, 2011 Seventh International Conference on Natural Computation.

[12]  Lina Bertling,et al.  An Approach for Condition-Based Maintenance Optimization Applied to Wind Turbine Blades , 2010, IEEE Transactions on Sustainable Energy.

[13]  Andrew Kusiak,et al.  Analyzing bearing faults in wind turbines: A data-mining approach , 2012 .