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Download fileEACS 2016 paper - SENSOR SELECTION BASED ON PRINCIPAL COMPONENT ANALYSIS FOR FAULT DETECTION IN WIND TURBINES
journal contribution
posted on 2017-03-28, 15:19 authored by F. Pozo, Y. VidalEACS 2016 Paper No. 175
The overall strategy is to firstly create a PCA model measuring a healthy wind turbine. Secondly, with the model, and for each fault scenario and each possible subset of sensors, it measures the Euclidean distance between the arithmetic mean of the projections into the PCA model that come from the healthy wind turbine and the mean of the projections that come from the faulty one. Finally, it finds the subset of sensors that separate the most the data coming from the healthy wind turbine and the data coming from the faulty one.
Numerical simulations using a sophisticated wind turbine model (a modern 5MW turbine implemented in the FAST software) show the performance of the proposed method under actuators (pitch and torque) and sensors (pitch angle measurement) faults of different type: fixed value, gain factor, offset and changed dynamics.