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Kullback Leibler divergence based wind turbine fault feature extraction

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Figure

Figure 1. Time series data of (a) wind speed, (b) active power of a fault-free turbine, (c) active power of a turbine with gearbox bearing fault
Table I that some variables are related to the environmental condition, such as wind speed and direction
Fig. 7 shows the generator speed curve against wind curve speed for the turbine with generator winding fault

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