Identificación de defectos en cables de media tensión aplicando métodos multivariables
Abstract
Partial discharges in high-voltage power cables
are a focus of concern due to their harmful
effects regarding insulation degradation.
Therefore, their fast and accurate identification
is of paramount importance. This paper deals
with the diagnosis and identification of cable
defects in medium-voltage XLPE insulated
cables. Partial discharge pulses are acquired
by means of a standard partial discharge
detector. Data acquired are further processed
by means of the fast Fourier transform and
by applying suitable multivariate feature
extraction and classification methods, namely
principal component analysis, canonical variate
analysis and k nearest neighbors. Experimental
results show that the proposed identification
methodology provides improved classification
accuracy, simplicity and very low time response
to classify a new sample object. Therefore, the
data processing system presented here is the
main contribution of this work, which can be
extended to other insulated cable types.
