Title of article :
Application of local memory-based techniques for power transformer thermal overload protection
Author/Authors :
Galdi، نويسنده , , V.; Ippolito، نويسنده , , L.; Piccolo، نويسنده , , A.; Vaccaro، نويسنده , , A.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
Power transformers are some of the most expensive components of electrical power plant.
The failure of a transfoimer is a matter of significant concern for electrical utilities, not only for the
consequent severe economic losses but also because the utility response to a customer during the
outage condition is one of the major factors in determining the overall customer attitude towards the
utility. Therefore, it is essential to predict the thermal behaviour of a transformer during load cycling
and in particular in the presence of overload conditions. The authors propose a novel technique to
predict the winding hottest spot temperature of a power transformer in the presence of overload
conditions, as an alternative methodology to the radial basis function network (RBFN) based
technique presented in a previous paper. The method proposed is based on a modified local memorybased
algorithm which, working on the load current, the top oil temperature rise over ambient
temperature and taking into account other meteorological parameters, permits the recognition of the
hot spot temperature pattern. In particular some corrective actions for the classical local methods will
be evidenced to customise it for real-time applications. Data obtained from experimental tests allow
the local learning algorithm to be tested to evaluate the performance of the proposed method in terms
of accuracy.
Journal title :
IEE Proceedings Electric Power Applications
Journal title :
IEE Proceedings Electric Power Applications