Abstract (EN):
This paper presents a new hybrid automatic learning
approach, which combines artificial neural networks (ANN) and
regression trees (RT), to perform on-line dynamic security
assessment of power systems. In the proposed method, the RT is
firstly used to split the vast amount of knowledge data that describes
a security problem into several less spread and disjoint problems.
Then, an ANN is trained for each of these new smaller problems,
resulting in a tree structure with an ANN predicting function
associated to each leaf. Moreover, the capability of the RT to perform
feature subset selection before ANN training is also tested. With this
new method, the advantages of the two techniques are exploited in
order to obtained a more accurate model without compromising
prediction time. The quality of the approach is illustrated through its
application to a major security problem of the power system of
Madeira Island (Portugal).
Language:
English
Type (Professor's evaluation):
Scientific
No. of pages:
6
License type: