Title :
Artificial Intelligence combined with Hybrid FEM-BE Techniques for Global Transformer Optimization
Author :
Amoiralis, E.I. ; Georgilakis, P.S. ; Tsili, M.A. ; Kladas, A.G.
Author_Institution :
Dept. of Production Eng. & Manage., Crete Univ.
Abstract :
The aim of the transformer design optimization is to define in detail the dimensions of all the parts of the transformer, based on the given specification, using available materials economically in order to achieve lower cost, lower weight, reduced size and better operating performance. In this paper, a hybrid artificial intelligence - numerical technique is proposed for the selection of winding material in power transformers. The technique uses decision trees for attribute selection and neural networks for winding material classification, along with finite element-boundary element modeling of the transformer for the calculation of the performance characteristics of each considered design. The accuracy of the proposed method is 95.5% (classification success rate for the winding material on an unknown test set), which makes it very efficient for industrial use
Keywords :
artificial intelligence; boundary-elements methods; design engineering; finite element analysis; optimisation; power transformers; transformer windings; artificial intelligence; finite element-boundary element modeling; global transformer design optimization; hybrid FEM-BE techniques; numerical technique; power transformers; winding material classification; Artificial intelligence; Artificial neural networks; Classification tree analysis; Cost function; Decision trees; Design optimization; Finite element methods; Materials testing; Power generation economics; Power transformers;
Conference_Titel :
Electromagnetic Field Computation, 2006 12th Biennial IEEE Conference on
Conference_Location :
Miami, FL
Print_ISBN :
1-4244-0320-0
DOI :
10.1109/CEFC-06.2006.1632921