Title :
Artificial intelligence algorithms for the recognition of PD-generating defects in rotating machines
Author :
Cavallini, A. ; Montanari, G.C. ; Ciani, F. ; Folesani, M.
Author_Institution :
DIE-LIMAT, Bologna Univ., Italy
Abstract :
This paper presents an innovative technique for partial discharge source identification in rotating machines. Source identification is based on artificial intelligence tools that rely upon fuzzy inference algorithms and operate through a tree-like structure. The third level of the tree-like structure, specific for rotating machine defects, is described in this paper with emphasis on bar-to-bar discharges. Its effectiveness in the identification of defects generating PD, even in the presence of noise or overlapped PD phenomena, is discussed on the basis of lab tests performed on defective generator bars.
Keywords :
artificial intelligence; electric generators; fault diagnosis; inference mechanisms; insulation testing; machine insulation; machine testing; partial discharges; power engineering computing; trees (electrical); artificial intelligence; bar-to-bar discharges; fuzzy inference algorithm; generator bar; overlapped PD phenomena; partial discharge generation; partial discharge source identification; rotating machine defect; tree-like structure; Artificial intelligence; Circuit testing; Electrodes; Fault location; Fuzzy systems; Insulation; Partial discharges; Performance evaluation; Rotating machines; Surface discharges;
Conference_Titel :
Electrical Insulating Materials, 2005. (ISEIM 2005). Proceedings of 2005 International Symposium on
Print_ISBN :
4-88686-063-X
DOI :
10.1109/ISEIM.2005.193586