Scopus
An adaptive artificial immune system for fault classification
Journal of Intelligent Manufacturing · Ekim 2012
Makale Bilgileri
DergiJournal of Intelligent Manufacturing
Yayın TarihiEkim 2012
Cilt / Sayfa23 · 1489-1499
Scopus ID2-s2.0-84870954779
Özet
Fault diagnosis is very important in ensuring safe and reliable operation in manufacturing systems. This paper presents an adaptive artificial immune classification approach for diagnosis of induction motor faults. The proposed algorithm uses memory cells tuned using the magnitude of the standard deviation obtained with average affinity variation in each generation. The algorithm consists of three steps. First, three-phase induction motor currents are measured with three current sensors and transferred to a computer by means of a data acquisition board. Then feature patterns are obtained to identify the fault using current signals. Second, the fault related features are extracted from three-phase currents. Finally, an adaptive artificial immune system (AAIS) is applied to detect the broken rotor bar and stator faults. The proposed method was experimentally implemented on a 0.37 kW induction motor, and the experimental results show the applicability and effectiveness of the proposed method to the diagnosis of broken bar and stator faults in induction motors. © Springer Science+Business Media, LLC 2010.
Yazarlar (3)
1
Ilhan Aydin
ORCID: 0000-0001-6880-4935
2
Mehmet Karaköse
3
Erhan Akin
ORCID: 0000-0001-6476-9255
Anahtar Kelimeler
Artificial immune system
Classification
Clonal selection
Fault diagnosis
Fuzzy K-NN
Kurumlar
Firat Üniversitesi
Elazig Turkey
Metrikler
37
Atıf
3
Yazar
5
Anahtar Kelime