Título: Equipment Fault Prognosis Based on Temporal Association Rules
Autores: GAN, Chao
LU, Yuan
HU, Ying
GU, Jia
QIU, Xin
Fecha: 2013-09-26
Publicador: TELKOMNIKA: Indonesian journal of electrical engineering
Fuente:
Tipo: info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Tema: School of Mechanical Engineering,Nanchang University
Fault Prognosis; Temporal Association Rules; Apriori algorithm; Data Mining ;Frequent Item sets;
Descripción: Equipment fault prognosis is important for reliability, operational safety, and efficient performance of equipment. Temporal fault data model is built according to the principles of the Apriori traditional association rules algorithm based on the characteristics of fault data. An Improved Apriori algorithm and frequent temporal association rules algorithm are proposed in this study by converting fault data to temporal item sets matrix. Equipment fault trends are predicted by mining the frequent temporal association rules of fault data based on the algorithm, which provides good support for equipment maintenance and management. At last an example is given to prove the feasibility and practical application of proposed algorithms
Idioma: Inglés