Study on Diesel Engine Fault Diagnosis Method based on Integration Super Parent One Dependence Estimator
Author(s) -
Xin Wang,
Hongliang Yu,
Lin Zhang,
Chaoming Huang,
Yuchao Song
Publication year - 2011
Publication title -
international journal of image graphics and signal processing
Language(s) - English
Resource type - Journals
eISSN - 2074-9082
pISSN - 2074-9074
DOI - 10.5815/ijigsp.2011.01.02
Subject(s) - diesel engine , estimator , computer science , diesel fuel , classifier (uml) , fault (geology) , bayesian probability , data mining , machine learning , artificial intelligence , statistics , automotive engineering , engineering , mathematics , seismology , geology
Under the background of the deficiencies and shortcomings in traditional diesel engine fault diagnostic, the naive Bayesian classifier method which built on the basis of the probability density function is adopted to diagnose the fault of diesel engine. A new approach is proposed to weight the super-parent one dependence estimators. To verify the validity of the proposed method, the experiments are performed using 16 datasets collected by University of California Irvine (UCI) and 5 diesel engine datasets collected by our lab. The comparison experimental results with other algorithms demonstrate the effectiveness of the proposed method. Index Terms-diesel engine; naive Bayesian classifier; fault diagnosis; one-dependence classifier
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