Tran, Van Tung, Yang, Bo-Suk and Oh, Myung-Suck (2006) An application of decision trees method for fault diagnosis of induction motors. In: International joint workshop, 2006, Yokohama, Japan.
- Accepted Version
Decision tree is one of the most effective and widely used methods for building
classification model. Researchers from various disciplines such as statistics, machine learning,
pattern recognition, and data mining have considered the decision tree method as an effective
solution to their field problems. In this paper, an application of decision tree method to classify the faults of induction motors is proposed. The original data from experiment is dealt with feature calculation to get the useful information as attributes. These data are then assigned the classes which are based on our experience before becoming data inputs for decision tree. The total 9 classes are defined. An implementation of decision tree written in Matlab is used for these data.
|Item Type:||Conference or Workshop Item (Paper)|
|Subjects:||T Technology > TJ Mechanical engineering and machinery|
|Schools:||School of Computing and Engineering
School of Computing and Engineering > Diagnostic Engineering Research Centre
|Depositing User:||Van Tran|
|Date Deposited:||05 Feb 2013 15:54|
|Last Modified:||07 Dec 2016 10:06|
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