2018
DOI: 10.1016/j.matpr.2018.02.178
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Fault Diagnosis of Face Milling Tool using Decision Tree and Sound Signal

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Cited by 40 publications
(23 citation statements)
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“…A standard tree is represented by the J48 algorithm, which consists of a root node, a number of leaf nodes, and a number of branches. Each branch of a tree represents a chain of nodes from the root to a leaf, and each node represents an attribute (or feature) [15][16][17] . Decision trees are one of the most effective and widely used techniques in many areas of Data Mining, such as pattern recognition, machine learning, image processing and information retrieval [18][19][20] .…”
Section: Recognition Using Decision Treementioning
confidence: 99%
“…A standard tree is represented by the J48 algorithm, which consists of a root node, a number of leaf nodes, and a number of branches. Each branch of a tree represents a chain of nodes from the root to a leaf, and each node represents an attribute (or feature) [15][16][17] . Decision trees are one of the most effective and widely used techniques in many areas of Data Mining, such as pattern recognition, machine learning, image processing and information retrieval [18][19][20] .…”
Section: Recognition Using Decision Treementioning
confidence: 99%
“…Several parameters are chosen by the ANN classifier including the number of training samples, the number of hidden nodes, and the learning rate for classification performance improvement. However, the performance is not priori possible as with other non-parametric approaches to pattern classification [44]. The performance of ANN is determined by the weight updation, propagation function and the learning rule.…”
Section: Artificial Neural Network Classifier (Ann)mentioning
confidence: 99%
“…Liangyu et al [113] propose an artificial NN combined with optimal zoom search to recognize various degrees of failure in a high-pressure feedwater heater system. The classification of the healthy and defective conditions of a face milling tool is done through the acquisition of sound signals using the discrete WT (DWT) and the J48 algorithm, which is a decision tree technique [114]. On the other hand, to detect and diagnose faults in HVAC systems, Du et al [115] combine NNs and clustering analysis.…”
Section: Hybrid Techniquesmentioning
confidence: 99%