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Fault classification using pseudomodal energies and neural networks
Tshilidzi Marwala
Dzinet Investment Holding
Research output
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Contribution to journal
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Article
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peer-review
20
Citations (Scopus)
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Keyphrases
Substructure
100%
Energy Networks
100%
Accelerometer
25%
New Fault
25%
Conjugate Method
25%
Representation Scheme
25%
Overlap Factor
25%
Fault Case
25%
Fault Identification Method
25%
Modal Hammer
25%
Earth and Planetary Sciences
Cylindrical Shell
100%
Identification Method
50%
Self Organizing Systems
50%
Accelerometer
50%
Principal Component Analysis
50%
Engineering
Energy Engineering
100%
Cylindrical Shell
66%
Input Data
33%
Component Analysis
33%
Perceptron
33%
Principal Components
33%
Chemical Engineering
Neural Network
100%
Multilayer Neural Networks
20%