DIAGNOSIS KERUSAKAN BANTALAN GELINDING MENGGUNAKAN METODE RADIAL BASIS FUNCTION NEURAL NETWORK (RBFNN)
Fault diagnosis of rolling element bearings on industrial machinery has been investegated in this research. This research was condected because a rolling element bearings is one of the vital parts on the rotating machine that hold an important role. Faulty bearings make the fatal effect and company...
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Main Author: | Mariza, Devega (Author) |
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Format: | Academic Paper |
Published: |
2013-07-15.
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Online Access: | http://www.msi.undip.ac.id http://eprints.undip.ac.id/39525/ |
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