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There is a demand for worm gearboxes in diversified industrial fields that include machinery such as escalators, ribbon blenders, pulverisers, bowl mills, etc. because of their peculiar characteristics like torque and quick retardation. The most commonly occurring defects in a worm gear box are scratches that develop in the worm gear and in bearings. Early defect categorization is required to prevent a sudden breakdown that would decrease production. The defect is depicted in different cases, which include defects in the gear tooth and the outer and inner races of the bearing. In another case, the defect is considered in the gear tooth as well as the bearing. The severity is designated using the ANN. The experiments were performed under these conditions with a good worm gearbox to capture vibration response signatures. Using these values as an input to the ANN, the model is trained. Experimental results show that vibration amplitude increases with fault progression in the worm gearbox, and the trained ANN model effectively categorizes worm gearbox faults with an accuracy of 97.12%.
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Tom
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art. no. 185371
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Bibliogr. 34 poz., fot., rys., tab., wykr.
Twórcy
- Department of Mechanical Engineering, MET’s Institute of Engineering, India
autor
- Department of Mechanical Engineering, Bramha Valley College of Engineering and Research Institute, India
autor
- Department of Computer Engineering, Brahma Valley College of Engineering and ResearchInstitute, India
autor
- Department of Mechanical, S.N.D. College of Engineering & Research Centre, India
autor
- Department of Mechanical, S.N.D. College of Engineering & Research Centre, India
Bibliografia
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- 3. Tang X, Xu Y, Sun X, Liu Y, Jia Y, Gu F, Ball A D. Intelligent fault diagnosis of helical gearboxes with compressive sensing based non-contact measurements, ISA Transactions 2022; (20): 1-16, https://doi.org/10.1016/j.isatra.2022.07.020
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-654269dc-8e86-4b16-95d0-10a3c1bd8c12