• Corpus ID: 17584862

A Review on Prognosis of Rolling Element Bearings

@inproceedings{Jammu2011ARO,
  title={A Review on Prognosis of Rolling Element Bearings},
  author={Nagar Jammu and Pavan Kumar Kankar},
  year={2011}
}
Bearings are amongst the frequently encountered components to be found in rotating machinery. Though inexpensive, their failure can interrupt the production in a plant causing unscheduled downtime and production losses. So the bearing prognosis plays a significant role in reducing plant down time and enhanced operation safety, by estimating the Remaining Useful Life (RUL) of damaged bearing. Admitting the importance of bearing prognosis, this literature review attempts to summarize various… 

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