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Investigation of Units Condition of Rotor-Type Milling Machines Based on Vibration Analysis

  • V. Yu. Ovsyannikov
  • A. I. Klychnikov
  • A. V. Sharov
Conference paper
Part of the Lecture Notes in Mechanical Engineering book series (LNME)

Abstract

The application of methods and tools, spectral analysis of units, and mechanisms of production equipment in various industries makes it possible to determine their actual condition with sufficient probability which significantly reduces the occurrence of an emergency stop of equipment. Diagnostic information on the crusher support condition was obtained with the help of special equipment and technical devices for vibration recording. The calculation of natural frequencies of the crusher vibrations according to the calculated dependences was preliminary carried out for effective diagnostics. A defect was found as a result of regular monitoring of the rotor-type crusher through a system of predictable maintenance. The monitoring interval was 10 days, and as the defect developed, it was reduced to one day. The study and analysis of vibration spectra made it possible to determine the wear degree of outer and inner rings of the rolling bearings. The results of diagnostics made it possible to ensure the priority preparation of reserve elements of the bearing support, and it was timely replaced.

Keywords

Vibration diagnostics Rolling bearing 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  • V. Yu. Ovsyannikov
    • 1
  • A. I. Klychnikov
    • 1
  • A. V. Sharov
    • 1
  1. 1.Voronezh State University of Engineering TechnologiesVoronezhRussia

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