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Publication detail

Modern Techniques of Wear Debris Analysis
Year: 2008
Type of publication: článek v odborném periodiku
Name of source: Sovremennyj naučnyj vestnik
Publisher name: Rusnaučkniga
Place: Belgorod
Page from-to: 82-85
Titles:
Language Name Abstract Keywords
cze Modern Techniques of Wear Debris Analysis Lubricants used in mechanical parts must accomplish contradictory requirements on their function in many cases and, at the same time, they must often work in extreme conditions with longer service life. Increasing the reliability and economy of machine use is closely connected to monitoring the condition and state of technical parts of used lubricant with the purpose of diagnostics. Computer image analysis of wear particles is a useful supporting tool for detail analysis of oil samples. Presently, laboratory methods of analysing the individual elements under a microscope are used most frequently. Modern methods, including machine learning, provide possibilities of automatization of wear debris analysis. The goal of this paper is to outline the possibilities of improvement in image analysis with the help of automatic evaluation of wear particles by using modern methods of artificial intelligence.
eng Modern Techniques of Wear Debris Analysis Lubricants used in mechanical parts must accomplish contradictory requirements on their function in many cases and, at the same time, they must often work in extreme conditions with longer service life. Increasing the reliability and economy of machine use is closely connected to monitoring the condition and state of technical parts of used lubricant with the purpose of diagnostics. Computer image analysis of wear particles is a useful supporting tool for detail analysis of oil samples. Presently, laboratory methods of analysing the individual elements under a microscope are used most frequently. Modern methods, including machine learning, provide possibilities of automatization of wear debris analysis. The goal of this paper is to outline the possibilities of improvement in image analysis with the help of automatic evaluation of wear particles by using modern methods of artificial intelligence. image analysis, wear debris analysis, machine learning methods, analytical ferrography