Individual Feature Selection of Rolling Bearing Impedance Signals for Early Failure Detection

Author:

Becker-Dombrowsky Florian Michael1ORCID,Koplin Quentin Sean1,Kirchner Eckhard1ORCID

Affiliation:

1. Department of Mechanical Engineering, Institute for Product Development and Machine Elements, Technical University of Darmstadt, Otto-Berndt-Straße 2, 64287 Darmstadt, Germany

Abstract

Condition monitoring of technical systems has increasing importance for the reduction of downtimes based on unplanned breakdowns. Rolling bearings are a central component of machines because they often support energy-transmitting elements like shafts and spur gears. Bearing damages lead to a high number of machine breakdowns; thus, observing these has the potential to reduce unplanned downtimes. The observation of bearings is challenging since their behavior in operation cannot be investigated directly. A common solution for this task is the measurement of vibration or component temperature, which is able to show an already occurred bearing damage. Measuring the electrical bearing impedance in situ has the ability to gather information about bearing revolution speed and bearing loads. Additionally, measuring the impedance allows for the detection and localization of damages in the bearing, as early research has shown. In this paper, the impedance signal of five fatigue tests is investigated using individual feature selection. Additionally, the feature behavior is analyzed and explained. It is shown that the three different bearing operational time phases can be distinguished via the analysis of impedance signal features. Furthermore, some of the features show a significant change in behavior prior to the occurrence of initial damages before the vibration signals of the test rig vary from a normal state.

Funder

Deutsche Forschungsgemeinschaft

Publisher

MDPI AG

Subject

Surfaces, Coatings and Films,Mechanical Engineering

Reference37 articles.

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2. Randall, R.B. (2011). Vibration-Based Condition Monitoring: Industrial, Aerospace and Automotive Applications, Wiley.

3. Schaeffler Monitoring Services GmbH (2019). Condition Monitoring Praxis: Handbuch zur Schwingungs-Zustandsüberwachung von Maschinen und Anlagen, Vereinigte Fachverlage GmbH. [1st ed].

4. Marjanović, D., Štorga, M., Škec, S., Bojčetić, N., and Pavković, N. (2018, January 21–24). Ball Bearings as Sensors for Systematical Combination of Load and Failure Monitoring. Proceedings of the Design 2018 15th International Design Conference, Dubrovnik, Croatia.

5. Martin, G., Becker, F.M., and Kirchner, E. (2022). Tribology International 170, Elsevier.

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