Analysis of the impact of data compression on condition monitoring algorithms for ball screws

Publikation: Beitrag in FachzeitschriftKonferenzaufsatz in FachzeitschriftForschungPeer-Review

Autoren

  • Reemt Hinrichs
  • Alexander Schmidt
  • Julian Koslowski
  • Benjamin Bergmann
  • Berend Denkena
  • Jörn Ostermann
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Details

OriginalspracheEnglisch
Seiten (von - bis)270-275
Seitenumfang6
FachzeitschriftProcedia CIRP
Jahrgang102
Frühes Online-Datum27 Sept. 2021
PublikationsstatusVeröffentlicht - 2021
Veranstaltung18th CIRP Conference on Modeling of Machining Operations, CMMO 2021 - Ljubljana, Slowenien
Dauer: 15 Juni 202117 Juni 2021

Abstract

The overall equipment effectiveness (OEE) is a management ratio to evaluate the added value of machine tools. Unplanned machine downtime reduces the operational availability and therefore, the OEE. Increased machine costs are the consequence. An important cause of unplanned machine downtimes is the total failure of ball screws of the feed axes due to wear. Therefore, monitoring of the condition of ball screws is important. Common concepts rely on high-frequency acceleration sensors from external control systems to detect a change of the condition. For trend and detailed damage analysis, large amounts of data are generated and stored over a long time period (>5 years), resulting in corresponding data storage costs. Additional axes or machine tools increase the data volume further, adding to the total storage costs. To minimize these costs, data compression or source coding has to be applied. To achieve maximum compression ratios, lossy coding algorithms have to be used, which introduce distortion in a signal. In this work, the influence of lossy coding algorithms on a condition monitoring algorithm (CMA) using acceleration signals is investigated. The CMA is based on principal component analysis and uses 17 features such as standard deviation to predict the preload condition of a ball screw. It is shown that bit rate reduction through lossy compression algorithms is possible without affecting the condition monitoring - as long as the compression algorithm is known. In contrast, an unknown compression algorithm reduces the classification accuracy of condition monitoring by about 20 % when coding with a quantizer resolution of 4 bit/sample.

ASJC Scopus Sachgebiete

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Analysis of the impact of data compression on condition monitoring algorithms for ball screws. / Hinrichs, Reemt; Schmidt, Alexander; Koslowski, Julian et al.
in: Procedia CIRP, Jahrgang 102, 2021, S. 270-275.

Publikation: Beitrag in FachzeitschriftKonferenzaufsatz in FachzeitschriftForschungPeer-Review

Hinrichs, R, Schmidt, A, Koslowski, J, Bergmann, B, Denkena, B & Ostermann, J 2021, 'Analysis of the impact of data compression on condition monitoring algorithms for ball screws', Procedia CIRP, Jg. 102, S. 270-275. https://doi.org/10.1016/j.procir.2021.09.046
Hinrichs, R., Schmidt, A., Koslowski, J., Bergmann, B., Denkena, B., & Ostermann, J. (2021). Analysis of the impact of data compression on condition monitoring algorithms for ball screws. Procedia CIRP, 102, 270-275. https://doi.org/10.1016/j.procir.2021.09.046
Hinrichs R, Schmidt A, Koslowski J, Bergmann B, Denkena B, Ostermann J. Analysis of the impact of data compression on condition monitoring algorithms for ball screws. Procedia CIRP. 2021;102:270-275. Epub 2021 Sep 27. doi: 10.1016/j.procir.2021.09.046
Hinrichs, Reemt ; Schmidt, Alexander ; Koslowski, Julian et al. / Analysis of the impact of data compression on condition monitoring algorithms for ball screws. in: Procedia CIRP. 2021 ; Jahrgang 102. S. 270-275.
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abstract = "The overall equipment effectiveness (OEE) is a management ratio to evaluate the added value of machine tools. Unplanned machine downtime reduces the operational availability and therefore, the OEE. Increased machine costs are the consequence. An important cause of unplanned machine downtimes is the total failure of ball screws of the feed axes due to wear. Therefore, monitoring of the condition of ball screws is important. Common concepts rely on high-frequency acceleration sensors from external control systems to detect a change of the condition. For trend and detailed damage analysis, large amounts of data are generated and stored over a long time period (>5 years), resulting in corresponding data storage costs. Additional axes or machine tools increase the data volume further, adding to the total storage costs. To minimize these costs, data compression or source coding has to be applied. To achieve maximum compression ratios, lossy coding algorithms have to be used, which introduce distortion in a signal. In this work, the influence of lossy coding algorithms on a condition monitoring algorithm (CMA) using acceleration signals is investigated. The CMA is based on principal component analysis and uses 17 features such as standard deviation to predict the preload condition of a ball screw. It is shown that bit rate reduction through lossy compression algorithms is possible without affecting the condition monitoring - as long as the compression algorithm is known. In contrast, an unknown compression algorithm reduces the classification accuracy of condition monitoring by about 20 % when coding with a quantizer resolution of 4 bit/sample. ",
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AU - Hinrichs, Reemt

AU - Schmidt, Alexander

AU - Koslowski, Julian

AU - Bergmann, Benjamin

AU - Denkena, Berend

AU - Ostermann, Jörn

N1 - Funding Information: The work of ”WiZuBe” was supported by the Industrial Community Research program IGF (Industrielle Gemein-schaftsforschung) with the grant no. 19882 N of the Federal Ministry for Economic Affairs and Energy (Bundesministerium fr Wirtschaft und Energie, BMWi).

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N2 - The overall equipment effectiveness (OEE) is a management ratio to evaluate the added value of machine tools. Unplanned machine downtime reduces the operational availability and therefore, the OEE. Increased machine costs are the consequence. An important cause of unplanned machine downtimes is the total failure of ball screws of the feed axes due to wear. Therefore, monitoring of the condition of ball screws is important. Common concepts rely on high-frequency acceleration sensors from external control systems to detect a change of the condition. For trend and detailed damage analysis, large amounts of data are generated and stored over a long time period (>5 years), resulting in corresponding data storage costs. Additional axes or machine tools increase the data volume further, adding to the total storage costs. To minimize these costs, data compression or source coding has to be applied. To achieve maximum compression ratios, lossy coding algorithms have to be used, which introduce distortion in a signal. In this work, the influence of lossy coding algorithms on a condition monitoring algorithm (CMA) using acceleration signals is investigated. The CMA is based on principal component analysis and uses 17 features such as standard deviation to predict the preload condition of a ball screw. It is shown that bit rate reduction through lossy compression algorithms is possible without affecting the condition monitoring - as long as the compression algorithm is known. In contrast, an unknown compression algorithm reduces the classification accuracy of condition monitoring by about 20 % when coding with a quantizer resolution of 4 bit/sample.

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ER -

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