2020
DOI: 10.36001/phmconf.2020.v12i1.1178
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Similarity-based anomaly score for fleet-based condition monitoring

Abstract: An increased number of industrial assets are monitored during their daily use, producing large amounts of data. This data allows us to better monitor the health status of these asset, enabling predictive maintenance to reduce risks and costs caused by unexpected machine failure. Many condition monitoring approaches focus on assessing a machine's health status individually. Often, these approaches require historical data sets or handcrafted fault indicators. However, multiple industrial applications involve mon… Show more

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Cited by 4 publications
(5 citation statements)
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“…The use of fleet information is not new, e.g. Beretta et al, (2020), Hendrickx et al (2020). The latter is most similar to our work.…”
Section: Gcwt Olse)supporting
confidence: 77%
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“…The use of fleet information is not new, e.g. Beretta et al, (2020), Hendrickx et al (2020). The latter is most similar to our work.…”
Section: Gcwt Olse)supporting
confidence: 77%
“…2) By using CUSUM advantage is taken from the fact that the data are time series. This is not the case with the methodology in Hendrickx et al (2020).…”
Section: Gcwt Olse)mentioning
confidence: 91%
See 1 more Smart Citation
“…Only the load differs due to different load motors. Hendrickx et al [68] and Hendrickx et al [318] presented a similar approach for the same application. Among other approaches, Liu [71] performed time series cluster analysis with operational data from an onshore wind turbine farm comprising 24 turbines to establish an optimal maintenance schedule (F2).…”
Section: A Approaches From the Manufacturer's Perspectivementioning
confidence: 99%
“…This method analyses and clusters LED spectral data to identify the early indicators of degradation. Hendrickx et al (2020) enhance a fleet-based industrial asset monitoring framework by refining the anomaly scoring system with machine similarities within the fleet, permitting more precise, continuous, and individualized scoring that accurately pinpoints machine anomalies.…”
Section: Introductionmentioning
confidence: 99%