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Application of machine learning tools for long-term diagnostic feature data segmentation

Application of machine learning tools for long-term diagnostic feature data segmentation
Application of machine learning tools for long-term diagnostic feature data segmentation
In this paper, a novel method for long-term data segmentation in the context of machine health prognosis is presented. The purpose of the method is to find borders between three data segments. It is assumed that each segment contains the data that represent different statistical properties, that is, a different model. It is proposed to use a moving window approach, statistical parametrization of the data in the window, and simple clustering techniques. Moreover, it is found that features are highly correlated, so principal component analysis is exploited. We find that the probability density function of the first principal component may be sufficient to find borders between classes. We consider two cases of data distributions, Gaussian and
2076-3417
Moosavi, Forougholsadat
505315c2-4a24-483f-ade1-8ca6e20d10cc
Shiri, Hamid
7a4304e3-a4bc-4007-961b-29530af225fd
Wodecki, Jacek
bed412ce-c860-4637-9aee-34685199239d
Wylomanska, Agnieszka
420eb98f-605e-486c-8d33-bd3c2a859be1
Zimroz, Radoslaw
d3d00d36-da1f-411b-8f02-22871182ff08
Moosavi, Forougholsadat
505315c2-4a24-483f-ade1-8ca6e20d10cc
Shiri, Hamid
7a4304e3-a4bc-4007-961b-29530af225fd
Wodecki, Jacek
bed412ce-c860-4637-9aee-34685199239d
Wylomanska, Agnieszka
420eb98f-605e-486c-8d33-bd3c2a859be1
Zimroz, Radoslaw
d3d00d36-da1f-411b-8f02-22871182ff08

Moosavi, Forougholsadat, Shiri, Hamid, Wodecki, Jacek, Wylomanska, Agnieszka and Zimroz, Radoslaw (2022) Application of machine learning tools for long-term diagnostic feature data segmentation. Applied Sciences, 12 (13), [6766]. (doi:10.3390/app12136766).

Record type: Article

Abstract

In this paper, a novel method for long-term data segmentation in the context of machine health prognosis is presented. The purpose of the method is to find borders between three data segments. It is assumed that each segment contains the data that represent different statistical properties, that is, a different model. It is proposed to use a moving window approach, statistical parametrization of the data in the window, and simple clustering techniques. Moreover, it is found that features are highly correlated, so principal component analysis is exploited. We find that the probability density function of the first principal component may be sufficient to find borders between classes. We consider two cases of data distributions, Gaussian and

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Accepted/In Press date: 28 June 2022
Published date: 4 July 2022

Identifiers

Local EPrints ID: 502319
URI: http://eprints.soton.ac.uk/id/eprint/502319
ISSN: 2076-3417
PURE UUID: 608e330f-f28c-44ac-bcd1-e1af0d564ea9
ORCID for Hamid Shiri: ORCID iD orcid.org/0000-0002-1878-4718

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Date deposited: 23 Jun 2025 16:33
Last modified: 22 Aug 2025 02:49

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Contributors

Author: Forougholsadat Moosavi
Author: Hamid Shiri ORCID iD
Author: Jacek Wodecki
Author: Agnieszka Wylomanska
Author: Radoslaw Zimroz

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