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Robust switching Kalman filter for diagnostics of long-term condition monitoring data in the presence of non-Gaussian noise

Robust switching Kalman filter for diagnostics of long-term condition monitoring data in the presence of non-Gaussian noise
Robust switching Kalman filter for diagnostics of long-term condition monitoring data in the presence of non-Gaussian noise

Machinery condition prognosis system uses long-term historical data to predict remaining useful life (RUL). One of the critical steps to reach this purpose is to segment long-term data into two or several degradation stages (Healthy, Unhealthy, and Critic stage). Finding changing points between regimes may be a crucial preliminary task for further predicting the degradation process. However, finding the accurate partition into two or more regimes is a challenging task in the actual application when the noise inherent in the observed process is non-Gaussian. Therefore, this paper introduced a robust methodology based on switching Kalman filters to address the problems mentioned. This approach uses multiple dynamic system models to explain different degradation stages, utilizing robust Bayesian estimation. Also, based on this fact, this approach works based on dynamic behavior; a threshold for diagnostics is no longer needed. Ultimately, the proposed approach is applied for the online diagnosis of simulated data sets in the presence of Gaussian and non-Gaussian noise. The result of the applied methodology on simulated data sets proves the method's efficacy.

1755-1307
Shiri, Hamid
7a4304e3-a4bc-4007-961b-29530af225fd
Wodecki, Jacek
bed412ce-c860-4637-9aee-34685199239d
Zimroz, Radosław
d3d00d36-da1f-411b-8f02-22871182ff08
Shiri, Hamid
7a4304e3-a4bc-4007-961b-29530af225fd
Wodecki, Jacek
bed412ce-c860-4637-9aee-34685199239d
Zimroz, Radosław
d3d00d36-da1f-411b-8f02-22871182ff08

Shiri, Hamid, Wodecki, Jacek and Zimroz, Radosław (2023) Robust switching Kalman filter for diagnostics of long-term condition monitoring data in the presence of non-Gaussian noise. IOP Conference Series: Earth and Environmental Science, 1189, [012007]. (doi:10.1088/1755-1315/1189/1/012007).

Record type: Article

Abstract

Machinery condition prognosis system uses long-term historical data to predict remaining useful life (RUL). One of the critical steps to reach this purpose is to segment long-term data into two or several degradation stages (Healthy, Unhealthy, and Critic stage). Finding changing points between regimes may be a crucial preliminary task for further predicting the degradation process. However, finding the accurate partition into two or more regimes is a challenging task in the actual application when the noise inherent in the observed process is non-Gaussian. Therefore, this paper introduced a robust methodology based on switching Kalman filters to address the problems mentioned. This approach uses multiple dynamic system models to explain different degradation stages, utilizing robust Bayesian estimation. Also, based on this fact, this approach works based on dynamic behavior; a threshold for diagnostics is no longer needed. Ultimately, the proposed approach is applied for the online diagnosis of simulated data sets in the presence of Gaussian and non-Gaussian noise. The result of the applied methodology on simulated data sets proves the method's efficacy.

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Published date: 2023
Venue - Dates: 22nd Conference of PhD Students and Young Scientists on Interdisciplinary Topics in Mining and Geology, , Hybrid, Wroclaw, Poland, 2022-06-29 - 2022-07-01

Identifiers

Local EPrints ID: 508339
URI: http://eprints.soton.ac.uk/id/eprint/508339
ISSN: 1755-1307
PURE UUID: a5374e38-83c1-47fc-b29e-55d374d9da68
ORCID for Hamid Shiri: ORCID iD orcid.org/0000-0002-1878-4718

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Date deposited: 19 Jan 2026 17:37
Last modified: 19 Jan 2026 17:39

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Contributors

Author: Hamid Shiri ORCID iD
Author: Jacek Wodecki
Author: Radosław Zimroz

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