Framework for stochastic modelling of long-term non-homogeneous data with non-Gaussian characteristics for machine condition prognosis
Framework for stochastic modelling of long-term non-homogeneous data with non-Gaussian characteristics for machine condition prognosis
To make prognosis one needs to build a model based on historical data. In the paper we propose a framework for modelling of long-term non-homogeneous data with non-Gaussian properties. These specific properties have been identified in real datasets describing the degradation process of the machine. The framework covers deterministic and random components separation, modelling of heavy-tailed, time-varying properties of random part as well as identification of possible autodependence hidden in the random sequence and identification of distribution for a random part. Due to non-linear trends, time-dependent scale (equivalent to the variance for Gaussian distributed data) and non-Gaussian characteristics present in the data, the final formula of the model is complex, its identification is challenging and requires specific, suitable to heavy-tailed processes, statistical methods. The paper provides two kind of novelties — first of all, it uses real data from condition monitoring systems and our findings may be novel and surprising to predictive maintenance community, secondly — processing such specific data opens new areas for general data modelling and highlight novel research directions.
Żuławiński, Wojciech
799b1148-2093-4801-9a7b-0fa0742d84d2
Maraj-Zygmąt, Katarzyna
bc71dbee-7ab4-465e-aabc-27987d9e56ed
Shiri, Hamid
7a4304e3-a4bc-4007-961b-29530af225fd
Wylomanska, Agnieszka
420eb98f-605e-486c-8d33-bd3c2a859be1
Zimroz, Radoslaw
d3d00d36-da1f-411b-8f02-22871182ff08
19 August 2022
Żuławiński, Wojciech
799b1148-2093-4801-9a7b-0fa0742d84d2
Maraj-Zygmąt, Katarzyna
bc71dbee-7ab4-465e-aabc-27987d9e56ed
Shiri, Hamid
7a4304e3-a4bc-4007-961b-29530af225fd
Wylomanska, Agnieszka
420eb98f-605e-486c-8d33-bd3c2a859be1
Zimroz, Radoslaw
d3d00d36-da1f-411b-8f02-22871182ff08
Żuławiński, Wojciech, Maraj-Zygmąt, Katarzyna, Shiri, Hamid, Wylomanska, Agnieszka and Zimroz, Radoslaw
(2022)
Framework for stochastic modelling of long-term non-homogeneous data with non-Gaussian characteristics for machine condition prognosis.
Mechanical Systems and Signal Processing, 184, [109677].
(doi:10.1016/j.ymssp.2022.109677).
Abstract
To make prognosis one needs to build a model based on historical data. In the paper we propose a framework for modelling of long-term non-homogeneous data with non-Gaussian properties. These specific properties have been identified in real datasets describing the degradation process of the machine. The framework covers deterministic and random components separation, modelling of heavy-tailed, time-varying properties of random part as well as identification of possible autodependence hidden in the random sequence and identification of distribution for a random part. Due to non-linear trends, time-dependent scale (equivalent to the variance for Gaussian distributed data) and non-Gaussian characteristics present in the data, the final formula of the model is complex, its identification is challenging and requires specific, suitable to heavy-tailed processes, statistical methods. The paper provides two kind of novelties — first of all, it uses real data from condition monitoring systems and our findings may be novel and surprising to predictive maintenance community, secondly — processing such specific data opens new areas for general data modelling and highlight novel research directions.
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Accepted/In Press date: 6 August 2022
e-pub ahead of print date: 19 August 2022
Published date: 19 August 2022
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Local EPrints ID: 503326
URI: http://eprints.soton.ac.uk/id/eprint/503326
ISSN: 0888-3270
PURE UUID: d28882bb-980f-4e27-922a-cee189ea9d93
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Date deposited: 29 Jul 2025 16:42
Last modified: 22 Aug 2025 02:49
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Contributors
Author:
Wojciech Żuławiński
Author:
Katarzyna Maraj-Zygmąt
Author:
Hamid Shiri
Author:
Agnieszka Wylomanska
Author:
Radoslaw Zimroz
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