Żuławiński et al., 2023 - Google Patents
Framework for stochastic modelling of long-term non-homogeneous data with non-Gaussian characteristics for machine condition prognosisŻuławiński et al., 2023
View HTML- Document ID
- 2507371388802147567
- Author
- Żuławiński W
- Maraj-Zygmąt K
- Shiri H
- Wyłomańska A
- Zimroz R
- Publication year
- Publication venue
- Mechanical Systems and Signal Processing
External Links
Snippet
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 …
- 238000004393 prognosis 0 title abstract description 16
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