Preprocessing and Modeling of Radial Fan Data for Health State
Prediction
- URL: http://arxiv.org/abs/2109.03468v1
- Date: Wed, 8 Sep 2021 07:37:18 GMT
- Title: Preprocessing and Modeling of Radial Fan Data for Health State
Prediction
- Authors: Florian Holzinger, Michael Kommenda
- Abstract summary: In vital machinery, a trend to exaggerated sensors may be noticed, both in quality and in quantity.
This paper focuses on the reduction of this data through downsampling and binning.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Monitoring critical components of systems is a crucial step towards failure
safety. Affordable sensors are available and the industry is in the process of
introducing and extending monitoring solutions to improve product quality.
Often, no expertise of how much data is required for a certain task (e.g.
monitoring) exists. Especially in vital machinery, a trend to exaggerated
sensors may be noticed, both in quality and in quantity. This often results in
an excessive generation of data, which should be transferred, processed and
stored nonetheless. In a previous case study, several sensors have been mounted
on a healthy radial fan, which was later artificially damaged. The gathered
data was used for modeling (and therefore monitoring) a healthy state. The
models were evaluated on a dataset created by using a faulty impeller. This
paper focuses on the reduction of this data through downsampling and binning.
Different models are created with linear regression and random forest
regression and the resulting difference in quality is discussed.
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