Agnostic Learning for Packing Machine Stoppage Prediction in Smart
Factories
- URL: http://arxiv.org/abs/2212.06288v1
- Date: Mon, 12 Dec 2022 23:45:59 GMT
- Title: Agnostic Learning for Packing Machine Stoppage Prediction in Smart
Factories
- Authors: Gabriel Filios, Ioannis Katsidimas, Sotiris Nikoletseas, Stefanos H.
Panagiotou, Theofanis P. Raptis
- Abstract summary: The cyber-physical convergence is opening up new business opportunities for industrial operators.
The need for deep integration of the cyber and the physical worlds establishes a rich business agenda towards consolidating new system and network engineering approaches.
One of the most fruitful research and practice areas emerging from this data-rich, cyber-physical, smart factory environment is the data-driven process monitoring field.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The cyber-physical convergence is opening up new business opportunities for
industrial operators. The need for deep integration of the cyber and the
physical worlds establishes a rich business agenda towards consolidating new
system and network engineering approaches. This revolution would not be
possible without the rich and heterogeneous sources of data, as well as the
ability of their intelligent exploitation, mainly due to the fact that data
will serve as a fundamental resource to promote Industry 4.0. One of the most
fruitful research and practice areas emerging from this data-rich,
cyber-physical, smart factory environment is the data-driven process monitoring
field, which applies machine learning methodologies to enable predictive
maintenance applications. In this paper, we examine popular time series
forecasting techniques as well as supervised machine learning algorithms in the
applied context of Industry 4.0, by transforming and preprocessing the
historical industrial dataset of a packing machine's operational state
recordings (real data coming from the production line of a manufacturing plant
from the food and beverage domain). In our methodology, we use only a single
signal concerning the machine's operational status to make our predictions,
without considering other operational variables or fault and warning signals,
hence its characterization as ``agnostic''. In this respect, the results
demonstrate that the adopted methods achieve a quite promising performance on
three targeted use cases.
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