Log Data Preparation for Predicting Critical Errors Occurrences
DIALLO, Abdourahmane Gayo![](/themes/Mirage2//images/PERSO.svg)
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Bordeaux population health [BPH]
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![cc](/themes/Mirage2//images/orcid_icon.png)
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Bordeaux population health [BPH]
DIALLO, Abdourahmane Gayo![](/themes/Mirage2//images/PERSO.svg)
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Bordeaux population health [BPH]
< Reduce
![cc](/themes/Mirage2//images/orcid_icon.png)
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Bordeaux population health [BPH]
Language
EN
Chapitre d'ouvrage
This item was published in
Trends and Applications in Information Systems and Technologies. 2021-03-29, vol. 1366, p. 224-233
English Abstract
Failure anticipation is one of the key industrial research objectives with the advent of Industry 4.0. This paper presents an approach to predict high importance errors using log data emitted by machine tools. It uses the ...Read more >
Failure anticipation is one of the key industrial research objectives with the advent of Industry 4.0. This paper presents an approach to predict high importance errors using log data emitted by machine tools. It uses the concept of bag to summarize events provided by remote machines, available within log files. The idea of bag is inspired by the Multiple Instance Learning paradigm. However, our proposal follows a different strategy to label bags, that we wanted as simple as possible. Three main setting parameters are defined to build the training set allowing the model to fine-tune the trade-off between early warning, historic informativeness and forecast accuracy. The effectiveness of the approach is demonstrated using a real industrial application where critical errors can be predicted up to seven days in advance thanks to a classification model.Read less <
English Keywords
Predictive Maintenance (PdM)
Machine Learning (ML)
Classification
Log data
data preparation