Publication Details
Analyzing Machine Performance Using Data Mining
Process mining, data mining, manufacturing, performance analysis, simulation,
prediction, monitoring, scheduling.
This paper focuses on analysis of machine performance in a manufacturing company.
Machine behavior can be complex, because it usually consists of many tasks.
Performance of these tasks depends on product attributes, worker's speed, and
therefore, analysis is not simple. Performance analysis results can be used for
different purposes. Prediction and description are typical products of data
mining. Prediction should be used for online monitoring of the manufactory
process and as an input for a scheduler. Description can serve as information for
managers to know which attributes of products cause problems more frequently.
However manufacturing processes are complex, every process is quite unique. Our
long term goal is to generalize the most common patterns to build general
analyzer. This task is not simple because the lack of real word data and
information. Therefore this work may contribute to the other researchers in their
understanding of real world manufacturing problems.
@inproceedings{BUT131008,
author="Milan {Pospíšil} and Vladimír {Bartík} and Tomáš {Hruška}",
title="Analyzing Machine Performance Using Data Mining",
booktitle="2016 IEEE Symposium on Computational Intelligence and Data Mining",
year="2016",
pages="1--7",
publisher="Institute of Electrical and Electronics Engineers",
address="Athens",
doi="10.1109/SSCI.2016.7849923",
isbn="978-1-5090-4239-5",
url="https://www.fit.vut.cz/research/publication/11230/"
}