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Bibliographic Details
Main Authors: Klaeger, Tilman, Schult, Andre, Oehm, Lukas
Format: Preprint
Published: 2019
Subjects:
Online Access:https://arxiv.org/abs/1906.02473
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author Klaeger, Tilman
Schult, Andre
Oehm, Lukas
author_facet Klaeger, Tilman
Schult, Andre
Oehm, Lukas
contents In this paper we propose a new method to assist in labeling data arriving from fast running processes using anomaly detection. A result is the possibility to manually classify data arriving at a high rates to train machine learning models. To circumvent the problem of not having a real ground truth we propose specific metrics for model selection and validation of the results. The use case is taken from the food packaging industry, where processes are affected by regular but short breakdowns causing interruptions in the production process. Fast production rates make it hard for machine operators to identify the source and thus the cause of the breakdown. Self learning assistance systems can help them finding the root cause of the problem and assist the machine operator in applying lasting solutions. These learning systems need to be trained to identify reoccurring problems using data analytics. Training is not easy as the process is too fast to be manually monitored to add specific classifications on the single data points.
format Preprint
id arxiv_https___arxiv_org_abs_1906_02473
institution arXiv
publishDate 2019
record_format arxiv
spellingShingle Using anomaly detection to support classification of fast running (packaging) processes
Klaeger, Tilman
Schult, Andre
Oehm, Lukas
Machine Learning
Systems and Control
In this paper we propose a new method to assist in labeling data arriving from fast running processes using anomaly detection. A result is the possibility to manually classify data arriving at a high rates to train machine learning models. To circumvent the problem of not having a real ground truth we propose specific metrics for model selection and validation of the results. The use case is taken from the food packaging industry, where processes are affected by regular but short breakdowns causing interruptions in the production process. Fast production rates make it hard for machine operators to identify the source and thus the cause of the breakdown. Self learning assistance systems can help them finding the root cause of the problem and assist the machine operator in applying lasting solutions. These learning systems need to be trained to identify reoccurring problems using data analytics. Training is not easy as the process is too fast to be manually monitored to add specific classifications on the single data points.
title Using anomaly detection to support classification of fast running (packaging) processes
topic Machine Learning
Systems and Control
url https://arxiv.org/abs/1906.02473