Hoppenstedt, Burkhard and Pryss, Rüdiger and Kammerer, Klaus and Reichert, Manfred (2018) CONSENSORS: A Neural Network Framework for Sensor Data Analysis. In: OTM 2018 Workshops, October 22-26, Valetta, Malta.
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Abstract
Machine breakdowns in industrial plants cause production delays and financial damage. In the era of cyber-physical systems, ma- chines are equipped with a variety of sensors to monitor their status. For example, changes to sensor values might indicate an abnormal behav- ior and, in some cases, detected anomalies can be even used to predict machine breakdowns. This procedure is called predictive maintenance, which pursues the goal to increase machine productivity by reducing down times. Thereby, anomalies can be either detected by training data models based on historic data or by implementing a self-learning ap- proach. In this work, the use of neural networks for detecting anomalies is evaluated. In the considered scenarios, anomaly detection is based on temperature data from a press of a machine manufacturer. Based on this, a framework was developed for dfferent types of neural networks as well as a high-order linear regression approach. We use the proposed neural networks for restoring missing sensor values and to improve over- all anomaly detection. An evaluation of the used techniques revealed that the high-order linear regression and an autoencoder constitute best practices for data recovery. Moreover, deep neural networks, especially convolutional neural networks, provide the best results with respect to overall anomaly detection.
Item Type: | Conference or Workshop Item (Paper) |
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Subjects: | DBIS Research > Publications |
Divisions: | Faculty of Engineering, Electronics and Computer Science > Institute of Databases and Informations Systems Faculty of Engineering, Electronics and Computer Science > Institute of Databases and Informations Systems > DBIS Research and Teaching > DBIS Research > Publications |
Depositing User: | Herr Burkhard Hoppenstedt |
Date Deposited: | 28 Mar 2019 17:12 |
Last Modified: | 11 May 2021 15:26 |
URI: | http://dbis.eprints.uni-ulm.de/id/eprint/1725 |