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IMPROVE - Innovative Modelling Approaches for Production Systems to Raise Validatable Efficiency pp 37–54Cite as

Enable learning of Hybrid Timed Automata in Absence of Discrete Events through Self-Organizing Maps

Enable learning of Hybrid Timed Automata in Absence of Discrete Events through Self-Organizing Maps

  • Alexander von Birgelen4 &
  • Oliver Niggemann4 
  • Chapter
  • Open Access
  • First Online: 21 August 2018
  • 2827 Accesses

  • 2 Citations

Part of the Technologien für die intelligente Automation book series (TIA,volume 8)

Abstract

Model-based diagnosis is a commonly used approach to identify anomalies and root causes within cyber-physical production systems (CPPS) through the use of models, which are often times manually created by experts. However, manual modelling takes a lot of effort and is not suitable for today’s fast-changing systems. Today, the large amount of sensor data provided by modern plants enables data-driven solutions where models are learned from the systems data, significantly reducing the manual modelling efforts. This enables tasks such as condition monitoring where anomalies are detected automatically, giving operators the chance to restore the plant to a working state before production losses occur. The choice of the model depends on a couple of factors, one of which is the type of the available signals. Modern CPPS are usually hybrid systems containing both binary and real-valued signals. Hybrid timed automata are one type of model which separate the systems behaviour into different modes through discrete events which are for example created from binary signals of the plant or through real-valued signal thresholds, defined by experts. However, binary signals or expert knowledge to generate the much needed discrete events are not always available from the plant and automata cannot be learned. The unsupervised, non-parametric approach presented and evaluated in this paper uses self-organizing maps and watershed transformations to allow the use of hybrid timed automata on data where learning of automata was not possible before. Furthermore, the results of the algorithm are tested on several data sets.

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Authors and Affiliations

  1. Institute Industrial IT, Ostwestfalen-Lippe University of Applied Sciences, Lemgo, Germany

    Alexander von Birgelen & Oliver Niggemann

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  1. Alexander von Birgelen
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  2. Oliver Niggemann
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Correspondence to Alexander von Birgelen .

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Editors and Affiliations

  1. inIT - Institut für industrielle Informationstechnik, Hochschule Ostwestfalen-Lippe, Lemgo, Nordrhein-Westfalen, Germany

    Prof. Dr. Oliver Niggemann

  2. Institut für Logic and Computation, Vienna University of Technology, Wien, Wien, Austria

    Dr. Peter Schüller

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von Birgelen, A., Niggemann, O. (2018). Enable learning of Hybrid Timed Automata in Absence of Discrete Events through Self-Organizing Maps. In: Niggemann, O., Schüller, P. (eds) IMPROVE - Innovative Modelling Approaches for Production Systems to Raise Validatable Efficiency. Technologien für die intelligente Automation, vol 8. Springer Vieweg, Berlin, Heidelberg. https://doi.org/10.1007/978-3-662-57805-6_3

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  • DOI: https://doi.org/10.1007/978-3-662-57805-6_3

  • Published: 21 August 2018

  • Publisher Name: Springer Vieweg, Berlin, Heidelberg

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