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Identification of Cyclic Changes in the Operation Mode of the Production Facility Based on the Monitoring Data

  • Nina DavydenkoEmail author
  • Igor Korobiichuk
  • Liudmyla DavydenkoEmail author
  • Michał Nowicki
  • Volodymyr Davydenko
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 1044)

Abstract

The article deals with the issues of formalizing the change of the actual conditions of the operation mode of the production facility. The purpose of the article is to develop a mechanism for identifying these changes based on the analysis of data obtained from the monitoring system the operation mode of the facility. The expediency of using the pattern recognition apparatus for solving the issue is substantiated. As an indicator of changing operation conditions, it is suggested to use the profile of the relevant factor of the external environment described by morphometric indicators. The two-step procedure is proposed based on the successive use of pattern recognition algorithms without and with training. It provides the formation of knowledge about the possible states of the facility operation conditions and the construction of classifier to determine the accordance to one of them. Structurally-parametric identification of the classifier model is performed by the group method of data handling. The use of the proposed mechanism will contribute to the effective planning of operation modes of production facilities, the determination of time ranges for supporting such modes, their control, and the prevention of non-typical operation modes.

Keywords

Pattern recognition Relevant factor profile Morphometric parameters Group method of data handling Classifier 

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Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  1. 1.National University of Water and Environmental EngineeringRivneUkraine
  2. 2.Warsaw University of TechnologyWarsawPoland
  3. 3.Lutsk National Technical UniversityLutskUkraine

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