Modelling of Knowledge Resources for Preventive Maintenance

  • Justyna Patalas-MaliszewskaEmail author
  • Sławomir Kłos
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 801)


This paper focusses on modelling expert knowledge resources for preventive maintenance. Expert knowledge resources are defined as those employees engaged in a company’s external maintenance who are important in the realisation of maintenance activities in the supported industries as well as those employees whose work is focussed on the application of knowledge. The aim of this work is to elaborate methods for acquiring and formalising this expert knowledge, in order to improve the manner of giving instructions via manuals, currently in use in maintenance areas. The approach presented in the form an IT tool, dedicated to the automotive industry, is implemented.


Expert knowledge Expert knowledge resources Preventive maintenance 


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© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Institute of Computer Science and Production ManagementUniversity of Zielona GóraZielona GóraPoland

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