IDENTIFICATION OF THE IMPACT OF THE AVAILABILITY FACTOR ON THE EFFICIENCY OF PRODUCTION PROCESSES USING THE AHP AND FUZZY AHP METHODS

Piotr WITTBRODT

p.wittbrodt@po.edu.pl
Department of Management and Production Engineering, Faculty of Production Engineering and Logistics, Opole University of Technology (Poland)

Iwona ŁAPUŃKA


Department of Management and Production Engineering, Faculty of Production Engineering and Logistics, Opole University of Technology (Poland)

Gulzhan BAYTIKENOVA


School of Business and Entrepreneurship, D. Serikbayev East Kazakhstan Technical University (Kazakhstan)

Arkadiusz GOLA


Department of Production Computerisation and Robotisation, Faculty of Mechanical Engineering, Lublin University of Technology (Poland)

Alfiya ZAKIMOVA


School of Business and Entrepreneurship, D. Serikbayev East Kazakhstan Technical University, (Kazakhstan)

Abstract

Maintenance has a key impact on the efficiency of the production processes because the efficiency of the machines determines the ability of the system to produce in accordance with the assumed schedule. The key element of the system performance assessment remains the availability of technological equipment, which directly translates into the efficiency and effectiveness of the performed production tasks. Taking into account the dynamic nature of manufacturing processes, the proper selection of machinery and equipment for the implementation of specific production tasks becomes an issue of particular importance. The purpose of this research was  to determine the impact of technical and non-technical factors on the material selection of machine tools for production tasks and to develop a method of supporting the selection of production resources using the AHP and Fuzzy AHP methods. The research was carried out in a manufacturing company from the automotive industry.


Keywords:

accessability, efficiency, production process, maintenance, AHP, Fuzzy AHP

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Published
2022-12-27

Cited by

WITTBRODT, P., ŁAPUŃKA, I., BAYTIKENOVA, G. ., GOLA, A., & ZAKIMOVA, A. . (2022). IDENTIFICATION OF THE IMPACT OF THE AVAILABILITY FACTOR ON THE EFFICIENCY OF PRODUCTION PROCESSES USING THE AHP AND FUZZY AHP METHODS. Applied Computer Science, 18(4), 116–129. https://doi.org/10.35784/acs-2022-32

Authors

Piotr WITTBRODT 
p.wittbrodt@po.edu.pl
Department of Management and Production Engineering, Faculty of Production Engineering and Logistics, Opole University of Technology Poland

Authors

Iwona ŁAPUŃKA 

Department of Management and Production Engineering, Faculty of Production Engineering and Logistics, Opole University of Technology Poland

Authors

Gulzhan BAYTIKENOVA 

School of Business and Entrepreneurship, D. Serikbayev East Kazakhstan Technical University Kazakhstan

Authors

Arkadiusz GOLA 

Department of Production Computerisation and Robotisation, Faculty of Mechanical Engineering, Lublin University of Technology Poland

Authors

Alfiya ZAKIMOVA 

School of Business and Entrepreneurship, D. Serikbayev East Kazakhstan Technical University, Kazakhstan

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