Development of cognitive model for analysis of technological complex of the dairy factory

Authors

DOI:

https://doi.org/10.15587/2312-8372.2015.47974

Keywords:

fuzzy cognitive map, cognitive analysis, static modeling, diversified milk production

Abstract

The expediency of cognitive modeling approaches to research and improve the management of complex systems. Identified dairy processing facility as a complex semistructured organizing technology system. For the study of systems of this class of methods to effectively use cognitive approach based on expert assessments, qualitative methods of analysis and fuzzy inference rules.

On the basis of expert assessments, developed a fuzzy cognitive map of the complex functioning of the dairy and conducted its structural analysis. The studies prepared by the generalized static characteristics of the structure of the fuzzy cognitive map, such as consonances, dissonance and the influence of one factor on another. The findings are an initial step for the creation of an automated control system of technological complex dairy plant, and will be used to create resource management scenarios.

Author Biographies

Ольга Вікторівна Савчук, National University of Food Technologies, 68 Vladimir str., Kyiv, Ukraine, 01601

Graduate student, Assistant

Department of automation of management processes

Анатолій Петрович Ладанюк, National University of Food Technologies, 68 Vladimir str., Kyiv, Ukraine, 01601

Doctor of Technical Sciences, Professor, Head of Department

Department of automation of management processes

References

  1. Ladanyuk, A., Reshetyuk, V., Kyshenko, V., Smityuh, Y. (2014). Innovative technologies in the management of complex objects biotech agriculture. Kyiv: Center of educational literature, 280.
  2. Savchuk, О., Ladanyuk, A., Gritsenko, N. (2009). Cognitive approach to modeling and managing semistructured organizational and technological systems (situations). Eastern-European Journal Of Enterprise Technologies, 2(3(38)), 14–18. Available: http://journals.uran.ua/eejet/article/view/5888
  3. Axelrod, R. (1976). Structure of decision: The Cognitive Maps of Political Elites. Princeton, NJ: Princeton University Press, 404. doi:10.1515/9781400871957
  4. Kosko, B. (1993). Fuzzy Thinking: The New Science of Fuzzy Logic. Hyperion: Disney Books, 336.
  5. Silov, V. (1995). Strategic decision-making in a fuzzy environment. Moscow: INPRO-RES, 228.
  6. Kulinich, A. (2003). Methodology of cognitive modeling of complex ill-defined situations. Selected works of the Second International conference on governance. Moscow: ICS RAS, 219–226.
  7. Tolstova, Ju. N. (2006). Osnovy mnogomernogo shkalirovanija. M.: KDU, 160.
  8. Kozlov, L. (2001). Cognitive modeling the early stages of the project: training manual. Ed. 3. Barnaul: Altai State Technical University Publishing House, 247.
  9. Savchuk, O., Ladanyuk, A., Gerasimenko, T. (2015). Fuzzy cognitive modeling in complex systems of technological milk processing. New University of Engineering, 1–2 (35–36), 13–19.
  10. Vovk, S., Ginis, L. (2013). Modeling transitions between the reference situation in complex systems under conditions of uncertainty. Proceedings of SFU. Technical science, 2 (139), 116–122.
  11. Kulba, V., Kononov, D., Kosyachenko, S., Zaikin, O. (2002). Scenario Methodology for Investigation of Socioeconomic. Production System Design, Supply Chain Management and Logistics. Proceedings of the 9th International Multi-Conference Advanced Computer Systems 2002. Poland, 134–138.
  12. Batagelj, V., Mrvar, A. (2010). Pajek. Program for Analysis and Visualization of Large Networks Reference Manual. List of commands with short explanation. Version 1.26. Ljubljana. Available: http://www.fcmappers.net/joomla/

Published

2015-07-23

How to Cite

Савчук, О. В., & Ладанюк, А. П. (2015). Development of cognitive model for analysis of technological complex of the dairy factory. Technology Audit and Production Reserves, 4(3(24), 46–50. https://doi.org/10.15587/2312-8372.2015.47974

Issue

Section

Systems and Control Processes: Original Research