Analysis of Complex System Development Based on Fuzzy Cognitive Mapping


Authors : Siddhartha Neupane; Zinaida Avdeeva; Ganesh Bhusal; Giriraj Rawat; Bimal Shrestha; Tulasi Kattel

Volume/Issue : Volume 9 - 2024, Issue 8 - August


Google Scholar : https://tinyurl.com/yc6uctzd

Scribd : https://tinyurl.com/bdf33rd4

DOI : https://doi.org/10.38124/ijisrt/IJISRT24AUG821

Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.


Abstract : This paper aims of analysing the possible way to implement the fuzzy cognitive map in development of the complex systems. In the science community Abstract Fuzzy Cortical Maps (FCMs) tend to rise in prominence. Basically FCM are used to model the behaviour of a complex system. Some Basic algorithm and mathematical theories are also discussed alongside the characteristics of fuzzy logic and neural networks. For the case study, using the available FCM modelling tools and their algorithm, Fuzzy cognitive map for a pipeline plant has been discussed. In its operating mode, the proposed FCM Modeler Tool is presented in detail with real examples so as to understand the purpose of the tool. Next the reader can get a more complete picture of the FCM design project from Fuzzy Cognitive Maps creating and processing tools. The FCM simulation methodology is used to simulate actual systems in a case study and then to execute tests and findings demonstrating the effect of structural improvements on the condition of process efficiency in an enterprise.

Keywords : Fuzzy Cognitive Maps, FCMs, Complex System, Tools, Neural Networks, Big Data, Mathematical Theories.

References :

  1. Athanasios, D., 2017. Fuzzy Cognitive Maps In Operations Management. Graduate. UNIVERSITY OF THE AEGEAN SCHOOL OF BUSINESS.
  2. Axelrod, R. (1976). Structure of Decision: The Cognitive Maps of Political Elites. Princeton, New Jersey: Princeton University Press.
  3. Carvalho, J., 2013. On the semantics and the use of fuzzy cognitive maps and dynamic cognitive maps in social sciences. Fuzzy Sets and Systems, 214, pp.6-19.
  4. Choi, Y., Lee, H. and Irani, Z., 2018. Big data-driven fuzzy cognitive map for prioritising IT service procurement in the public sector. BIG DATA ANALYTICS IN OPERATIONS & SUPPLY CHAIN MANAGEMENT, [online] pp.80,83. Available at: [https://link.springer.com/article/10.1007/s10479-016-2281-6]
  5. Choi, Y., Lee, H. and Irani, Z., 2016. Big data-driven fuzzy cognitive map for prioritising IT service procurement in the public sector. Annals of Operations Research, 270(1-2), pp.75-104.
  6. Chytas, P., Glykas, M., & Valiris, G. (2010). Software Reliability Modelling Using Fuzzy Cognitive Maps. In M. Glykas, Fuzzy Cognitive Maps: Advances in Theory, Methodologies, Tools and Applications (pp. 217-230). Berlin, Heidelberg: Springer Verlag.
  7. Craiger, J., Goodman, D., Weiss, R. and Butler, A., 1996. Modeling organizational behavior with fuzzy cognitive maps. Internat. J. Comput. Intelligence Org., 1, pp.120-123.
  8. De Franciscis, D. (2014). JFCM: A Java Library for Fuzzy Cognitive Maps. In E. I. Papageorgiou, Fuzzy Cognitive Maps for Applied Sciences and Engineering: From Fundamentals to Extensions and Learning Algorithms (pp. 199-220). Berlin, Heidelberg: Springer Verlag.
  9. Dickerson, J. and Kosko, B., 1994. Virtual Worlds as Fuzzy Cognitive Maps. Presence: Teleoperators and Virtual Environments, 3(2), pp.173-189.
  10. Dickerson, J. A. (2005). FCModeler Dynamic Graph Display and Fuzzy Modeling Maps. In J. Gustafson, R. Shoemaker, & J. W. Snape, Genome Exploitation Data Mining the Genome (pp. 77-87). New York: Springer
  11. FCModeler site. (2017). http://home.engineering.iastate.edu/~julied/research/fcmodeler/.
  12. Furfaro, R., Kargel, J. S., Lunine, J. I., Fink, W., & Bishop, M. P. (2010). Identification of cryovolcanism on Titan using fuzzy cognitive maps. Planatery and Space Science, pp. 761-779.
  13. Glykas, M., 2010. Fuzzy Cognitive Maps: Advances in Theory, Methodologies, Tools and Applications. Springer-Verlag, [online] Available at: http: //dx.doi.org/10.1007/978- 3- 642- 03220- 2.
  14. Groumpos, P. P. (2010). Fuzzy Cognitive Maps: Basic Theories and Their Application to Complex Systems. In M. Glykas, Fuzzy Cognitive Maps: Advances in Theory, Methodologies, Tools and Applications (pp. 1-22). Berlin, Heidelberg: Springer Verlag
  15. Groumpos, P. P., & Karagiannis, I. E. (2013). Mathematical Modeling of Decision Making Support Systems Using Fuzzy Cognitive Maps. In M. Gkykas, Business Process Management (pp. 299-337). Berlin, Heidelberg: Springer Verlag
  16. Groumpos, P. P., (2018) "Overcoming Intelligently Some of the Drawbacks of Fuzzy Cognitive Maps," 2018 9th International Conference on Information, Intelligence, Systems and Applications (IISA), Zakynthos, Greece, pp. 1-6, doi: 10.1109/IISA.2018.8633622.
  17. Jang, S., Sun, C. and Mizutani, E., 1997. Neuro-Fuzzy & Soft Computing. Prentice-Hall, Englewood Cliffs, NJ,.
  18. Jose, A., & Contreras, J. (2010). The FCM Designer Tool. In M. Glykas, Fuzzy Cognitive Maps: Advances in Theory, Methodologies, Tools and Applications (pp. 71-87). Berlin, Heidelberg: Springer Verlag.
  19. Kardaras, D., & Karakostas, B. (1999). The use of fuzzy cognitive maps to simulate the information systems strategic planning process. Information and Software Technology Vol. 41, No.4, pp. 197-210.
  20. Kosko, B. (1986). Fuzzy Cognitive Maps. International Journal of Man-Machine Studies 24, pp. 65-75.
  21. Kosko, B., (1992). Neural Networks And Fuzzy Systems. Prentice-Hall, Englewood Cliffs.
  22. Kosko, B., 1993. Adaptive inference in fuzzy knowledge networks, in: Readings in Fuzzy Sets for Intelligent Systems. Elsevier, [online] pp.888–891. Available at: http: //dx.doi.org/10.1016/B978- 1- 4832- 1450- 4.50093- 6.
  23. Kosko, B., 1992. Neural Networks and Fuzzy Systems: A Dynamical Systems Approach to Machine Intelligence,. Prentice-Hall, Inc,.
  24. Kosko, B., 1993. Fuzzy thinking: the new science of fuzzy logic. Choice Reviews Online, 31(04), pp.31-2050-31-2050.
  25. Lai, X., Zhou, Y., & Zhang, W. (2009). Software Usability Improvement: Modeling, Training and Relativity Analysis. Proceeding 2nd International Symp. On Information Science and Engineering ISISE, art. no. 5447282, (pp. 472-475).
  26. Lin, C. T., & Lee, C. G. (1996). Neural Fuzzy Systems: A Neuro-Fuzzy Synergism to Intelligent Systems. Upper Saddle River, NJ, USA: Prentice Hall.
  27. Lo Storto, C. (2010). Assesing ambiguity tolerance in staffing software development teams by analysing cognitive maps of engineers and technical managers. 2nd International Conference on Engineering System Management and Applications, ICESMA 2010. Sharjah, United Arab Emirates: IEEE.
  28. Luo, X., Wei, X., & Zhang, J. (2009). Game-based Learning Model Using Fuzzy Cognitive Map. Proceeding MTDL '09 Proceedings of the first ACM international workshop on Multimedia technologies for distance learning ISBN: 978-1-60558-757-8, (pp. 67-76). Beijing, China.
  29. Mayer, F., Morel, G., Lung, B. and Leger, J., 1996. Integrated manufacturing system meta- modelling at the shop-floor level,\. Proc. of Advanced Summer Institute ASI’96, pp.232-239.
  30. Nair, A., Reckien, D. and Maarseveen, M., 2019. A generalised fuzzy cognitive mapping approach for modelling complex systems. Elsevier, [online] p.2. Available at: https://doi.org/10.1016/j.asoc.2019.105754
  31. Nie, J., & Linkens, D. (1995). Fuzzy-Neural Control: principles, algorithms and applications. Herdfordshire, UK: Prentice Hall Europe.
  32. Nápoles, G., Espinosa, M., Grau, I. and Vanhoof, K., 2018. FCM Expert: Software Tool for Scenario Analysis and Pattern Classification Based on Fuzzy Cognitive Maps. International Journal on Artificial Intelligence Tools, 27(07), p.1860010.
  33. Pandey, P., & Litoriya, R. (2020). Fuzzy Cognitive Mapping Analysis to Recommend Machine Learning-Based Effort Estimation Technique for Web Applications. International Journal of Fuzzy Systems. doi:10.1007/s40815-020-00815-y 
  34. Papageorgiou, E. I., Stylios, C. D., & Groumpos, P. P. (2006, August). Unsupervised learning techniques for fine-tuning Fuzzy Cognitive Map causal links. International Journal of Human-Computer Studies Vol.64, No.1, pp. 727-743.
  35. Papageorgiou, E. I. (2011). Review study on Fuzzy Cognitive Maps and their applications during the last decade. Fuzzy Systems (FUZZ), 2011 IEEE
  36. International Conference on Fuzzy Systems (pp. 828-835). June 27-30, Taipei,
  37. Taiwan: IEEE.
  38. Rodriguez-Repiso, L., Setchi, R., & Salmeron, J. R. (2007). Modeling IT Project Success with Fuzzy Cognitive Maps. Expert Systems with Applications Vol.32, No.2, pp. 543-559.
  39. Salmeron, J. L. (2010). Fuzzy Cognitive Maps-Based IT Projects Risks Scenarios. In M. Glykas, Fuzzy Cognitive Maps: Advances In Theory, Methodologies, Tools and Applications (pp. 201-215). Berlin, Heidelberg: Springer Verlag.
  40. Stylios, C. D., & Groumpos, P. P. (1998). The Challenge of modeling Supervisory Systems using Fuzzy Cognitive Maps. Journal of Intelligent Manufacturing Vol. 9, No. 4, pp. 339-345.
  41. Stylios, C. and Groumpos, P., 1999. A Soft Computing Approach for Modelling the Supervisor of Manufacturing Systems. Journal of Intelligent and Robotic Systems,.
  42. Stylios, C. D., & Groumpos, P. P. (2004, January 14). Modeling Complex Systems using Fuzzy Cognitive Maps. IEEE Transactions on Systems, Man, and Cybernetics-Part A: Systems and Humans Vol. 34, No. 1, pp. 155-162.
  43. Xirogiannis, G., Glykas, M., & Staikouras, C. (2010). Fuzzy Cognitive Maps in Banking Business Process Performance Measurement. In M. Glykas, Fuzzy Cognitive Maps: Advances in Theory, Methodologies, Tools and Applications (pp. 161-200). Berlin, Heidelberg: Springer Verlag.
  44. Zadeh, L. A. (1965, June). Fuzzy Sets. Information and Control Vol. 8, No. 3, pp. 338-353.

This paper aims of analysing the possible way to implement the fuzzy cognitive map in development of the complex systems. In the science community Abstract Fuzzy Cortical Maps (FCMs) tend to rise in prominence. Basically FCM are used to model the behaviour of a complex system. Some Basic algorithm and mathematical theories are also discussed alongside the characteristics of fuzzy logic and neural networks. For the case study, using the available FCM modelling tools and their algorithm, Fuzzy cognitive map for a pipeline plant has been discussed. In its operating mode, the proposed FCM Modeler Tool is presented in detail with real examples so as to understand the purpose of the tool. Next the reader can get a more complete picture of the FCM design project from Fuzzy Cognitive Maps creating and processing tools. The FCM simulation methodology is used to simulate actual systems in a case study and then to execute tests and findings demonstrating the effect of structural improvements on the condition of process efficiency in an enterprise.

Keywords : Fuzzy Cognitive Maps, FCMs, Complex System, Tools, Neural Networks, Big Data, Mathematical Theories.

Never miss an update from Papermashup

Get notified about the latest tutorials and downloads.

Subscribe by Email

Get alerts directly into your inbox after each post and stay updated.
Subscribe
OR

Subscribe by RSS

Add our RSS to your feedreader to get regular updates from us.
Subscribe