APPLICATION OF USER INTERFACE FUZZY LOGIC TOOLBOX FOR QUALITY CONTROL OF PRODUCTS AND SERVICES
Main Article Content
Abstract
In this work, the solution for the quality control of products and services is illustrated for the first time on examples of wine production and the provision of educational services in the university by creating a heuristic analyzer based on the Fuzzy Logic Toolbox interface of the Matlab program. There were also considered the problems of constructing quality control models with fuzzy logic for solving problems arising in cases when it is not possible to use classical statistical methods. The factors influencing the quality of products, in particular wine, and services on the example of providing education are analyzed, the possibility of using the fuzzy logic apparatus for determining the weight contribution of factors that ensure maximum quality is proved. Computer simulation using the Mamdani algorithm is performed, which consists of fuzzification with the definition of ranges of change of input values for each example, assigning the distribution functions for each input parameter; calculation of the rules, based on the adequacy of the model; defuzzification with the transition from linguistic terms to quantitative evaluation; graphical construction of the response surface using a centroid method with determination of the center of gravity of the response surface. The modeling has confirmed that the creation of a heuristic analyzer for determining the quality of wine and the quality of education is appropriate and necessary for preventing the production of substandard products and the provision of substandard services.
Article Details
References
Zadeh, L.A. (1965), “Fuzzy sets”, Information and Control, vol. 8 (3), pp. 338–353.
Zadeh, L.A. (1996), “Fuzzy logic – computing with words”, IEEE Transactions on Fuzzy Systems, vol. 4, is. 2, рр. 103–111.
Zadeh, L.A. (1971), “Similarity relations and fuzzy orderings”, Information sciences, vol. 3, pp. 177–200, DOI:
https://doi.org/10.1016/S0020-0255(71)80005-1.
Mendel, Jerry M. and Mouzouris, George C. (1977), “Designing fuzzy logic systems”, IEEE Transactions on circuits and systems, vol. 44, р. 11.
Mendel, J.M. and Wang, L. (1992), “Fuzzy Basis Functions, Universal Approximation, and Orthogonal Least Squares Learning”, IEEE Trans. on Neural Networks, vol. 3, рр. 807–814.
Wu, H. and Mendel, J.M. (2004), “On Choosing Models for Linguistic Connector Words for Mamdani Fuzzy Logic Systems”, IEEE Trans. on Fuzzy Systems, vol. 12, рр. 29–44.
Mamdani. E.H. (1974), “Application of fuzzy algorithms for the control of a simple dynamic plant”, Proc. IEEE-1974, рр. 121–159.
Mochammad Iswan Perangin-Angin, Andre Hasudungan Lubis, Imelda, Sri Dumayanti, Raheliya Br. Ginting and Andysah Putera Utama Siahaan (2017), “Implementation of Fuzzy Tsukamoto Algorithm in Determining Work Feasibility”, Journal of Computer Engineering (IOSR-JCE), vol. 19, issue 4, ver. IV, pp. 52–55.
Michio, Sugeno (1983), “Tomohiro Takagi. Multidimensional fuzzy reasoning”, Fuzzy Sets and Systems, vol. 9 (1),
pp. 313-325.
Larsen, H.L. and Yager R.R. (2000), “A framework for fuzzy recognition technology”, IEEE Transactions on Systems, Man and Cybernetics, Part C (Applications and Reviews), vol. 30, issue 1, pp. 65–76.
Shtovba, S.D. (2007), Designing fuzzy systems using MATLAB, Gorjachaja linija – Telekom, Moscow, 288 p. (in Russian).
Leonenkov, A.V. (2005), Fuzzy modeling in MATLAB and fuzzyTECH, BHV-Peterburg, Sankt-Peterburg, 736 p.
Yuб Zhang, Junб Chen, Chrisб Bingham and Mahdi, Mahfouf (2014), “A new adaptive Mamdani-type fuzzy modeling strategy for industrial gas turbines”, IEEE International Conference on Fuzzy Systems (FUZZ-IEEE), 6-11 July 2014, Milan, Italy, available at: http://bwbooks.net/index.php?id1=4&category=comp-lit&author=leolenkov-av&book=2005
Hrihorenko, I.V., Hrihorenko, S.M. and Gavrylenko, S.Yu. (2017), “Investigation of the possibilities of using the fuzzy-logic apparatus in measuring and classifying defects in metal tubes”, Ukrainian Metrological Journal, vol. 2, рр. 42–49.
Hrihorenko, I. V. and Hrihorenko S.M. (2017), “Investigation of the influence of external and internal factors on the error in detecting defects in metal products thanks to the fuzzy-logic apparatus”, Metrologiya ta priladi, vol. 3 (65), рр. 44–48.
Hrihorenko, I.V., Hrihorenko, S.M. and Bezborodyj, Ye.A. (2018), “Using fuzzy logic to control accuracy and improve product quality”, Metrologiya ta priladi, vol. 3 (71), рр. 52–57. (in Ukrainian).
Asai, K., Vatada, D., Ivai S., Terano, T., Asai, K. and Sugeno M. (1993), Applied fuzzy systems, trans. with Japan, Mir, Moscow, 368 p. (in Russian).
Sankar, Ganesh S., Bhargav, Reddy N., Arulmozhivarman, P. (2017), “Forecasting air quality index based on Mamdani fuzzy inference system”, 2017 International Conference on Trends in Electronics and Informatics (ICEI), 11–12 May 2017, Tirunelveli, India.