Published 12 issues per year
ISSN Print: 0040-2508
ISSN Online: 1943-6009
Indexed in
EFFECTIVE TUNING OF MEMBERSHIP FUNCTION PARAMETERS IN FUZZY SYSTEMS BASED ON MULTI-VALUED INTERVAL LOGIC
ABSTRACT
The problem of increasing the efficiency of decision making regarding the state of a biophysical object is solved with the use of the computing intelligence apparatus. The architecture of the tools is proposed, which is based on the principles of an advanced method of tuning the parameters of the membership function, taking into account the uncertainty or lack of data, as well as the features and limitations of the subject area of application. The developed tools make it possible to generate and evaluate several alternatives in the solution space, to treat contradictions in the registered data. Software applications for setting the parameters of membership functions with the introduction in the medical field have been developed by means of object-oriented programming. Laboratory operation of the proposed tools confirmed the increase in the reliability of decision-making up to 20%.
-
Kwak, S.I., and et al., (2019) A fuzzy reasoning method based on compensating operation and its application to fuzzy systems, Iranian Journal of Fuzzy Systems, 16(3), pp. 17-34.
-
Aghaeipoor, F., and Javidi, M.M., (2019) On the influence of using fuzzy extensions in linguistic fuzzy rule-based regression systems, Applied Soft Computing, 79, pp. 283-299.
-
Gorokhovatskiy, V.A., and Zamula, A.A., (2016) Employment of Intelligent Technologies in Multiparametric Control Systems, Telecommunications and Radio Engineering, 75(19), pp. 1775-1785.
-
Mukhamedieva, D.T., and Begimov, O.M., (2018) Methods and Algorithms of Fuzzy Models Construction Assessing the State of the Low-Formalized Processes, International Journal of Applied Engineering Research, 13(6), pp. 4364-4372.
-
Nair, A. and Dreyfus, D., (2018) Technology alignment in the presence of regulatory changes: The case of meaningful use of information technology in healthcare, International journal of medical informatics, 110, pp. 42-51.
-
Tvoroshenko, I.S., and Gorokhovatsky, V.O., (2019) Intelligent classification of biophysical system states using fuzzy interval logic, Telecommunications and Radio Engineering, 78(14), pp. 1303-1315.
-
Pourjavad, E., and Mayorga, R.V., (2019) A comparative study and measuring performance of manufacturing systems with Mamdani fuzzy inference system, Journal of Intelligent Manufacturing, 30(3), pp. 1085-1097.
-
Ahmad, M. Ayaz, Tvoroshenko, I., Baker, Jalal Hasan, and Lyashenko V., (2019) Computational Complexity of the Accessory Function Setting Mechanism in Fuzzy Intellectual Systems, International Journal of Advanced Trends in Computer Science and Engineering, 8(5), pp. 2370-2377.
-
Ahmad, M. Ayaz, Tvoroshenko, I., Baker, Jalal Hasan, and Lyashenko, V., (2019) Modeling the Structure of Intellectual Means of Decision-Making Using a System-Oriented NFO Approach, International Journal of Emerging Trends in Engineering Research, 7(11), pp. 460-465.
-
Matarneh, Rami, Tvoroshenko, I., and Lyashenko, V., (2019) Improving Fuzzy Network Models For the Analysis of Dynamic Interacting Processes in the State Space, International Journal of Recent Technology and Engineering, 8(4), pp. 1687-1693.
-
Maciel, L. and Ballini, R., (2019) A fuzzy inference system modeling approach for interval-valued symbolic data forecasting, Knowledge-Based Systems, 164, pp. 139-149.
-
Lam, H.K., (2018) A review on stability analysis of continuous-time fuzzy-model-based control systems: From membership-function-independent to membership-function-dependent analysis, Engineering Applications of Artificial Intelligence, 67, pp. 390-408.
-
Voskoglou, M.G., (2019) Multi-Valued Logics: A Review, International Journal of Applications of Fuzzy Sets and Artificial Intelligence, 9, pp. 5-12.
-
Olivas, F., and et al., (2019) Interval type-2 fuzzy logic for dynamic parameter adaptation in a modified gravitational search algorithm, Information Sciences, 476, pp. 159-175.
-
Gorokhovatskiy, V.A., Vechirska, I.D., and Chetverikov, G.G., (2016) Method for building of logical data transform in the problem of establishing links between the objects in intellectual telecommunication systems, Telecommunications and Radio Engineering, 75(18), pp. 1645-1655.
-
Wu, D., and Mendel, J.M., (2019) Recommendations on designing practical interval type-2 fuzzy systems, Engineering Applications of Artificial Intelligence, 85, pp. 182-193.
-
Johnson, Kipp W. et al., (2018) Artificial intelligence in cardiology, Journal of the American College of Cardiology, 71(23), pp. 2668-2679.
-
Daradkeh Yousef Ibrahim, Tvoroshenko Iryna, Application of an Improved Formal Model of the Hybrid Development of Ontologies in Complex Information Systems, Applied Sciences, 10, 19, 2020. Crossref
-
Daradkeh Yousef Ibrahim, Tvoroshenko Iryna, Gorokhovatskyi Volodymyr, Latiff Liza Abdul, Ahmad Norulhusna, Development of Effective Methods for Structural Image Recognition Using the Principles of Data Granulation and Apparatus of Fuzzy Logic, IEEE Access, 9, 2021. Crossref