Publicado 12 números por año
ISSN Imprimir: 0040-2508
ISSN En Línea: 1943-6009
Indexed in
INTELLIGENT CLASSIFICATION OF BIOPHYSICAL SYSTEM STATES USING FUZZY INTERVAL LOGIC
SINOPSIS
The task of increasing the reliability of the adoption of classification decisions on the state of the biophysical system with fuzzy interval representations about the characteristics or properties of objects is solved. A formalized model for classifying the states of the research object is proposed. The model provides a mechanism for calculating the confidence coefficient for each situation from a defined set of space states of the system and provides an opportunity to present the investigated features of objects based on four types of membership functions, thus ensuring that the inaccuracies, fuzziness or unreliability of the available data and knowledge are eliminated. The proposed modification of the state classification method generates and evaluates several alternatives according to criteria when making classification decisions. Experimental testing of the system has been performed through software simulation, as well as costs, required for the software product development, have been calculated. The increase of the state classification reliability has been confirmed, the versatility of the proposed intellectual methods for the arbitrary set of fuzzy data has been established.
-
Yang, B. and Li, H., (2o18) A novel dynamic timed fuzzy Petri nets modeling method with applications to industrial processes, Expert Syst. Appl., 97, pp. 276-289.
-
Kucherenko, Ye.I., Filatov, V.A., Tvoroshenko, I.S., and Baidan, R.N., (2oo5) Intellectual Technologies in Decision-Making Technological Complexes Based on Fuzzy Interval Logic, East European Journal of Advanced Technologies, 2, pp. 92-96, (in Russian).
-
Gorokhovatsky, V.A. and Zamula, A.A., (2o16) Employment of Intelligent Technologies in Multiparametric Control Systems, Telecommunications and Radio Engineering, 75(17), pp. 1775-1785.
-
Avrunin, O.G., Bodiansky, Ye.V., Kalashnik, M.V., Semenets, V.V., and Filatov, V.O., (2o18) Modern Intelligent Technologies of Functional Medical Diagnostics, Kharkiv, Ukraine: KNURE, pp. 37-55, (in Ukrainian).
-
Zhang, J.H., Xia, J.J., Garibaldi, J.M., Groumpos, P.P., and Wang, R.B., (2o17) Modeling and control of operator functional state in a unified framework of fuzzy inference Petri nets, Comput. Methods Prog. Biomed., 144, pp. 147-163.
-
Cox, A. and Gifford, F., (1997) An overview of geographic information systems, Journal of Academic Librarianship, 23, pp. 449-461.
-
Egorov, A.S. and Shaykin, A.N., (2oo2) Logical modeling under uncertainty based on fuzzy interval Petri nets, News of the Russian Academy of Sciences, Theory and Control Systems, 2, pp. 134-139, (in Russian).
-
Kucherenko, Ye.I. and Tvoroshenko, I.S., (2o11) Operative evaluation of the space of states of complex distributed objects using fuzzy interval logic, Artificial Intelligence, 3, pp. 382-387, (in Ukrainian).
-
Tvoroshenko, I.S., (2oo4) Structure and functions of intelligent decision-making tools in complex systems, Artificial Intelligence, 4, pp. 462-470, (in Russian).
-
Kuzmin, E.A., (2o14) Logic of Interval Uncertainty, Modern Applied Science, 8, pp. 152-168.
-
Tvoroshenko, I.S., (2o1o) Analysis of Decision-Making Processes in Intelligent Systems, Information Processing Systems, 2, pp. 248-253, (in Russian).
-
Srinath, K.R., (2o17) Python - The Fastest Growing Programming Language, International Research Journal of Engineering and Technology, 4, pp. 354-357.
-
Rashid, B. and Rehmani, M.H., (2o16) Applications of Wireless Sensor Networks for Urban Areas: A Survey, Journal of Network and Computer Applications, 60, pp. 192-219.
-
Liu, H.C., Luan, X., Li, Z., and Wu, J., (2o18) Linguistic Petri Nets Based on Cloud Model Theory for Knowledge Representation and Reasoning, IEEE Trans. Knowl. Data Eng., 30, pp. 717-728.
-
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, Gorokhovatskyi Volodymyr, Tvoroshenko Iryna, Gadetska Svitlana, Al-Dhaifallah Mujahed, Methods of Classification of Images on the Basis of the Values of Statistical Distributions for the Composition of Structural Description Components, IEEE Access, 9, 2021. 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