Causes (diagnoses) are retrieved and identified using observed effects (symptoms) based on fuzzy relations and Zadeh’s compositional rule of inference. An approach to designing adaptive fuzzy diagnostic systems is proposed. It allows solving fuzzy logic equations and designing and adjusting fuzzy relations using expert and experimental information.
Article PDF
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Avoid common mistakes on your manuscript.
References
L. A. Zadeh, “The concept of a linguistic variable and its application to approximate reasoning,” Information Sciences, 8, No. 3, 199–249 (Part I); 8, No. 4, 301–357 (Part II); 9, No. 1, 43–80 (Part III) (1975).
T. Terano, K. Asai, and M. Sugeno (eds.), Applied Fuzzy Systems, Academic Press Professional, Boston, MA (1994).
A. Di Nola, S. Sessa, W. Pedrycz, and E. Sanchez, Fuzzy Relation Equations and Their Applications to Knowledge Engineering, Kluwer Academic Press, Dordrecht (1989).
A. P. Rotshtein and A. B. Rakityanskaya, “Solution of a diagnostics problem on the basis of fuzzy relations and a genetic algorithm,” Cybern. Syst. Analysis, 37, No. 6, 918–925 (2001).
A. B. Rakityanskaya and A. P. Rotshtein, “Fuzzy relation-based diagnosis,” Autom. Remote Control, 68, No. 12, 2198–2213 (2007).
A. Rotshtein and H. Rakytyanska, “Diagnosis problem solving using fuzzy relations,” IEEE Trans. Fuzzy Systems, 16, No. 3, 664–675 (2008).
L. Chen and P. P. Wang, “Fuzzy relation equations. I: The general and specialized solving algorithms,” Soft Computing, 6, 428–435 (2002).
L. Chen and P. P. Wang, “Fuzzy relation equations. II: The branch-point-solutions and the categorized minimal solutions,” Soft Computing, 11, 33–40 (2007).
B.-S. Shieh, “Deriving minimal solutions for fuzzy relation equations with max-product composition,” Information Sciences, 178, No. 19, 3766–3774 (2008).
M. Gen and R. Cheng, Genetic Algorithms and Engineering Design, John Wiley & Sons, New York (1997).
A. Rotshtein, “Design and tuning of fuzzy rule-based systems for medical diagnosis,” in: N.-H. Teodorescu, A. Kandel, and L. Gain (eds.), Fuzzy and Neuro-Fuzzy Systems in Medicine, CRC Press, Boca-Raton (1998), pp. 243–289.
A. P. Rotshtein and D. I. Katel’nikov, “Identification of nonlinear objects by fuzzy knowledge bases,” Cybern. Syst. Analysis, 34, No. 5, 676–683 (1998).
A. P. Rotshtein, E. E. Loiko, and D. I. Katel’nikov, “Prediction of the number of diseases on the basis of expert-linguistic information,” Cybern. Syst. Analysis, 35, No. 2, 335–353 (1999).
A. P. Rotshtein and Yu. I. Mityushkin, “Neurolinguistic identification of nonlinear dependences,” Cybern. Syst. Analysis, 36, No. 2, 179–187 (2000).
A. P. Rotshtein and Yu. I. Mityushkin, “Extraction of fuzzy knowledge bases from experimental data by genetic algorithms,” Cybern. Syst. Analysis, 37, No. 4, 501–509 (2001).
A. Rotshtein, M. Posner, and H. Rakytyanska, “Fuzzy IF-THEN rules extraction for medical diagnosis using genetic algorithm,” WSEAS Trans. on Systems, 2, No. 3, 995–1001 (2004).
A. P. Rotshtein and H. B. Rakytyanska, “A fuzzy prediction model with genetic–neural adjustment,” Izv. RAN, Theory and Control Systems, No. 1, 110–119 (2005).
Ya. Z. Tsypkin, Fundamentals of the Information Theory of Identification [in Russian], Nauka, Moscow (1984).
Author information
Authors and Affiliations
Corresponding author
Additional information
Translated from Kibernetika i Sistemnyi Analiz, No. 4, pp. 135–150, July–August 2009.
Rights and permissions
About this article
Cite this article
Rotshtein, A.P., Rakytyanska, H.B. Adaptive diagnostic system based on fuzzy relations. Cybern Syst Anal 45, 623–637 (2009). https://doi.org/10.1007/s10559-009-9130-4
Received:
Revised:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s10559-009-9130-4