Trends and Extremes in Time Series Based on Fuzzy Logic

Author:

Agayan Sergey1ORCID,Bogoutdinov Shamil12ORCID,Kamaev Dmitriy3ORCID,Dzeboev Boris1ORCID,Dobrovolsky Michael1ORCID

Affiliation:

1. Geophysical Center of the Russian Academy of Sciences, Moscow 119296, Russia

2. Schmidt Institute of Physics of the Earth of the Russian Academy of Sciences, Moscow 123995, Russia

3. Research and Production Association “Typhoon”, Obninsk 249038, Russia

Abstract

The authors develop the theory of discrete differentiation and, on its basis, solve the problem of detecting trends in records, using the idea of the connection between trends and derivatives in classical analysis but implementing it using fuzzy logic methods. The solution to this problem is carried out by constructing fuzzy measures of the trend and extremum for a recording. The theoretical justification of the regression approach to classical differentiation in the continuous case given in this work provides an answer to the question of what discrete differentiation is, which is used in constructing fuzzy measures of the trend and extremum. The detection of trends using trend and extremum measures is more stable and of higher quality than using traditional data analysis methods, which consist in studying the intervals of constant sign of the derivative for a piecewise smooth approximation of the original record. The approach proposed by the authors, due to its implementation within the framework of fuzzy logic, is largely focused on the researcher analyzing the record and at the same time uses the idea of multiscale. The latter circumstance provides a more complete and in-depth understanding of the process behind the recording.

Funder

Ministry of Science and Higher Education of the Russian Federation

Publisher

MDPI AG

Reference38 articles.

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3. Pedrycz, W., and Smith, M.H. (1999, January 22–25). Granular correlation analysis in data mining. Proceedings of the UZZ-IEEE’99, 1999 IEEE International Fuzzy Systems, Conference Proceedings (Cat. No.99CH36315), Seoul, Republic of Korea.

4. Batyrshin, I.Z., Nedosekin, A.O., and Stetsko, A.A. (2007). Fuzzy Hybrid Systems. Theory and Practice, Fizmatlit.

5. Yarushkina, N.G. (2004). Fundamentals of the Theory of Fuzzy and Hybrid Systems, Finance and Statistics.

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