Abstract:
A considerable number of failures in the system of interval control of train traffic are associated with the impact of disturbing actions in a wide range of change in the only informative feature characterizing the rail lines states. In the paper, it is proposed to determine the state of the control object by the principles of the pattern recognition with multivariate informative features. It is suggested to use as the features the voltages and currents at the input and output of a quadripole, and as a polynomial of the decisive function — the Hermit’s orthogonal polynomial, which allows increasing the depth of recognition and ensuring the relative invariance of disturbing actions by amplifying the order and dimension. In recognition of the rail lines states the relative error of calculating class boundaries by decisive functions is used as a quality criterion.
Serviceability of the proposed method is demonstrated by the results of rail lines states recognition with a "trained" decisive function.
Keywords:
classifier of states; decisive function; multivariate features.
Bibliographic databases:
Document Type:
Article
UDC:
656.25
Language: Russian
Citation:
D. V. Zheleznov, E. M. Tarasov, A. G. Isaycheva, T. I. Mikheeva, “Development of the learning classifier of rail lines states with multivariate informative features”, Tr. SPIIRAN, 50 (2017), 32–54
Linking options:
https://www.mathnet.ru/eng/trspy926
https://www.mathnet.ru/eng/trspy/v50/p32
This publication is cited in the following 3 articles:
E. M. Tarasov, N. N. Vasin, A. E. Tarasova, THE 6TH INTERNATIONAL CONFERENCE ON ENERGY, ENVIRONMENT, EPIDEMIOLOGY AND INFORMATION SYSTEM (ICENIS) 2021: Topic of Energy, Environment, Epidemiology, and Information System, 2683, THE 6TH INTERNATIONAL CONFERENCE ON ENERGY, ENVIRONMENT, EPIDEMIOLOGY AND INFORMATION SYSTEM (ICENIS) 2021: Topic of Energy, Environment, Epidemiology, and Information System, 2023, 030005
Evgeny M. Tarasov, Anna E. Tarasova, “Automated Train Coordinate Determination System with Self-Tuning of the Decision Function”, Engineering Technologies and Systems, 32:3 (2022), 437
Igor N. Kravchenko, Yri S. Migachev, Yury A. Kuznetsov, Alexandr M. Davydkin, Mikhail N. Erofeev, “Studying the Influence of the Technical Performance Complexity and the Nomenclature and Quantitative Composition of Agricultural Machinery on Its Recyclability Rate”, Engineering Technologies and Systems, 30:4 (2020), 683