|
ABSTRACTS OF ARTICLES OF THE JOURNAL "INFORMATION TECHNOLOGIES".
No. 9. Vol. 29. 2023
DOI: 10.17587/it.29.467-472
V. V. Semenov, Ph.D., Senior Research Scientist,
St. Petersburg Federal Research Center of the Russian Academy of Sciences, St. Petersburg, Russian Federation
The Method of Forming Informative Features in Tasks of Quantitative Analysis of Objects
The method of forming informative features in tasks of quantitative analysis of objects was proposed. The developed method was tested on the data array obtained during the experiment on real industrial samples. As a result of the application of the developed method, due to the formation of a unique feature space, it was possible to significantly reduce the root-mean-square error of prediction compared to the results previously published in the scientific literature. The described approach can be applied in the manufacturing of "Industry 4.0" in order to identify sources that carry information about the parameters of objects or individual technological processes.
Keywords: formation of informative features, multivariate data processing, time series, quantitative analysis
P.
467-472
References
- Zegzhda D. P., Vasilev U. S., Poltavtseva M. A., Kefele I. F., Borovkov A. I. Advanced production technologes security in the era of digital transformation, Cybersecurity issues, 2018, no. 2 (26), pp. 215, DOI: 10.21681/2311-3456-2018-2-2-15 (in Russian).
- Semenov V. V., Sukhoparov M. E., Lebedev I. S. Approach to Side Channel-Based Cybersecurity Monitoring for Autonomous Unmanned Objects, Lecture Notes in Computer Science, 2019, vol. 11659, pp. 278286, DOI: 10.1007/978-3-030-26118-4_27.
- Vodyaho ΐ . I., Osipov V. Y., Zhukova N. A., Chervontsev Μ . ΐ . Cognitive technologies in monitoring management, Nauchno-tekhnicheskaya informaciya. Seriya 2. Informacionnye processy i sistemy, 2019, no. 4, pp. 112 (in Russian).
- Semenov V. V., Sukhoparov M. E., Lebedev I. S. Approach to the State Analysis of Industry 4.0 Nodes Based on Behavioral Patterns, Lecture Notes in Computer Science, 2020, vol. 12336, pp. 273282, DOI: 10.1007/978-3-030-60337-3_27.
- Wold S., Esbensen K., Geladi P. Principal component analysis, Chemom. Intell. Lab. Syst, 1987, vol. 2 (13), pp. 3752, DOI: 10.1016/0169-7439(87)80084-9.
- Meleshko A. V., Desnitsky V. A., Kotenko I. V. Machine learning based approach to detection of anomalous data from sensors in cyber-physical water supply systems, IOP Conference Series: Materials Science and Engineering, 2020, vol. 709, pp. 033034, DOI: 10.1088/1757-899X/709/3/033034.
- Medvednikova M. M. Using the method of principal components in the construction of integral indicators, Mashinnoe obuchenie i analiz dannyh, 2012, vol. 1 (3), pp. 292304 (in Russian).
- Zissis D., Lekkas D. Addressing cloud computing security issues, Future Generation computer systems, 2012, vol. 28 (3), pp. 583592, DOI: 10.1016/j.future.2010.12.006.
- Semenov V., Sukhoparov M., Lebedev I. An Approach to Classification of the Information Security State of Elements of Cyber-Physical Systems Using Side Electromagnetic Radiation, Lecture Notes in Computer Science, 2018, vol. 11118, pp. 289298, DOI: 10.1007/978-3-030-01168-0_27.
- Mirkes E., Allohibi J, Gorban A. Fractional Norms and Quasinorms Do Not Help to Overcome the Curse of Dimensionality, Entropy, 2020, vol. 22 (10), DOI: 10.3390/e22101105.
- Vlasov Yu.G., Bychkov E. A., Legin A. V. Chalcogenide glass chemical sensors: Research and analytical applications, Talanta, 1994, vol. 41 (6), pp. 10591063, DOI: 10.1016/0039-9140(94)00124-3.
- Semenov V., Volkov S., Khaydukova M., Fedorov A., Lisitsyna I., Kirsanov D., Legin A. Determination of three quality parameters in vegetable oils using potentiometric e-tongue, Journal o/Food Composition and Analysis, 2019, vol. 75, pp. 7580, DOI: 10.1016/j.jfca.2018.09.015.
- Gromadzka J., Wardencki W. Trends in edible vegetable oils analysis. Part A. Determination of different components of edible oils a review, Polish J. Food Nutr. Sci., 2011, vol. 61 (1), pp. 3343, DOI: 10.2478/v10222-011-0002-z.
- Geladi P., Kowalski B. R. Partial least-squares regression: a tutorial, Anal. Chim. Acta, 1986, vol. 185, pp. 117, DOI: 10.1016/0003-2670(86)80028-9.
- Bishop C. M. Pattern Recognition and Machine Learning, Information Science and Statistics, 2006, Springer, NY, USA.
To the contents
|
|