Application of intelligent data analysis methods to the problem of predicting the results of industrial testing of structural elements based on tensometry data

E.E. Istratova, A.N. Kozhevnikov, P.V. Lastochkin, E.V. Glinin

Abstract


The article presents the results of a study of three intelligent data analysis methods for solving the problem of predicting the results of industrial testing of structural elements according to strain gauge data. As an object of study, an I-beam was considered, for which a series of experiments was carried out with loading and recording the values of its stress-strain state. The obtained experimental values were used to study and predict the strength in real time. The scientific novelty of the work lies in the proposal of both the author's method for predicting the stress-strain state of the beam depending on the environmental parameters, and a tool based on the use of data mining methods. As a result of the work, an information system was implemented, a distinctive feature of which is the ability to quickly process large amounts of experimental, that is, raw data in real time, which is achieved through the use of data mining methods. In the course of the work, environmental parameters were identified and analyzed both from the side of the stand and from the side of the microclimate, which affect the accuracy of measurements. Due to this, experimental data can be corrected at any time when certain characteristics change.

Full Text:

PDF (Russian)

References


Dyadichev V.V. Tasks and methods of data mining / V.V. Dyadichev, E.V. Chamomile, T.V. Golub // Geopolitics and eco-geodynamics of regions. - 2021. - T. 1. - № 3. - S. 23-29.

Spas K.V. Data analysis and intelligent systems / K.V. Spas, A.D. Azernikov, K.A. Chicherov // Science Alley. - 2018. - T. 1. - № 5. - S. 234-239.

Safin S.O. Problems of analysis and processing of Big Data based on the use of the Data Mining method / S.O. Safin // Proceedings of the XVI All-Russian Youth Scientific Conference. - Ufa, 2022. - S. 701-712.

Prokhodsky D.V. Methods and stages of Data Mining / D.V. Prokhodsky, A.S. Mushroom // Student Bulletin. - 2020. - № 16-9. – S. 8-9.

Smolina E.M. Benefits of using data mining methods in education / E.M. Smolina, L.V. Chernenkaya // System analysis in design and management. - 2021. - T. 25. - № 1. - S. 537-542.

Gubchenko N.O. Methods of data mining: types and their visualization (Data Mining) / N.O. Gubchenko, V.A. Sorokina // Innovative approaches in modern science. - 2021. - S. 68-74.

Semenov V.A. Analysis of methods and tasks of data mining / V.A. Semenov, M.M. Semenova, L.V. Myznikova // Information technologies, system analysis and management (ITSAU-2021). - 2021. - S. 209-212.

Antonov G.V. Linear regression as one of the methods of statistical research / G.V. Antonov, S.I. Ivanov // Proceedings of the Velikie Luki State Agricultural Academy. - 2021. - № 2. - S. 64-75.

Suleymanova A.N. Overview of the development of decision tree algorithms / A.N. Suleimanova // Sociology: methodology, methods, mathematical modeling. - 2020. - № 50-51. - S. 64-97.

Gasimov K.N. Support vector method / K.N. Gasimov // Development of science in the modern world. - 2017. - № 3. - S. 53-55.

Kolenteev N.Ya. Coefficients of correlation and determination / N.Ya. Kolenteev, O.A. Goncharova // Special equipment and transport technologies. - 2022. - № 1. - S. 206-212.

Pichugin O.N. Decision trees as an effective method of analysis and forecasting / O.N. Pichugin, Yu.Z. Prokofiev, D.M. Aleksandrov // Oilfield business. - 2021. - № 11. - S. 69-75.

Zakharova O.I. Decision trees and algorithms for their construction / O.I. Zakharova, E.S. Artyushkina, S.V. Kholopov // Eurasian Scientific Association. - 2020. - № 4-2. – S. 97-99.

Kuvaiskova Yu.E. Statistical forecasting methods: textbook // Yu.E. Kuvaiskova, V.N. Klyachkin. - Ulyanovsk: UlGTU, 2019. - 197 p.

Vyugin V.V. "Mathematical foundations of the theory of machine learning and forecasting" M.: 2022 - 387 p.

Omarova Sh.E. Comparative analysis of Data Mining tools / Sh.E. Omarova, A.M. Medeubaeva // Notes of a scientist. - 2020. - № 11. - S. 185-193.


Refbacks

  • There are currently no refbacks.


Abava  Кибербезопасность MoNeTec 2024

ISSN: 2307-8162