Internet of things data analysis methodology for hydraulic structures of hazard classes III and IV based on mathematical experiment planning

Authors

  • Kachaev Alexander Evgenievich All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga" image/svg+xml Author
  • Turapin Sergey Sergeevich All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga" image/svg+xml Author
  • Kashtanov Vasily Vasilievich All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga" image/svg+xml Author
  • Medvedeva Anna Aleksandrovna All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga" image/svg+xml Author
  • Bulgakov Dmitry Vyacheslavovich All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga" image/svg+xml Author

DOI:

https://doi.org/10.55287/22275398_2026_59_5

Keywords:

hydraulic structures, hazard class, Internet of things, mathematical experiment planning, fractional factor experiment, regression model

Abstract

This study presents a methodology for analyzing (evaluating) Internet of Things (IoT) data for hydraulic structures of hazard classes III and IV, based on mathematical experimental design for the seepage flow function. The relevance of this work stems from the need to ensure the safety of small hydraulic structures under strict budget constraints, when traditional monitoring systems with a large number of sensors are economically impractical. An approach is proposed using a fractional factorial 2k-p experiment for the optimal placement of IoT sensors, which reduces their number by 40–60% compared to a uniform grid without loss of information content. A regression model for the response function—seepage flow—is developed, including main effects and pairwise interactions of factors (water level, temperature, operating time, precipitation). The pre-emergency condition criterion is based on residual analysis with thresholds differentiated by hazard class: for class III – 2σ (pre-emergency) and 3σ (emergency), for class IV – 3σ and 4σ, respectively. Monitoring the dynamics of pairwise interaction coefficients is used as an additional diagnostic indicator. An algorithm for analyzing data obtained using IoT has been developed. The methodology can be implemented by owners of existing hydraulic structures quickly and without significant capital expenditures.

 

Author Biographies

  • Kachaev Alexander Evgenievich, All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga"

    Candidate of Technical Sciences, Researcher,

    Agricultural Water Supply Department,

    Federal State Budgetary Scientific Institution

    "All-Russian Research Institute of Irrigation

     Systems and Agricultural Water Supply "Raduga",

    Kolomna, settlement Raduzhny, Russian Federation,

    ORCID 0000-0001-6840-2477

  • Turapin Sergey Sergeevich, All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga"

    PhD (Engineering), Leading Researcher,

    Acting Director, Federal State Budgetary

    Scientific Institution "All-Russian Research

    Institute of Irrigation Systems and Agricultural

    Water Supply "Raduga",

    Kolomna, Raduzhny settlement, Russian Federation,

    ORCID 0009-0000-1198-2511

  • Kashtanov Vasily Vasilievich, All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga"

    Candidate of Technical Sciences, Leading Researcher

    at the Department of Operation

    of Hydro-Reclamation Systems and Hydraulic Structures,

    Federal State Budgetary Scientific

    Institution "All-Russian Scientific Research

    Institute of Irrigation and

    Agricultural Supply Systems "Raduga",

    Kolomna, village. Raduzhny, Russian Federation

  • Medvedeva Anna Aleksandrovna, All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga"

    Junior Researcher at the Department

    of Operation of Hydro-Reclamation Systems

    and Hydraulic Structures,

    Federal State Budgetary Budgetary Institution

    "All-Russian Scientific Research University

    Institute of Irrigation Systems and

    Agricultural water supply "Raduga",

    Kolomna, village Raduzhny, Russian Federation,

    ORCID 0009-0004-1458-8535

  • Bulgakov Dmitry Vyacheslavovich, All-Russian Scientific Research Institute of Irrigation and Agricultural Water Supply "Raduga"

    Junior Researcher at the Department

    of Operation of Hydro-Reclamation Systems

    and Hydraulic Structures, Federal State Budgetary Scientific

    Institution "All-Russian Scientific Research

    Institute of Irrigation and

    Agricultural Supply Systems "Raduga",

    Kolomna, village. Raduzhny, Russian Federation,

    ORCID 0009-0004-1745-8138

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Published

2026-06-02

Issue

Section

Construction

How to Cite

Kachaev A. E., Turapin S. S., Kashtanov V. V., Medvedeva A. A., & Bulgakov D. V. (2026). Internet of things data analysis methodology for hydraulic structures of hazard classes III and IV based on mathematical experiment planning. The System Technologies, 59, 5-14. https://doi.org/10.55287/22275398_2026_59_5