SOFTWARE-ALGORITHMIC COMPLEX OF FORECASTING THE DYNAMICS OF ARCTIC LAKES IN RUSSIA BASED ON SATELLITE IMAGES AND ENTROPY-RANDOMIZED APPROACH

Authors

  • Eugeniy S. Sokol Author
  • Aleksandr A. Togachev Author
  • Aleksey Yu. Popkov Author
  • Yury A. Dubnov Author
  • Vladimir Yu. Polishchuk Author
  • Yuri S. Popkov Author
  • Andrey V. Melnikov Author
  • Yury M. Polishchuk Author

Abstract

The article is devoted to the problem of predicting the evolution of thermokarst lakes in permafrost zones as intensive sources of natural emissions of greenhouse gases into the atmosphere in the Arctic territories. Goal of the work. The purpose of the work was to consider the issues of creating a software-algorithmic complex for predicting the spatio-temporal dynamics of lakes in the Russian Arctic based on methods and algorithms of randomized machine learning. Materials and methods. For forecasting, time series of satellite measurements of the areas of thermokarst lakes in the Arctic zone of Russia and data on the average annual temperature and annual precipitation obtained on the basis of the ERA-5, ERA-Interim, etc. reanalysis systems are used for forecasting. Methods of entropy-randomized dynamics modeling are used fields of thermokarst lakes, allowing to predict changes in the areas of lakes in the Arctic zone. For the software implementation of a complex for predicting the evolution of the area of thermokarst lakes, modern geographic information systems are used. Results. The architecture of the software-algorithmic complex has been developed, based on the use of entropy-randomized modeling algorithms. The software-algorithmic forecasting complex makes it possible to train and test the model based on available historical data on the dynamics of the area of thermokarst lakes and climate changes in the Russian Arctic. Conclusion. The implementation of a software package based on the NextGIS Web geographic information system allows you to include forecasting applications in Python. The developed software package can be used in assessing and forecasting the dynamics of greenhouse gas emissions from lakes, which influence changes in air temperature in the northern regions.

Author Biographies

  • Eugeniy S. Sokol
    Head of the Information Systems Department, Leading Specialist, Ugra Research Institute of Information Technologies, Khanty-Mansiysk, Russia
  • Aleksandr A. Togachev
    Chief specialist of the Space Service Center, Ugra Research Institute of Information Technologies, Khanty-Mansiysk, Russia
  • Aleksey Yu. Popkov
    Cand. Sci. (Eng.), Senior researcher, Federal Research Center Computer Science and Control of the Russian Academy of Sciences, Moscow, Russia
  • Yury A. Dubnov
    Researcher, Federal Research Center Computer Science and Control of the Russian Academy of Sciences, Moscow, Russia; National Research University Higher School of Economics, Moscow, Russia
  • Vladimir Yu. Polishchuk
    Cand. Sci. (Eng.), Researcher of the Geoinformation Technologies Department, Institute of Monitoring of Climatic and Ecological Systems of the Siberian Branch of the Russian Academy of Sciences, Tomsk, Russia
  • Yuri S. Popkov
    Dr. Sci. (Eng.), Prof., RAS Academician, Principal researcher, Federal Research Center Computer Science and Control of the Russian Academy of Sciences, Moscow, Russia; V.A. Trapeznikov Institute of Control Sciences of Russian Academy of Sciences, Moscow, Russia
  • Andrey V. Melnikov
    Dr. Sci. (Eng.), Prof., Director, Ugra Research Institute of Information Technologies, Khanty-Mansiysk, Russia
  • Yury M. Polishchuk
    Dr. Sci. (Phys. and Math.), Prof., Principal researcher of the Space Service Center, Ugra Research Institute of Information Technologies, Khanty-Mansiysk, Russia

Published

2023-11-10

Issue

Section

Informatics and Computer Engineering