Randomized Machine Learning Algorithms to Forecast the Evolution of Thermokarst Lakes Area in Permafrost Zones
- 作者: Dubnov Y.A1,2, Popkov A.Y.1, Polishchuk V.Y.3, Sokol E.S4, Mel'nikov A.V4, Polishchuk Y.M4, Popkov Y.S1
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隶属关系:
- Federal Research Center “Computer Science and Control,” Russian Academy of Science
- National Research University Higher School of Economics
- Institute of Monitoring of Climatic and Ecological Systems, Siberian Branch, Russian Academy of Sciences
- Yugra Research Institute of Information Technologie
- 期: 编号 1 (2023)
- 页面: 98-120
- 栏目: Intellectual control systems, data analysis
- URL: https://rjeid.com/0005-2310/article/view/646804
- DOI: https://doi.org/10.31857/S0005231023010051
- EDN: https://elibrary.ru/LUKHYY
- ID: 646804
如何引用文章
详细
Randomized machine learning focuses on problems with considerable uncertainty in data and models. Machine learning algorithms are formulated in terms of a functional entropy-linear programming problem. We adapt these algorithms to forecasting problems on an example of the evolution of thermokarst lakes area in permafrost zones. Thermokarst lakes generate methane, a greenhouse gas affecting climate change. We propose randomized machine learning procedures using dynamic regression models with random parameters and retrospective data (climatic parameters and remote sensing of the Earth’s surface). The randomized machine learning algorithm developed below estimates the probability density functions of model parameters and measurement noises. Randomized forecasting is implemented as algorithms transforming the optimal distributions into the corresponding random sequences (sampling algorithms). The randomized forecasting procedures and technologies are trained, tested, and then applied to forecast the evolution of thermokarst lakes area in Western Siberia.
作者简介
Yu. Dubnov
Federal Research Center “Computer Science and Control,” Russian Academy of Science; National Research University Higher School of Economics
Email: yury.dubnov@phystech.edu
Moscow, Russia; Moscow, Russia
A. Popkov
Federal Research Center “Computer Science and Control,” Russian Academy of Science
Email: apopkov@isa.ru
Moscow, Russia
V. Polishchuk
Institute of Monitoring of Climatic and Ecological Systems, Siberian Branch, Russian Academy of Sciences
Email: liquid_metal@mail.ru
Tomsk, Russia
E. Sokol
Yugra Research Institute of Information Technologie
Email: sokoles@uriit.ru
Khanty-Mansiysk, Russia
A. Mel'nikov
Yugra Research Institute of Information Technologie
Email: melnikovav@uriit.ru
Khanty-Mansiysk, Russia
Yu. Polishchuk
Yugra Research Institute of Information Technologie
Email: yupolishchuk@gmail.com
Khanty-Mansiysk, Russia
Yu. Popkov
Federal Research Center “Computer Science and Control,” Russian Academy of Science
编辑信件的主要联系方式.
Email: redacsia@ipu.rssi.ru
Moscow, Russia
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- Электронный ресурс: https://cloud.uriit.ru/index.php/s/0DOrxL9RmGqXsV0. Статья представлена к публикации членом редколлегии А.Н. Соболевским.
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