Анализ характеристик селевых потоков при ограниченных данных с использованием моделей машинного обучения
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Analysis of mudflow characteristics with limited data using machine learning models

Лютикова Л.А. 

UDC 004.085
DOI: 10.26102/2310-6018/2024.47.4.029

  • Abstract
  • List of references
  • About authors

In paper, a combined method for analyzing incomplete and distorted information is proposed, demonstrated by the example of mudflow forecasting. The main purpose of the study is to demonstrate the ability not only to create accurate forecasts, but also to analyze the decision-making mechanisms of the model, identifying significant parameters that affect predictions. To represent the identified sets of parameters affecting the volume of the mudflow in the form of logical rules, it was necessary to use data categorization. This made it possible to increase the reliability of models in the presence of emissions and noise, as well as to take into account non-linearities. Two approaches were used to form logical rules: the method of associative analysis and the original method of constructing a logical classifier. As a result of associative analysis, rules were identified that reflect certain patterns in the data, which, as it turned out, required significant correction. The use of a logical classifier made it possible to clarify and correct the patterns, ensuring the determination of a set of factors influencing the volume of mudflow. This approach made it possible to identify the most significant input variables and understand how the model processes data to generate a forecast, identify factors that play a key role in forecasting results, and ensure adequate accuracy and stability of forecasts, taking into account the specifics and complexity of mudflow data. The patterns deduced as a result of the study, reflecting the hidden principles of the subject area under study, and the methods of logical analysis used in the study helped to identify possible causes of the formation of different volumes of carried-out solid deposits. The results obtained can be used to improve monitoring systems and prevent the negative consequences of mudslides.

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Лютикова Лариса Адольфовна


Nalchik, Russia

Keywords: machine learning, neural networks, cluster analysis, associative rules, mudflows, model

For citation: Лютикова Л.А. Analysis of mudflow characteristics with limited data using machine learning models. Modeling, Optimization and Information Technology. 2024;12(4). URL: https://moitvivt.ru/ru/journal/pdf?id=1747 DOI: 10.26102/2310-6018/2024.47.4.029 (In Russ).

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Full text in PDF

Received 17.11.2024

Revised 10.12.2024

Accepted 12.12.2024