Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting

The article describes some principles of operation of an artificial neural network. It provides an example of implementing a neural network model by selecting its best architecture using the Statistica 12 software package. The article considers a method for neural network forecasting of a series of...

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Main Authors: B. A. Ashabokov, A. A. Tashilova, L. A. Kesheva, N. V. Teunova
Format: Article
Language:Russian
Published: North-Caucasus Federal University 2025-04-01
Series:Наука. Инновации. Технологии
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Online Access:https://scienceit.elpub.ru/jour/article/view/710
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author B. A. Ashabokov
A. A. Tashilova
L. A. Kesheva
N. V. Teunova
author_facet B. A. Ashabokov
A. A. Tashilova
L. A. Kesheva
N. V. Teunova
author_sort B. A. Ashabokov
collection DOAJ
description The article describes some principles of operation of an artificial neural network. It provides an example of implementing a neural network model by selecting its best architecture using the Statistica 12 software package. The article considers a method for neural network forecasting of a series of mudflow events based on nonlinear relationships with precipitation and temperature series. To solve the problem, the Data Mining (intelligent data analysis) block – Neural Networks was used in the Statistica 12 package. A multilayer perceptron (MLP) was chosen as a neural network method, and a hyperbolic tangent (tanh) was used as an activation function. Based on deep learning algorithms, a mathematical model MPL 2-50-1 was developed, which is capable of learning on the used data (precipitation, temperature, number of mudflows for the period 1953-2015) and forecasting the number of mudflows based on the meteorological parameters (precipitation, temperature) entered into the model. It was found that with average precipitation values of more than 110 mm in the period from May to September from 2016 to 2034, the number of mudflows is predicted to be from 10 to 13, which is higher than their average value of n = 8 for the period with actual initial data from 1953 to 2015. Trends in the number of mudflows in the Terskol Gorge in the warm season from 1953 to 2015 (the period with actual data) and from 2016 to 2034 (the period with predicted data) were determined using polynomial and linear trends. It follows from the linear trend equation that, on average, over the entire period, including the predicted one, the number of mudflows tends to grow slightly by 0.3/10 years. The polynomial trend demonstrates an increase and decrease in the number of mudflows at different time intervals. In the forecast interval of 2016-2034, the decrease in the number of mudflows demonstrates both a polynomial trend and a linear trend.
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publisher North-Caucasus Federal University
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series Наука. Инновации. Технологии
spelling doaj-art-9ba0caea4a71417bb14fc85701b64eb42025-08-20T03:57:48ZrusNorth-Caucasus Federal UniversityНаука. Инновации. Технологии2308-47582025-04-0101376410.37493/2308-4758.2025.1.2671Implementation of a neural network model in the Statistica 12 for mudflow frequency forecastingB. A. Ashabokov0A. A. Tashilova1L. A. Kesheva2N. V. Teunova3High-Mountain Geophysical Institute; Institute of Informatics and Regional Management Problems of the Kabardino-Balkarian Scientific Center of the Russian Academy of SciencesHigh-Mountain Geophysical InstituteHigh-Mountain Geophysical InstituteHigh-Mountain Geophysical InstituteThe article describes some principles of operation of an artificial neural network. It provides an example of implementing a neural network model by selecting its best architecture using the Statistica 12 software package. The article considers a method for neural network forecasting of a series of mudflow events based on nonlinear relationships with precipitation and temperature series. To solve the problem, the Data Mining (intelligent data analysis) block – Neural Networks was used in the Statistica 12 package. A multilayer perceptron (MLP) was chosen as a neural network method, and a hyperbolic tangent (tanh) was used as an activation function. Based on deep learning algorithms, a mathematical model MPL 2-50-1 was developed, which is capable of learning on the used data (precipitation, temperature, number of mudflows for the period 1953-2015) and forecasting the number of mudflows based on the meteorological parameters (precipitation, temperature) entered into the model. It was found that with average precipitation values of more than 110 mm in the period from May to September from 2016 to 2034, the number of mudflows is predicted to be from 10 to 13, which is higher than their average value of n = 8 for the period with actual initial data from 1953 to 2015. Trends in the number of mudflows in the Terskol Gorge in the warm season from 1953 to 2015 (the period with actual data) and from 2016 to 2034 (the period with predicted data) were determined using polynomial and linear trends. It follows from the linear trend equation that, on average, over the entire period, including the predicted one, the number of mudflows tends to grow slightly by 0.3/10 years. The polynomial trend demonstrates an increase and decrease in the number of mudflows at different time intervals. In the forecast interval of 2016-2034, the decrease in the number of mudflows demonstrates both a polynomial trend and a linear trend.https://scienceit.elpub.ru/jour/article/view/710neural networksmultilayer perceptron mlpactivation functionhyperbolic tangentforecastnumber of mudflowsprecipitation amountaverage temperatures
spellingShingle B. A. Ashabokov
A. A. Tashilova
L. A. Kesheva
N. V. Teunova
Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting
Наука. Инновации. Технологии
neural networks
multilayer perceptron mlp
activation function
hyperbolic tangent
forecast
number of mudflows
precipitation amount
average temperatures
title Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting
title_full Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting
title_fullStr Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting
title_full_unstemmed Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting
title_short Implementation of a neural network model in the Statistica 12 for mudflow frequency forecasting
title_sort implementation of a neural network model in the statistica 12 for mudflow frequency forecasting
topic neural networks
multilayer perceptron mlp
activation function
hyperbolic tangent
forecast
number of mudflows
precipitation amount
average temperatures
url https://scienceit.elpub.ru/jour/article/view/710
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AT nvteunova implementationofaneuralnetworkmodelinthestatistica12formudflowfrequencyforecasting