Intelligent Processing Methods

Nowadays, in the era of information technology, intelligent data processing methods play an important role in various spheres of life. These methods, together with modern algorithms and computer models, allow extracting valuable information from huge volumes of raw data, as well as analyzing and for...

Full description

Saved in:
Bibliographic Details
Main Authors: Veronika V. Tolmanova, Denis A. Andrikov
Format: Article
Language:English
Published: Peoples’ Friendship University of Russia (RUDN University) 2024-12-01
Series:RUDN Journal of Engineering Research
Subjects:
Online Access:https://journals.rudn.ru/engineering-researches/article/viewFile/42382/24383
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1841538042620280832
author Veronika V. Tolmanova
Denis A. Andrikov
author_facet Veronika V. Tolmanova
Denis A. Andrikov
author_sort Veronika V. Tolmanova
collection DOAJ
description Nowadays, in the era of information technology, intelligent data processing methods play an important role in various spheres of life. These methods, together with modern algorithms and computer models, allow extracting valuable information from huge volumes of raw data, as well as analyzing and forecasting various phenomena and trends. The key concepts and principles of operation of the wavelet transform and stochastic methods, as well as their interrelation and possibilities of combined application in solving data processing problems are considered. Intelligent data processing methods focused on the wavelet transform and stochastic methods, which have become an integral part of modern business processes, providing forecasts essential for informed decisions, are investigated. The study used the wavelet transform and stochastic methods to detect hidden patterns and trends in data. These methods provided an opportunity to analyze data of various structures and scales, including texts, images, sound and video. The wavelet transform provided efficient data representation and multiscale analysis, while stochastic methods were used to model uncertainty and perform probabilistic analysis. It was demonstrated that the use of the wavelet transform contributed to the identification of significant features in the analyzed data, while stochastic methods provided reliable forecasts based on statistical models. Practical application of these methods on examples from various fields showed their high efficiency and significance in scientific and applied applications, which confirmed the relevance and prospects of further study and development of intelligent data processing methods. The importance of the wavelet transform and stochastic methods in the context of analyzing large amounts of data and predicting various phenomena was confirmed.
format Article
id doaj-art-f3e2339d3b2f43bfb2e5ae2ebe2a4f1d
institution Kabale University
issn 2312-8143
2312-8151
language English
publishDate 2024-12-01
publisher Peoples’ Friendship University of Russia (RUDN University)
record_format Article
series RUDN Journal of Engineering Research
spelling doaj-art-f3e2339d3b2f43bfb2e5ae2ebe2a4f1d2025-01-14T08:09:51ZengPeoples’ Friendship University of Russia (RUDN University)RUDN Journal of Engineering Research2312-81432312-81512024-12-0125326327910.22363/2312-8143-2024-25-3-263-27921129Intelligent Processing MethodsVeronika V. Tolmanova0https://orcid.org/0000-0001-9433-7859Denis A. Andrikov1https://orcid.org/0000-0003-0359-0897RUDN UniversityRUDN UniversityNowadays, in the era of information technology, intelligent data processing methods play an important role in various spheres of life. These methods, together with modern algorithms and computer models, allow extracting valuable information from huge volumes of raw data, as well as analyzing and forecasting various phenomena and trends. The key concepts and principles of operation of the wavelet transform and stochastic methods, as well as their interrelation and possibilities of combined application in solving data processing problems are considered. Intelligent data processing methods focused on the wavelet transform and stochastic methods, which have become an integral part of modern business processes, providing forecasts essential for informed decisions, are investigated. The study used the wavelet transform and stochastic methods to detect hidden patterns and trends in data. These methods provided an opportunity to analyze data of various structures and scales, including texts, images, sound and video. The wavelet transform provided efficient data representation and multiscale analysis, while stochastic methods were used to model uncertainty and perform probabilistic analysis. It was demonstrated that the use of the wavelet transform contributed to the identification of significant features in the analyzed data, while stochastic methods provided reliable forecasts based on statistical models. Practical application of these methods on examples from various fields showed their high efficiency and significance in scientific and applied applications, which confirmed the relevance and prospects of further study and development of intelligent data processing methods. The importance of the wavelet transform and stochastic methods in the context of analyzing large amounts of data and predicting various phenomena was confirmed.https://journals.rudn.ru/engineering-researches/article/viewFile/42382/24383wavelet transformationwaveletsstochastic methodsstatistical analysiselectroencephalogram
spellingShingle Veronika V. Tolmanova
Denis A. Andrikov
Intelligent Processing Methods
RUDN Journal of Engineering Research
wavelet transformation
wavelets
stochastic methods
statistical analysis
electroencephalogram
title Intelligent Processing Methods
title_full Intelligent Processing Methods
title_fullStr Intelligent Processing Methods
title_full_unstemmed Intelligent Processing Methods
title_short Intelligent Processing Methods
title_sort intelligent processing methods
topic wavelet transformation
wavelets
stochastic methods
statistical analysis
electroencephalogram
url https://journals.rudn.ru/engineering-researches/article/viewFile/42382/24383
work_keys_str_mv AT veronikavtolmanova intelligentprocessingmethods
AT denisaandrikov intelligentprocessingmethods