Przejdź do treści

Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model

The purpose of the article is to increase the efficiency of the cloud data center load distribution and balancing system by developing and applying a mechanism for predicting network traffic conditions characterized by fractal self-similarity. When developing the predictive model, methods of nonline...

Szczegółowa specyfikacja

Zapisane w:
Opis bibliograficzny
Główni autorzy: Mochalov, V. P., Мочалов, В. П., Bratchenko, N. Y., Братченко, Н. Ю., Gosteva, D. V., Гостева, Д. В.
Format: Статья
Język:English
Wydane: Institute of Electrical and Electronics Engineers Inc. 2024
Hasła przedmiotowe:
Dostęp online:https://dspace.ncfu.ru/handle/123456789/29324
Etykiety: Dodaj etykietę
Nie ma etykietki, Dołącz pierwszą etykiete!
id ir-123456789-29324
record_format dspace
spelling ir-123456789-293242024-12-06T08:52:24Z Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model Mochalov, V. P. Мочалов, В. П. Bratchenko, N. Y. Братченко, Н. Ю. Gosteva, D. V. Гостева, Д. В. Fractal network traffic Singular spectral analysis Load balancing Prediction Self-similarity The purpose of the article is to increase the efficiency of the cloud data center load distribution and balancing system by developing and applying a mechanism for predicting network traffic conditions characterized by fractal self-similarity. When developing the predictive model, methods of nonlinear dynamics were used, taking into account the statistical self-similarity of the load and providing a solution to the problem of predicting the moments of its expected bursts. The randomness of network traffic was checked by calculating the spectrum of Lyapunov exponents. The mathematical model and the dynamic algorithm of the predictive model of the state of a nonlinear system are presented in the form of a system of discrete mappings of previous and subsequent values of a time series and a regression approximating polynomial connecting them. The presented algorithm differs from the existing ones by taking into account the features of fractal self-similarity of the input load, which negatively affects quality indicators, using a predictive model developed on the basis of nonlinear dynamics methods, as well as the possibility of choosing rational balancing parameters according to the criterion of uniform loading of server resources. The article shows that the dynamic load balancing algorithm, based on nonlinear approaches and predictive models, allows solving load distribution problems between servers of data center clusters more efficiently than traditional methods. The conclusion about the effectiveness of the developed algorithm is substantiated. 2024-12-06T08:51:10Z 2024-12-06T08:51:10Z 2024 Статья Mochalov, V.P., Bratchenko, N.Yu., Gosteva, D.V. Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model // RusAutoCon - Proceedings of the International Russian Automation Conference. - 2024. - pp. 350-355. - DOI: 10.1109/RusAutoCon61949.2024.10694233 https://dspace.ncfu.ru/handle/123456789/29324 en RusAutoCon - Proceedings of the International Russian Automation Conference application/pdf Institute of Electrical and Electronics Engineers Inc.
institution СКФУ
collection Репозиторий
language English
topic Fractal network traffic
Singular spectral analysis
Load balancing
Prediction
Self-similarity
spellingShingle Fractal network traffic
Singular spectral analysis
Load balancing
Prediction
Self-similarity
Mochalov, V. P.
Мочалов, В. П.
Bratchenko, N. Y.
Братченко, Н. Ю.
Gosteva, D. V.
Гостева, Д. В.
Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model
description The purpose of the article is to increase the efficiency of the cloud data center load distribution and balancing system by developing and applying a mechanism for predicting network traffic conditions characterized by fractal self-similarity. When developing the predictive model, methods of nonlinear dynamics were used, taking into account the statistical self-similarity of the load and providing a solution to the problem of predicting the moments of its expected bursts. The randomness of network traffic was checked by calculating the spectrum of Lyapunov exponents. The mathematical model and the dynamic algorithm of the predictive model of the state of a nonlinear system are presented in the form of a system of discrete mappings of previous and subsequent values of a time series and a regression approximating polynomial connecting them. The presented algorithm differs from the existing ones by taking into account the features of fractal self-similarity of the input load, which negatively affects quality indicators, using a predictive model developed on the basis of nonlinear dynamics methods, as well as the possibility of choosing rational balancing parameters according to the criterion of uniform loading of server resources. The article shows that the dynamic load balancing algorithm, based on nonlinear approaches and predictive models, allows solving load distribution problems between servers of data center clusters more efficiently than traditional methods. The conclusion about the effectiveness of the developed algorithm is substantiated.
format Статья
author Mochalov, V. P.
Мочалов, В. П.
Bratchenko, N. Y.
Братченко, Н. Ю.
Gosteva, D. V.
Гостева, Д. В.
author_facet Mochalov, V. P.
Мочалов, В. П.
Bratchenko, N. Y.
Братченко, Н. Ю.
Gosteva, D. V.
Гостева, Д. В.
author_sort Mochalov, V. P.
title Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model
title_short Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model
title_full Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model
title_fullStr Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model
title_full_unstemmed Algorithm for Load Balancing of a Data Processing Center Based on a Nonlinear Forecast Model
title_sort algorithm for load balancing of a data processing center based on a nonlinear forecast model
publisher Institute of Electrical and Electronics Engineers Inc.
publishDate 2024
url https://dspace.ncfu.ru/handle/123456789/29324
work_keys_str_mv AT mochalovvp algorithmforloadbalancingofadataprocessingcenterbasedonanonlinearforecastmodel
AT močalovvp algorithmforloadbalancingofadataprocessingcenterbasedonanonlinearforecastmodel
AT bratchenkony algorithmforloadbalancingofadataprocessingcenterbasedonanonlinearforecastmodel
AT bratčenkonû algorithmforloadbalancingofadataprocessingcenterbasedonanonlinearforecastmodel
AT gostevadv algorithmforloadbalancingofadataprocessingcenterbasedonanonlinearforecastmodel
AT gostevadv algorithmforloadbalancingofadataprocessingcenterbasedonanonlinearforecastmodel
_version_ 1842245444013391872