Optimization of wireless networks performance: An approach based on a partial penalty method

© 2017, North Atlantic University Union. All rights reserved.We study an optimization problem for a wireless telecommunication network stated as a generalized transportation problem (TP), where m (the number of “sellers”) is the number of network providers, and n (the number of “buyers”) is the numb...

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Main Authors: Konnov I., Kashina O., Laitinen E.
Format: Article in Journal/Newspaper
Language:unknown
Published: 2017
Subjects:
Online Access:https://openrepository.ru/article?id=185444
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spelling ftneicon:oai:rour.neicon.ru:rour/185444 2023-05-15T17:35:48+02:00 Optimization of wireless networks performance: An approach based on a partial penalty method Konnov I. Kashina O. Laitinen E. 2017 https://openrepository.ru/article?id=185444 unknown 11 37 http://rour.neicon.ru:80/xmlui/bitstream/rour/185444/1/nora.pdf https://openrepository.ru/article?id=185444 SCOPUS-2017-11-SID85019756505 Approximate solution Decaying perturbations Limit behavior Network connection Nonlinear objective function Open transportation problem Optimization Penalty function methods Provider Random disturbances Telecommunication networks Article 2017 ftneicon 2020-07-21T12:02:21Z © 2017, North Atlantic University Union. All rights reserved.We study an optimization problem for a wireless telecommunication network stated as a generalized transportation problem (TP), where m (the number of “sellers”) is the number of network providers, and n (the number of “buyers”) is the number of connections established at a given time moment. Since in practice initial data of such problems are, generally speaking, inexact and/or vary rather quickly, it is more important to obtain an approximate solution of the problem (with a prescribed accuracy) within a reasonable time interval rather than to solve it precisely (but in a longer time). We propose to solve this problem by a technique that explores the idea of penalty functions, namely, the so-called Partial Penalty Method (PPM, for short). As distinct from exact solution methods for TP (e.g., the method of potentials), our approach allows us to further extend the class of considered problems by including to it TP with nonlinear objective functions. As an example, we consider a TP, where the objective function (expenses connected with resource allocation) is such that the price of the unit amount of the resource is not constant but depends on the total purchase size. In addition, we study the limit behavior of solutions to TP whose data are subject to fading disturbances. Since in our approach the initial point is not necessarily admissible, we use an approximate solution of each problem as the initial point for the next one. As expected, under certain requirements to disturbances the sequence of solutions to “disturbed” problems tends to a solution of the limit problem. We prove experimentally that PPM is more efficient than the usual variant of the Penalty Function Method (the Full Penalty Method, or FPM). The preference of PPM over FPM is more evident for n much greater than m. Article in Journal/Newspaper North Atlantic NORA (National aggregator of open repositories of Russian universities)
institution Open Polar
collection NORA (National aggregator of open repositories of Russian universities)
op_collection_id ftneicon
language unknown
topic Approximate solution
Decaying perturbations
Limit behavior
Network connection
Nonlinear objective function
Open transportation problem
Optimization
Penalty function methods
Provider
Random disturbances
Telecommunication networks
spellingShingle Approximate solution
Decaying perturbations
Limit behavior
Network connection
Nonlinear objective function
Open transportation problem
Optimization
Penalty function methods
Provider
Random disturbances
Telecommunication networks
Konnov I.
Kashina O.
Laitinen E.
Optimization of wireless networks performance: An approach based on a partial penalty method
topic_facet Approximate solution
Decaying perturbations
Limit behavior
Network connection
Nonlinear objective function
Open transportation problem
Optimization
Penalty function methods
Provider
Random disturbances
Telecommunication networks
description © 2017, North Atlantic University Union. All rights reserved.We study an optimization problem for a wireless telecommunication network stated as a generalized transportation problem (TP), where m (the number of “sellers”) is the number of network providers, and n (the number of “buyers”) is the number of connections established at a given time moment. Since in practice initial data of such problems are, generally speaking, inexact and/or vary rather quickly, it is more important to obtain an approximate solution of the problem (with a prescribed accuracy) within a reasonable time interval rather than to solve it precisely (but in a longer time). We propose to solve this problem by a technique that explores the idea of penalty functions, namely, the so-called Partial Penalty Method (PPM, for short). As distinct from exact solution methods for TP (e.g., the method of potentials), our approach allows us to further extend the class of considered problems by including to it TP with nonlinear objective functions. As an example, we consider a TP, where the objective function (expenses connected with resource allocation) is such that the price of the unit amount of the resource is not constant but depends on the total purchase size. In addition, we study the limit behavior of solutions to TP whose data are subject to fading disturbances. Since in our approach the initial point is not necessarily admissible, we use an approximate solution of each problem as the initial point for the next one. As expected, under certain requirements to disturbances the sequence of solutions to “disturbed” problems tends to a solution of the limit problem. We prove experimentally that PPM is more efficient than the usual variant of the Penalty Function Method (the Full Penalty Method, or FPM). The preference of PPM over FPM is more evident for n much greater than m.
format Article in Journal/Newspaper
author Konnov I.
Kashina O.
Laitinen E.
author_facet Konnov I.
Kashina O.
Laitinen E.
author_sort Konnov I.
title Optimization of wireless networks performance: An approach based on a partial penalty method
title_short Optimization of wireless networks performance: An approach based on a partial penalty method
title_full Optimization of wireless networks performance: An approach based on a partial penalty method
title_fullStr Optimization of wireless networks performance: An approach based on a partial penalty method
title_full_unstemmed Optimization of wireless networks performance: An approach based on a partial penalty method
title_sort optimization of wireless networks performance: an approach based on a partial penalty method
publishDate 2017
url https://openrepository.ru/article?id=185444
genre North Atlantic
genre_facet North Atlantic
op_source SCOPUS-2017-11-SID85019756505
op_relation 11
37
http://rour.neicon.ru:80/xmlui/bitstream/rour/185444/1/nora.pdf
https://openrepository.ru/article?id=185444
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