Standard

A Decomposition Approach to a Stadium Antenna Deployment Problem. / Yuskov, A. D.

в: Journal of Applied and Industrial Mathematics, Том 19, № 1, 14, 2025, стр. 169-180.

Результаты исследований: Научные публикации в периодических изданияхстатьяРецензирование

Harvard

Yuskov, AD 2025, 'A Decomposition Approach to a Stadium Antenna Deployment Problem', Journal of Applied and Industrial Mathematics, Том. 19, № 1, 14, стр. 169-180. https://doi.org/10.1134/S1990478925010144

APA

Yuskov, A. D. (2025). A Decomposition Approach to a Stadium Antenna Deployment Problem. Journal of Applied and Industrial Mathematics, 19(1), 169-180. [14]. https://doi.org/10.1134/S1990478925010144

Vancouver

Yuskov AD. A Decomposition Approach to a Stadium Antenna Deployment Problem. Journal of Applied and Industrial Mathematics. 2025;19(1):169-180. 14. doi: 10.1134/S1990478925010144

Author

Yuskov, A. D. / A Decomposition Approach to a Stadium Antenna Deployment Problem. в: Journal of Applied and Industrial Mathematics. 2025 ; Том 19, № 1. стр. 169-180.

BibTeX

@article{9689b9b407ac46dfbc63d4f77b138b0e,
title = "A Decomposition Approach to a Stadium Antenna Deployment Problem",
abstract = "We consider a stadium antenna deployment problem. The stadium is divided into sectors.Several antennas are assigned to each sector. Users should receive a signal of a certain qualityfrom antennas assigned to their sector. The problem is to choose locations of antennas, theirtypes, angles, and assignments to sectors to maximize three quality criteria: the mean signal tointerference ratio (SIR), the number of clients with good signal quality, and the assignmentconsistency. We use a simulation to compute the signal quality. We present a three-stage heuristicapproach to the problem. It uses a constructive heuristic, a local improvement procedure, anda decomposition-based MIP heuristic. We carry out numerical experiments on test instances with94 antennas of 7 types, 19 sectors, and 4426 clients. It is possible to improve the provided baselinesolutions in 2 h and obtain solutions comparable to running a metaheuristic package for 24 h.",
keywords = "SINR, black box optimization, matheuristics, signal quality, wireless network, ОПТИМИЗАЦИЯ «ЧЁРНОГО ЯЩИКА», МЕТАЭВРИСТИКА, БЕСПРОВОДНАЯ СЕТЬ, КАЧЕСТВО СИГНАЛА, SINR",
author = "Yuskov, {A. D.}",
note = "Yuskov A.D. A Decomposition Approach to a Stadium Antenna Deployment Problem // Journal of Applied and Industrial Mathematics. – 2025. – Vol. 19. - No. 1. – P. 169-180. – DOI 10.1134/S1990478925010144. – EDN JWFKFY. This work was supported by ongoing institutional funding. No additional grants to carry out or direct this particular research were obtained.",
year = "2025",
doi = "10.1134/S1990478925010144",
language = "English",
volume = "19",
pages = "169--180",
journal = "Journal of Applied and Industrial Mathematics",
issn = "1990-4789",
publisher = "Maik Nauka-Interperiodica Publishing",
number = "1",

}

RIS

TY - JOUR

T1 - A Decomposition Approach to a Stadium Antenna Deployment Problem

AU - Yuskov, A. D.

N1 - Yuskov A.D. A Decomposition Approach to a Stadium Antenna Deployment Problem // Journal of Applied and Industrial Mathematics. – 2025. – Vol. 19. - No. 1. – P. 169-180. – DOI 10.1134/S1990478925010144. – EDN JWFKFY. This work was supported by ongoing institutional funding. No additional grants to carry out or direct this particular research were obtained.

PY - 2025

Y1 - 2025

N2 - We consider a stadium antenna deployment problem. The stadium is divided into sectors.Several antennas are assigned to each sector. Users should receive a signal of a certain qualityfrom antennas assigned to their sector. The problem is to choose locations of antennas, theirtypes, angles, and assignments to sectors to maximize three quality criteria: the mean signal tointerference ratio (SIR), the number of clients with good signal quality, and the assignmentconsistency. We use a simulation to compute the signal quality. We present a three-stage heuristicapproach to the problem. It uses a constructive heuristic, a local improvement procedure, anda decomposition-based MIP heuristic. We carry out numerical experiments on test instances with94 antennas of 7 types, 19 sectors, and 4426 clients. It is possible to improve the provided baselinesolutions in 2 h and obtain solutions comparable to running a metaheuristic package for 24 h.

AB - We consider a stadium antenna deployment problem. The stadium is divided into sectors.Several antennas are assigned to each sector. Users should receive a signal of a certain qualityfrom antennas assigned to their sector. The problem is to choose locations of antennas, theirtypes, angles, and assignments to sectors to maximize three quality criteria: the mean signal tointerference ratio (SIR), the number of clients with good signal quality, and the assignmentconsistency. We use a simulation to compute the signal quality. We present a three-stage heuristicapproach to the problem. It uses a constructive heuristic, a local improvement procedure, anda decomposition-based MIP heuristic. We carry out numerical experiments on test instances with94 antennas of 7 types, 19 sectors, and 4426 clients. It is possible to improve the provided baselinesolutions in 2 h and obtain solutions comparable to running a metaheuristic package for 24 h.

KW - SINR

KW - black box optimization

KW - matheuristics

KW - signal quality

KW - wireless network

KW - ОПТИМИЗАЦИЯ «ЧЁРНОГО ЯЩИКА»

KW - МЕТАЭВРИСТИКА

KW - БЕСПРОВОДНАЯ СЕТЬ

KW - КАЧЕСТВО СИГНАЛА

KW - SINR

UR - https://www.scopus.com/pages/publications/105020673560

UR - https://www.elibrary.ru/item.asp?id=83155459

UR - https://www.elibrary.ru/item.asp?id=82904679

UR - https://www.mendeley.com/catalogue/2021bf6a-6f6d-34a2-a032-5fab968c4034/

U2 - 10.1134/S1990478925010144

DO - 10.1134/S1990478925010144

M3 - Article

VL - 19

SP - 169

EP - 180

JO - Journal of Applied and Industrial Mathematics

JF - Journal of Applied and Industrial Mathematics

SN - 1990-4789

IS - 1

M1 - 14

ER -

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