zbMATH — the first resource for mathematics

Enhancing the energy efficiency of dense Wi-Fi networks using cloud technologies. (English. Russian original) Zbl 07294351
Autom. Remote Control 81, No. 1, 94-106 (2020); translation from Avtom. Telemekh. 2020, No. 1, 117-133 (2020).
Summary: In the modern world, the Wi-Fi technology is undoubtedly one of the leaders in the field of wireless communications. Increasing density of devices in Wi-Fi networks and increasing number of the networks themselves have led to high interference and, as a result, to a decrease in the performance of Wi-Fi networks. One effective solution to reduce interference in dense deployment scenarios is the use of cloud-based management systems. In this work, we present an algorithm for centralized Wi-Fi network management for such a cloud-based system. The algorithm aims to maximize energy efficiency by solving an optimization problem with constraints where it is necessary to maximize the difference between two monotonic functions. Validation and evaluation of the effectiveness of the developed algorithm has been carried out in the NS-3 simulation environment.
94 Information and communication theory, circuits
Full Text: DOI
[1] Barnett, T.; Jain, S.; Andra, U.; Khurana, T., Cisco Visual Networking Index (VNI), Americas/EMEAR Cisco Knowledge Network (CKN) Presentation (2018)
[2] Khorov, E.; Kiryanov, A.; Lyakhov, A.; Bianchi, G., A Tutorial on IEEE 802.11ax High Efficiency WLANs, IEEE Commun. Surv. Tutorials, 21, 1, 197-216 (2019)
[3] Khorov, E.; Ivanov, A.; Lyakhov, A.; Akyildiz, If, Cloud Control to Optimize Real-Time Video Transmission in Dense IEEE 802.11aa/ax Networks, Proc. IEEE 15th Int. Conf. on Mobile Ad Hoc and Sensor Systems (MASS) (2018)
[4] Buzzi, S.; Chih-Lin, I.; Klein, Te; Poor, Hv; Yang, C.; Zappone, A., A Survey of Energy-Efficient Techniques for 5G Networks and Challenges Ahead, IEEE J-SAC, 34, 4, 697-709 (2016)
[5] Zorzi, M.; Rao, Rr, Energy-Constrained Error Control for Wireless Channels, IEEE Pers. Comm. Mag., 4, 6, 27-33 (1997)
[6] Li, Gy; Xu, Z.; Xiong, C.; Yang, C.; Zhang, S.; Chen, Y.; Xu, S., Energy-Efficient Wireless Communications: Tutorial, Survey, and Open Issues, IEEE Wirel. Commun., 18, 6, 28-35 (2011)
[7] Miao, G.; Himayat, N.; Li, Yg; Koc, At; Talwar, S., Interference-Aware Energy-Efficient Power Optimization, Proc. 2009 IEEE ICC, 1-5 (2009)
[8] Venturino, L.; Zappone, A.; Risi, C.; Buzzi, S., Energy-Efficient Scheduling and Power Allocation in Downlink Ofdma Networks with Base Station Coordination, IEEE T. Wirel. Commun., 14, 1, 1-14 (2015)
[9] Zappone, A.; Jorswieck, E., Energy Efficiency in Wireless Networks via Fractional Programming Theory, Found. Trends Commun. Inform. Theory, 11, 3-4, 185-396 (2015)
[10] Tuy, H., Convex Analysis and Global Optimization (2016) · Zbl 1362.90001
[11] Zappone, A.; Bjornson, E.; Sanguinetti, L.; Jorswieck, E., Globally Optimal Energy-Efficient Power Control and Receiver Design in Wireless Networks, IEEE T. Signal Process., 65, 11, 2844-2859 (2017) · Zbl 1414.94721
[12] Kiryanov, Ag; Krotov, Av; Lyakhov, Ai; Khorov, Em, Algorithm for Dynamic Power Control and Transmission Scheduling in Infrastructural IEEE 802.11 ax Networks, Inform. Protsessy, 19, 1, 16-32 (2019)
[13] Stefanyuk, Vl; Tsetlin, Ml, On Power Control in a Collection of Radio Stations, Probl. Peredachi Inf., 3, 4, 49-57 (1967)
[14] Merlin, S., TGax Simulation Scenarios. https://mentor.ieee.org/802.11/dcn/14/11-14-0980-16-00axsimulation-scenarios.docx
[15] The NS-3 Network Simulator. http://www.nsnam.org/
This reference list is based on information provided by the publisher or from digital mathematics libraries. Its items are heuristically matched to zbMATH identifiers and may contain data conversion errors. It attempts to reflect the references listed in the original paper as accurately as possible without claiming the completeness or perfect precision of the matching.