Addressing the Load Estimation Problem: Cell Switching in HAPS-Assisted Sustainable 6G Networks (2405.01690v1)
Abstract: This study aims to introduce and address the problem of traffic load estimation in the cell switching concept within the evolving landscape of vertical heterogeneous networks (vHetNets). The problem is that the practice of cell switching faces a significant challenge due to the lack of accurate data on the traffic load of sleeping small base stations (SBSs). This problem makes the majority of the studies in the literature, particularly those employing load-dependent approaches, impractical due to their basic assumption of perfect knowledge of the traffic loads of sleeping SBSs for the next time slot. Rather than developing another advanced cell switching algorithm, this study investigates the impacts of estimation errors and explores possible solutions through established methodologies in a novel vHetNet environment that includes the integration of a high altitude platform (HAPS) as a super macro base station (SMBS) into the terrestrial network. In other words, this study adopts a more foundational perspective, focusing on eliminating a significant obstacle for the application of advanced cell switching algorithms. To this end, we explore the potential of three distinct spatial interpolation-based estimation schemes: random neighboring selection, distance-based selection, and clustering-based selection. Utilizing a real dataset for empirical validations, we evaluate the efficacy of our proposed traffic load estimation schemes. Our results demonstrate that the multi-level clustering (MLC) algorithm performs exceptionally well, with an insignificant difference (i.e., 0.8%) observed between its estimated and actual network power consumption, highlighting its potential to significantly improve energy efficiency in vHetNets.
- M. Feng, S. Mao, and T. Jiang, “Base station on-off switching in 5G wireless networks: Approaches and challenges,” IEEE Wireless Communications, vol. 24, pp. 46–54, Aug. 2017.
- M. Salamatmoghadasi, A. Mehrabian, and H. Yanikomeroglu, “Energy sustainability in dense radio access networks via high altitude platform stations,” IEEE Networking Letters (Early Access), pp. 1–1, Nov. 2023.
- T. Song, D. Lopez, M. Meo, N. Piovesan, and D. Renga, “High altitude platform stations: the new network energy efficiency enabler in the 6G Era,” arXiv e-prints, p. arXiv:2307.00969, Jul. 2023.
- A. E. Amine, J.-P. Chaiban, H. A. H. Hassan, P. Dini, L. Nuaymi, and R. Achkar, “Energy optimization with multi-sleeping control in 5G heterogeneous networks using reinforcement learning,” IEEE Transactions on Network and Service Management, vol. 19, no. 4, pp. 4310–4322, Mar. 2022.
- M. W. Kang and Y. W. Chung, “An efficient energy saving scheme for base stations in 5G networks with separated data and control planes using particle swarm optimization,” Energies, vol. 10, no. 9, Sep. 2017. [Online]. Available: https://www.mdpi.com/1996-1073/10/9/1417
- M. Ozturk, A. I. Abubakar, J. P. B. Nadas, R. N. B. Rais, S. Hussain, and M. A. Imran, “Energy optimization in ultra-dense radio access networks via traffic-aware cell switching,” IEEE Transactions on Green Communications and Networking, vol. 5, no. 2, pp. 832–845, Feb. 2021.
- “Framework and overall objectives of the future development of IMT for 2030 and beyond,” Recommendation ITU-R M.2160-0, Tech. Rep., Nov. 2023.
- “The ITU-R Framework for IMT-2030,” ITU-R Working Party 5D, International Telecommunication Union (ITU), Tech. Rep., Jul. 2023. [Online]. Available: https://www.itu.int/en/ITU-R/study-groups/rsg5/rwp5d/imt-2030/Pages/default.aspx
- T. Italia, “Telecommunications - SMS, Call, Internet - MI,” 2015. [Online]. Available: https://doi.org/10.7910/DVN/EGZHFV
- G. Karabulut Kurt, M. G. Khoshkholgh, S. Alfattani, A. Ibrahim, T. S. J. Darwish, M. S. Alam, H. Yanikomeroglu, and A. Yongacoglu, “A vision and framework for the high altitude platform station (HAPS) networks of the future,” IEEE Communications Surveys & Tutorials, vol. 23, no. 2, pp. 729–779, 1st Quart., 2021.
- G. Auer, V. Giannini, C. Desset, I. Godor, P. Skillermark, M. Olsson, M. A. Imran, D. Sabella, M. J. Gonzalez, O. Blume, and A. Fehske, “How much energy is needed to run a wireless network?” IEEE Wireless Communications, vol. 18, no. 5, pp. 40–49, Oct. 2011.
- H. Wu, X. Xu, Y. Sun, and A. Li, “Energy efficient base station on/off with user association under C/U split,” 2017 IEEE Wireless Communications and Networking Conference, pp. 1–6, May 2017.
- S. Zhou, D. Lee, B. Leng, X. Zhou, H. Zhang, and Z. Niu, “On the spatial distribution of base stations and its relation to the traffic density in cellular networks,” IEEE Access, vol. 3, pp. 998–1010, Jul. 2015.
- X. Wang, Z. Zhou, F. Xiao, K. Xing, Z. Yang, Y. Liu, and C. Peng, “Spatio-temporal analysis and prediction of cellular traffic in metropolis,” IEEE Transactions on Mobile Computing, vol. 18, no. 9, pp. 2190–2202, Sep. 2019.
- M. N. Rafiq, H. Farooq, A. Zoha, and A. Imran, “Can temperature be used as a predictor of data traffic? a real network big data analysis,” IEEE/ACM 5th International Conference on Big Data Computing Applications and Technologies (BDCAT), pp. 167–173, Dec. 2018.
- H. Zhao, “Research on improvement and parallelization of k-means clustering algorithm,” IEEE 3rd International Conference on Frontiers Technology of Information and Computer (ICFTIC), pp. 57–61, Dec. 2021.