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Fast Online Movement Optimization of Aerial Base Stations Based on Global Connectivity Map (2405.02655v2)

Published 4 May 2024 in cs.IT and math.IT

Abstract: Aerial base stations (ABSs) mounted on unmanned aerial vehicles (UAVs) are capable of extending wireless connectivity to ground users (GUs) across a variety of scenarios. However, it is an NP-hard problem with exponential complexity in $M$ and $N$, in order to maximize the coverage rate (CR) of $M$ GUs by jointly placing $N$ ABSs with limited coverage range. The complexity of the problem escalates in environments where the signal propagation is obstructed by localized obstacles such as buildings, and is further compounded by the dynamic GU positions. In response to these challenges, this paper focuses on the optimization of a multi-ABS movement problem, aiming to improve the mean CR for mobile GUs within a site-specific environment. Our proposals include 1) introducing the concept of global connectivity map (GCM) which contains the connectivity information between given pairs of ABS/GU locations; 2) partitioning the ABS movement problem into ABS placement sub-problems and formulate each sub-problem into a binary integer linear programming (BILP) problem based on GCM; 3) and proposing a fast online algorithm to execute (one-pass) projected stochastic subgradient descent within the dual space to rapidly solve the BILP problem with near-optimal performance. Numerical results demonstrate that our proposed method achieves a high CR performance close to the upper bound obtained by the open-source solver (SCIP), yet with significantly reduced running time. Moreover, our method also outperforms common benchmarks in the literature such as the K-means initiated evolutionary algorithm or the ones based on deep reinforcement learning (DRL), in terms of CR performance and/or time efficiency.

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References (15)
  1. Y. Zeng, Q. Wu, and R. Zhang, “Accessing from the sky: A tutorial on UAV communications for 5G and beyond,” Proc. IEEE, vol. 107, no. 12, pp. 2327–2375, Dec. 2019.
  2. J. Lyu, Y. Zeng, R. Zhang, and T. J. Lim, “Placement optimization of UAV-mounted mobile base stations,” IEEE Commun. Lett., vol. 21, no. 3, pp. 604–607, Mar. 2017.
  3. B. Galkin, J. Kibilda, and L. A. DaSilva, “Deployment of UAV-mounted access points according to spatial user locations in two-tier cellular networks,” in Wireless Days, Mar. 2016, pp. 1–6.
  4. Z. Wang, L. Duan, and R. Zhang, “Adaptive deployment for UAV-aided communication networks,” IEEE Trans. Wireless Commun., vol. 18, no. 9, pp. 4531–4543, Sep. 2019.
  5. A. Al-Hourani, S. Kandeepan, and S. Lardner, “Optimal LAP altitude for maximum coverage,” IEEE Wireless Commun. Lett., vol. 3, no. 6, pp. 569–572, Dec. 2014.
  6. S. Bi, J. Lyu, Z. Ding, and R. Zhang, “Engineering radio maps for wireless resource management,” IEEE Wireless Commun., vol. 26, no. 2, pp. 133–141, Apr. 2019.
  7. J. Qiu, J. Lyu, and L. Fu, “Placement optimization of aerial base stations with deep reinforcement learning,” in Proc. IEEE Int. Conf. Commun. (ICC), June 2020, pp. 1–6.
  8. P. Zhen, B. Zhang, C. Xie, and D. Guo, “A radio environment map updating mechanism based on an attention mechanism and siamese neural networks,” Sensors, vol. 22, no. 18, p. 6797, 2022.
  9. R. Levie, Ç. Yapar, G. Kutyniok, and G. Caire, “Radiounet: Fast radio map estimation with convolutional neural networks,” IEEE Trans. Wireless Commun., vol. 20, no. 6, pp. 4001–4015, 2021.
  10. X. Li, C. Sun, and Y. Ye, “Simple and fast algorithm for binary integer and online linear programming,” Advances in Neural Information Processing Systems, vol. 33, pp. 9412–9421, 2020.
  11. K. Bestuzheva, M. Besançon, W.-K. Chen et al., “The SCIP Optimization Suite 8.0,” Zuse Institute Berlin, ZIB-Report 21-41, December 2021.
  12. J. Lyu, X. Chen, J. Zhang, and L. Fu, “Spatial deep learning for site-specific movement optimization of aerial base stations,” IEEE Trans. Wireless Commun., pp. 1–1, December 2023.
  13. H. Xie, D. Yang, L. Xiao, and J. Lyu, “Connectivity-aware 3D UAV path design with deep reinforcement learning,” IEEE Trans. Veh. Technol., vol. 70, no. 12, pp. 13 022–13 034, 2021.
  14. 3GPP-TR-36.777, “Enhanced LTE support for aerial vehicles,” 3GPP Technical Report, Dec. 2017.
  15. W. Gao, D. Ge, C. Sun, and Y. Ye, “Solving linear programs with fast online learning algorithms,” in Proc. Int. Conf. Machine Learning(ICML), 2023.

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