博碩士論文 109523045 詳細資訊




以作者查詢圖書館館藏 以作者查詢臺灣博碩士 以作者查詢全國書目 勘誤回報 、線上人數:31 、訪客IP:18.218.218.230
姓名 蔡秉翰(Bing-Han Cai)  查詢紙本館藏   畢業系所 通訊工程學系
論文名稱 智能反射板輔助多無人機通訊之優化: 波束成形、相位偏移及飛行軌跡設計
(Optimization for Intelligent Reflection Surface assisted Multi-UAV Communications: Beamforming, Phase Shift and UAV Trajectory Designs)
相關論文
★ 基於干擾對齊方法於多用戶多天線下之聯合預編碼器及解碼器設計★ 應用壓縮感測技術於正交分頻多工系統之稀疏多路徑通道追蹤與通道估計方法
★ 應用於行動LTE 上鏈SC-FDMA 系統之通道等化與資源分配演算法★ 以因子圖為基礎之感知無線電系統稀疏頻譜偵測
★ Sparse Spectrum Detection with Sub-blocks Partition for Cognitive Radio Systems★ 中繼網路於多路徑通道環境下基於領航信號的通道估測方法研究
★ 基於代價賽局在裝置對裝置間通訊下之資源分配與使用者劃分★ 應用於多用戶雙向中繼網路之聯合預編碼器及訊號對齊與天線選擇研究
★ 多用戶波束成型和機會式排程於透明階層式蜂巢式系統★ 應用於能量採集中繼網路之最佳傳輸策略研究設計及模擬
★ 感知無線電中繼網路下使用能量採集的傳輸策略之設計與模擬★ 以綠能為觀點的感知無線電下最佳傳輸策略的設計與模擬
★ 二使用者於能量採集網路架構之合作式傳輸策略設計及模擬★ 基於Q-Learning之雙向能量採集通訊傳輸方法設計與模擬
★ 多輸入多輸出下同時訊息及能量傳輸系統之設計與模擬★ 附無線充電裝置間通訊於蜂巢式系統之設計與模擬
檔案 [Endnote RIS 格式]    [Bibtex 格式]    [相關文章]   [文章引用]   [完整記錄]   [館藏目錄]   至系統瀏覽論文 ( 永不開放)
摘要(中) 隨者科技的進步,無人機(UAV)與智能反射板(IRS)的研究迅速發展,其相關應用將可以改善無線通訊系統訊號品質;藉由無人機高操控性、部署簡單、成本低廉等特性,對於改善過往蜂巢式網路中,基地台於城市場域中和使用者間之通道因遮蔽效應造成通訊品質低下有很大的幫助,另外智能反射板也是一新興技術,藉由布置於高樓大廈外牆,將可控制反射信號角度進而增加傳輸信號強度,進而大幅提升通道品質。蜂巢式網路中位於細胞邊緣之使用者因與基地台位置較遠,容易因為通道路徑損失影響而造成通訊品質不佳,此外其他基地台對於使用者之干擾又近一步影響其效能,為此3GPP提出一協調式多點技術(Coordinated Multi-Point, CoMP),藉由基地台間共享通道狀態資訊,將可以藉由排程減少系統間各基地台之干擾亦或是多基地台共同傳輸相同信號以提高使用者吞吐量等,上述技術皆可對通訊系統有所幫助,因此本研究藉由將無人機搭載多天線基地台形成一多無人機協作式通訊系統,在都市條件下佈置多塊智能反射板,設計無人機軌跡、波束成形並計算反射板之反射單元角度,以達到整體系統吞吐量最大化。然而此問題為一複雜且非凸優化問題,吾人以交替優化形式拆解成三個子問題: (1) 固定無人機飛行軌跡與智能反射板反射單元角度前提下設計基地台波束成形,在有限天線數量條件下,設計波束成形使干擾傳輸信號通道處於主要傳輸信號通道之零空間以消除無人機群間之干擾;在巨量天線條件下,考慮各無人機群因天線間干擾互為獨立同分布而趨近於零,分析出波束成形之漸近解為最大比值合併(Maximum Ratio Transmission, MRT)方法。(2) 固定無人機飛行軌跡與基地台波束成形前提下設計智能反射板每一反射單元之角度,在有限天線數量條件下,提出一半正定鬆弛(Semi-Definite Relaxation, SDR)最佳化方法計算反射角度,並與現有之暴力破解法及最小平方法進行比較;進一步在巨量天線條件下,推導出反射單元之角度最佳漸近解。(3) 固定智能反射板之反射單元角度與基地台波束成形下設計無人機飛行軌跡,在有限天線數量條件下,將非凸優化問題經由鬆綁與變數變換轉換成一個凸優化問題並藉由連續凸逼近方法設計無人機飛行軌跡;在巨量天線條件下,藉由獲得的波束成形與反射角度漸近解簡化條件限制式,獲得無人機飛行軌跡漸近解。透過電腦模擬驗證效能,比較不同無人機天線數與有無智能反射板輔助對於系統吞吐量之影響,數值結果顯示智能反射板之輔助可有效改善系統吞吐量表現,此外本研究提出之基於半正定鬆弛之反射角度演算法優於最小平方演算法之系統吞吐量,亦可在略遜於暴力破解法效能下大幅降低系統複雜度。
摘要(英) With the advancement of technology, the research of unmanned aerial vehicles (UAV) and intelligent reflective surface (IRS) is rapidly developing, the related applications will improve the signal quality of wireless communication systems. In addition, intelligent reflective surface is also an innovative technology, which can be placed on the external wall of high buildings to control the angle of the reflected signal and increase the strength of the transmitted signal, thus significantly improving the channel quality. Users at the edge of cells in cellular networks are located far away from the base station and are suffered from poor communication quality due to channel path loss. In addition, the interference of other base stations to users further affects its performance, therefore, 3GPP proposes a Coordinated Multi-Point (CoMP) technology. By sharing the channel state information among the base stations, it is possible to reduce the interference among the base stations by scheduling or to increase the user throughput by transmitting the same signal from multiple base stations. The UAV trajectory, beamforming, and the angle of the reflecting unit of the IRS are calculated to maximize the system throughput. However, this problem is a complex and non-convex optimization problem, which we break down into three sub-problems in the form of alternating optimization: (1) Under the condition of fixed UAV flight trajectory and the angle of the reflecting unit of the intelligent reflection surface, the beamforming of the base station is designed so that the interference transmission signal channel is located in the zero space of the main transmission signal channel to eliminate the interference among the UAV groups; under the condition of massive MIMO, the interference among the UAV groups is considered to be independently distributed and tends to zero, and the asymptotic solution of beamforming is analyzed as the Maximum Ratio Combining (MRC) method. (2) The angle of each reflector of the intelligent reflection surface is designed under the fixed UAV trajectory and beamforming of the base station, and under the condition of the limited number of antennas, the Semi-Definite Relaxation (SDR) optimization method is proposed to calculate the reflection angle, also, the optimal asymptotic solution for the angle of the reflecting unit is further derived under the condition of massive MIMO. (3) The UAV trajectory is designed by fixing the reflecting unit angle of the intelligent reflection surface and the beamforming of the base station. Under the condition of a limited number of antennas, the non-convex optimization problem is transformed into a convex optimization problem by relaxation and variable transformation, and the UAV trajectory is designed by successive convex approximation methods. The asymptotic solution of the UAV trajectory is obtained by simplifying the conditional constraint with the obtained beamforming and reflection angle asymptotic solutions under massive MIMO.
The numerical results show that the intelligent reflection surface can effectively improve the system throughput performance. In addition, the reflection angle algorithm based on semidefinite relaxation and the trajectory design approach proposed in this study can effectively improve the system throughput.
關鍵字(中) ★ 多無人機通訊
★ 協調式多點技術
★ 波束成型
★ 智能反射板
★ 軌跡設計
★ 最佳化
關鍵字(英) ★ Unmanned aerial vehicle (UAV) communication
★ coordinated multi-point (CoMP)
★ Beamforming
★ Intelligent reflection surface (IRS)
★ UAV trajectory
★ convex optimization.
論文目次 摘要 i
Abstract iii
Acknowledgments v
Contents vi
List of Figures viii
List of Tables ix
List of Symbols x
Chapter 1 Introduction 1
1-1 Overview and Motivations 1
1-2 Literature Survey 3
1.2.1 IRS-assisted UAV Communication System Application 3
1.2.2 Multi-UAV Communication System with Coordinated Multi-Point Technique Application 5
Chapter 2 Technical Theory 7
2-1 Coordinated Multi-Point 7
2-2 Intelligent Reflection Surface 9
Chapter 3 Intelligent Reflection Surface-assisted UAV Communication 11
3-1 System Model 11
3-2 Joint Design Problem Formulation 17
3-3 Subproblem I: Optimization of Beamforming 18
3-4 Subproblem II: Optimization of Phase Shift of IRS 21
3.4.1 Semi-definite Relaxation (SDR) Based Approach 22
3.4.2 Least Square (LS) Based Approach 25
3.4.3 Computational Complexity 25
3-5 Subproblem III: Optimization of UAV Trajectory 26
3-6 Proposed Alternative Algorithm for Joint Beamforming, IRS, and UAV Optimization 31
Chapter 4 Asymptotic Analysis under Massive MIMO 33
4-1 Asymptotic Design of Beamforming 33
4-2 Asymptotic Design of IRS Phase Shift 34
4-3 Asymptotic Design of UAV Trajectory 38
Chapter 5 Simulation Results and Discussions 44
5-1 Parameter Setting 44
5-2 Simulation Results 46
5.2.1 Effect of Beamforming on System Performance 47
5.2.2 Effect of Phase Shift of IRS on System Performance 48
5.2.3 Effect of UAV Trajectory on System Performance 49
5.2.4 Performance of the Proposed Joint Design Algorithm 52
Chapter 6 Conclusion 59
Chapter 7 Appendix 60
7-1 Convergence of algorithms 60
Reference 62
參考文獻 [1]
M. Zhao, Q. Wu, M. Zhao and R. Zhang, “Exploiting Amplitude Control in Intelligent Reflecting Surface Aided Wireless Communication With Imperfect CSI,” IEEE Trans. Commun., vol. 69, no. 6, pp. 4216-4231, June 2021.
[2]
Q. Wu, S. Zhang, B. Zheng, C. You and R. Zhang, “Intelligent Reflecting Surface-Aided Wireless Communications: A Tutorial,” IEEE Trans. Commun., vol. 69, no. 5, pp. 3313-3351, May 2021.
[3]
S. Li, B. Duo, X. Yuan, Y. Liang and M. Di Renzo, “Reconfigurable Intelligent Surface Assisted UAV Communication: Joint Trajectory Design and Passive Beamforming,” IEEE Wireless Commun. Lett., vol. 9, no. 5, pp. 716-720, May 2020.
[4]
L. Ge, P. Dong, H. Zhang, J. Wang and X. You, “Joint Beamforming and Trajectory Optimization for Intelligent Reflecting Surfaces-Assisted UAV Communications,” IEEE Access, vol. 8, pp. 78702-78712, 2020.
[5]
K. Yu, X. Yu and J. Cai, “UAVs Assisted Intelligent Reflecting Surfaces SWIPT System With Statistical CSI,” IEEE J. Sel. Topics. Signal Process., vol. 15, no. 5, pp. 1095-1109, Aug. 2021.
[6]
F. Wu, D. Yang, L. Xiao, and L. Cuthbert, “Energy Consumption and Completion Time Tradeoff in Rotary-Wing UAV Enabled WPCN,” IEEE Access, vol. 7, pp. 79617–79635, Jun. 2019.
[7]
X. Wang, W. Feng, Y. Chen and N. Ge, “UAV Swarm-Enabled Aerial CoMP: A Physical Layer Security Perspective,” IEEE Access, vol. 7, pp. 120901-120916, 2019.
[8]
L. Liu, S. Zhang and R. Zhang, “CoMP in the Sky: UAV Placement and Movement Optimization for Multi-User Communications,” IEEE Trans. Commun., vol. 67, no. 8, pp. 5645-5658, Aug. 2019.
[9]
M. Hua, Y. Wang, M. Lin, C. Li, Y. Huang and L. Yang, “Joint CoMP Transmission for UAV-Aided Cognitive Satellite Terrestrial Networks,” IEEE Access, vol. 7, pp. 14959-14968, 2019.
[10]
R. Amer, W. Saad and N. Marchetti, “Mobility in the Sky: Performance and Mobility Analysis for Cellular-Connected UAVs,” IEEE Trans. Commun., vol. 68, no. 5, pp. 3229-3246, May 2020.
[11]
M. Jung, W. Saad, M. Debbah, and C.Hong, “On the Optimality of Reconfigurable Intelligent Surfaces (RISs): Passive Beamforming, Modulation, and Resource Allocation, ” IEEE Trans. Wireless Commun., vol. 20, no. 7, pp. 4347–4363, 2021.
[12]
E. Basar, M. Di Renzo, J. De Rosny, M. Debbah, M. -S. Alouini and R. Zhang, “Wireless Communications Through Reconfigurable Intelligent Surfaces,” IEEE Access, vol. 7, pp. 116753-116773, 2019.
[13]
Q. Wu and R. Zhang, “Intelligent Reflecting Surface Enhanced Wireless Network: Joint Active and Passive Beamforming Design,” in Proc. IEEE Global common. Conf., 2018, pp. 1-6
[14]
W. Yan, X. Yuan, Z. -Q. He and X. Kuai, “Passive Beamforming and Information Transfer Design for Reconfigurable Intelligent Surfaces Aided Multiuser MIMO Systems,” IEEE J. Sel. Areas Commun., vol. 38, no. 8, pp. 1793-1808, Aug. 2020.
[15]
Wing-Kin Ma, Pak-Chung Ching and Z. Ding, “Semidefinite Relaxation Based Multiuser Detection for M-ary PSK Multiuser Systems,” IEEE J. Sel. Topics. Signal Process., vol. 52, no. 10, pp. 2862-2872, Oct. 2004.
[16] P. Wang, J. Fang, X. Yuan, Z. Chen and H. Li, “Intelligent Reflecting Surface-Assisted Millimeter Wave Communications: Joint Active and Passive Precoding Design,” IEEE Trans. Veh. Technol., vol. 69, no. 12, pp. 14960-14973, Dec. 2020.
[17] P. Wang, J. Fang, X. Yuan, Z. Chen and H. Li, “Intelligent Reflecting Surface-Assisted Millimeter Wave Communications: Joint Active and Passive Precoding Design,” IEEE Trans. Veh. Technol., vol. 69, no. 12, pp. 14960-14973, Dec. 2020.
[18] J. Yao and J. Xu, “Joint 3D Maneuver and Power Adaptation for Secure UAV Communication With CoMP Reception,” IEEE Trans. Wireless Commun., vol. 19, no. 10, pp. 6992-7006, Oct. 2020.
[19] N. A. Khan Beigi and M. Reza Soleymani, “On the Coordinated Multipoint Joint Transmission in Multi-UAV Sensor Networks,” in Proc. IEEE Int. Conf. Commun. (ICC), 2021, pp. 1-6.
[20] X. Lin et al., “The Sky Is Not the Limit: LTE for Unmanned Aerial Vehicles,” IEEE Commun.Mag., vol. 56, no. 4, pp. 204-210, April 2018.
[21] Y. Zeng, J. Lyu, and R. Zhang, “Cellular-connected UAV: Potential, challenges, and promising technologies,” IEEE Wireless Commun., vol.26, no. 1, pp. 120–127, Feb. 2019.
[22] C. Feng, C. Zhang and X. Luo, “Trajectory and Beamforming Vector Optimization for Multi-UAV Multicast Network,” in Proc. IEEE WCSP, Xi’an, China, Oct. 2019, pp. 1–6.
[23] Q. Wu and R. Zhang, “Intelligent reflecting surface enhanced wireless network via joint active and passive beamforming,” IEEE Trans. Wireless Commun., vol. 18, no. 11, pp. 5394–5409, Nov. 2019.
[24] X. Li, J. Fang, F. Gao, and H. Li, “Joint active and passive beamforming for intelligent reflecting surface-assisted massive MIMO systems,” 2019, arXiv:1912.00728.
[25] S. Fang, G. Chen and Y. Li, “Joint Optimization for Secure Intelligent Reflecting Surface Assisted UAV Networks,” IEEE Wireless Commun. Lett., vol. 10, no. 2, pp. 276-280, Feb. 2021.
[26] Z. Wei et al., “Sum-Rate Maximization for IRS-Assisted UAV OFDMA Communication Systems,” IEEE Trans. Wireless Commun., vol. 20, no.4, pp. 2530-2550, April 2021.
[27] Q. Wu and R. Zhang, “Common throughput maximization in UAV-enabled OFDMA systems with delay consideration,” IEEE Trans. Commun., vol. 66, no. 12, pp. 6614–6627, Dec. 2018.
[28] G. Amarasuriya, E. G. Larsson and H. V. Poor, “Wireless Information and Power Transfer in Multiway Massive MIMO Relay Networks,” IEEE Trans. Wireless Commun., vol. 15, no. 6, pp. 3837-3855, June 2016.
[29] E. Basar, M. Di Renzo, J. De Rosny, M. Debbah, M. -S. Alouini and R.Zhang, “Wireless Communications Through Reconfigurable Intelligent Surfaces,” IEEE Access, vol. 7, pp. 116753-116773, 2019.
[30] M. Jung, W. Saad, M. Debbah and C. S. Hong, “On the Optimality of Reconfigurable Intelligent Surfaces (RISs): Passive Beamforming, Modulation, and Resource Allocation,” IEEE Trans. Wireless Commun., vol. 20, no. 7, pp. 4347-4363, July 2021.
[31] Q. Wu and R. Zhang, “Intelligent reflecting surface enhanced wireless network via joint active and passive beamforming,” IEEE Trans. Wireless Commun., vol. WC-18, no. 11, pp. 5394–5409, Nov. 2019.
[32] S. Xia and Y. Shi, “Intelligent Reflecting Surface for Massive Device Connectivity: Joint Activity Detection and Channel Estimation,” in Proc. IEEE Int. Conf. Acoust., Speech Signal Process. (ICASSP), May 2020, pp. 5175–5179.
[33] B. Al-Nahhas, Q. -U. -A. Nadeem and A. Chaaban, “Intelligent Reflecting Surface Assisted MISO Downlink: Channel Estimation and Asymptotic Analysis,” in Proc. IEEE Global Commun. Conf. (GLOBECOM), Dec. 2020, pp. 1-6.
[34] Q. Wu, S. Zhang, B. Zheng, C. You and R. Zhang, “Intelligent Reflecting Surface-Aided Wireless Communications: A Tutorial,” IEEE Trans. Wireless Commun., vol. 69, no. 5, pp. 3313-3351, May 2021.
[35] J. Lyu and R. Zhang, “Hybrid Active/Passive Wireless Network Aided by Intelligent Reflecting Surface: System Modeling and Performance Analysis,” IEEE Trans. Wireless Commun., vol. 20, no. 11, pp. 7196-7212, Nov. 2021.
指導教授 古孟霖(Meng-Lin Ku) 審核日期 2022-7-21
推文 facebook   plurk   twitter   funp   google   live   udn   HD   myshare   reddit   netvibes   friend   youpush   delicious   baidu   
網路書籤 Google bookmarks   del.icio.us   hemidemi   myshare   

若有論文相關問題,請聯絡國立中央大學圖書館推廣服務組 TEL:(03)422-7151轉57407,或E-mail聯絡  - 隱私權政策聲明