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Beam Alignment for Millimeter Wave Vehicular Communications

Author : Vutha Va
Publisher :
Page : 400 pages
File Size : 41,19 MB
Release : 2018
Category :
ISBN :

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Millimeter wave (mmWave) has the potential to provide vehicles with high data rate communications that will enable a whole new range of applications. Its use, however, is not straightforward due to its challenging propagation characteristics. One approach to overcome the propagation challenge is the use of directional beams, but it requires a proper alignment and presents a challenging engineering problem, especially under the high vehicular mobility. In this dissertation, fast and efficient beam alignment solutions suitable for vehicular applications are developed. To better quantify the problem, first the impact of directional beams on the temporal variation of the channels is investigated theoretically. The proposed model includes both the Doppler effect and the pointing error due to mobility. The channel coherence time is derived, and a new concept called the beam coherence time is proposed for capturing the overhead of mmWave beam alignment. Next, an efficient learning-based beam alignment framework is proposed. The core of this framework is the beam pair selection methods that use side information (position in this case) and past beam measurements to identify promising beam directions and eliminate unnecessary beam training. Three offline learning methods for beam pair selection are proposed: two statistics-based and one machine learning-based methods. The two statistical learning methods consist of a heuristic and an optimal selection that minimizes the misalignment probability. The third one uses a learning-to-rank approach from the recommender system literature. The proposed approach shows an order of magnitude lower overhead than existing standard (IEEE 802.11ad) enabling it to support large arrays at high speed. Finally, an online version of the optimal statistical learning method is developed. The solution is based on the upper confidence bound algorithm with a newly introduced risk-aware feature that helps avoid severe misalignment during the learning. Along with the online beam pair selection, an online beam pair refinement is also proposed for learning to adapt the codebook to the environment to further maximize the beamforming gain. The combined solution shows a fast learning behavior that can quickly achieve positive gain over the exhaustive search on the original (and unrefined) codebook. The results show that side information can help reduce mmWave link configuration overhead.

Millimeter-Wave Networks

Author : Peng Yang
Publisher : Springer Nature
Page : 169 pages
File Size : 23,99 MB
Release : 2021-10-27
Category : Computers
ISBN : 3030886301

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This book provides a comprehensive review and in-depth study on efficient beamforming design and rigorous performance analysis in mmWave networks, covering beam alignment, beamforming training and beamforming-aided caching. Due to significant beam alignment latency between the transmitter and the receiver in existing mmWave systems, this book proposes a machine learning based beam alignment algorithm for mmWave networks to determine the optimal beam pair with a low latency. Then, to analyze and enhance the performance of beamforming training (BFT) protocol in 802.11ad mmWave networks, an analytical model is presented to evaluate the performance of BFT protocol and an enhancement scheme is proposed to improve its performance in high user density scenarios. Furthermore, it investigates the beamforming-aided caching problem in mmWave networks, and proposes a device-to-device assisted cooperative edge caching to alleviate backhaul congestion and reduce content retrieval delay. This book concludes with future research directions in the related fields of study. The presented beamforming designs and the corresponding research results covered in this book, provides valuable insights for practical mmWave network deployment and motivate new ideas for future mmWave networking. This book targets researchers working in the fields of mmWave networks, beamforming design, and resource management as well as graduate students studying the areas of electrical engineering, computing engineering and computer science. Professionals in industry who work in this field will find this book useful as a reference.

Millimeter Wave Vehicular Link Configuration Using Machine Learning

Author : Yuyang Wang
Publisher :
Page : 346 pages
File Size : 29,83 MB
Release : 2020
Category :
ISBN :

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Millimeter-wave (MmWave) vehicular communication enables massive sensor data sharing and various emerging applications related to safety, traffic efficiency and infotainment. Estimating and tracking beams in mmWave vehicular communication, however, is challenging due to the use of large antenna arrays and high mobility in the vehicular context. Fortunately, wireless cellular communication systems have access to vast data resources, which can make beam training more efficient. Data-driven approaches are able to leverage side information and underlying channel statistics to optimize link configuration in mmWave vehicular communication with negligible overhead. In the first part of this dissertation, we develop a situational awareness-aided beam alignment solution using machine learning. Situational awareness, defined as the locations and shapes of the receiver and its surrounding vehicles, can be obtained from sensors to extract environment information and retrieve good beam directions. We formulate mmWave beam selection as a multi-class classification problem, based on hand-crafted features that capture the situational awareness in different coordinates. We provide a comprehensive comparison among the different classification models and various levels of situational awareness. To demonstrate the scalability of the proposed beam selection solution in the large antenna array regime, we propose two solutions to recommend multiple beams and exploit an extra phase of beam sweeping among the recommended beams. In the second part of this dissertation, we develop mmWave vehicular beam alignment solutions with relaxed requirements of connected vehicles and sensor information sharing. The proposed model focuses on designing compressive sensing techniques that leverage the underlying channel angular statistics in site-specific areas using fewer channel measurements. We investigate the problem from an online learning-based approach that optimizes the sensing matrix on the fly and an offline approach that designs the compressive sensing framework using a convolutional neural network. We incorporate hardware constraints of the phased array in the sensing matrix optimization. We investigate structures in frequency-domain channels and propose solutions to optimize power allocated for different subcarriers. Numerical results show that data-driven approaches can achieve accurate link configuration for mmWave vehicular communication with negligible training overhead

Beam Training Optimization for Millimeter Wave Communication

Author : Evan R. Ding
Publisher :
Page : 100 pages
File Size : 46,3 MB
Release : 2018
Category :
ISBN :

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Millimeter wave (mmWave) technology has emerged as a promising solution to the spectrum demands of 5G networks. To achieve the necessary link budget for high throughput data transfer, mmWave links employ beamforming using antenna arrays with a large number of elements. However, this introduces the need for beam training, the process of finding beam alignments that can support a robust data link. Due to the dynamic nature of 5G environments, beam training must be conducted quickly since devices move in and out of communication range over short time scales. In this thesis, the optimization of beam training is explored within this context. Specifically, we derive a complexity bound for beam training in the limited scope of an idealized Boolean model, and a class of algorithms which achieve the bound is presented. The performance of these algorithms in non-ideal contexts are evaluated through simulation, and improvements over the existing IEEE 802.11ad standard are demonstrated.

Millimeter Wave Vehicular Communications

Author : Vutha Va
Publisher :
Page : 126 pages
File Size : 40,84 MB
Release : 2016-06-14
Category : Computers
ISBN : 9781680831481

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This monograph provides a survey on mmWave vehicular networks including channel propagation measurement, PHY design, and MAC design.

Initial Beam Access Schemes for Millimeter Wave Cellular Networks

Author : Mohammed Jasim
Publisher :
Page : 164 pages
File Size : 47,47 MB
Release : 2018
Category : Beamforming
ISBN :

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Finally, this dissertation addresses the problem of link sensitivity and blockage effects in millimeter wave networks, a subsequent stage to beam access and link association. Nevertheless, a novel link recovery procedure is proposed here that features instantaneous link-recovery and high signal levels.