Digital beamforming with data-driven models and effective optimization

Digital beamforming is an emerging technology with wide and critical applications in wireless communications and radar systems. There are increasing demands for more efficient and sophisticated engineering beamforming techniques for larger arrays under a constraint engineering cost for current and f...

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Main Author: Xiao, Xiao
Other Authors: Lu Yilong
Format: Thesis-Doctor of Philosophy
Language:English
Published: Nanyang Technological University 2022
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Online Access:https://hdl.handle.net/10356/159256
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1592562022-06-10T04:25:47Z Digital beamforming with data-driven models and effective optimization Xiao, Xiao Lu Yilong School of Electrical and Electronic Engineering EYLU@ntu.edu.sg Engineering::Electrical and electronic engineering::Antennas, wave guides, microwaves, radar, radio Digital beamforming is an emerging technology with wide and critical applications in wireless communications and radar systems. There are increasing demands for more efficient and sophisticated engineering beamforming techniques for larger arrays under a constraint engineering cost for current and future cellular communications and digital array radars. This PhD study explores data-driven models with global optimization and artificial intelligence for fast and flexible digital beamforming of practical values. The classical digital beamforming is largely based on analytical or numerical solutions of specific beamforming problems with limitations in flexibility and performance. Inspired by big-data and artificial intelligence, the idea of data-based digital beamforming is proposed for faster, more flexible and high-performance solutions to sophisticated beamforming problems. The data-driven beamforming utilizes off-line generated weights as the data and establishes the link between the required radiation pattern and weights, carrying out the beamforming that benefits the wireless system. This thesis has made four contributions along with the exploration of the topic. Firstly, sophisticated digital beamforming for linear arrays has been extensively studied. The study compares and evaluates the effectiveness of a few most popular global optimization algorithms. These algorithms are deployed under a 1-dimensional linear array setup and compared in challenging beamforming problems. After extensive experiments, the BA is found to be more effective than other candidate algorithms hence used to generate training samples for the data-based digital beamforming. Secondly, an effective data-driven model is proposed and tested for linear array wide nulling and null steering problems. A data-driven adaptive digital beamforming model using General Regression Neural Network (GRNN) is developed to fit the beamforming training samples generated by the BA. The model considers the adaptive beamforming of the main lobe with steerable nulls of varying widths. The numerical experiments and evaluation show that the proposed data-driven digital beamforming model is effective even without any further optimization. Thirdly, the proposed concept was extended to more challenging beamforming problems. Improvement of conventional pattern optimization approach and corresponding extension into 2D array formation is made. A novel multiplexer-based coding scheme, hybrid cost function and improved BA are proposed and tested under various beamforming problems. The outcome serves as important tool for data generation to 2D planar array data-driven beamforming model and the effectiveness is proven in this chapter. Lastly, the idea of a data-driven model is extended to planar array beamforming of greater demands and practical values, using a combination of the multiplexer-based beamforming model with the improved hybrid cost BA and a Deep Neural Network model trained under supervised and unsupervised schemes. The data-driven model shows a promising performance and provides flexible wide null steering capability. Doctor of Philosophy 2022-06-10T04:24:02Z 2022-06-10T04:24:02Z 2022 Thesis-Doctor of Philosophy Xiao, X. (2022). Digital beamforming with data-driven models and effective optimization. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/159256 https://hdl.handle.net/10356/159256 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering::Antennas, wave guides, microwaves, radar, radio
spellingShingle Engineering::Electrical and electronic engineering::Antennas, wave guides, microwaves, radar, radio
Xiao, Xiao
Digital beamforming with data-driven models and effective optimization
description Digital beamforming is an emerging technology with wide and critical applications in wireless communications and radar systems. There are increasing demands for more efficient and sophisticated engineering beamforming techniques for larger arrays under a constraint engineering cost for current and future cellular communications and digital array radars. This PhD study explores data-driven models with global optimization and artificial intelligence for fast and flexible digital beamforming of practical values. The classical digital beamforming is largely based on analytical or numerical solutions of specific beamforming problems with limitations in flexibility and performance. Inspired by big-data and artificial intelligence, the idea of data-based digital beamforming is proposed for faster, more flexible and high-performance solutions to sophisticated beamforming problems. The data-driven beamforming utilizes off-line generated weights as the data and establishes the link between the required radiation pattern and weights, carrying out the beamforming that benefits the wireless system. This thesis has made four contributions along with the exploration of the topic. Firstly, sophisticated digital beamforming for linear arrays has been extensively studied. The study compares and evaluates the effectiveness of a few most popular global optimization algorithms. These algorithms are deployed under a 1-dimensional linear array setup and compared in challenging beamforming problems. After extensive experiments, the BA is found to be more effective than other candidate algorithms hence used to generate training samples for the data-based digital beamforming. Secondly, an effective data-driven model is proposed and tested for linear array wide nulling and null steering problems. A data-driven adaptive digital beamforming model using General Regression Neural Network (GRNN) is developed to fit the beamforming training samples generated by the BA. The model considers the adaptive beamforming of the main lobe with steerable nulls of varying widths. The numerical experiments and evaluation show that the proposed data-driven digital beamforming model is effective even without any further optimization. Thirdly, the proposed concept was extended to more challenging beamforming problems. Improvement of conventional pattern optimization approach and corresponding extension into 2D array formation is made. A novel multiplexer-based coding scheme, hybrid cost function and improved BA are proposed and tested under various beamforming problems. The outcome serves as important tool for data generation to 2D planar array data-driven beamforming model and the effectiveness is proven in this chapter. Lastly, the idea of a data-driven model is extended to planar array beamforming of greater demands and practical values, using a combination of the multiplexer-based beamforming model with the improved hybrid cost BA and a Deep Neural Network model trained under supervised and unsupervised schemes. The data-driven model shows a promising performance and provides flexible wide null steering capability.
author2 Lu Yilong
author_facet Lu Yilong
Xiao, Xiao
format Thesis-Doctor of Philosophy
author Xiao, Xiao
author_sort Xiao, Xiao
title Digital beamforming with data-driven models and effective optimization
title_short Digital beamforming with data-driven models and effective optimization
title_full Digital beamforming with data-driven models and effective optimization
title_fullStr Digital beamforming with data-driven models and effective optimization
title_full_unstemmed Digital beamforming with data-driven models and effective optimization
title_sort digital beamforming with data-driven models and effective optimization
publisher Nanyang Technological University
publishDate 2022
url https://hdl.handle.net/10356/159256
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