Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches

This paper presents an integrated approach for diagnosing and correcting faults in antenna arrays using a Bayesian compressive sensing (BCS) method. The proposed diagnostic technique effectively identifies both ON-OFF and partial faults with limited phaseless measurement data. By linearizing the non...

Full description

Saved in:
Bibliographic Details
Main Authors: Zi An Wang, Ping Li
Format: Article
Language:English
Published: Chinese Institute of Electronics 2025-03-01
Series:Electromagnetic Science
Subjects:
Online Access:https://www.emscience.org/en/article/doi/10.23919/emsci.2024.0038
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849391046001164288
author Zi An Wang
Ping Li
author_facet Zi An Wang
Ping Li
author_sort Zi An Wang
collection DOAJ
description This paper presents an integrated approach for diagnosing and correcting faults in antenna arrays using a Bayesian compressive sensing (BCS) method. The proposed diagnostic technique effectively identifies both ON-OFF and partial faults with limited phaseless measurement data. By linearizing the nonlinear inverse problem through a phaseless mapping method and employing a multitask BCS (MT-BCS) algorithm, the solution accounts for statistical correlations between the real and imaginary parts of sparse unknowns, ensuring robust diagnoses from highly coherent near-field measurements. Meanwhile, to address the detected faults effectively, a novel pattern correction method within an alternate projection framework is further developed to recover the pattern features with minimal corrections. This method features a modified forward projection rule to accelerate convergence and utilizes a BCS algorithm during backward projection to find sparse correction vectors. In addition, an innovative termination criterion is introduced to avoid trapping in local minima. Comprehensive numerical experiments demonstrate the effectiveness and efficiency of the proposed integrated approach in diagnosing various fault types and correcting radiation patterns. The results indicate that the method offers a promising solution for real-time online correction of large-scale antenna arrays.
format Article
id doaj-art-fbf594017fa14c09aaa79da48cfb87b5
institution Kabale University
issn 2836-9440
2836-8282
language English
publishDate 2025-03-01
publisher Chinese Institute of Electronics
record_format Article
series Electromagnetic Science
spelling doaj-art-fbf594017fa14c09aaa79da48cfb87b52025-08-20T03:41:12ZengChinese Institute of ElectronicsElectromagnetic Science2836-94402836-82822025-03-013111410.23919/emsci.2024.0038EMS20240038Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing ApproachesZi An Wang0Ping Li1State Key Laboratory of Radio Frequency Heterogeneous Integration, Shanghai Jiao Tong University, Shanghai 200240, ChinaSchool of Electronic Science and Engineering, University of Electronic Science and Technology of China, Chengdu 611731, ChinaThis paper presents an integrated approach for diagnosing and correcting faults in antenna arrays using a Bayesian compressive sensing (BCS) method. The proposed diagnostic technique effectively identifies both ON-OFF and partial faults with limited phaseless measurement data. By linearizing the nonlinear inverse problem through a phaseless mapping method and employing a multitask BCS (MT-BCS) algorithm, the solution accounts for statistical correlations between the real and imaginary parts of sparse unknowns, ensuring robust diagnoses from highly coherent near-field measurements. Meanwhile, to address the detected faults effectively, a novel pattern correction method within an alternate projection framework is further developed to recover the pattern features with minimal corrections. This method features a modified forward projection rule to accelerate convergence and utilizes a BCS algorithm during backward projection to find sparse correction vectors. In addition, an innovative termination criterion is introduced to avoid trapping in local minima. Comprehensive numerical experiments demonstrate the effectiveness and efficiency of the proposed integrated approach in diagnosing various fault types and correcting radiation patterns. The results indicate that the method offers a promising solution for real-time online correction of large-scale antenna arrays.https://www.emscience.org/en/article/doi/10.23919/emsci.2024.0038alternate projectionsantenna arraysbayesian compressive sensingfault diagnosispattern correctionphaseless near-field measurements
spellingShingle Zi An Wang
Ping Li
Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches
Electromagnetic Science
alternate projections
antenna arrays
bayesian compressive sensing
fault diagnosis
pattern correction
phaseless near-field measurements
title Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches
title_full Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches
title_fullStr Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches
title_full_unstemmed Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches
title_short Phaseless Diagnosis and Pattern Correction of Faulty Antenna Arrays via Advanced Bayesian Compressive Sensing Approaches
title_sort phaseless diagnosis and pattern correction of faulty antenna arrays via advanced bayesian compressive sensing approaches
topic alternate projections
antenna arrays
bayesian compressive sensing
fault diagnosis
pattern correction
phaseless near-field measurements
url https://www.emscience.org/en/article/doi/10.23919/emsci.2024.0038
work_keys_str_mv AT zianwang phaselessdiagnosisandpatterncorrectionoffaultyantennaarraysviaadvancedbayesiancompressivesensingapproaches
AT pingli phaselessdiagnosisandpatterncorrectionoffaultyantennaarraysviaadvancedbayesiancompressivesensingapproaches