Over-the-Air Diagnosis of Defective Elements in Intelligent Reflecting Surface
Ziyi Zhao, Zhaorui Wang, Lin Zhou, Chunsong Sun, Shuowen, Zhang, Naofal Al-Dhahir, Liang Liu

TL;DR
This paper introduces novel over-the-air diagnosis methods for efficiently identifying defective elements in intelligent reflecting surfaces (IRS) using adaptive querying techniques inspired by the 20 questions problem, even under noisy conditions.
Contribution
It proposes the first adaptive, over-the-air diagnosis algorithms for IRS defect localization based on noisy and noiseless 20 questions techniques, improving speed and accuracy.
Findings
The methods accurately localize defective IRS elements.
The algorithms are robust to noisy measurement conditions.
Numerical results demonstrate rapid and precise diagnosis.
Abstract
Due to circuit failures, defective elements that cannot adaptively adjust the phase shifts of their impinging signals in a desired manner may exist on an intelligent reflecting surface (IRS). Traditional way to locate these defective IRS elements requires a thorough diagnosis of all the circuits belonging to a huge number of IRS elements, which is practically challenging. In this paper, we will devise novel approaches under which a transmitter sends known pilot signals and a receiver localizes all the defective IRS elements just based on its over-the-air measurements reflected from the IRS. Specifically, given any set of IRS elements, we propose an efficient method to process the received signals to determine whether this cluster contains defective elements or not with a very high accuracy probability. Based on this method, we show that the over-the-air diagnosis problem belongs to the…
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Taxonomy
TopicsAdvanced Measurement and Metrology Techniques
MethodsSparse Evolutionary Training
