AI-Driven Optimization of Wave-Controlled Reconfigurable Intelligent Surfaces
Gal Ben Itzhak, Miguel Saavedra-Melo, Ender Ayanoglu, Filippo Capolino, A. Lee Swindlehurst

TL;DR
This paper presents a data-driven method using neural networks, genetic algorithms, and simulated annealing to optimize wave-controlled reconfigurable intelligent surfaces for improved radiation pattern control.
Contribution
It introduces a novel neural network-based approach combined with optimization algorithms to accurately configure RIS without relying on detailed physical modeling.
Findings
Neural network effectively maps BSW amplitudes to radiation patterns.
Genetic algorithm optimizes neural network parameters for pattern accuracy.
Simulated annealing finds optimal BSW amplitudes for desired signal quality.
Abstract
A promising type of Reconfigurable Intelligent Surface (RIS) employs tunable control of its varactors using biasing transmission lines below the RIS reflecting elements. Biasing standing waves (BSWs) are excited by a time-periodic signal and sampled at each RIS element to create a desired biasing voltage and control the reflection coefficients of the elements. A simple rectifier can be used to sample the voltages and capture the peaks of the BSWs over time. Like other types of RIS, attempting to model and accurately configure a wave-controlled RIS is extremely challenging due to factors such as device non-linearities, frequency dependence, element coupling, etc., and thus significant differences will arise between the actual and assumed performance. An alternative approach to solving this problem is data-driven: Using training data obtained by sampling the reflected radiation pattern of…
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Taxonomy
TopicsAdvanced Wireless Communication Technologies · Advanced Antenna and Metasurface Technologies · Metamaterials and Metasurfaces Applications
