Neural Network-Based Intelligent Reflecting Surface Assisted Direction of Arrival Estimation
Yasin Azhdari, Mahmoud Farhang

TL;DR
This paper introduces a neural network architecture with a learnable IRS layer for improved Direction-of-Arrival estimation in challenging wireless environments, demonstrating superior accuracy through simulations.
Contribution
The paper proposes a novel neural network with a learnable IRS layer that directly optimizes IRS phase shifts for enhanced DoA estimation without separate optimization algorithms.
Findings
Superior DoA estimation accuracy in simulations
Effective IRS phase shift learning during training
Comparison shows computational efficiency benefits
Abstract
Direction-of-Arrival (DoA) estimation assisted with an Intelligent Reflecting Surface (IRS) is crucial for various wireless applications, especially in challenging Non-Line-of-Sight (NLoS) environments. This paper presents a novel neural network-based architecture to address this challenge. The key innovation is the introduction of a dedicated, learnable IRS layer integrated within a carefully designed end-to-end system established upon the physical and geometrical basis of the problem. Unlike conventional neural network layers, this specific one incorporates block diagonal sinusoidal weight constraints, where the phase arguments of these sinusoids are learned during training to directly emulate the phase shifts of the IRS elements. This allows the end-to-end system to optimize the IRS configuration for enhanced DoA estimation, eliminating the need for separate IRS optimization…
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Taxonomy
TopicsFault Detection and Control Systems
