Adaptive RIS Configuration Design with Environmental Sensing for User Localization in Dynamic Rich Scattering Environment
Anum Umer, Ivo M\"u\"ursepp, Muhammad Mahtab Alam

TL;DR
This paper introduces an adaptive, learning-based RIS configuration method using environmental sensing and biLSTM models to improve user localization accuracy in dynamic rich-scattering environments.
Contribution
It proposes a novel bidirectional LSTM-based approach with environment sensing for adaptive RIS configuration and localization in complex scattering scenarios.
Findings
Achieves significantly lower localization RMSE compared to baseline methods.
Demonstrates effectiveness in both SISO and MIMO RIS-assisted networks.
Scales well with RIS size and network dimensions.
Abstract
This paper addresses the problem of adaptive reconfigurable intelligent surfaces (RIS) configuration design for user localization in rich-scattering environment (RSE), where electromagnetic waves undergo multiple interactions with dynamic scatterers and RIS elements. We propose an adaptive learning-based localization approach for a distributed RIS-assisted network in a RSE using a bidirectional long-short term memory (biLSTM) model that captures temporal correlations between observations. The proposed approach actively senses the environment using sequential pilot transmissions from the base station (BS), accounting for scattering effects, and adaptively updates the RIS configuration based on prior measurements to eventually accurately estimate and minimize the user localization error. The proposed model comprises two neural sub-networks: Scattering Estimation Network (Bi-SEN), for…
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