Sum Rate Enhancement using Machine Learning for Semi-Self Sensing Hybrid RIS-Enabled ISAC in THz Bands
Sara Farrag Mobarak, Tingnan Bao, Melike Erol-Kantarci

TL;DR
This paper introduces a semi-self sensing hybrid RIS in THz bands, utilizing deep reinforcement learning to optimize sum rate and sensing performance, outperforming traditional methods and passive RIS configurations.
Contribution
It proposes a novel SS-HRIS design with integrated sensing and communication, and develops a DDPG-based DRL algorithm for joint beamforming and precoding optimization.
Findings
DDPG-based DRL converges effectively.
Achieves higher sum rate than baselines.
HRIS significantly improves sum rate over passive RIS.
Abstract
This paper proposes a novel semi-self sensing hybrid reconfigurable intelligent surface (SS-HRIS) in terahertz (THz) bands, where the RIS is equipped with reflecting elements divided between passive and active elements in addition to sensing elements. SS-HRIS along with integrated sensing and communications (ISAC) can help to mitigate the multipath attenuation that is abundant in THz bands. In our proposed scheme, sensors are configured at the SS-HRIS to receive the radar echo signal from a target. A joint base station (BS) beamforming and HRIS precoding matrix optimization problem is proposed to maximize the sum rate of communication users while maintaining satisfactory sensing performance measured by the Cramer-Rao bound (CRB) for estimating the direction of angles of arrival (AoA) of the echo signal and thermal noise at the target. The CRB expression is first derived and the sum rate…
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Taxonomy
TopicsPhotonic and Optical Devices · Acoustic Wave Resonator Technologies · Terahertz technology and applications
MethodsBalanced Selection
