A Deep Reinforcement Learning Approach for Autonomous Reconfigurable Intelligent Surfaces
A reconfigurable intelligent surface (RIS) is a prospective wireless technology that enhances wireless channel quality. An RIS is often equipped with passive array of elements and provides cost and power-efficient solutions for coverage extension of wireless communication systems. Without any radio...
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Zusammenfassung: | A reconfigurable intelligent surface (RIS) is a prospective wireless
technology that enhances wireless channel quality. An RIS is often equipped
with passive array of elements and provides cost and power-efficient solutions
for coverage extension of wireless communication systems. Without any radio
frequency (RF) chains or computing resources, however, the RIS requires control
information to be sent to it from an external unit, e.g., a base station (BS).
The control information can be delivered by wired or wireless channels, and the
BS must be aware of the RIS and the RIS-related channel conditions in order to
effectively configure its behavior. Recent works have introduced hybrid RIS
structures possessing a few active elements that can sense and digitally
process received data. Here, we propose the operation of an entirely autonomous
RIS that operates without a control link between the RIS and BS. Using a few
sensing elements, the autonomous RIS employs a deep Q network (DQN) based on
reinforcement learning in order to enhance the sum rate of the network. Our
results illustrate the potential of deploying autonomous RISs in wireless
networks with essentially no network overhead. |
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DOI: | 10.48550/arxiv.2403.09270 |