Deep Reinforcement Learning Based Cross-Layer Design in Terahertz Mesh Backhaul Networks
Zhifeng Hu, Chong Han, Xudong Wang

TL;DR
This paper introduces DEFLECT, a deep reinforcement learning-based cross-layer design for Terahertz mesh backhaul networks, optimizing resource allocation and routing to handle dynamic traffic and link failures efficiently.
Contribution
It proposes a novel DRL framework with hierarchical and multi-task structures for long-term resource maximization and rapid link failure recovery in THz mesh backhaul networks.
Findings
Reduced resource consumption compared to hop-count routing
Achieved millisecond-level latency and no packet loss
Recovered from broken links within 1 second
Abstract
Supporting ultra-high data rates and flexible reconfigurability, Terahertz (THz) mesh networks are attractive for next-generation wireless backhaul systems that empower the integrated access and backhaul (IAB). In THz mesh backhaul networks, the efficient cross-layer routing and long-term resource allocation is yet an open problem due to dynamic traffic demands as well as possible link failures caused by the high directivity and high non-line-of-sight (NLoS) path loss of THz spectrum. In addition, unpredictable data traffic and the mixed integer programming property with the NP-hard nature further challenge the effective routing and long-term resource allocation design. In this paper, a deep reinforcement learning (DRL) based cross-layer design in THz mesh backhaul networks (DEFLECT) is proposed, by considering dynamic traffic demands and possible sudden link failures. In DEFLECT, a…
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Taxonomy
TopicsMillimeter-Wave Propagation and Modeling · Microwave Engineering and Waveguides · Radio Frequency Integrated Circuit Design
MethodsBalanced Selection
