Risk-Averse Learning for Reliable mmWave Self-Backhauling

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE/ACM Transactions on Networking Pub Date : 2024-09-16 DOI:10.1109/TNET.2024.3452953
Amir Ashtari Gargari;Andrea Ortiz;Matteo Pagin;Wanja de Sombre;Michele Zorzi;Arash Asadi
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Abstract

Wireless backhauling at millimeter-wave frequencies (mmWave) in static scenarios is a well-established practice in cellular networks. However, highly directional and adaptive beamforming in today’s mmWave systems have opened new possibilities for self-backhauling. Tapping into this potential, 3GPP has standardized Integrated Access and Backhaul (IAB) allowing the same base station to serve both access and backhaul traffic. Although much more cost-effective and flexible, resource allocation and path selection in IAB mmWave networks is a formidable task. To date, prior works have addressed this challenge through a plethora of classic optimization and learning methods, generally optimizing Key Performance Indicators (KPIs) such as throughput, latency, and fairness, and little attention has been paid to the reliability of the KPI. We propose Safehaul, a risk-averse learning-based solution for IAB mmWave networks. In addition to optimizing the average performance, Safehaul ensures reliability by minimizing the losses in the tail of the performance distribution. We develop a novel simulator and show via extensive simulations that Safehaul not only reduces the latency by up to 43.2% compared to the benchmarks, but also exhibits significantly more reliable performance, e.g., 71.4% less variance in latency.
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可靠毫米波自反馈的风险规避学习
静态情况下毫米波频率(mmWave)的无线回传是蜂窝网络中一个成熟的实践。然而,在当今的毫米波系统中,高度定向和自适应波束形成为自回程开辟了新的可能性。利用这一潜力,3GPP已经标准化了综合接入和回程(IAB),允许同一个基站同时服务接入和回程流量。尽管在IAB毫米波网络中更具成本效益和灵活性,但资源分配和路径选择是一项艰巨的任务。到目前为止,之前的工作已经通过大量的经典优化和学习方法解决了这一挑战,通常优化关键性能指标(KPI),如吞吐量、延迟和公平性,而很少关注KPI的可靠性。我们提出Safehaul,这是一种针对IAB毫米波网络的规避风险的基于学习的解决方案。除了优化平均性能外,Safehaul还通过最大限度地减少性能分布尾部的损失来确保可靠性。我们开发了一种新颖的模拟器,并通过广泛的模拟表明,与基准测试相比,Safehaul不仅将延迟降低了43.2%,而且表现出更可靠的性能,例如延迟变化减少了71.4%。
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来源期刊
IEEE/ACM Transactions on Networking
IEEE/ACM Transactions on Networking 工程技术-电信学
CiteScore
8.20
自引率
5.40%
发文量
246
审稿时长
4-8 weeks
期刊介绍: The IEEE/ACM Transactions on Networking’s high-level objective is to publish high-quality, original research results derived from theoretical or experimental exploration of the area of communication/computer networking, covering all sorts of information transport networks over all sorts of physical layer technologies, both wireline (all kinds of guided media: e.g., copper, optical) and wireless (e.g., radio-frequency, acoustic (e.g., underwater), infra-red), or hybrids of these. The journal welcomes applied contributions reporting on novel experiences and experiments with actual systems.
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Table of Contents IEEE/ACM Transactions on Networking Information for Authors IEEE/ACM Transactions on Networking Society Information IEEE/ACM Transactions on Networking Publication Information FPCA: Parasitic Coding Authentication for UAVs by FM Signals
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