RRO:以高效复杂性提高吞吐量和低延迟的正规化路由优化算法

David Zenati;Tzalik Maimon;Kobi Cohen
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引用次数: 0

摘要

在快速发展的无线网络环境中,实现低延迟数据传输的增强吞吐量对未来的通信系统至关重要。虽然低复杂度的ospf类型的解决方案在低负载的网络中表现出了有效性,但它们在面对日益增加的拥塞时往往会出现问题。最近的方法建议利用背压和深度学习技术进行路线优化。然而,这些方法由于其高实现和计算复杂性而面临挑战,超越了有限硬件设备的网络能力。一个关键的挑战是开发算法,提高吞吐量和减少延迟,同时保持复杂性水平与OSPF兼容。在本-古里安大学和Ceragon网络有限公司的合作研究中,我们通过开发一种称为正则化路由优化(RRO)的新方法来解决这一挑战。RRO算法提供分布式和集中式实现,复杂性低,适合集成到5G及其他技术中,不需要对现有协议进行重大更改。它提高了吞吐量,同时通过正则化优化确保延迟保持足够低。分析了RRO算法的计算复杂度,证明其收敛复杂度与OSPF相当。跨不同网络拓扑的广泛仿真结果表明,RRO显著优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RRO: A Regularized Routing Optimization Algorithm for Enhanced Throughput and Low Latency With Efficient Complexity
In the rapidly evolving landscape of wireless networks, achieving enhanced throughput with low latency for data transmission is crucial for future communication systems. While low complexity OSPF-type solutions have shown effectiveness in lightly-loaded networks, they often falter in the face of increasing congestion. Recent approaches have suggested utilizing backpressure and deep learning techniques for route optimization. However, these approaches face challenges due to their high implementation and computational complexity, surpassing the capabilities of networks with limited hardware devices. A key challenge is developing algorithms that improve throughput and reduce latency while keeping complexity levels compatible with OSPF. In this collaborative research between Ben-Gurion University and Ceragon Networks Ltd., we address this challenge by developing a novel approach, dubbed Regularized Routing Optimization (RRO). The RRO algorithm offers both distributed and centralized implementations with low complexity, making it suitable for integration into 5G and beyond technologies, where no significant changes to the existing protocols are needed. It increases throughput while ensuring latency remains sufficiently low through regularized optimization. We analyze the computational complexity of RRO and prove that it converges with a level of complexity comparable to OSPF. Extensive simulation results across diverse network topologies demonstrate that RRO significantly outperforms existing methods.
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