基于SRv6和零信任策略的图卷积神经网络切片网络优化

IF 17.2
Xin Wang;Bo Yi;Qing Li;Shahid Mumtaz;Jianhui Lv
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引用次数: 0

摘要

随着B5G/6G、边缘计算等技术的快速发展,网络场景日益复杂多样,切片网络应运而生。将应用虚拟化成不同的类别,并建立相应的网络片,可以在一定程度上保证性能。然而,复杂的切片环境带来的挑战需要更细粒度的路由控制和更高的成本来定位所请求的内容或服务,这是目前最先进的方法所无法达到的。为了应对这些挑战,本工作引入了一个集成了IPv6分段路由(SRv6)原理的系统框架。在控制层和基础设施层之间创建了一个SRv6优化层,以有效地管理片并增强路由控制。此外,我们提出了一种新的基于零信任和图卷积网络(GCN)技术的策略路由方法。该方法将动作转换为策略,可以灵活地在SRv6节点上进行分段部署。这些操作包括路由和安全措施,允许在每个段上动态和灵活地部署策略,以实现预期的目标。这种段路由和零信任原则的集成简化了实现并增强了安全性。通过综合实验对该方法进行了评价。结果表明,与最先进的方法相比,该方法有了显著的改进,包括更高的服务接受率、更好的资源利用率以及更低的平均延迟和丢包率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SRv6 and Zero-Trust Policy Enabled Graph Convolutional Neural Networks for Slicing Network Optimization
With the rapid advancement of technologies such as B5G/6G and edge computing, network scenarios are becoming increasingly complex and diverse, leading to the emergence of slicing networks. Virtualizing applications into distinct categories and establishing corresponding network slices ensures performance to a certain extent. However, the challenges posed by the complex slicing environment demand more fine-grained routing control and higher costs to locate requested content or services, areas where current state-of-the-art methods fall short. To address these challenges, this work introduces a system framework that integrates the principles of Segment Routing over IPv6 (SRv6). An SRv6 optimization layer is created between the control and infrastructure layers to manage slices effectively and enhance routing control. Additionally, we propose a novel policy routing method based on zero-trust and Graph Convolutional Network (GCN) technology. This method transforms actions into policies that can be flexibly deployed on SRv6 nodes, segment by segment. These actions encompass both routing and security measures, allowing for dynamic and flexible deployment of policies on each segment to achieve the desired goals. This integration of segment routing and zero-trust principles simplifies implementation and enhances security. Comprehensive experiments were conducted to evaluate the proposed method. The results demonstrate significant improvements over state-of-the-art methods, including a higher service acceptance rate, better resource utilization, and reduced average latency and packet loss rate.
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