GH-Twin: Graph Learning Empowered Hierarchical Digital Twin for Optimizing Self-Healing Networks

Nour Moustafa
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Abstract

Communication networks are witnessing a fast evolution towards Beyond 5G (B5G), bringing unprecedented complexities and challenges for optimizing networks in guaranteeing self-healing abilities and maintaining quality of services (QoS). To this end, this study presents a Graph Learning-driven Hierarchical Digital Twin framework, called GH-Twin, to build a reliable virtual replica of network components and their communications between different layers, leading to inclusive network representation. The proposed framework introduces graph cross-learning (GCL) distributed across different participants to devise competent predictive modelling of network performance collaboratively and preemptively recognize abnormalities in network settings. To preserve local privacy, differential privacy is applied by injecting some Gaussian into the parameters of local GCL before sharing it with the global coordinator. Proof of concept simulations has demonstrated that GH-Twin can precisely predict flow-level QoS and recognize anomalous links and nodes under different network topologies.
GH-Twin:优化自愈网络的图学习赋能分层数字孪生体
通信网络正朝着超越 5G(B5G)的方向快速演进,这为优化网络以保证自愈能力和维护服务质量(QoS)带来了前所未有的复杂性和挑战。为此,本研究提出了一种名为 GH-Twin 的图学习驱动分层数字孪生框架,用于构建网络组件的可靠虚拟副本及其在不同层之间的通信,从而实现包容性的网络表示。所提出的框架引入了分布在不同参与者之间的图交叉学习(GCL),以协同设计网络性能的有效预测模型,并预先识别网络设置中的异常情况。为保护本地隐私,在与全局协调器共享本地 GCL 的参数之前,会在其中注入一些高斯(Gaussian)。概念验证模拟表明,GH-Twin 可以在不同的网络拓扑结构下精确预测流量级 QoS 并识别异常链接和节点。
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