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Graph Neural Network Based Modeling for Digital Twin Network
draft-wei-nmrg-gnn-based-dtn-modeling-00

Document Type Expired Internet-Draft (individual)
Expired & archived
Authors Yong Cui , Wei Yunze , Zhiyong Xu , Peng Liu , Zongpeng Du
Last updated 2023-10-14 (Latest revision 2023-04-12)
RFC stream (None)
Intended RFC status (None)
Formats
Stream Stream state (No stream defined)
Consensus boilerplate Unknown
RFC Editor Note (None)
IESG IESG state Expired
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This Internet-Draft is no longer active. A copy of the expired Internet-Draft is available in these formats:

Abstract

This draft introduces the scenarios and requirements for performance modeling of digital twin networks, and explores the implementation methods of network models, proposing a network modeling method based on graph neural networks (GNNs). This method combines GNNs with graph sampling techniques to improve the expressiveness and granularity of the model. The model is generated through data training and validated with typical scenarios. The model performs well in predicting QoS metrics such as network latency, providing a reference option for network performance modeling methods.

Authors

Yong Cui
Wei Yunze
Zhiyong Xu
Peng Liu
Zongpeng Du

(Note: The e-mail addresses provided for the authors of this Internet-Draft may no longer be valid.)