Abstract:
Network slicing has emerged as a promising networking paradigm to provide resources tailored for Industry 4.0 and diverse services in 5G networks. However, the increased ...Show MoreMetadata
Abstract:
Network slicing has emerged as a promising networking paradigm to provide resources tailored for Industry 4.0 and diverse services in 5G networks. However, the increased network complexity poses a huge challenge in network management due to virtualized infrastructure and stringent quality-of-service requirements. Digital twin (DT) technology paves a way for achieving cost-efficient and performance-optimal management, through creating a virtual representation of slicing-enabled networks digitally to simulate its behaviors and predict the time-varying performance. In this article, a scalable DT of network slicing is developed, aiming to capture the intertwined relationships among slices and monitor the end-to-end (E2E) metrics of slices under diverse network environments. The proposed DT exploits the novel graph neural network model that can learn insights directly from slicing-enabled networks represented by non-Euclidean graph structures. Experimental results show that the DT can accurately mirror the network behaviour and predict E2E latency under various topologies and unseen environments.
Published in: IEEE Transactions on Industrial Informatics ( Volume: 18, Issue: 2, February 2022)
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- IEEE Keywords
- Index Terms
- Digital Twin ,
- Network Slicing ,
- Slice Management ,
- Network Slicing Management ,
- Neural Network ,
- Graph Structure ,
- Network Management ,
- Graph Neural Networks ,
- 5G Networks ,
- Virtual Representation ,
- Graph Neural Network Model ,
- Deep Learning ,
- Functional Networks ,
- Resource Utilization ,
- Node Status ,
- Neighboring Nodes ,
- Types Of Resources ,
- Nodes In Layer ,
- Deep Reinforcement Learning ,
- Graph Convolutional Network ,
- Virtual Network Functions ,
- Physical Link ,
- Virtual Link ,
- Physical Network ,
- Quality Of Service Requirements ,
- Physical Nodes ,
- Graph-based Representation ,
- Node Features ,
- Different Types Of Resources ,
- Set Of Slices
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Digital Twin ,
- Network Slicing ,
- Slice Management ,
- Network Slicing Management ,
- Neural Network ,
- Graph Structure ,
- Network Management ,
- Graph Neural Networks ,
- 5G Networks ,
- Virtual Representation ,
- Graph Neural Network Model ,
- Deep Learning ,
- Functional Networks ,
- Resource Utilization ,
- Node Status ,
- Neighboring Nodes ,
- Types Of Resources ,
- Nodes In Layer ,
- Deep Reinforcement Learning ,
- Graph Convolutional Network ,
- Virtual Network Functions ,
- Physical Link ,
- Virtual Link ,
- Physical Network ,
- Quality Of Service Requirements ,
- Physical Nodes ,
- Graph-based Representation ,
- Node Features ,
- Different Types Of Resources ,
- Set Of Slices
- Author Keywords