AI-based traffic analysis in digital twin networks
In today's networked world, Digital Twin Networks (DTNs) are revolutionizing how we understand and optimize physical networks. These networks, also known as 'Digital Twin Networks (DTNs)' or 'Networks Digital Twins (NDTs),' encompass many physical networks, from cellular and...
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Zusammenfassung: | In today's networked world, Digital Twin Networks (DTNs) are revolutionizing
how we understand and optimize physical networks. These networks, also known as
'Digital Twin Networks (DTNs)' or 'Networks Digital Twins (NDTs),' encompass
many physical networks, from cellular and wireless to optical and satellite.
They leverage computational power and AI capabilities to provide virtual
representations, leading to highly refined recommendations for real-world
network challenges. Within DTNs, tasks include network performance enhancement,
latency optimization, energy efficiency, and more. To achieve these goals, DTNs
utilize AI tools such as Machine Learning (ML), Deep Learning (DL),
Reinforcement Learning (RL), Federated Learning (FL), and graph-based
approaches. However, data quality, scalability, interpretability, and security
challenges necessitate strategies prioritizing transparency, fairness, privacy,
and accountability. This chapter delves into the world of AI-driven traffic
analysis within DTNs. It explores DTNs' development efforts, tasks, AI models,
and challenges while offering insights into how AI can enhance these dynamic
networks. Through this journey, readers will gain a deeper understanding of the
pivotal role AI plays in the ever-evolving landscape of networked systems. |
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DOI: | 10.48550/arxiv.2411.00681 |