Design and Evaluation of an NDN-Based Network for Distributed Digital Twins
Chen Chen, Zihan Jia, Ze Wang, Lin Cui, Fung Po Tso

TL;DR
This paper explores using Named Data Networking (NDN) for distributed digital twins, demonstrating significant latency reduction and improved data handling over traditional IP networks through caching and adaptive routing.
Contribution
It introduces a novel approach of implementing distributed digital twins over NDN, highlighting its advantages for low latency and mobility support in edge scenarios.
Findings
Latency reduced by 10.2x in edge scenarios
NDN's data-centric approach improves data distribution
In-network caching reduces network congestion
Abstract
Digital twins (DT) have received significant attention due to their numerous benefits, such as real-time data analytics and cost reduction in production. DT serves as a fundamental component of many applications, encompassing smart manufacturing, intelligent vehicles, and smart cities. By using Machine Learning (ML) and Artificial Intelligence (AI) techniques, DTs can efficiently facilitate decision-making and productivity by simulating the status and changes of a physical entity. To handle the massive amount of data brought by DTs, it is challenging to achieve low response latency for data fetching over existing IP-based networks. IP-based networks use host addresses for end-to-end communication, making data distribution between DTs inefficient. Thus, we propose to use DTs in a distributed manner over Named Data Networking (NDN) networks. NDN is data-centric where data is routed based…
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Taxonomy
TopicsCaching and Content Delivery · Software-Defined Networks and 5G · IoT and Edge/Fog Computing
