使用基于神经网络的网络节点建模的网络数字复制

K. Hattori, T. Korikawa, Chikako Takasaki, Hidenari Oowada, M. Shimizu, N. Takaya
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引用次数: 2

摘要

未来的网络基础设施将需要在复杂的条件下安全、快速地提供网络服务,包括容纳多设备和多接入线路,如多个运营商支持的5G / 6G。因此,对于大量的各种设备,需要提高预验证的效率,以确保安全性和可靠性。此外,未来的运营商网络将支持网络分解技术,以根据业务需求利用来自不同供应商的最佳技术。因此,有必要验证大量设备和组成网络基础设施的组件的组合,以实现最佳设置。在本文中,我们提出了网络数字复制的概念和网络节点建模的方法,利用基于神经网络的机器学习来预测网络节点的性能。网络数字副本是物理网络的副本,可以在数字域中创建网络数字副本,不仅可以对网络节点的规格进行分类,还可以对网络设备的性能进行数字验证。我们评估了该方法的有效性,该方法基于包括路由器设置和流量条件在内的学习数据集来预测实际路由器的吞吐量和处理延迟。
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Network Digital Replica using Neural-Network-based Network Node Modeling
Future network infrastructures will need to provide network services safely and rapidly under complex conditions that include accommodating many devices and multiple access lines such as 5G / 6G supported by multiple carriers. For this reason, the efficiency of the pre-verification needs to be improved for a large number of various devices to ensure safety and reliability. Furthermore, future carrier networks will support network disaggregation technologies to leverage best-of-breed technology from different suppliers in accordance with service requirements. Therefore, it is necessary to verify combinations of a large number of devices and the components constituting the network infrastructure to achieve optimal settings. In this paper, we propose the concept of network digital replica and a method of network node modeling to predict the performance of network nodes using neural-network-based machine learning. A network digital replica, which is a copy of a physical network, can be created in a digital domain not only to classify the specifications of network nodes but also to verify the performance for network devices digitally. We evaluate the effectiveness of the proposed method, which predicts the throughput and processing delays of actual routers on the basis of the sets of learning data including router settings and traffic conditions.
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