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A Dynamic Plane Prediction Method Using the Extended Frame in Smart Dust IoT Environments

机译:智能尘埃物联网环境中使用扩展框架的动态平面预测方法

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摘要

Internet of Things (IoT) technologies are undeniably already all around us, as we stand at the cusp of the next generation of IoT technologies. Indeed, the next-generation of IoT technologies are evolving before IoT technologies have been fully adopted, and smart dust IoT technology is one such example. The concept of smart dust IoT technology, which features very small devices with low computing power, is a revolutionary and innovative concept that enables many things that were previously unimaginable, but at the same time creates unresolved problems. One of the biggest problems is the bottlenecks in data transmission that can be caused by this large number of devices. The bottleneck problem was solved with the Dual Plane Development Kit (DPDK) architecture. However, the DPDK solution created an unexpected new problem, which is called the mixed packet problem. The mixed packet problem, which occurs when a large number of data packets and control packets mix and change at a rapid rate, can slow a system significantly. In this paper, we propose a dynamic partitioning algorithm that solves the mixed packet problem by physically separating the planes and using a learning algorithm to determine the ratio of separated planes. In addition, we propose a training data model eXtended Permuted Frame (XPF) that innovatively increases the number of training data to reflect the packet characteristics of the system. By solving the mixed packet problem in this way, it was found that the proposed dynamic partitioning algorithm performed about 72% better than the general DPDK environment, and 88% closer to the ideal environment.
机译:不可否认,物联网(IoT)技术已经存在于我们周围,因为我们站在下一代IoT技术的风口浪尖上。确实,下一代物联网技术在物联网技术被完全采用之前就在发展,而智能尘埃物联网技术就是这样的例子。智能尘埃物联网技术的概念具有非常小的计算能力低的小型设备,是一种革命性的创新概念,它可以实现许多以前无法想象的事情,但同时会产生未解决的问题。最大的问题之一是由大量设备引起的数据传输瓶颈。双重平面开发套件(DPDK)架构解决了瓶颈问题。但是,DPDK解决方案创建了一个意外的新问题,称为混合数据包问题。当大量数据包和控制包快速混合和更改时发生的混合包问题可能会严重降低系统速度。在本文中,我们提出了一种动态分区算法,该算法通过物理分离平面并使用学习算法确定分离平面的比率来解决混合数据包问题。此外,我们提出了一种训练数据模型扩展置换帧(XPF),该模型创新地增加了训练数据的数量以反映系统的数据包特征。通过以这种方式解决混合数据包问题,发现所提出的动态分区算法的性能比一般的DPDK环境好约72%,而比理想环境更近88%。

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