高速网络中多源数据快速集成方法的设计与实现

IF 0.7 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of High Speed Networks Pub Date : 2023-05-24 DOI:10.3233/jhs-222047
Lei Ma, Yanning Zhang, Vicente García Díaz
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引用次数: 0

摘要

分布式高速网络采集的数据有多个来源。因此,为了实现多源数据的快速集成,本文基于分布式高速网络的特点,设计了一种快速数据集成方法。首先,我们利用线性回归分析建立分布式感知数据模型,使网络节点只能传递回归模型的参数信息,从而简化数据采集。然后,在高频信道侧增加死区限幅非线性链路,对数据进行滤波和同化。最后,提取数据特征向量作为神经网络的训练样本,得到不同特征向量之间的映射关系,然后通过训练神经网络实现决策级数据集成。实验结果表明,该方法能准确采集高速网络数据,数据采集偏差始终小于5 μrad;该方法对数据滤波效果好,能消除毛刺信号的干扰;该方法收敛速度快,可在0.4 s内完成数据同化,有利于提高数据集成速度;随着网络规模的增大,该方法的平均流量负载的增幅较小。
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Design and implementation of a fast integration method for multi-source data in high-speed network
The data collected by the distributed high-speed network has multiple sources. Therefore, in order to realize the rapid integration of multi-source data, this paper designs a rapid data integration method based on the characteristics of the distributed high-speed network. First, we use linear regression analysis to build a distributed perceptual data model, so that network nodes can only transmit the parameter information of the regression model, so as to simplify the data collection. Then, a dead band amplitude limiting nonlinear link is added at the high frequency channel side to filter and assimilate the data. Finally, the data feature vectors are extracted as the training samples of the neural network to obtain the mapping relationship between different feature vectors, and then the decision level data integration is achieved by training the neural network. The experimental results show that this method can accurately collect high-speed network data, and the data collection deviation is always less than 5 μrad; This method has good filtering effect on data and can eliminate the interference of burr signal; The convergence speed of this method is fast, and the data assimilation can be completed within 0.4 s, which is conducive to improving the speed of data integration; With the increase of network size, the average traffic load of this method increases less.
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来源期刊
Journal of High Speed Networks
Journal of High Speed Networks Computer Science-Computer Networks and Communications
CiteScore
1.80
自引率
11.10%
发文量
26
期刊介绍: The Journal of High Speed Networks is an international archival journal, active since 1992, providing a publication vehicle for covering a large number of topics of interest in the high performance networking and communication area. Its audience includes researchers, managers as well as network designers and operators. The main goal will be to provide timely dissemination of information and scientific knowledge. The journal will publish contributed papers on novel research, survey and position papers on topics of current interest, technical notes, and short communications to report progress on long-term projects. Submissions to the Journal will be refereed consistently with the review process of leading technical journals, based on originality, significance, quality, and clarity. The journal will publish papers on a number of topics ranging from design to practical experiences with operational high performance/speed networks.
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