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首页> 外文期刊>Journal of control, automation and electrical systems >On-Line Classification of Excessive Neutral-to-Earth-Voltage (NTEV) Sources Using LabVIEW Software with Incorporating the Statistical-Based S-Transform and One-Versus-One SVM (OVO-SVM)
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On-Line Classification of Excessive Neutral-to-Earth-Voltage (NTEV) Sources Using LabVIEW Software with Incorporating the Statistical-Based S-Transform and One-Versus-One SVM (OVO-SVM)

机译:使用LabVIEW软件在线分类过多的中性 - 电压(NTEV)源,其中包含基于统计的S变换和一对与ONE SVM(OVO-SVM)

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摘要

The excessive Neutral-to-Earth-Voltage (NTEV) could lead to the unnecessary losses and safety hazard issue to the electrical consumer. Hence, it is a paramount need to mitigate the excessive NTEV from occurring in the system. In order to mitigate the excessive NTEV, it is very crucial to identify the source of this problem so that the proper mitigation technique can be deployed. One of the identifying approaches is by classifying the type of signal which is associated to excessive NTEV. In this paper, the propose classification technique is using Statistical-based S-transform and one-versus-one SVM (OVO-SVM) via the LabVIEW platform. In this case, the MathScript Node is utilized as an interactive interface in .m file commands with LabVIEW platform. As for SVM, different types of kernel function such as linear, gaussian, sigmoid, and polynomial have been used for performance evaluation comparison. The finding from this work indicates that OVO-SVM learning tool using Gaussian technique produced the highest classification of accuracy result.
机译:过度的中性到地电压(NTEV)可能导致电气消费者的不必要的损失和安全危险问题。因此,这是一个最重要的需要减轻系统中发生的过度NTEV。为了减轻过多的NTEV,识别这个问题的来源是至关重要的,以便可以部署正确的缓解技术。其中一个识别方法是通过对与过多的NTEV相关联的信号类型进行分类。在本文中,提出的分类技术是通过LabVIEW平台使用基于统计的S-Transform和一个与一个SVM(OVO-SVM)。在这种情况下,MathScript节点用LabVIEW平台用作.m文件命令中的交互式接口。对于SVM,不同类型的内核功能,例如线性,高斯,乙状体和多项式已经用于性能评估比较。从这作品中的发现表明,使用高斯技术的OVO-SVM学习工具产生了最高分类的准确性结果。

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