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首页> 外文期刊>Electric Power Components and Systems >A New Approach Based on S-transform for Discrimination and Classification of Inrush Current from Internal Fault Currents Using Probabilistic Neural Network
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A New Approach Based on S-transform for Discrimination and Classification of Inrush Current from Internal Fault Currents Using Probabilistic Neural Network

机译:基于S变换的概率神经网络识别内部故障电流涌流的新方法。

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摘要

This article presents a new approach for differential protection of power transformers. The proposed method uses S-transform and a probabilistic neural network to discriminate internal faults from inrush current. S-transform is utilized to extract some useful features of non-stationary signal analysis, giving the information of transient currents both in time and frequency domains. The features extracted using S-transform are applied to train probabilistic neural network classifiers. This approach has been realized through two different stages. In the first stage, discrimination of inrush current and fault current has been done; in the second stage, different types of fault current will be recognized in four steps. The performance of this algorithm is demonstrated by simulation of different faults and switching conditions on a power transformer using PSCAD/EMTDC software (Manitoba HVDC Research Center, Winnipeg, Manitoba, Canada). The simulation results show that the combination of S-transform and a probabilistic neural network can effectively detect inrush current from fault currents and that it can also classify the fault currents with high accuracy and speed, even in a noisy environment.
机译:本文提出了一种用于电力变压器差动保护的新方法。所提出的方法使用S变换和概率神经网络来区分内部故障和浪涌电流。 S变换用于提取非平稳信号分析的一些有用功能,从而在时域和频域中提供瞬态电流的信息。使用S变换提取的特征被应用于训练概率神经网络分类器。该方法已通过两个不同的阶段实现。在第一阶段,已经对浪涌电流和故障电流进行了区分;在第二阶段中,将通过四个步骤来识别不同类型的故障电流。该算法的性能通过使用PSCAD / EMTDC软件(加拿大曼尼托巴省温尼伯的曼尼托巴HVDC研究中心)在电力变压器上模拟不同的故障和开关条件来证明。仿真结果表明,S变换和概率神经网络的结合可以有效地从故障电流中检测涌入电流,即使在嘈杂的环境中,也可以以较高的精度和速度对故障电流进行分类。

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