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A New Adaptive Hybrid Neural Network and Fuzzy Logic Based Fault Classification Approach for Transmission Lines Protection

机译:一种新的自适应混合神经网络和基于模糊的基于传输线路的故障分类方法

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In this paper, an adaptive hybrid neural networks and fuzzy logic based algorithm is proposed to classify fault types in transmission lines. The proposed method is able to identify all ten shunt faults in transmission lines with high level of robustness against variable conditions such as measured amplitudes and fault resistance. In this approach, a two-end unsynchronized measurement of the signals is used. For real-time estimation of unknown synchronization angle and three phase phasors a two-layer Adaptive Linear Neural (ADALINE) network is used. The estimated parameters are fed to a Fuzzy logic system to classify fault types. This method is feasible to be used in digital distance relays which are able to be programmed, to share and discourse data with all protective and monitoring devices. The proposed method is evaluated by a number of simulations conducted in PSCAD/EMTDC and MATLAB software.
机译:本文提出了一种自适应混合神经网络和基于模糊逻辑的算法来对传输线中的故障类型进行分类。所提出的方法能够在具有高稳健性的传输线中识别所有十个分流器故障,防止变量条件,例如测量的幅度和容错。在这种方法中,使用信号的两端非同步测量。对于未知同步角度的实时估计和三相相比分机使用双层自适应线性神经(Adaline)网络。估计的参数被馈送到模糊逻辑系统以对故障类型进行分类。该方法可用于在能够被编程的数字距离中继中使用,以与所有保护和监视设备共享和话语数据。所提出的方法是通过在PSCAD / EMTDC和MATLAB软件中进行的许多模拟来评估。

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