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Hardware-in-Loop Implementation of ANN Based Differential Protection of Transformer

机译:基于神经网络的变压器差动保护的硬件在环实现

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This paper presents an efficient Artificial Neural Network (ANN) approach for discriminating the internal faults from the non-internal faults in a transformer. The wavelet transform is a powerful tool for analyzing transient conditions because of its ability to extract information both in time and frequency domain simultaneously. Simulation of the differential protection scheme of a transformer to obtain various operating conditions is done using MATLAB/SIMULINK taking 1 cycle of data window (20 msec.). Different operating conditions such as normal, internal fault, external fault, switching inrush, and over fluxing are analyzed and processed to obtain certain statistical parameters of wavelet coefficients at the different decomposition levels. Authors have used Arduino Uno ATmega328P platform for hardware implementation of ANN architecture. Results indicate that overall classification accuracy is found to be 95.63 %.
机译:本文提出了一种有效的人工神经网络(ANN)方法,用于将内部故障与非内部故障区分开来。小波变换是一种分析瞬态情况的强大工具,因为它具有同时提取时域和频域信息的能力。使用MATLAB / SIMULINK对变压器的差动保护方案进行仿真以获取各种运行条件,需要花费1个周期的数据窗口(20毫秒)。对正常,内部故障,外部故障,开关浪涌和过磁通等不同工况进行分析和处理,以获得不同分解水平下小波系数的某些统计参数。作者已将Arduino Uno ATmega328P平台用于ANN架构的硬件实现。结果表明,总分类准确度为95.63 \%。

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