A fast and reliable transformer protection system based on the transformer magnetizing characteristics and artificial neural networks

A. Nosseir, A. Attia, F. Tahoon, N. Osman
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引用次数: 7

Abstract

Transformers are one of the most important elements of power systems. Most transformers are equipped with protection systems to avoid damage to the transformers [1]. As any outage of the transformer have severed technical and economical consequences for the network, so implementing fast relaying algorithms for transformer protection devices to satisfy high reliability of the whole power systems is very important. In designing high speed protection systems, the fast discrimination of magnetizing inrush current is very important to prevent the false tripping of relays. The conventional method of inrush current detection [2] for transformer protection based on the value of the second harmonic component of the differential current which requires a long time exceeding one cycle. This paper discriminates between the inrush current state and the internal fault condition based on the transformer magnetizing characteristics within one short cycle. Simulation using EMTP-ATP program on a three phase transformer are carried out. Study cases of inrush current at different switching instants and for all types of internal faults for different phases and on different percentages of transformer windings are simulated. The results obtained from EMTP-ATP package for all simulated conditions used as a training data to artificial neural network (ANN). This helps the differential relay to recognize inrush and internal fault and give the trip signal in case of internal fault only.
基于变压器磁化特性和人工神经网络的快速可靠变压器保护系统
变压器是电力系统中最重要的元件之一。大多数变压器都装有保护系统,以防止变压器受到损坏[1]。由于变压器的任何一次停电都会对电网造成严重的技术经济后果,因此实现变压器保护装置的快速继电保护算法以满足整个电力系统的高可靠性是非常重要的。在高速保护系统的设计中,快速识别励磁涌流对防止继电器误跳闸至关重要。变压器保护的传统涌流检测方法[2]是根据差动电流的二次谐波分量的值来检测的,需要超过一个周期的长时间。本文根据变压器短周期内的磁化特性,区分了励磁涌流状态和内部故障状态。利用EMTP-ATP程序对三相变压器进行了仿真。模拟了不同开关时刻、不同相位、不同比例的变压器绕组的各种类型的内部故障的涌流情况。从EMTP-ATP包中获得的结果用于所有模拟条件下的人工神经网络(ANN)的训练数据。这有助于差动继电器识别浪涌和内部故障,并在内部故障的情况下给出跳闸信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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