Identification of Type of a Fault in Distribution System Using Shallow Neural Network with Distributed Generation

S. Awasthi, G. Singh, Nafees Ahamad
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引用次数: 2

Abstract

A distributed generation system (DG) has several benefits over a traditional centralized power system. However, the protection area in the case of the distributed generator requires special attention as it encounters stability loss, failure re-closure, fluctuations in voltage, etc. And thereby, it demands immediate attention in identifying the location & type of a fault without delay especially when occurred in a small, distributed generation system, as it would adversely affect the overall system and its operation. In the past, several methods were proposed for classification and localisation of a fault in a distributed generation system. Many of those methods were accurate in identifying location, but the accuracy in identifying the type of fault was not up to the acceptable mark. The proposed work here uses a shallow artificial neural network (sANN) model for identifying a particular type of fault that could happen in a specific distribution network when used in conjunction with distributed generators. Firstly, a distribution network consisting of two similar distributed generators (DG1 and DG2), one grid, and a 100 Km distribution line is modeled. Thereafter, different voltages and currents corresponding to various faults (line to line, line to ground) at different locations are tabulated, resulting in a matrix of 500 × 18 inputs. Secondly, the sANN is formulated for identifying the types of faults in the system in which the above-obtained data is used to train, validate, and test the neural network. The overall result shows an unprecedented almost zero percent error in identifying the type of the faults.
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分布式发电浅层神经网络在配电系统故障类型识别中的应用
与传统的集中式发电系统相比,分布式发电系统(DG)有几个优点。但是,对于分布式发电机来说,保护区域需要特别注意,因为它会遇到失稳、故障重合闸、电压波动等问题。因此,当故障发生在小型分布式发电系统中时,需要立即关注故障的位置和类型,因为它会对整个系统及其运行产生不利影响。过去,针对分布式发电系统故障的分类和定位提出了几种方法。其中许多方法在确定位置方面是准确的,但在确定故障类型方面的准确性没有达到可接受的标准。本文提出的工作使用浅层人工神经网络(sANN)模型来识别特定配电网中与分布式发电机一起使用时可能发生的特定类型的故障。首先,建立了由两个相似的分布式发电机(DG1和DG2)、一个电网和一条100km配电线路组成的配电网模型。然后,将不同位置的各种故障(线对线、线对地)对应的不同电压和电流制表,得到500 × 18个输入的矩阵。其次,制定sANN用于识别系统中的故障类型,其中上述获得的数据用于训练,验证和测试神经网络。总体结果显示,在识别断层类型方面,误差几乎为零,这是前所未有的。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
122
期刊介绍: Energy Engineering is a bi-monthly publication of the Association of Energy Engineers, Atlanta, GA. The journal invites original manuscripts involving engineering or analytical approaches to energy management.
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