ANN-based voltage dip mitigation in power networks with distributed generation

O. Ipinnimo, S. Chowdhury, S. Chowdhury
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引用次数: 5

Abstract

In the current power and energy scenario, distributed generation (DG) has generated a lot of interest across the globe due to the growing concerns about gradual depletion of fossil fuels, steep load growth, environmental pollution and global warming caused by greenhouse gas emissions. Renewable DGs such as wind generators and solar photovoltaic are well-recognized now-a-days as sources of clean energy. Voltage dips have always been a serious problem in electricity networks accounting for the disruption, poor power quality and affecting the cost and productivity of power utilities and the consumers. Therefore, with more DG penetration into the network, utilizing the DGs for improving power quality through voltage dip mitigation has become an important area of research in itself. In this context, this paper presents a novel technique for voltage dip mitigation with Distributed Generation (DG) using a simple feed forward Artificial Neural Network (ANN) to mitigate the effects of the power quality problems arising out of voltage dips in a distribution network. The scheme is simulated in DIgSILENT Power Factory 14.0 software and the tests are carried out on IEEE 9-bus test system. A three-phase short circuit fault on a line is simulated as the disturbance causing the voltage dip in the system. The model is trained, tested and validated in Matlab using mean square error and regression analysis.
分布式发电网络中基于人工神经网络的电压骤降缓解
在当前的电力和能源形势下,由于对化石燃料逐渐枯竭、负荷急剧增长、环境污染和温室气体排放导致的全球变暖的担忧日益增加,分布式发电(DG)在全球范围内引起了广泛的兴趣。风力发电机和太阳能光伏等可再生dg是目前公认的清洁能源。电压降一直是电网中的一个严重问题,它造成电力中断、电能质量差,影响电力公司和用户的成本和生产力。因此,随着越来越多的DG渗透到网络中,利用DG通过降低电压降来改善电能质量本身已成为一个重要的研究领域。在此背景下,本文提出了一种新的分布式发电(DG)电压陡降缓解技术,该技术使用一种简单的前馈人工神经网络(ANN)来缓解配电网中电压陡降引起的电能质量问题的影响。该方案在DIgSILENT Power Factory 14.0软件中进行了仿真,并在IEEE 9总线测试系统上进行了测试。将线路上的三相短路故障模拟为引起系统电压下降的扰动。在Matlab中使用均方误差和回归分析对模型进行训练、测试和验证。
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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