基于人工神经网络的并网分布式光伏发电孤岛检测

Tirta Samuel Mehang, D. Riawan, Vita Lystianingrum B. Putri
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引用次数: 3

摘要

光伏(PV)系统是目前在电网中应用最广泛的可再生能源系统之一,其目的之一是提高电网的可靠性。然而,电网中的光伏系统也会产生负面影响;当主电网无法提供负载,并且有一部分负载由光伏系统供电而被隔离时。这种情况被定义为孤岛。如果不能检测到这种情况,负载母线将出现电压扰动和电能质量问题。提出了一种基于人工神经网络的孤岛检测方法。人工神经网络学习数据是在三种主要场景下的模拟生成的:功率匹配,过压和欠压,具有不同的功率因数(cos phi)。对负载母线PCC节点电压信号进行分类,识别系统是否处于孤岛状态。仿真结果表明,所构建的人工神经网络能够检测出孤岛模式和非孤岛模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Islanding Detection in Grid-Connected Distributed Photovoltaic Generation Using Artificial Neural Network
Photovoltaic (PV) systems are nowadays one of the most wide-spread renewable energy systems in the network or grid with one purpose to improve the reliability of the grid. However, PV systems in the network also contribute a negative impact as well; when the main grid fails to supply the load and there is a part of the load energized by the PV systems while being isolated. This case is defined as islanding. If this condition cannot be detected, the load bus will experience voltage disturbance and power quality problem. This paper presents an islanding detection using Artificial Neural Network method (ANN). ANN learning data are generated from simulations under three main scenarios: power match, overvoltage, and undervoltage, with varying power factor (cos phi). Voltage signal at PCC node in load bus is classified to identify if system is in islanding condition or not. The simulation results shows that the built ANN is capable to detect both islanding and non-islanding mode.
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