基于机器学习的并网光伏系统孤岛检测

Mohammed Ali Khan, A. Haque, V. S. Kurukuru
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引用次数: 6

摘要

本文重点研究了一种基于机器学习和信号处理技术的孤岛检测方法。孤岛检测方法保证了对并网光伏系统进行适当的远程监控。当电网发生故障或维持电网运行时,向各分布式发电网络提供适当的通知信号,使其与电网断开连接,以隔离方式运行。对1kW并网光伏系统进行了仿真。在共耦合点(PCC)记录电压、电流和频率等信号。利用小波变换提取记录信号的特征。提取的特征用于形成孤岛场景矩阵。该矩阵进一步利用机器学习算法来训练分类器。从结果可以看出,训练好的分类器以16.9秒的训练时间描述了97.9%的训练准确率,与文献相比有所提高。在未知孤岛条件下对训练好的分类器进行测试,观察分类器的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Islanding Detection for Grid Connected Photovoltaic System
This paper focus on developing a new islanding detection method with the help of machine learning and signal processing technique. The islanding detection method make sure that there is a proper remote monitoring of the grid integrated photovoltaic (PV) system. In case of grid fault or maintained of the grid, a proper informed signal is provided to various distributed generation (DG) networks so that they can disconnect with the grid and operate in isolated mode. A simulation of 1kW grid connected PV system is performed. The signal such as voltage, current and frequency are recorded at point of common coupling (PCC). The feature of recorded signals are extracted using wavelet transformation. The extracted features are used to form a islanding scenarios matrix. The matrix is further utilized to train a classifier using machine learning algorithm. From the result it can be observed that the trained classifier depicted 97.9% training accuracy with a training time of 16.9 sec which is better when compared with the literature. Further the trained classifier is subjected to test with an unknown islanding condition to observe the robustness of the classifier.
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