计算机智能方法在微电网孤岛现象检测中的应用

Koushik Chatterjee, A. De, Pradip Kumar Saha
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引用次数: 0

摘要

孤岛是微电网遇到的常见运行问题,可以理解为分布式发电机(dg)继续供应当地负荷,而大部分电力系统断电或电网供电不可用的情况。这可能导致微电网内的工作电压和频率异常,也可能对操作人员造成危险。IEEE 1547标准要求在两秒钟内检测到这种电网连接的丢失,并立即跳闸dg,以避免这种电压和频率限制违规的风险。本文提出了一种利用机器学习(ML)和计算智能(CI)的能力在微电网系统中进行孤岛检测的简单而实用的方案。该方案利用主成分分析(PCA)和基于Logistic回归的模式分类方法从微电网运行变量中提取重要特征,区分孤岛运行状态和非孤岛运行状态。基于3-DG的微电网实例研究表明,该方法简单有效,可快速检测实际微电网中的孤岛情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Computer Intelligence Method to Detect Islanding Phenomena in Microgrid Network
Islanding is common operational issues experienced by the electrical microgrids, which can be perceived as a situation in which distributed generators (DGs) continue to supply local loads, while larger part of the electric power system loses power or when the grid power is unavailable. This can lead to abnormal operating voltage and frequency within the microgrid and can also prove to be dangerous for the operating personnel. The IEEE 1547 standard requires that such loss of grid connection be detected within two seconds and immediately trip the DGs to avoid the risk of such voltage and frequency limit violations. This paper presents a simple yet practical scheme for islanding detection in microgrid systems harnessing the capability of machine learning (ML) and computational intelligence (CI). The proposed scheme utilizes important features extracted from the microgrid’s operating variables using Principal Component Analysis (PCA) followed by Logistic Regression based pattern classification method to differentiate between islanded and non-islanded operating conditions. Case study on a 3-DG based microgrid system demonstrates that the proposed scheme is simple and yet effective in quickly detecting islanding situation in practical microgrids.
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