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A novel neural network with simple learning algorithm for islanding phenomenon detection of photovoltaic systems

机译:一种具有简单学习算法的新型神经网络,用于光伏系统的孤岛现象检测

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摘要

This study aimed to propose an intelligent islanding phenomenon detection method for a photovoltaic power generation system. First, a PS1M software package was employed to establish a simulation envi ronment of a grid-connected photovoltaic (PV) power generation system. A 516W PV array system formed by Kyocera KC40T photovoltaic modules was used to complete the simulation of the islanding phenomenon detection method. The proposed islanding phenomenon detection technology was based on an extension neural network (ENN), which combined the extension distance of extension theory, as well as the learning, recalling, generalization and parallel computing characteristics of a neural network (NN). The proposed extension neural network was used to distinguish whether the trouble signals at the grid power end were power quality interference or actual islanding operations, in order that the islanding phenomenon detection system could cut off the load correctly and promptly when a real islanding oper ation occurs. Finally, the feasibility of the proposed intelligent islanding detection technology was veri fied through simulation results.
机译:本研究旨在提出一种用于光伏发电系统的智能孤岛现象检测方法。首先,使用PS1M软件包来建立并网光伏(PV)发电系统的仿真环境。使用京瓷KC40T光伏组件形成的516W光伏阵列系统来完成孤岛现象检测方法的仿真。提出的孤岛现象检测技术是基于扩展神经网络(ENN)的,该技术结合了扩展理论的扩展距离以及神经网络(NN)的学习,记忆,归纳和并行计算特性。提出的扩展神经网络用于区分电网电源端的故障信号是电能质量干扰还是实际的孤岛运行,以便在发生真正的孤岛运行时,孤岛现象检测系统能够正确,迅速地切断负载。 。最后,通过仿真结果验证了所提出的智能孤岛检测技术的可行性。

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