Islanding Detection Method Based Artificial Neural Network

Mohammad Al-Momani, Seba F. Al-Gharaibeh, A. Al-Dmour, Allaham Ahmed
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引用次数: 2

Abstract

This paper presents a new islanding detection technique based on an artificial neural network (ANN) for a doubly fed induction wind turbine (DFIG). This technique takes advantage of ANN as pattern classifiers. Five different ANN systems are presented in this paper based on various inputs: three phase power, phase voltage, phase current, neutral voltage, and neutral current. An ANN structure is trained for each input, and the comparison between the different structures is presented. Feedforward ANN structures are used for the five systems. Three different learning algorithms are used: backpropagation and two artificial optimization techniques: Genetic Algorithm (GA) and Cuckoo optimization algorithm. For each method in each training technique, the results and the cost function are presented. The comparison of different inputs different algorithms is conducted. MATLAB 2020a is used to simulate the ANN structure and code the training algorithms. A detailed discussion of the input sample rate has also been manipulated to make the computational burden a factor in assessing the performance.
基于人工神经网络的孤岛检测方法
提出了一种基于人工神经网络(ANN)的双馈感应风力机孤岛检测新方法。该技术利用人工神经网络作为模式分类器。本文介绍了基于三相功率、相电压、相电流、中性电压和中性电流输入的五种不同的人工神经网络系统。针对每个输入训练一个人工神经网络结构,并对不同结构进行比较。这五个系统采用了前馈神经网络结构。使用了三种不同的学习算法:反向传播和两种人工优化技术:遗传算法(GA)和杜鹃优化算法。对于每种训练技术中的每种方法,给出了结果和代价函数。对不同输入、不同算法进行了比较。利用MATLAB 2020a对人工神经网络结构进行仿真,并对训练算法进行编码。还对输入采样率进行了详细的讨论,以使计算负担成为评估性能的一个因素。
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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