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Line-line fault detection and classification for photovoltaic systems using ensemble learning model based on Ⅰ-Ⅴ characteristics

机译:基于Ⅰ-Ⅳ特性的集合学习模型的光伏系统线线故障检测与分类

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摘要

The fault diagnosis of photovoltaic (PV) arrays aims to increase the reliability and service life of PV systems. Line Line (LL) faults may remain undetected under low mismatch level and high impedance due to low currents faults, resulting in power losses and fire potential disaster. This paper proposes a novel and intelligent fault diagnosis method based on an ensemble learning model and Current-Voltage (I-V) characteristics to detect and classify LL faults at the DC side of PV systems. For this purpose, first, the key features are extracted via analyzing I-V characteristics under various LL fault events and normal operation. Second, a feature selection algorithm has been applied to select the best features for each learning algorithm in order to reduce the amount of data required for the learning process. Third, an ensemble learning model is developed that combines several learning algorithms based on the probabilistic strategy to achieve superior diagnostic performance. Here, we find an excellent agreement between simulation and experimental results that the proposed method can obtain higher accuracy in detecting and classifying the LL faults, even under low mismatch levels and high fault impedances. addition, the comparison results demonstrate that the performance of the proposed method is better than individual machine learning algorithms, so that the proposed method precisely detects and classifies LL faults on PV systems under the different conditions with an average accuracy of 99% and 99.5%, respectively.
机译:光伏(PV)阵列的故障诊断旨在提高光伏系统的可靠性和使用寿命。线线(LL)故障可能在低错位水平和由于低电流故障导致的高阻抗下保持未检测到,导致功率损耗和火灾潜在灾难。本文提出了一种基于集合学习模型和电流电压(I-V)特性的新颖和智能故障诊断方法,以检测和分类PV系统的直流侧的LL故障。为此目的,首先,通过在各种LL故障事件和正常操作下分析I-V特性来提取关键特征。其次,已经应用了特征选择算法来选择每个学习算法的最佳特征,以减少学习过程所需的数据量。第三,开发了一个基于概率策略的概率策略来实现若干学习算法的集合学习模型,以实现卓越的诊断性能。在这里,我们在模拟和实验结果之间找到了很好的一致性,即所提出的方法可以在检测和分类LL故障时获得更高的准确性,即使在低错位水平和高故障阻抗下也是如此。此外,比较结果表明,所提出的方法的性能优于单个机器学习算法,因此所提出的方法精确地检测和对PV系统的LL故障进行了分类,平均精度为99%和99.5%,分别。

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