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An Intelligent Fault Detection Model for Fault Detection in Photovoltaic Systems

机译:光伏系统故障检测智能故障检测模型

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Effective fault diagnosis in a PV system requires understanding the behavior of the current/voltage (I/V) parameters in different environmental conditions. Especially during the winter season, I/V characters of certain faulty states in a PV system closely resemble that of a normal state. Therefore, a normal fault detection model can falsely predict a well-operating PV system as a faulty state and vice versa. In this paper, an intelligent fault diagnosis model is proposed for the fault detection and classification in PV systems. For the experimental verification, various fault state and normal state datasets are collected during the winter season under wide environmental conditions. The collected datasets are normalized and preprocessed using several data-mining techniques and then fed into a probabilistic neural network (PNN). The PNN model will be trained with the historical data to predict and classify faults when new data is fetched in it. The trained model showed better performance in prediction accuracy when compared with other classification methods in machine learning.
机译:PV系统中的有效故障诊断需要了解不同环境条件中的电流/电压(I / V)参数的行为。特别是在冬季期间,PV系统中某些故障状态的I / V字符非常类似于正常状态。因此,正常故障检测模型可以错误地将操作良好的PV系统预测为故障状态,反之亦然。本文提出了一种智能故障诊断模型,用于PV系统的故障检测和分类。对于实验验证,在广泛的环境条件下,冬季收集了各种故障状态和正常状态数据集。采集的数据集使用多个数据挖掘技术归一化并预处理,然后馈入概率神经网络(PNN)。 PNN模型将接受历史数据培训,以预测并在其上获取新数据时对故障进行分类。与机器学习中的其他分类方法相比,训练模型显示出更好的预测精度。

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