An Online Fault Detection and Classification Monitoring scheme for Photovoltaic Plants

Muneeb Wali, Ashish Sharma
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Abstract

The majority of the recent trends in photovoltaic (PV) energy utilization can be attributed to major global legislation intended to reduce the use of fossil fuels. However, the performance of these solar PV system gets affects by various faults that must be identified. In this regard, an effective and highly accurate solar PV fault detection method is proposed wherein Artificial Neural network (ANN) and Honey Badger Algorithm (HBA) have been used. The main motive of proposed HBA-ANN model is to enhance the accuracy of PV fault detection while lowering the complexity of model. We used a PV fault dataset from GitHub, which was later balanced and impartial, to achieve this goal. Also, during the pre-processing stage, the input and target variables are isolated. The next stage, in which the ANN is initialized and weights are determined. An HBA optimization procedure is then used to optimize or tune the value of these weights. Furthermore, by contrasting the suggested HBA-ANN model's performance with that of more established models like the Tree, K-Nearest Neighbor (KNN), Support Vector Machine (SVM), and Artificial Neural Network, the model's effectiveness is evaluated and validated. The simulated results were obtained for both phases, i.e. the training phase as well as the testing phase in terms of accuracy, precision, recall, and Fscore. The results of the simulations showed that the suggested HBA-ANN model outperformed all other comparable models in terms of every factor, demonstrating its superiority.
光伏电站故障在线检测与分类监测方案
最近光电能源利用的大多数趋势可归因于旨在减少使用矿物燃料的主要全球立法。然而,这些太阳能光伏系统的性能受到各种故障的影响,必须加以识别。为此,提出了一种有效且高精度的太阳能光伏故障检测方法,该方法采用人工神经网络(ANN)和蜂蜜獾算法(HBA)相结合的方法。提出的HBA-ANN模型的主要目的是在降低模型复杂度的同时提高PV故障检测的精度。我们使用了来自GitHub的PV故障数据集,该数据集后来被平衡和公正地实现了这一目标。此外,在预处理阶段,输入变量和目标变量是隔离的。下一阶段,对人工神经网络进行初始化并确定权重。然后使用HBA优化过程来优化或调优这些权重的值。此外,通过将建议的HBA-ANN模型与树、k近邻(KNN)、支持向量机(SVM)和人工神经网络等已建立的模型的性能进行对比,评估和验证了模型的有效性。在正确率、精密度、召回率和Fscore方面,得到了两个阶段的模拟结果,即训练阶段和测试阶段。仿真结果表明,提出的HBA-ANN模型在各因素上均优于其他可比较模型,显示了其优越性。
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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