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A machine learning framework to identify the hotspot in photovoltaic module using infrared thermography

机译:一种机器学习框架,用于使用红外热成像识别光伏模块中的热点

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摘要

In this paper, a hybrid features based support vector machine (SVM) model is proposed using infrared thermography technique for hotspots detection and classification of photovoltaic (PV) panels. A novel hybrid feature vector consisting of RGB, texture, the histogram of oriented gradient (HOG), and local binary pattern (LBP) as features is formed using a data fusion approach. A machine learning algorithm SVM is employed to classify the obtained thermal images of PV panels into three different classes (i.e., healthy, non-faulty hotspot, and faulty). The comparison of different machine learning algorithms and datasets is also carried out to validate the superiority of the proposed model and hybrid feature dataset. The experimental results reveal that the proposed hybrid features with SVM resulted in 96.8% training accuracy and 92% testing accuracy with lesser computational complexity and storage space than other machine learning algorithms. The proposed approach is easily implementable for efficient monitoring and fault diagnosis of PV panels.
机译:本文采用了一种基于混合特征的支持向量机(SVM)模型,采用红外热法理技术,用于热点检测和光伏(PV)面板分类。使用数据融合方法形成由RGB,纹理,面向梯度(HOG)的直方图和局部二进制图案(LBP)组成的新型混合特征向量。采用机器学习算法SVM将PV面板的热图像分类为三种不同的类(即,健康,非故障热点和故障)。还执行了不同机器学习算法和数据集的比较以验证所提出的模型和混合特征数据集的优越性。实验结果表明,具有SVM的拟议杂交功能导致96.8%的训练精度和92%的测试精度,与其他机器学习算法的计算复杂性和存储空间较小。所提出的方法很容易可实现PV面板的有效监控和故障诊断。

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