Investigation of Thermographic Images of Photovoltaic Modules using Deep Learning Models

Raorane Ashwini, Dhiraj B. Magare, Yogita D. Mistry
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Abstract

Recently Solar PV panel has important role in the power generation based on renewable energy. In this paper, presents a challenge faced by faults diagnosis using thermal image analysis of Photovoltaic (PV) Module is studied. In ancient time, compared to the modern technique of PV examination using thermal imaging, the manual PV inspection approach is frequently slower, riskier, and less accurate. The use of thermal photos has the advantage of being able to immediately identify the anomaly in PV array as well as offer other measurement parameters. This research on thermal image analysis will aid in the inspection of PV modules by offering a more accurate and cost-effective identification of PV defects. According to this study, deep learning approaches are currently being considered as a feasible classifier for image processing and computer vision. Various studies, on the other hand, employed the notion of deep learning to classify and detect thermographic images used to detect flaws in PV modules. The analysis of anomaly classification and parameter evaluation were presented and explored in this method. This study looks at how well Deep Neural Networks (DNNs) models perform when it comes to classifying abnormalities in images. DNNs models have high accuracy for implementing classification of anomalies.
基于深度学习模型的光伏组件热成像图像研究
近年来,太阳能光伏板在可再生能源发电中发挥着重要作用。本文研究了利用光伏组件热图像分析进行故障诊断所面临的挑战。在古代,与使用热成像的现代PV检查技术相比,人工PV检查方法通常更慢,风险更大,准确性更低。热照片的优点是能够立即识别光伏阵列中的异常,并提供其他测量参数。这项热图像分析的研究将有助于光伏组件的检查,提供更准确和经济有效的光伏缺陷识别。根据这项研究,深度学习方法目前被认为是一种可行的图像处理和计算机视觉分类器。另一方面,各种研究采用深度学习的概念对用于检测光伏组件缺陷的热成像图像进行分类和检测。提出并探讨了该方法的异常分类分析和参数评价。这项研究着眼于深度神经网络(dnn)模型在对图像异常进行分类时的表现。dnn模型在实现异常分类方面具有较高的准确率。
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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