研究目的
Investigating the automation of photovoltaic monitoring methods for defect detection in photovoltaic modules using infrared images with isolated and develop-model transfer deep learning techniques.
研究成果
The study successfully demonstrates the use of isolated deep learning and develop-model transfer deep learning techniques for automatic defect detection in photovoltaic modules using infrared images. The transfer learned model achieved a higher average accuracy of 99.23% compared to the isolated learned model's 98.67%. Both models require low computation power and maintain real-time prediction speed, making them suitable for implementation with ordinary hardware. The study also provides a review of different types of defects detectable in infrared images, which can aid in manual labeling for future studies.
研究不足
The study is limited by the size of the dataset and the types of defects included. The models may misclassify images of normal operating modules with high current density at busbars or local shunts due to the small number of such images in the dataset.
1:Experimental Design and Method Selection:
The study employs isolated deep learning and develop-model transfer deep learning techniques for automatic defect detection in photovoltaic modules using infrared images. A light convolutional neural network design is used for isolated learning, and a base model developed from electroluminescence images is fine-tuned for transfer learning.
2:Sample Selection and Data Sources:
An Infrared images dataset is collected from normal operating and defective photovoltaic modules with lab-induced defects, including both indoor and outdoor IR imaging.
3:List of Experimental Equipment and Materials:
Thermal (infrared) cameras are used for IR imaging, and the images are processed in SmartView thermal imaging software.
4:Experimental Procedures and Operational Workflow:
IR imaging is performed on normal operating modules, followed by artificial defect induction and IR measurements. Data augmentation methods are employed to expand the dataset.
5:Data Analysis Methods:
The performance of the models is evaluated using accuracy, precision, recall rate, F1 score, and confusion matrices.
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