改进的YOLOv8框架,用于高效的太阳能电池板缺陷检测

IF 6.7 2区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY
Amreen Batool , Yong-Won Kim , Yung-Cheol Byun
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引用次数: 0

摘要

光伏(PV)行业在可再生能源领域发挥着至关重要的作用,有效的故障检测对于确保最佳性能和可持续性至关重要。虽然现有的深度学习模型显著提高了缺陷检测的准确性,但它们的大尺寸和有限的特征提取能力降低了检测效率,并使其难以适应不同的缺陷条件。因此,本研究提出了改进的YOLOv8-SEB模型,该模型在YOLOv8架构中集成了一个挤压和激励块(SEB),以增强光伏(PV)板的缺陷检测。SEB动态地重新加权特征映射,允许模型强调与任务相关的关键特征,并提高对复杂和微妙缺陷(如“黑边界”和“破碎”)的检测。使用pv - multidefect数据集的实验评估表明,与基线YOLOv8相比,YOLOv8- seb在IoU 0.5 ([email protected])时的平均精度提高了2.6%,在[email protected]:0.95时提高了3.4%,同时将DFL Loss降低到0.16。改进后的模型提高了准确率和召回率,减少了误报和误报。尽管SEB的集成引入了额外的计算复杂性,但YOLOv8-SEB仍然适合通过潜在的优化在边缘设备上进行实时部署。该研究为太阳能电池板缺陷检测提供了一种可扩展且高效的方法,促进了成本效益的维护,并支持光伏系统的运行稳定性。该模型有助于智能检测技术的进步,有助于延长太阳能电池板的使用寿命,促进可再生能源基础设施的可持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved YOLOv8 framework for efficient solar panel defect detection
The photovoltaic (PV) industry plays a vital role in the renewable energy sector, making efficient fault detection essential to ensure optimal performance and sustainability. While the existing deep learning models have significantly improved defect detection accuracy, their large size and limited feature extraction capabilities reduce detection efficiency and complicate adaptation to varying defect conditions. Therefore, this study proposed the Improved YOLOv8-SEB model, which integrates a Squeeze-and-Excitation Block (SEB) into the YOLOv8 architecture to enhance defect detection in photovoltaic (PV) panels. The SEB dynamically reweights feature maps, allowing the model to emphasize critical features relevant to the task and improve the detection of complex and subtle defects such as “Black Border” and “Broken”. Experimental evaluations using a PV-Multi-Defect dataset show that YOLOv8-SEB achieves a 2.6% increase in mean average precision at IoU 0.5 ([email protected]) and a 3.4% gain in [email protected]:0.95 compared to the baseline YOLOv8, while reducing DFL Loss to 0.16. The improved model demonstrates enhanced precision and recall, with fewer false positives and negatives. Although the integration of SEB introduces additional computational complexity, YOLOv8-SEB remains suitable for real-time deployment on edge devices through potential optimizations. This research offers a scalable and efficient approach for solar panel defect detection, facilitating cost-effective maintenance and supporting the operational stability of PV systems. The proposed model contributes to the advancement of intelligent inspection technologies, helping to extend the lifespan of solar panels and promote the sustainability of renewable energy infrastructures.
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来源期刊
Journal of building engineering
Journal of building engineering Engineering-Civil and Structural Engineering
CiteScore
10.00
自引率
12.50%
发文量
1901
审稿时长
35 days
期刊介绍: The Journal of Building Engineering is an interdisciplinary journal that covers all aspects of science and technology concerned with the whole life cycle of the built environment; from the design phase through to construction, operation, performance, maintenance and its deterioration.
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