As solar capacity installed worldwide continues to grow, there is an increasing awareness that advanced inspection systems are becoming of utmost importance to schedule smart interventions and minimize downtime likelihood. In this work we propose a novel automatic multi-stage model to detect panel defects on aerial images captured by unmanned aerial vehicle by using the YOLOv3 network and Computer Vision techniques. The model combines detections of panels and defects to refine its accuracy. The main novelties are represented by its versatility to process either thermographic or visible images and detect a large variety of defects and its portability to both rooftop and ground-mounted PV systems and different panel types. The proposed model has been validated on two big PV plants in the south of Italy with an outstanding AP@0.5 exceeding 98% for panel detection, a remarkable AP@0.4 (AP@0.5) of roughly 88.3% (66.95%) for hotspots by means of infrared thermography and a mAP@0.5 of almost 70% in the visible spectrum for detection of anomalies including panel shading induced by soiling and bird dropping, delamination, presence of puddles and raised rooftop panels. An estimation of the soiling coverage is also predicted. Finally an analysis of the influence of the different YOLOv3's output scales on the detection is discussed.
翻译:随着全世界太阳能发电能力的不断增长,人们日益认识到先进的检查系统对安排智能干预和尽量减少故障可能性至关重要,因此,先进的检查系统对安排智能干预和尽量减少故障可能性至关重要。在这项工作中,我们提出一个新的自动多阶段模型,以利用YOLOv3网络和计算机愿景技术探测无人驾驶飞行器所摄航空图像中的小组缺陷。该模型将检测板和缺陷结合起来,以改进其准确性。主要的新颖之处是,它具有多功能,可以处理光学成像或可见图像,并发现大量缺陷及其可移植到屋顶和地面架起的PV系统和不同类别。在意大利南部的两座大型PV工厂中,已经验证了拟议的模型,其未完成的AP@0.5超过98%的板检测,一个显著的AP@0.4(AP@0.5),其热点大约88.3%(66.95%)的检测结果;在可见频谱中几乎70%的 mAP@0.5用于检测异常现象,包括由土壤和鸟类沉降、脱色、浸泡和屋顶影响导致的面板的覆盖。最后,对土壤检测结果进行了土壤范围进行了预测。