← 返回
光伏发电技术 储能系统 跟网型GFL 深度学习 ★ 5.0

YOLOv8n-GBE:一种结合Ghost卷积与BiFPN-ECA注意力机制的混合YOLOv8n模型

YOLOv8n-GBE: A Hybrid YOLOv8n Model With Ghost Convolutions and BiFPN-ECA Attention for Solar PV Defect Localization

语言:

中文摘要

可靠的光伏组件缺陷检测对维持长期能源效率和降低运维成本至关重要。本文提出一种基于混合YOLOv8n架构的轻量高性能深度学习模型,适用于RGB、灰度及红外等多种模态下的多尺度缺陷识别。该模型融合BiFPN结构、Ghost Bottleneck模块与高效通道注意力(ECA),提升多尺度表征能力,减少冗余计算,增强特征提取。在PVEL-AD、PV-Multi-Defect和Solar Panel Anomalies三个基准数据集上的实验表明,模型mAP@50分别达96.5%、94.6%和97.6%,推理时间仅1.9 ms,参数量3M,FLOPs为8.1G,兼具高召回率(最高99.0%)与精度(最高98.4%)。相较于当前61种先进模型,本模型在准确率与延迟间取得更优平衡,适用于无人机边缘计算等实时太阳能巡检场景。研究验证了深度融合特征、轻量化注意力与高效卷积结合的有效性。

English Abstract

Reliable photovoltaic (PV) module defect detection is essential for maintaining long term energy efficiency and lowering solar power system maintenance costs. The deep learning model presented in this research is based on a hybridized YOLOv8n architecture and is lightweight and high performing. It is designed for multi scale defect identification in a variety of imaging modalities, such as RGB, grayscale, and infrared datasets. The proposed approach combines a BiFPN based neck, Ghost Bottlenecks, and Efficient Channel Attention (ECA) to improve multi scale representation, decrease redundant computation, and increase feature extraction. The model performs better in terms of detection accuracy and efficiency, as shown by experimental findings on three benchmark datasets: PVEL-AD, PV-Multi-Defect, Solar Panel Anomalies. The model’s respective mAP@50 values are 96.5%, 94.6%, and 97.6%. At a steady inference time of only 1.9 ms and 8.1 GFLOPs, it also achieves near-perfect recall (up to 99.0%) and high precision (up to 98.4%). With just 3M parameters, the proposed hybrid model provides a much better accuracy-latency trade-off 61 current state-of-the-art models, which makes it perfect for real-time solar inspection applications, such as edge deployment in drones and embedded systems. The outcomes confirm that reliable PV fault localization under a range of operating situations may be achieved by combining deep feature fusion, lightweight attention, and efficient convolution.
S

SunView 深度解读

该轻量级光伏缺陷检测模型对阳光电源智能运维体系具有重要应用价值。可直接集成至iSolarCloud云平台的智能诊断模块,结合无人机巡检实现SG系列光伏电站的实时缺陷识别,1.9ms推理速度和3M参数量满足边缘计算需求。多模态检测能力(RGB/红外)可增强PowerTitan大型储能电站的组件健康监测,96.5%以上mAP准确率显著提升预测性维护效能。Ghost卷积与BiFPN-ECA注意力机制的融合思路,可启发ST系列储能变流器嵌入式诊断算法优化,降低运维成本,延长系统全生命周期收益,强化阳光电源在智能化运维领域的技术领先优势。