MambaVSS-YOLOv11n: State Space Model-Enhanced Multi-Defect Detection in Photovoltaic Module Electroluminescence Images
Kun Wang, Yixin Tang, Xu Wang, Nan Yang, Ziqi Han, Fuzhong Li, Guozhu Song

TL;DR
This paper introduces MambaVSS-YOLOv11n, a new method for detecting multiple defects in solar panel images, improving accuracy and efficiency for manufacturing quality control.
Contribution
The novel integration of Vision State Space modules and Inner-MDPIoU loss enhances lightweight defect detection in photovoltaic modules.
Findings
MambaVSS-YOLOv11n reduces model parameters by 18.1% while improving detection accuracy.
The model achieves [email protected] of 0.869 and [email protected]:0.95 of 0.637 for multi-defect detection.
The method is suitable for real-time inspection in solar panel production lines.
Abstract
Given the rising global demand for environmentally sustainable energy sources, solar photovoltaic (PV) power generation has emerged as a pivotal component of the energy transition. In PV systems, power conversion efficiency is degraded and operational lifespan reduced due to the presence of defective modules. Consequently, achieving accurate and efficient defect detection during PV module manufacturing is critical to ensuring product quality and reliability. To address this challenge, we propose MambaVSS-YOLOv11n, an electroluminescence (EL) image-based multi-defect detection method for PV modules. Our study utilizes a dataset containing six types of defects—Broken Gate, Cold Solder Joint, Black Spot, Scratch, Microcrack, and Suction Mark—to construct 692 labeled EL images of defective PV modules. The model integrates the Vision State Space (VSS) module from Mamba and optimizes the C3k2…
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Taxonomy
TopicsPhotovoltaic System Optimization Techniques · Advanced Neural Network Applications · Industrial Vision Systems and Defect Detection
