Machine learning approaches for automatic defect detection in photovoltaic systems
Swayam Rajat Mohanty, Moin Uddin Maruf, Vaibhav Singh, Zeeshan Ahmad

TL;DR
This paper reviews deep learning-based computer vision techniques for automatic defect detection in photovoltaic systems, highlighting current methods, challenges, and future research directions to improve reliability and commercial viability.
Contribution
It provides a comprehensive evaluation of existing deep learning approaches for PV defect detection, identifies gaps, and proposes a research roadmap for advancing the field.
Findings
Deep learning models focus on darker regions for classification.
Most approaches use CNNs with data augmentation or GANs.
Identified gaps include model robustness and interpretability challenges.
Abstract
Solar photovoltaic (PV) modules are prone to damage during manufacturing, installation and operation which reduces their power conversion efficiency. This diminishes their positive environmental impact over the lifecycle. Continuous monitoring of PV modules during operation via unmanned aerial vehicles is essential to ensure that defective panels are promptly replaced or repaired to maintain high power conversion efficiencies. Computer vision provides an automatic, non-destructive and cost-effective tool for monitoring defects in large-scale PV plants. We review the current landscape of deep learning-based computer vision techniques used for detecting defects in solar modules. We compare and evaluate the existing approaches at different levels, namely the type of images used, data collection and processing method, deep learning architectures employed, and model interpretability. Most…
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Taxonomy
TopicsPhotovoltaic System Optimization Techniques · Photovoltaic Systems and Sustainability · Industrial Vision Systems and Defect Detection
