CVLGJun 21, 2021

Segmentation of cell-level anomalies in electroluminescence images of photovoltaic modules

arXiv:2106.10962v274 citations
AI Analysis

This work addresses the early identification of fine defects in PV modules to maintain productivity and prolong component life, representing an incremental improvement in domain-specific methods.

The authors tackled the problem of detecting cell-level anomalies in electroluminescence images of photovoltaic modules by proposing an end-to-end deep learning pipeline that combines object detection, image classification, and weakly supervised segmentation, achieving improved detection and segmentation capabilities.

In the operation & maintenance (O&M) of photovoltaic (PV) plants, the early identification of failures has become crucial to maintain productivity and prolong components' life. Of all defects, cell-level anomalies can lead to serious failures and may affect surrounding PV modules in the long run. These fine defects are usually captured with high spatial resolution electroluminescence (EL) imaging. The difficulty of acquiring such images has limited the availability of data. For this work, multiple data resources and augmentation techniques have been used to surpass this limitation. Current state-of-the-art detection methods extract barely low-level information from individual PV cell images, and their performance is conditioned by the available training data. In this article, we propose an end-to-end deep learning pipeline that detects, locates and segments cell-level anomalies from entire photovoltaic modules via EL images. The proposed modular pipeline combines three deep learning techniques: 1. object detection (modified Faster-RNN), 2. image classification (EfficientNet) and 3. weakly supervised segmentation (autoencoder). The modular nature of the pipeline allows to upgrade the deep learning models to the further improvements in the state-of-the-art and also extend the pipeline towards new functionalities.

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