ResearchSpace

A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation

Show simple item record

dc.contributor.author Pratt, Lawrence E
dc.contributor.author Matheus, Jana
dc.contributor.author Klein, R
dc.date.accessioned 2023-04-18T07:02:35Z
dc.date.available 2023-04-18T07:02:35Z
dc.date.issued 2023-12
dc.identifier.citation Pratt, L.E., Matheus, J. & Klein, R. 2023. A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation. <i>Systems and Soft Computing, 5.</i> http://hdl.handle.net/10204/12756 en_ZA
dc.identifier.issn 2772-9419
dc.identifier.uri https://doi.org/10.1016/j.sasc.2023.200048
dc.identifier.uri http://hdl.handle.net/10204/12756
dc.description.abstract Electroluminescence (EL) images enable defect detection in solar photovoltaic (PV) modules that are otherwise invisible to the naked eye, much the same way an x-ray enables a doctor to detect cracks and fractures in bones. This paper presents a benchmark dataset and results for automatic detection and classification using deep learning models trained on 24 defects and features in EL images of crystalline silicon solar cells. The dataset consists of 593 cell images with ground truth masks corresponding to the pixel-level labels for each feature and defect. Four deep learning models (U-Net_12, U-Net_25, PSPNet, and DeepLabv3+) were trained using equal class weights, inverse class weights, and custom class weights for a total of twelve sets of predictions for each of 50 test images. The model performance was quantified based on the median intersection over union (mIoU) and median recall (mRcl) for a subset of the most common defects (cracks, inactive areas, and gridline defects) and features (ribbon interconnects and cell spacing) in the dataset. The mIoU measured higher for the two features compared to the three defects across all models which correlates with the size of the large features compared to the small defects that each class occupies in the images. The DeepLabv3+ with custom class weights scores the highest in terms of mIoU for the selected defects in this dataset. While the mIoU for cracks is low (25%) even for the DeepLabv3+, the recall is high (86%), and the resulting prediction masks reliably locate the defects in complex images with both large and small objects. Therefore, the model proves useful in the context of detecting cracks and other defects in EL images. The unique contributions from this work include the benchmark dataset with corresponding ground truth masks for multi-class semantic segmentation in EL images of solar PV cells and the performance metrics from four semantic segmentation models trained using three sets of class weights. en_US
dc.format Fulltext en_US
dc.language.iso en en_US
dc.relation.uri https://www.sciencedirect.com/science/article/pii/S2772941923000017?via%3Dihub en_US
dc.rights Attribution-NonCommercial-NoDerivs 3.0 United States *
dc.rights.uri http://creativecommons.org/licenses/by-nc-nd/3.0/us/ *
dc.source Systems and Soft Computing, 5 en_US
dc.subject Electroluminescence en_US
dc.subject EL en_US
dc.subject Machine learning en_US
dc.subject Semantic segmentation en_US
dc.subject Solar Photovoltaic en_US
dc.title A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation en_US
dc.type Article en_US
dc.description.pages 8pp en_US
dc.description.note © 2023 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/bync-nd/4.0/). en_US
dc.description.cluster Smart Places en_US
dc.description.cluster Next Generation Enterprises & Institutions en_US
dc.description.impactarea Energy Supply and Demand en_US
dc.description.impactarea Artificial Intel Augment Real en_US
dc.identifier.apacitation Pratt, L. E., Matheus, J., & Klein, R. (2023). A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation. <i>Systems and Soft Computing, 5</i>, http://hdl.handle.net/10204/12756 en_ZA
dc.identifier.chicagocitation Pratt, Lawrence E, Jana Matheus, and R Klein "A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation." <i>Systems and Soft Computing, 5</i> (2023) http://hdl.handle.net/10204/12756 en_ZA
dc.identifier.vancouvercitation Pratt LE, Matheus J, Klein R. A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation. Systems and Soft Computing, 5. 2023; http://hdl.handle.net/10204/12756. en_ZA
dc.identifier.ris TY - Article AU - Pratt, Lawrence E AU - Matheus, Jana AU - Klein, R AB - Electroluminescence (EL) images enable defect detection in solar photovoltaic (PV) modules that are otherwise invisible to the naked eye, much the same way an x-ray enables a doctor to detect cracks and fractures in bones. This paper presents a benchmark dataset and results for automatic detection and classification using deep learning models trained on 24 defects and features in EL images of crystalline silicon solar cells. The dataset consists of 593 cell images with ground truth masks corresponding to the pixel-level labels for each feature and defect. Four deep learning models (U-Net_12, U-Net_25, PSPNet, and DeepLabv3+) were trained using equal class weights, inverse class weights, and custom class weights for a total of twelve sets of predictions for each of 50 test images. The model performance was quantified based on the median intersection over union (mIoU) and median recall (mRcl) for a subset of the most common defects (cracks, inactive areas, and gridline defects) and features (ribbon interconnects and cell spacing) in the dataset. The mIoU measured higher for the two features compared to the three defects across all models which correlates with the size of the large features compared to the small defects that each class occupies in the images. The DeepLabv3+ with custom class weights scores the highest in terms of mIoU for the selected defects in this dataset. While the mIoU for cracks is low (25%) even for the DeepLabv3+, the recall is high (86%), and the resulting prediction masks reliably locate the defects in complex images with both large and small objects. Therefore, the model proves useful in the context of detecting cracks and other defects in EL images. The unique contributions from this work include the benchmark dataset with corresponding ground truth masks for multi-class semantic segmentation in EL images of solar PV cells and the performance metrics from four semantic segmentation models trained using three sets of class weights. DA - 2023-12 DB - ResearchSpace DP - CSIR J1 - Systems and Soft Computing, 5 KW - Electroluminescence KW - EL KW - Machine learning KW - Semantic segmentation KW - Solar Photovoltaic LK - https://researchspace.csir.co.za PY - 2023 SM - 2772-9419 T1 - A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation TI - A benchmark dataset for defect detection and classification in electroluminescence images of PV modules using semantic segmentation UR - http://hdl.handle.net/10204/12756 ER - en_ZA
dc.identifier.worklist 26477 en_US


Files in this item

The following license files are associated with this item:

This item appears in the following Collection(s)

Show simple item record

Attribution-NonCommercial-NoDerivs 3.0 United States Except where otherwise noted, this item's license is described as Attribution-NonCommercial-NoDerivs 3.0 United States