Solar Cell Cracks and Finger Failure Detection Using Statistical Parameters of Electroluminescence Images and Machine Learning
Abstract
:1. Introduction
2. Methodology
2.1. Image Processing
2.2. Machine Learning Classifiers
3. Implemented Feature Vectors and Data Labelling
4. Results and Performance Discussion
Performance Analysis
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Statistical Parameters | Formulae |
---|---|
Cell level EL pixels | |
Mean | |
Standard deviation (SD) | |
Skewness | |
Kurtosis | |
Inactive area | |
Sensitivity peak | |
Full-width | |
Entropy | |
Angular second moment | |
Kstat | |
Variation | |
Median | |
Percentiles | |
Zscore | |
Error of measurement |
Appendix B
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Module Images | Cell Images | ‘Class 0’ | ‘Class 1’ | ‘Class 2’ |
---|---|---|---|---|
753 | 45,906 | 756 | 629 | 44,521 |
Balanced data-set | 2185 | 756 | 629 | 800 |
Parameter | Accuracy (%) | (%) | (%) | F1 Score (%) |
---|---|---|---|---|
Formulae | ) |
Feature Vectors | Statistical Parameters (V1) | Pixel Intensity Histogram + Statistical Parameters (V2) | ||||
---|---|---|---|---|---|---|
ML Classifiers | SVM | RF | k-NN | SVM | RF | k-NN |
F1 score (%) | 94.3 | 98.3 | 97.1 | 80.9 | 83.9 | 82.1 |
Accuracy (%) | 96.7 | 99.2 | 98.4 | 76.6 | 83.1 | 83.9 |
Recall (%) | 93.8 | 97.9 | 96.3 | 79.9 | 81.9 | 80.6 |
Precision (%) | 92.8 | 99.2 | 97.9 | 82.9 | 86.2 | 85.5 |
Research Article | Method (Vector) | Classifier | F1score (%) | Accuracy (%) | Detected Defects | EL Cell Images (Dataset) |
---|---|---|---|---|---|---|
This study | Statistical parameters (V1) | RF | 98.3 | 99.6 | Cracks B and C | |
k-NN | 97.1 | 98.5 | micro-crack A | 2185 | ||
SVM | 94.3 | 96.7 | finger failures | |||
Cracked, busbar | ||||||
[19] | Haralicks features | SVM | 98 | 98.9 | corroded, edge and busbar darkened, | 6264 |
CNN | 97 | 98.2 | ||||
Spectral clustering | ||||||
[21] | ROI location | k-mean method | 92.1 | 99.1 | Interrupted finger defects | ---- |
Stochastic gradient descent | SVM | --- | 98.7 | |||
[15] | MLP-ANN | --- | 98.1 | Cracked, corroded | 14,200 | |
RF | --- | 96.9 | ||||
NAG based learning | Cracks (normal, linear, cross, flaky, broken) | |||||
[20] | CNN | --- | 98.4 | 6120 | ||
Isolated deep learning | ||||||
[8] | CNN | 91.9 | 93 | Different defects | >7872 | |
Transfer learning via t-SNE | Material defects, grid fingers, deep and microcracks, cell degradation | |||||
[14] | CNN | 88.4 | 88.4 | 2624 | ||
Material defects, grid fingers, deep and microcracks, cell degradation | ||||||
[14] | Kaze/VGG | SVM | 82.5 | 82.4 | 2624 | |
Hough region detection | Cracks B and C | |||||
[22] | SVM | 5.1 | 99.7 | micro-crack A | 47,244 | |
RF | 4.4 | 96.7 | finger failures | |||
Percentile region detection | Cracks B and C | |||||
[22] | RF | 6.6 | 96.5 | micro-crack A | 47,244 | |
SVM | 4.1 | 99.7 | finger failures |
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Parikh, H.R.; Buratti, Y.; Spataru, S.; Villebro, F.; Reis Benatto, G.A.D.; Poulsen, P.B.; Wendlandt, S.; Kerekes, T.; Sera, D.; Hameiri, Z. Solar Cell Cracks and Finger Failure Detection Using Statistical Parameters of Electroluminescence Images and Machine Learning. Appl. Sci. 2020, 10, 8834. https://doi.org/10.3390/app10248834
Parikh HR, Buratti Y, Spataru S, Villebro F, Reis Benatto GAD, Poulsen PB, Wendlandt S, Kerekes T, Sera D, Hameiri Z. Solar Cell Cracks and Finger Failure Detection Using Statistical Parameters of Electroluminescence Images and Machine Learning. Applied Sciences. 2020; 10(24):8834. https://doi.org/10.3390/app10248834
Chicago/Turabian StyleParikh, Harsh Rajesh, Yoann Buratti, Sergiu Spataru, Frederik Villebro, Gisele Alves Dos Reis Benatto, Peter B. Poulsen, Stefan Wendlandt, Tamas Kerekes, Dezso Sera, and Ziv Hameiri. 2020. "Solar Cell Cracks and Finger Failure Detection Using Statistical Parameters of Electroluminescence Images and Machine Learning" Applied Sciences 10, no. 24: 8834. https://doi.org/10.3390/app10248834