Detection of Monocrystalline Silicon Wafer Defects Using Deep Transfer Learning

Authors

  • Adriana Ganum
  • Dayang NurFatimah Awang Iskandar
  • Lim Phei Chi
  • Ahmad Hadinata Fauzi

DOI:

https://doi.org/10.26636/jtit.2022.156321

Keywords:

automated optical inspection, machine learning, neural network, imperfection identification

Abstract

Defect detection is an important step in industrial production of monocrystalline silicon. Through the study of deep learning, this work proposes a framework for classifying monocrystalline silicon wafer defects using deep transfer learning (DTL). An existing pre-trained deep learning model was used as the starting point for building a new model. We studied the use of DTL and the potential adaptation of MobileNetV2 that was pre-trained using ImageNet for extracting monocrystalline silicon wafer defect features. This has led to speeding up the training process and to improving performance of the DTL-MobileNetV2 model in detecting and classifying six types of monocrystalline silicon wafer defects (crack, double contrast, hole, microcrack, saw-mark and stain). The process of training the DTL-MobileNetV2 model was optimized by relying on the dense block layer and global average pooling (GAP) method which had accelerated the convergence rate and improved generalization of the classification network. The monocrystalline silicon wafer defect classification technique relying on the DTL-MobileNetV2 model achieved the accuracy rate of 98.99% when evaluated against the testing set. This shows that DTL is an effective way of detecting different types of defects in monocrystalline silicon wafers, thus being suitable for minimizing misclassification and maximizing the overall production capacities.

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Published

2022-03-30

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How to Cite

[1]
A. Ganum, D. N. A. Iskandar, L. P. Chi, and A. H. Fauzi, “Detection of Monocrystalline Silicon Wafer Defects Using Deep Transfer Learning”, JTIT, vol. 87, no. 1, pp. 34–42, Mar. 2022, doi: 10.26636/jtit.2022.156321.