Optimizing Industrial Etching Processes for PCB Manu-facturing: Real-Time Temperature Control Using VGG-Based Transfer Learning
Metadata
Show full item recordAuthor
Luo, Yang; Jagtap, Sandeep; Trollman, Hana; García-García, Guillermo; Liu, Xiaoyan; Abdul Majeed, Anwar P.P.Editorial
Springer Nature
Materia
Temperature Control PCB Manufacturing Transfer Learning Infrared Imaging Feature Extraction Convolutional Neural Networks (CNN)
Date
2025Referencia bibliográfica
Published version: Luo, Y., Jagtap, S., Trollman, H., Garcia-Garcia, G., Liu, X., P.P. Abdul Majeed, A. (2025). Optimizing Industrial Etching Processes for PCB Manufacturing: Real-Time Temperature Control Using VGG-Based Transfer Learning. In: Chen, W., et al. Selected Proceedings from the 2nd International Conference on Intelligent Manufacturing and Robotics, ICIMR 2024, 22-23 August, Suzhou, China. ICIMR 2024 2024. Lecture Notes in Networks and Systems, vol 1316. Springer, Singapore. https://doi.org/10.1007/978-981-96-3949-6_27
Sponsorship
Research Development Fund, RDF-21-01-028; Summer Undergraduate Research Fellowship, SURF-2024-0355; Xi’an Jiaotong-Liverpool University COESE2324-01-07; ‘Marie Skłodowska-Curie Actions (MSCA) Postdoctoral Fellowship’ 101052284Abstract
Accurate temperature control in Printed Circuit Board (PCB) manufacturing is essential for maintaining high-quality etching results. Automated monitoring using machine vision and deep learning offers an effective approach for this task. This study investigated a feature-based transfer learning technique for classifying temperature readiness in infrared images of the etching process. The captured dataset containing 470 ‘Production-Ready’ and 480 ‘Not-Ready’ infrared images of the etchant tank was utilized. Pre-trained Visual Geometry Group (VGG) Convolutional Neural Network (CNN) models, specifically VGG16 and VGG19, were employed to extract discriminative features from these images. Logistic Regression (LR) classifiers were then trained on these features to classify the infrared images. The performance of the VGG16-LR and VGG19-LR pipelines was evaluated on training, validation, and test sets using a 60:20:20 split. While both pipelines achieved 100% accuracy on the training sets, the VGG19 pipeline showed exceptional performance, achieving a validation accuracy of 95%, and a test accuracy of 99%. The VGG16 pipeline also demonstrated robust performance, achieving 96% accuracy on both the validation and test sets. Considering the dimensions and the overall efficiency of the pipeline, it was determined that the VGG19-LR model was appropriate for the captured dataset. The high accuracy indicates that transfer learning is suitable for categorizing temperature fluctuation in infrared thermography, as opposed to training a deep neural network from scratch. Computer vision and deep learning provide automated and precise temperature management during the etching process, leading to enhanced efficiency in PCB manufacturing.