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Short Review on Machine Learning Optimization Methods in Surface Mounted Electronics Assembly Technologies

Martinek, Péter and I Made, Putrama and Krammer, Olivér and Géczy, Attila (2024) Short Review on Machine Learning Optimization Methods in Surface Mounted Electronics Assembly Technologies. In: IEEE ISSE 2023.

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Abstract

Machine learning (ML) is increasingly adopted to support the production process of surface-mounted electronics assembly technology (SMT). In the literature, extensive research was carried out to enhance automated optical inspection (AOI) by applying ML algorithms, like artificial neural networks. However, predicting production defects based on data from the sensors built into the production equipment is still not that widespread. Furthermore, applying ML-based approaches may allow the optimization of production control by fine-tuning process parameters of stencil printing or component placement, for example. Many research papers were surveyed to identify the strong and weak points of current approaches in this area. A clear overview was given to aid the proper classification of recent results and the applicability of ML-based methods in SMT. Our results contain not only the review of multiple approaches, but a comparison of the numerical results, the complexity of the experimental environment and the extent of applicability are also included.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: surface mount assembly, machine learning, enhanced defect detection, production control and optimization, brief survey
Subjects: T Technology / alkalmazott, műszaki tudományok > TK Electrical engineering. Electronics Nuclear engineering / elektrotechnika, elektronika, atomtechnika
Depositing User: Dr Attila Géczy
Date Deposited: 13 Jan 2025 15:25
Last Modified: 13 Jan 2025 15:25
URI: https://real.mtak.hu/id/eprint/213366

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