Published May 23, 2025 | Version v1
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Physics-informed Machine Learning-based Methodology for Plated Through Holes Lifetime Estimation in Printed Circuit Boards

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Conference paper: 10.1109/ICPHM.2017.7998344 (DOI)
Journal article: 10.1109/TIV.2023.3322390 (DOI)
Journal article: 10.3390/s23126346 (DOI)
Conference paper: 10.1109/EuroSimE54952.2022.9764072 (DOI)
Journal article: 10.1109/TVT.2018.2818165 (DOI)

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2025-05-23

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