Izenburua
Comparative analysis and evaluation of ageing forecasting methods for semiconductor devices in online health monitoringEgilea
Beste instituzio
University of StrathclydeTechnical University of Denmark
Universidad del País Vasco/Euskal Herriko Unibertsitatea (UPV/EHU)
Ikerbasque
Bertsioa
Postprinta
Eskubideak
© 2025 Elsevier Ltd.Sarbidea
Sarbide bahituaArgitaratzailearen bertsioa
https://doi.org/10.1016/j.engappai.2025.110545Non argitaratua
Engineering Applications of Artificial Intelligence Vol. 150. N. art. 110545. June 2025Argitaratzailea
ElsevierGako-hitzak
semiconductors
Forecasting
condition monitoring
Temporal Fusion ... [+]
Forecasting
condition monitoring
Temporal Fusion ... [+]
semiconductors
Forecasting
condition monitoring
Temporal Fusion
Transformers
neural networks [-]
Forecasting
condition monitoring
Temporal Fusion
Transformers
neural networks [-]
Gaia (UNESCO Tesauroa)
ErdieroaleaUNESCO Sailkapena
ErdieroaleakLaburpena
Semiconductor devices, especially MOSFETs (Metal–oxide–semiconductor field-effect transistor), are crucial in power electronics, but their reliability is affected by ageing processes influenced by cyc ... [+]
Semiconductor devices, especially MOSFETs (Metal–oxide–semiconductor field-effect transistor), are crucial in power electronics, but their reliability is affected by ageing processes influenced by cycling and temperature. The primary ageing mechanism in discrete semiconductors and power modules is the bond wire lift-off, caused by crack growth due to thermal fatigue. The process is empirically characterized by exponential growth and an abrupt end of life, making long-term ageing forecasts challenging. This research presents a comprehensive comparative assessment of different forecasting methods for MOSFET failure forecasting applications. Classical tracking, statistical forecasting and Neural Network (NN) based forecasting models are implemented along with novel Temporal Fusion Transformers (TFTs). A comprehensive comparison is performed assessing their MOSFET ageing forecasting ability for different forecasting horizons. For short-term predictions, all algorithms result in acceptable results, with the best results produced by classical NN forecasting models at the expense of higher computations. For long-term forecasting, only the TFT is able to produce valid outcomes owing to the ability to integrate covariates from the expected future conditions. Additionally, TFT attention points identify key ageing turning points, which indicate new failure modes or accelerated ageing phases. [-]
Finantzatzailea
Gobierno VascoGobierno de España
Programa
Elkartek 2024Ramon y Cajal. Convocatoria 2022
Zenbakia
KK-2024-00030RYC2022-037300-I
Laguntzaren URIa
Sin informaciónSin información
Proiektua
Mecatrónica cognitiva para el diseño de las maquinas industriales (MECACOGNIT)Jose Ignacio Aizpurua Unanue