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Título
Hybrid AI-Thermal Model Trained via Monte Carlo Simulations to Study Self-Heating Effects
Autor(es)
Fecha de publicación
2024
Editor
IEEE
Citación
S. García-Sánchez, I. Íñiguez-de-la-Torre, T. González and J. Mateos, "Hybrid AI-Thermal Model Trained via Monte Carlo Simulations to Study Self-Heating Effects," in IEEE Transactions on Electron Devices, doi: 10.1109/TED.2024.3438120. keywords: {Computational modeling;Artificial neural networks;Predictive models;Lattices;Semiconductor process modeling;Current density;Training;Artificial intelligence (AI);artificial neural networks (ANNs);electronic devices;gallium nitride (GaN);Monte Carlo simulations;thermal models},
Resumen
[EN]This article presents a hybrid artificial intelligence (AI)-thermal model for the determination of the current and lattice temperature of a device under a given bias voltage. The model is based on a neural network trained with isothermal Monte Carlo simulations and the coupling of any thermal model where the lattice temperature depends on the dissipated power. The proposed procedure has been validated on a gallium nitride (GaN)-based self-switching diode, although its application to other electronic devices, such as transistors, is also straightforward. The proposed method allows for a significant reduction in computational cost, in addition to enabling the investigation of various thermal models in an efficient manner. It is capable of reproducing the results that would be obtained through electrothermal Monte Carlo simulations, which are particularly computationally expensive.
URI
ISSN
0018-9383
DOI
10.1109/TED.2024.3438120
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- GINEAF. Artículos [100]












