Bayesian Learning for Uncertainty Quantification, Optimization, and Inverse Design

Design of microwave circuits require extensive simulations, which often take significant computational time due to design complexity. This can be addressed through neural networks (NNs) that provide predictive capability. Predictions often come with uncertainties that need to be quantified. Moreover...

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Veröffentlicht in:IEEE transactions on microwave theory and techniques 2022-11, Vol.70 (11), p.4620-4634
Hauptverfasser: Swaminathan, Madhavan, Bhatti, Osama Waqar, Guo, Yiliang, Huang, Eric, Akinwande, Oluwaseyi
Format: Artikel
Sprache:eng
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Zusammenfassung:Design of microwave circuits require extensive simulations, which often take significant computational time due to design complexity. This can be addressed through neural networks (NNs) that provide predictive capability. Predictions often come with uncertainties that need to be quantified. Moreover, optimization and inverse designs are better done using probabilities. This article describes the use of Bayes theorem and machine learning (ML) for solving complex microwave design problems.
ISSN:0018-9480
1557-9670
DOI:10.1109/TMTT.2022.3206455