Efficient Uncertainty Assessment in EM Problems via Dimensionality Reduction of Polynomial-Chaos Expansions †
Abstract
:1. Introduction
2. Brief Literature Review of Related Works
3. Proposed Methodology
3.1. Polynomial Chaos Expansions
3.2. The Morris Method
- For all .
- Let g be the cells in the grid that satisfy .
- Calculate the mean , for the cells in g. Let this be .
- Compute the product , where is the number of values in g.
3.3. The Finite-Difference Time-Domain Technique
4. Numerical Results
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Dielectric Materials | Mean Dielectric Permittivities |
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Dielectric Materials | Mean Dielectric Permittivities |
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Parameters | Mean Values | Standard Deviations |
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mm | mm | |
mm | mm | |
mm | mm | |
W | mm | mm |
L | mm | mm |
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Salis, C.; Kantartzis, N.; Zygiridis, T. Efficient Uncertainty Assessment in EM Problems via Dimensionality Reduction of Polynomial-Chaos Expansions. Technologies 2019, 7, 37. https://doi.org/10.3390/technologies7020037
Salis C, Kantartzis N, Zygiridis T. Efficient Uncertainty Assessment in EM Problems via Dimensionality Reduction of Polynomial-Chaos Expansions. Technologies. 2019; 7(2):37. https://doi.org/10.3390/technologies7020037
Chicago/Turabian StyleSalis, Christos, Nikolaos Kantartzis, and Theodoros Zygiridis. 2019. "Efficient Uncertainty Assessment in EM Problems via Dimensionality Reduction of Polynomial-Chaos Expansions" Technologies 7, no. 2: 37. https://doi.org/10.3390/technologies7020037
APA StyleSalis, C., Kantartzis, N., & Zygiridis, T. (2019). Efficient Uncertainty Assessment in EM Problems via Dimensionality Reduction of Polynomial-Chaos Expansions. Technologies, 7(2), 37. https://doi.org/10.3390/technologies7020037