Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends

In this paper, we outline the historical evolution of RF and microwave design optimization and envisage imminent and future challenges that will be addressed by the next generation of optimization developments. Our journey starts in the 1960s, with the emergence of formal numerical optimization algo...

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Bibliographic Details
Main Authors: Jose E. Rayas-Sanchez, Slawomir Koziel, John W. Bandler
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Journal of Microwaves
Subjects:
ANN
CAD
Online Access:https://ieeexplore.ieee.org/document/9318755/
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spelling doaj-f13556cafdf34b738fb615dbba4f542d2021-09-13T14:12:03ZengIEEEIEEE Journal of Microwaves2692-83882021-01-011148149310.1109/JMW.2020.30342639318755Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future TrendsJose E. Rayas-Sanchez0https://orcid.org/0000-0003-2611-5618Slawomir Koziel1https://orcid.org/0000-0002-9063-2647John W. Bandler2https://orcid.org/0000-0002-7140-5908Department of Electronics, Systems and Informatics, ITESO – the Jesuit University of Guadalajara, Tlaquepaque, MexicoEngineering Optimization & Modeling Center, Department of Engineering, Reykjavík University, Reykjavík, IcelandDepartment of Electrical and Computer Engineering, McMaster University, Hamilton, ON, CanadaIn this paper, we outline the historical evolution of RF and microwave design optimization and envisage imminent and future challenges that will be addressed by the next generation of optimization developments. Our journey starts in the 1960s, with the emergence of formal numerical optimization algorithms for circuit design. In our fast historical analysis, we emphasize the last two decades of documented microwave design optimization problems and solutions. From that retrospective, we identify a number of prominent scientific and engineering challenges: 1) the reliable and computationally efficient optimization of highly accurate system-level complex models subject to statistical uncertainty and varying operating or environmental conditions; 2) the computationally-efficient EM-driven multi-objective design optimization in high-dimensional design spaces including categorical, conditional, or combinatorial variables; and 3) the manufacturability assessment, statistical design, and yield optimization of high-frequency structures based on high-fidelity multi-physical representations. To address these major challenges, we venture into the development of sophisticated optimization approaches, exploiting confined and dimensionally reduced surrogate vehicles, automated feature-engineering-based optimization, and formal cognition-driven space mapping approaches, assisted by Bayesian and machine learning techniques.https://ieeexplore.ieee.org/document/9318755/ANNBayesianBroydenCADcognitiondesign automation
collection DOAJ
language English
format Article
sources DOAJ
author Jose E. Rayas-Sanchez
Slawomir Koziel
John W. Bandler
spellingShingle Jose E. Rayas-Sanchez
Slawomir Koziel
John W. Bandler
Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends
IEEE Journal of Microwaves
ANN
Bayesian
Broyden
CAD
cognition
design automation
author_facet Jose E. Rayas-Sanchez
Slawomir Koziel
John W. Bandler
author_sort Jose E. Rayas-Sanchez
title Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends
title_short Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends
title_full Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends
title_fullStr Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends
title_full_unstemmed Advanced RF and Microwave Design Optimization: A Journey and a Vision of Future Trends
title_sort advanced rf and microwave design optimization: a journey and a vision of future trends
publisher IEEE
series IEEE Journal of Microwaves
issn 2692-8388
publishDate 2021-01-01
description In this paper, we outline the historical evolution of RF and microwave design optimization and envisage imminent and future challenges that will be addressed by the next generation of optimization developments. Our journey starts in the 1960s, with the emergence of formal numerical optimization algorithms for circuit design. In our fast historical analysis, we emphasize the last two decades of documented microwave design optimization problems and solutions. From that retrospective, we identify a number of prominent scientific and engineering challenges: 1) the reliable and computationally efficient optimization of highly accurate system-level complex models subject to statistical uncertainty and varying operating or environmental conditions; 2) the computationally-efficient EM-driven multi-objective design optimization in high-dimensional design spaces including categorical, conditional, or combinatorial variables; and 3) the manufacturability assessment, statistical design, and yield optimization of high-frequency structures based on high-fidelity multi-physical representations. To address these major challenges, we venture into the development of sophisticated optimization approaches, exploiting confined and dimensionally reduced surrogate vehicles, automated feature-engineering-based optimization, and formal cognition-driven space mapping approaches, assisted by Bayesian and machine learning techniques.
topic ANN
Bayesian
Broyden
CAD
cognition
design automation
url https://ieeexplore.ieee.org/document/9318755/
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AT slawomirkoziel advancedrfandmicrowavedesignoptimizationajourneyandavisionoffuturetrends
AT johnwbandler advancedrfandmicrowavedesignoptimizationajourneyandavisionoffuturetrends
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