Koziel Slawomir, Pietrenko-Dabrowska Anna
Engineering Optimization & Modeling Center, Reykjavik University, 102, Reykjavik, Iceland.
Faculty of Electronics, Telecommunications and Informatics, Gdansk University of Technology, 80-233, Gdansk, Poland.
Sci Rep. 2025 Jul 1;15(1):21776. doi: 10.1038/s41598-025-05798-0.
Parameter tuning is an essential but demanding aspect of microwave component design, particularly when global optimization is required. The process becomes especially demanding due to the extensive electromagnetic (EM) simulations involved, which-when using popular nature-inspired methods-can lead to unmanageable computational costs. Traditional mitigation approaches, such as surrogate-based methods, often struggle with the curse of dimensionality and the highly nonlinear responses of microwave circuits. This study introduces an alternative approach for rapid global optimization of microwave passive components using artificial intelligence (AI) techniques, specifically, machine learning (ML). The core elements of our methodology include reduction of the problem dimensionality using a rapid global sensitivity analysis, multi-fidelity EM simulations, and a two-stage search process. During the global optimization stage, surrogate-assisted ML is confined to a reduced-dimensionality region, leading to significant computational savings and enhanced predictive accuracy of the surrogate models. Additional speedup is achieved by performing the search using low-fidelity EM models. The final local refinement stage employs high-resolution models and is executed within the design space of full dimensionality, ensuring the quality of the final design. Our procedure was comprehensively validated using four microstrip circuits and has demonstrated superiority over state-of-the-art benchmark methods. The average optimization cost is equivalent to only about ninety EM simulations. Further, the quality of the resulting designs remains competitive with those rendered using the benchmark methods.
参数调谐是微波元件设计中一个至关重要但颇具挑战性的方面,尤其是在需要全局优化的情况下。由于涉及大量的电磁(EM)模拟,这个过程变得格外具有挑战性,而当使用流行的自然启发式方法时,可能会导致难以管理的计算成本。传统的缓解方法,如基于代理模型的方法,往往难以应对维度诅咒和微波电路的高度非线性响应。本研究介绍了一种使用人工智能(AI)技术,特别是机器学习(ML)对微波无源元件进行快速全局优化的替代方法。我们方法的核心要素包括使用快速全局灵敏度分析降低问题维度、多保真度电磁模拟以及两阶段搜索过程。在全局优化阶段,代理辅助机器学习被限制在一个低维度区域,从而显著节省计算成本并提高代理模型的预测精度。通过使用低保真度电磁模型进行搜索可进一步加速。最后的局部细化阶段采用高分辨率模型,并在全维度设计空间内执行,确保最终设计的质量。我们的方法通过四个微带电路进行了全面验证,并已证明优于现有最先进的基准方法。平均优化成本仅相当于约九十次电磁模拟。此外,所得设计的质量与使用基准方法得到的设计相比仍具有竞争力。