RECENT ADVANCES IN TRANSFER FUNCTION-BASED SURROGATE OPTIMIZATION FOR EM DESIGN (INVITED)

Wei Liu, F. Feng, Qi-jun Zhang
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引用次数: 1

Abstract

This article provides a review of transfer function-based (TF-based) surrogate optimization for electromagnetic (EM) design. Transfer functions (TF) represent the EM responses of passive microwave components versus frequency. With the assistance of TF, the nonlinearity of the model structure can be decreased. Parallel gradient-based EM optimization technique using TF in rational format and trust region algorithm is introduced first. Following that, we review the EM optimization using adjoint sensitivity-based neuro-TF surrogate, where the neuro-TF modeling method is in pole/residue format. The adjoint sensitivity-based neuro-TF surrogate technique can reach the optimal EM responses solution faster than the existing gradient-based surrogate optimization methods without sensitivity information. As a further advancement, we discuss the multifeature-assisted neuro-TF surrogate optimization technique. With the help of multiple feature parameters, the multifeatureassisted neuro-TF surrogate optimization has a better ability of avoiding local minima and can achieve the optimal EM solution faster than the surrogate optimizations without feature assistance. Three examples are used to verify the above three methods.
基于传递函数的电磁设计代理优化研究进展(特邀)
本文综述了基于传递函数(tf)的电磁设计替代优化方法。传递函数(TF)表示无源微波元件的电磁响应随频率的变化。在TF的辅助下,可以降低模型结构的非线性。首先介绍了基于合理格式的TF和信赖域算法的并行梯度EM优化技术。随后,我们回顾了基于伴随灵敏度的神经- tf代理的EM优化,其中神经- tf建模方法采用极点/残差格式。与现有的不含灵敏度信息的梯度替代优化方法相比,基于伴随灵敏度的神经- tf替代优化技术可以更快地得到最优的EM响应解。作为进一步的进展,我们讨论了多特征辅助神经- tf代理优化技术。在多个特征参数的帮助下,多特征辅助的神经- tf代理优化比没有特征辅助的代理优化具有更好的避免局部极小值的能力,并且可以更快地获得EM的最优解。用三个实例验证了上述三种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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