Physics-Informed Machine Learning for the Efficient Modeling of High-Frequency Devices

IF 1.8 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Journal on Multiscale and Multiphysics Computational Techniques Pub Date : 2024-11-19 DOI:10.1109/JMMCT.2024.3502062
Yanan Liu;Hongliang Li;Jian-Ming Jin
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Abstract

In this paper, we present a machine learning technique based on analytic extension of eigenvalues and neural networks for the efficient modeling of high-frequency devices. In the proposed method, neural networks are used to learn the mapping between device's geometry and its modal equivalent circuit parameters. These circuit parameters are extracted from the eigen-decomposition of the deviceâs $Z$ -parameters at a few sample frequencies. The eigenvalues and eigenvectors of the $Z$ -matrix are analytically extended to other frequencies based on functional equations constructed from the lumped equivalent circuit model, from which the full electromagnetic response can be recovered. In addition to fully-connected neural network layers, our proposed model introduces an analytical projection branch based on AEE principles to maximize the information gain from samples in the training dataset. To improve the robustness and efficiency of the learning process, we introduce an adaptive gradient update algorithm. The overall model is end-to-end differentiable and can be integrated into gradient-based optimization methods. Numerical examples are provided to demonstrate the capability of the proposed method. Compared with traditional neural network-based models, the proposed approach achieves higher accuracy using fewer data samples and generalizes better to out-of-domain inputs.
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高频设备高效建模的物理信息机器学习
本文提出了一种基于特征值解析扩展和神经网络的机器学习技术,用于高频器件的高效建模。该方法利用神经网络学习器件几何形状与其模态等效电路参数之间的映射关系。这些电路参数是在几个采样频率下从器件的特征分解中提取出来的。基于集总等效电路模型构建的泛函方程,将Z矩阵的特征值和特征向量解析扩展到其他频率,从而恢复完整的电磁响应。除了全连接的神经网络层外,我们提出的模型还引入了基于AEE原理的分析投影分支,以最大限度地提高训练数据集中样本的信息增益。为了提高学习过程的鲁棒性和效率,我们引入了自适应梯度更新算法。整个模型是端到端可微的,可以集成到基于梯度的优化方法中。数值算例验证了该方法的有效性。与传统的基于神经网络的模型相比,该方法使用更少的数据样本获得了更高的精度,并且可以更好地泛化到域外输入。
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CiteScore
4.30
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0.00%
发文量
27
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