DeepOTF: Learning Equations-constrained Prediction for Electromagnetic Behavior

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Peng Xu, Siyuan XU, Tinghuan Chen, Guojin Chen, Tsungyi Ho, Bei Yu
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Abstract

High-quality passive devices are becoming increasingly important for the development of mobile devices and telecommunications, but obtaining such devices through simulation and analysis of electromagnetic (EM) behavior is time-consuming. To address this challenge, artificial neural network (ANN) models have emerged as an effective tool for modeling EM behavior, with NeuroTF being a representative example. However, these models are limited by the specific form of the transfer function, leading to discontinuity issues and high sensitivities. Moreover, previous methods have overlooked the physical relationship between distributed parameters, resulting in unacceptable numeric errors in the conversion results. To overcome these limitations, we propose two different neural network architectures: DeepOTF and ComplexTF. DeepOTF is a data-driven deep operator network for automatically learning feasible transfer functions for different geometric parameters. ComplexTF utilizes complex-valued neural networks to fit feasible transfer functions for different geometric parameters in the complex domain while maintaining causality and passivity. Our approach also employs an Equations-constraint Learning scheme to ensure the strict consistency of predictions and a dynamic weighting strategy to balance optimization objectives. The experimental results demonstrate that our framework shows superior performance than baseline methods, achieving up to 1700 × higher accuracy.

DeepOTF:学习受方程约束的电磁行为预测
高质量的无源器件对移动设备和电信的发展越来越重要,但通过模拟和分析电磁(EM)行为来获得这种器件却非常耗时。为了应对这一挑战,人工神经网络(ANN)模型已成为电磁行为建模的有效工具,NeuroTF 就是一个典型的例子。然而,这些模型受到传递函数特定形式的限制,导致不连续性问题和高敏感性。此外,以前的方法忽略了分布参数之间的物理关系,导致转换结果出现不可接受的数值误差。为了克服这些局限性,我们提出了两种不同的神经网络架构:DeepOTF 和 ComplexTF。DeepOTF 是一种数据驱动的深度算子网络,用于自动学习不同几何参数的可行转换函数。ComplexTF 利用复值神经网络来拟合复域中不同几何参数的可行传递函数,同时保持因果性和被动性。我们的方法还采用了方程约束学习方案来确保预测的严格一致性,并采用动态加权策略来平衡优化目标。实验结果表明,与基线方法相比,我们的框架表现出更优越的性能,准确率最高提高了 1700 倍。
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来源期刊
ACM Transactions on Design Automation of Electronic Systems
ACM Transactions on Design Automation of Electronic Systems 工程技术-计算机:软件工程
CiteScore
3.20
自引率
7.10%
发文量
105
审稿时长
3 months
期刊介绍: TODAES is a premier ACM journal in design and automation of electronic systems. It publishes innovative work documenting significant research and development advances on the specification, design, analysis, simulation, testing, and evaluation of electronic systems, emphasizing a computer science/engineering orientation. Both theoretical analysis and practical solutions are welcome.
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