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Design Space Extrapolation for Power Delivery Networks using a Transposed Convolutional Net

机译:使用转置卷积网的电力输送网络设计空间外推

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The geometrical and material properties of distributed electromagnetic structures comprise the design space. This space characterizes the structure’s frequency response in complex domain. In this paper, we propose a machine learning framework for predicting frequency response of a power delivery network as a function of its extrapolated multidimensional geometrical and material parameters. The proposed approach comprises of an ensemble of architectures: (1) Fully Connected Upsampler for latent code generation (2) Convolutional Decoder to learn the frequency response from the latent code. The 14D design space is converted to a Lth dimensional code which entails the frequency response information. With the proposed architecture, a root mean squared error of 0.004 ohms is achieved when compared to the true value. We focus on extrapolation of design space parameters while training on in-band values. We also illustrate how frequency poles move with varying design space exploiting parameter sensitivity in different frequency bands.
机译:分布式电磁结构的几何和材料特性包括设计空间。该空间表征了复杂域中的结构的频率响应。在本文中,我们提出了一种机器学习框架,用于预测电力输送网络的频率响应,作为其外推的多维几何和材料参数。所提出的方法包括架构的集合:(1)用于潜在代码生成(2)卷积解码器的完全连接的上升器,用于学习潜在代码的频率响应。 14D设计空间被转换为延长频率响应信息的Lth尺寸码。利用所提出的架构,与真实值相比,达到0.004欧姆的根平均平方误差。我们在带内值训练时专注于设计空间参数的外推。我们还说明了频率极化如何在不同频带中具有不同的设计空间利用参数灵敏度。

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