One-Dimensional Deep Image Prior for Curve Fitting of S-Parameters from Electromagnetic Solvers
Ravula, Sriram, Gorti, Varun, Deng, Bo, Chakraborty, Swagato, Pingenot, James, Mutnury, Bhyrav, Wallace, Doug, Winterberg, Doug, Klivans, Adam, Dimakis, Alexandros G.
–arXiv.org Artificial Intelligence
A key problem when modeling signal integrity for passive filters and interconnects in IC packages is the need for multiple S-parameter measurements within a desired frequency band to obtain adequate resolution. These samples are often computationally expensive to obtain using electromagnetic (EM) field solvers. Therefore, a common approach is to select a small subset of the necessary samples and use an appropriate fitting mechanism to recreate a densely-sampled broadband representation. We present the first deep generative model-based approach to fit S-parameters from EM solvers using one-dimensional Deep Image Prior (DIP). DIP is a technique that optimizes the weights of a randomly-initialized convolutional neural network to fit a signal from noisy or under-determined measurements. We design a custom architecture and propose a novel regularization inspired by smoothing splines that penalizes discontinuous jumps. We experimentally compare DIP to publicly available and proprietary industrial implementations of Vector Fitting (VF), the industry-standard tool for fitting S-parameters. Relative to publicly available implementations of VF, our method shows superior performance on nearly all test examples using only 5-15% of the frequency samples. Our method is also competitive to proprietary VF tools and often outperforms them for challenging input instances.
arXiv.org Artificial Intelligence
Jun-6-2023
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- Africa > South Africa
- Western Cape > Indian Ocean (0.25)
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- Africa > South Africa
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- Research Report (0.64)
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