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Scientific Machine Learning Enables Multiphysics Digital Twins of Large-Scale Electronic Chips

机译:科学机器学习支持大规模电子芯片的多物理场数字孪生

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摘要

We propose a scientific machine learning (SciML) algorithm toward 3-D dynamic digital twins, which represent multiphysics coupling effects in large-scale electronic chips. The SciML is a burgeoning topic, and here we refer to an organic fusion of scientific computing, model order reduction, and machine learning (ML) method. The proposed model order reduction compresses multiphysics information by a data-driven non-intrusive technique, thus getting rid of the access to backend source code; the proposed ML intrinsically infers the partial differential equation operators encoding the physical process. Numerical experiments showcase that the proposed digital twins have superior properties in real-time intelligent computing and generalization capability in predictive modeling. Nevertheless, it should be mentioned that the presented work is still in an early stage of intelligent digital twins.
机译:我们提出了一种面向三维动态数字孪生的科学机器学习(SciML)算法,该算法代表了大规模电子芯片中的多物理场耦合效应。SciML是一个新兴的话题,在这里我们指的是科学计算、模型降阶和机器学习(ML)方法的有机融合。所提出的模型降阶通过数据驱动的非侵入式技术压缩多物理场信息,从而摆脱了对后端源代码的访问;所提出的ML从本质上推断出编码物理过程的偏微分方程算子。数值实验表明,所提出的数字孪生在实时智能计算和预测建模中具有优越的泛化能力。尽管如此,应该提到的是,所提出的工作仍处于智能数字孪生的早期阶段。

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