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首页> 外文期刊>IEEE Transactions on Microwave Theory and Techniques >Sparse Macromodeling for Parametric Nonlinear Networks
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Sparse Macromodeling for Parametric Nonlinear Networks

机译:参数非线性网络的稀疏宏建模

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Model-order reduction has proven to be an effective tool for addressing the simulation complexities of the modern microsystem such as the ones arising due to large interconnect networks. Traditional model-order reduction methods are frequency-domain methods and are, therefore, limited to linear networks. Recently, time-domain model-order reduction was developed extending this concept to nonlinear macromodels. However, the resulting reduced nonlinear macromodel is dense, which reduces the efficiency of the simulation. In this paper, a nonlinear parametric formulation suitable for sparsification is presented. This results in an efficient reduced-order nonlinear macromodel, which is sparse, and is valid over a range of parameter values, and is thus suitable for optimization and design space exploration. Numerical examples are shown to illustrate the accuracy and efficiency of the proposed method
机译:事实证明,模型阶数减少是解决现代微系统仿真复杂性(例如由于大型互连网络而产生的复杂性)的有效工具。传统的模型降阶方法是频域方法,因此仅限于线性网络。最近,开发了时域模型降阶法,将该概念扩展到非线性宏模型。但是,所得到的减少的非线性宏模型是密集的,这降低了仿真的效率。在本文中,提出了一种适用于稀疏化的非线性参数公式。这导致了一个有效的降阶非线性宏模型,该模型稀疏并且在一系列参数值上有效,因此适合于优化和设计空间探索。数值算例说明了该方法的准确性和有效性。

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