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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >A Piecewise-Linear Moment-Matching Approach to Parameterized Model-Order Reduction for Highly Nonlinear Systems
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A Piecewise-Linear Moment-Matching Approach to Parameterized Model-Order Reduction for Highly Nonlinear Systems

机译:高度非线性系统的参数化模型降阶的分段线性矩匹配方法

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摘要

This paper presents a parameterized reduction technique for highly nonlinear systems. In our approach, we first approximate the nonlinear system with a convex combination of parameterized linear models created by linearizing the nonlinear system at points along training trajectories. Each of these linear models is then projected using a moment-matching scheme into a low-order subspace, resulting in a parameterized reduced-order nonlinear system. Several options for selecting the linear models and constructing the projection matrix are presented and analyzed. In addition, we propose a training scheme which automatically selects parameter-space training points by approximating parameter sensitivities. Results and comparisons are presented for three examples which contain distributed strong nonlinearities: a diode transmission line, a microelectromechanical switch, and a pulse-narrowing nonlinear transmission line. In most cases, we are able to accurately capture the parameter dependence over the parameter ranges of plusmn50% from the nominal values and to achieve an average simulation speedup of about 10x.
机译:本文提出了一种用于高度非线性系统的参数化归约技术。在我们的方法中,我们首先通过参数化线性模型的凸组合来近似非线性系统,该参数化线性模型是通过将非线性系统沿训练轨迹的点线性化而创建的。然后,使用矩匹配方案将每个线性模型投影到低阶子空间中,从而形成参数化的降阶非线性系统。提出并分析了选择线性模型和构建投影矩阵的几种方法。此外,我们提出了一种训练方案,该方案可以通过近似参数敏感度来自动选择参数空间训练点。给出了包含分布式强非线性的三个示例的结果和比较结果:二极管传输线,微机电开关和脉冲变窄非线性传输线。在大多数情况下,我们能够在标称值正负50%的参数范围内准确捕获参数依赖性,并实现约10倍的平均仿真速度。

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