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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >Enforcing Passivity of Parameterized LTI Macromodels via Hamiltonian-Driven Multivariate Adaptive Sampling
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Enforcing Passivity of Parameterized LTI Macromodels via Hamiltonian-Driven Multivariate Adaptive Sampling

机译:通过Hamiltonian驱动的多变量自适应采样执行参数化LTI Macromodels的乘性

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摘要

We present an algorithm for passivity verification and enforcement of multivariate macromodels whose state-space matrices depend in closed form on a set of external or design parameters. Uniform passivity throughout the parameter space is a fundamental requirement of parameterized macromodels of physically passive structures, that must be guaranteed during model generation. Otherwise, numerical instabilities may occur, due to the ability of nonpassive models to generate energy. In this paper, we propose the first available algorithm that, starting from a generic parameter-dependent state-space model, identifies the regions in the frequency-parameter space where the model behaves locally as a nonpassive system. The approach we pursue is based on an adaptive sampling scheme in the parameter space, which iteratively constructs and perturbs the eigenvalue spectrum of suitable skew-Hamiltonian/Hamiltonian pencils, with the objective of identifying the regions where some of these eigenvalues become purely imaginary, thus pinpointing local passivity violations. The proposed scheme is able to detect all relevant violations. An outer iterative perturbation method is then applied to the model coefficients in order to remove such violations and achieve uniform passivity. Although a formal proof of global convergence is not available, the effectiveness of the proposed implementation of the passivity verification and enforcement schemes is demonstrated on several examples.
机译:我们介绍了一种用于传奇验证的算法和对多变量宏偶像的强制执行状态 - 空间矩阵在一组外部或设计参数上以封闭形式取决于封闭形式。整个参数空间的均匀被动是物理上被动结构的参数化宏尺寸的基本要求,必须在模型生成期间保证。否则,由于非流动模型产生能量的能力,可能发生数值不稳定性。在本文中,我们提出了第一可用算法,从通用参数相关的状态空间模型开始,识别频率参数空间中的区域,其中模型作为非基本系统的行为。我们追求的方法是基于参数空间的自适应采样方案,其迭代地构建和渗透合适的偏孔汉密尔顿/哈密顿铅笔的特征值谱,其目的是识别这些特征值纯粹想象的区域,因此针对当地的被动违规。拟议计划能够检测到所有相关的违规行为。然后将外部迭代扰动方法应用于模型系数,以便去除这种侵权并实现均匀的被动。虽然全球融合的正式证明不可用,但在若干例子上证明了拟议实施的拟议实施和执法计划的有效性。

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