We present a new balancing-based structure-preserving model reduction technique for linear port-Hamiltonian descriptor systems. The proposed method relies on a modification of a set of two dual generalized algebraic Riccati equations that arise in the context of linear quadratic Gaussian balanced truncation for differential algebraic systems. We derive an a priori error bound with respect to a right coprime factorization of the underlying transfer function thereby allowing for an estimate with respect to the gap metric. We further theoretically and numerically analyze the influence of the Hamiltonian and a change thereof, respectively. With regard to this change of the Hamiltonian, we provide a novel procedure that is based on a recently introduced Kalman-Yakubovich-Popov inequality for descriptor systems. Numerical examples demonstrate how the quality of reduced-order models can significantly be improved by first computing an extremal solution to this inequality.
翻译:我们提出了一个新的基于平衡结构的削减模型技术,用于单端港口-汉堡描述器系统,提议的方法依赖于修改在对不同代数系统进行线性二次平衡脱钩时产生的两组双重通用代数立方程式。我们得出了一个先验错误,它与基本转移功能的正确组合因子化有关,从而可以对差距度量作出估计。我们进一步从理论上和数字上分析汉密尔顿人的影响及其变化。关于汉密尔顿人的这一变化,我们提供了一种新程序,它基于最近引入的对代数系统的卡尔曼-亚库博维奇-波波波夫的不平等。数字实例表明如何通过首先计算这一不平等的极端解决办法来大大改进降序模型的质量。