This work aims at tackling the problem of learning surrogate models from noisy time-domain data by means of matrix pencil-based techniques, namely the Hankel and Loewner frameworks. A data-driven approach to obtain reduced-order state-space models from time-domain input-output measurements for linear time-invariant (LTI) systems is proposed. This is accomplished by combining the aforementioned model order reduction (MOR) techniques with the signal matrix model (SMM) approach. The proposed method is illustrated by a numerical benchmark example consisting of a building model.
翻译:这项工作旨在通过基于矩阵铅笔的技术,即Hankel和Lewner框架,解决从噪音时间域数据中学习替代模型的问题,提议采用数据驱动方法,从线性时差系统的时间域输入-输出测量中获取减少顺序状态-空间模型,将上述减少命令模型技术与信号矩阵模型方法结合起来,通过一个由建筑模型组成的数字基准示例来说明拟议方法。