In this contribution, we discuss the modeling and model reduction framework known as the Loewner framework. This is a data-driven approach, applicable to large-scale systems, which was originally developed for applications to linear time-invariant systems. In recent years, this method has been extended to a number of additional more complex scenarios, including linear parametric or nonlinear dynamical systems. We will provide here an overview of the latter two, together with time-domain extensions. Additionally, the application of the Loewner framework is illustrated by a collection of practical test cases. Firstly, for data-driven complexity reduction of the underlying model, and secondly, for dealing with control applications of complex systems (in particular, with feedback controller design).
翻译:在本文中,我们讨论了称为Lewner框架的模型和模型减少框架,这是一种适用于大型系统的数据驱动方法,最初是为线性时变系统的应用而开发的,近年来,这一方法已推广到其他一些更为复杂的假设情况,包括线性参数或非线性动态系统,我们将在此概述后两种情况,同时提供时间-空间扩展。此外,Lewner框架的应用情况通过一系列实用测试案例加以说明。首先,为了减少基本模型的数据驱动复杂性,其次是处理复杂系统的控制应用(特别是反馈控制器设计)。