The concept of Hybrid Twin (HT) has recently received a growing interest thanks to the availability of powerful machine learning techniques. This twin concept combines physics-based models within a model-order reduction framework-to obtain real-time feedback rates-and data science. Thus, the main idea of the HT is to develop on-the-fly data-driven models to correct possible deviations between measurements and physics-based model predictions. This paper is focused on the computation of stable, fast and accurate corrections in the Hybrid Twin framework. Furthermore, regarding the delicate and important problem of stability, a new approach is proposed, introducing several sub-variants and guaranteeing a low computational cost as well as the achievement of a stable time-integration.
翻译:由于拥有强大的机器学习技术,混合双体概念最近受到越来越多的关注,这一双重概念将基于物理学的模型结合到一个模型-减少顺序框架内,以获得实时反馈率和数据科学,因此,HT的主要想法是开发由实时数据驱动的模型,以纠正测量和基于物理学模型预测之间可能存在的偏差,本文件的重点是计算在混合双体框架内稳定、快速和准确的校正,此外,关于微妙和重要的稳定问题,提出了新的办法,引入若干次变量,保证低计算成本,实现稳定的时间一体化。