Assimilation of continuously streamed monitored data is an essential component of a digital twin; the assimilated data are used to ensure the digital twin is a true representation of the monitored system. One way this is achieved is by calibration of simulation models, whether data-derived or physics-based, or a combination of both. Traditional manual calibration is not possible in this context hence new methods are required for continuous calibration. In this paper, a particle filter methodology for continuous calibration of the physics-based model element of a digital twin is presented and applied to an example of an underground farm. The methodology is applied to a synthetic problem with known calibration parameter values prior to being used in conjunction with monitored data. The proposed methodology is compared against static and sequential Bayesian calibration approaches and compares favourably in terms of determination of the distribution of parameter values and analysis run-times, both essential requirements. The methodology is shown to be potentially useful as a means to ensure continuing model fidelity.
翻译:连续流成监测数据同化是数字双胞胎的一个基本组成部分;同化数据用于确保数字双胞胎真正代表被监测的系统,实现的方法之一是校准模拟模型,无论是以数据为基础的模型还是以物理为基础的模型,或两者兼而有之。在此情况下,传统的手工校准是不可能的,因此需要采用新的连续校准方法。在本文中,提出了连续校准数字双胞胎基于物理的模型要素的粒子过滤法,并应用于地下农场的例子。该方法适用于已知校准参数值的合成问题,然后才与被监测的数据一起使用。拟议方法与静态和连续的贝叶斯校准方法相比较,在确定参数值的分配和分析运行时间这两个基本要求方面比较优劣。该方法被证明具有潜在效用,可以确保模型的持续忠实性。