Time-Variant Digital Twin Modeling through the Kalman-Generalized Sparse Identification of Nonlinear Dynamics

Jingyi Wang, J. Moreira, Yankai Cao, R. B. Gopaluni
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引用次数: 5

Abstract

A digital twin is a computer-based digital representation that simulates the behavior of a physical system. Digital twins help users to interact with real-world processes digitally. Time-variant modeling is critical to preserving the accuracy of digital twin models as the process dynamics change with time. Kalman filter is a well-known recursive algorithm that adjusts the process state estimates using real-time measurements. Sparse identification of nonlinear dynamics (SINDy) is an algorithm that automatically identifies system models from large data sets using sparse regression so as to prevent overfitting and find an ideal trade-off between model complexity and accuracy. In this paper, the SINDy approach is first extended to the generalized SINDy (GSINDy). Then, the GSINDy is integrated with Kalman filter to automatically identify time-variant digital twin models for online applications. The effectiveness of the algorithm is revealed through a simulation example based on Lorenz system and an industrial diesel hydrotreating unit example.
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基于kalman -广义稀疏辨识的时变数字孪生非线性动力学建模
数字孪生是一种基于计算机的数字表示,它模拟物理系统的行为。数字孪生帮助用户以数字方式与现实世界的流程进行交互。当过程动态随时间变化时,时变建模对于保持数字孪生模型的准确性至关重要。卡尔曼滤波是一种著名的递归算法,它利用实时测量来调整过程状态估计。非线性动力学稀疏识别(SINDy)是一种利用稀疏回归从大数据集中自动识别系统模型的算法,以防止过拟合,并在模型复杂性和精度之间找到理想的权衡。本文首先将SINDy方法推广到广义SINDy (GSINDy)。然后,将GSINDy与卡尔曼滤波相结合,自动识别时变数字孪生模型,用于在线应用。通过基于Lorenz系统的仿真算例和工业柴油加氢装置算例,验证了该算法的有效性。
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