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A Data-Based Augmented Model Identification Method for Linear Errors-in-Variables Systems Based on EM Algorithm

机译:基于EM算法的变量线性误差系统的数据增强模型识别方法。

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摘要

With a large amount of industrial data available, it is of considerable interest to develop data-based models. The challenge lies in the significant noises that appear in all data collected from industry. The errors-in-variables (EIV) model is a model that accounts for measurement noises in all observations (both input and output). In most of the traditional EIV identification methods, the input generation dynamics is not considered. In this paper, a dynamic model is applied to describe the input generation process, and then, the Kalman smoother is used to estimate its state using all available measurements. In order to utilize all of the observed variables in the EIV process, an augmented EIV model is derived to describe both input generation process and the EIV process dynamics itself. The parameters in the EIV model are then estimated by applying an expectation maximization algorithm. Simulated numerical example and an experiment performed on a hybrid tank system are used to demonstrate the improved identification performance of the proposed method.
机译:由于拥有大量的工业数据,因此开发基于数据的模型具有相当大的兴趣。挑战在于,从行业收集的所有数据中都会出现巨大的噪音。变量误差(EIV)模型是一个模型,该模型考虑了所有观测值(输入和输出)中的测量噪声。在大多数传统的EIV识别方法中,不考虑输入生成动力学。在本文中,使用动态模型来描述输入生成过程,然后使用卡尔曼平滑器使用所有可用的度量来估计其状态。为了在EIV过程中利用所有观察到的变量,导出了增强的EIV模型来描述输入生成过程和EIV过程动力学本身。然后,通过应用期望最大化算法来估计EIV模型中的参数。仿真算例和在混合坦克系统上进行的实验被用来证明该方法的改进的识别性能。

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