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Local parameter identifiability of large-scale nonlinear models based on the output sensitivity covariance matrix ?

机译:基于输出灵敏度协方差矩阵的大型非线性模型的本地参数标识

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The use of first-principle models is motivated by the potential of detailed information available as well as their versatility. Therefore, it is important to keep these models up to date so the models represent accurate enough the processes at hand. However, most of these models are nonlinear with a large number of states and parameters but with a relatively low number of measured outputs. This lack of measurements hinders the possibility to estimate all of the parameters present in the model. In this work, parameter identifiability of large-scale nonlinear models is explored using the empirical output controllability covariance matrix approach. This empirical covariance matrix is used to extract the output sensitivity matrix of the model to assess parameter identifiability. The advantages of the proposed methods are discussed while different sensitivity indexes are evaluated to draw sound conclusions on the parameter ranking results. A large-scale reactive batch distillation process simulation is used as a demonstrator.
机译:第一原则模型的使用是通过可用详细信息的潜力和多功能性的推动。因此,要保持这些模型最新的重要性,因此模型代表了足够的过程。然而,这些模型中的大多数是具有大量状态和参数的非线性,但具有相对较少数量的测量输出。这种缺乏测量阻碍了估计模型中存在的所有参数的可能性。在这项工作中,使用经验输出可控性协方差矩阵方法探索大规模非线性模型的参数可识别性。该经验协方差矩阵用于提取模型的输出灵敏​​度矩阵以评估参数可识别性。讨论了所提出的方法的优点,同时评估不同的灵敏度指标以在参数排名结果上绘制声音结论。大规模的反应性批量蒸馏工艺模拟用作演示。

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