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Optimal experimental design for identification of transport coefficient models in convection-diffusion equations

机译:对流扩散方程中输运系数模型辨识的优化实验设计

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摘要

Methods for the careful design of optimal experiments for the identification of the structure and parameters of transport models often strongly depend on a-priori knowledge about the unknown model. However, this kind of knowledge is usually poor for complex systems. We propose a novel procedure that is less sensitive with respect to poor a-priori knowledge; it relies on an optimization problem to maximize the information content of the measurement data for the purpose of model identification. Specifically, based on existing model-based methods, optimal design of experiments is addressed in the context of three-dimensional, time-dependent transport problems by introducing experiment design variables and the transport coefficient as degrees of freedom of the optimization. The problem is solved by means of an iterative strategy that - by sequentially designing a series of experiments - strives to adjust the settings of the experimental conditions by exploiting the results from previous experiments. The key methodical ingredient of the novel procedure is the use of incremental model identification introduced previously. The suggested procedure is illustrated by means of an extensive numerical case study for a convection-diffusion equation originating from the modeling and simulation of energy transport in laminar wavy film flow.
机译:精心设计最佳实验以识别运输模型的结构和参数的方法通常强烈依赖于有关未知模型的先验知识。但是,这种知识通常对于复杂的系统而言是较差的。我们提出了一种新颖的程序,该程序对于较差的先验知识不太敏感。为了模型识别的目的,它依靠优化问题来最大化测量数据的信息内容。具体地,基于现有的基于模型的方法,通过引入实验设计变量和传输系数作为优化的自由度,在与时间有关的三维运输问题中解决实验的优化设计。该问题通过一种迭代策略得以解决,该策略通过依次设计一系列实验来努力通过利用先前实验的结果来调整实验条件的设置。新程序的关键方法性成分是使用先前介绍的增量模型识别。通过对流扩散方程的大量数值案例研究,说明了建议的过程,该对流扩散方程源自层状波浪膜流中能量传输的建模和仿真。

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