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A search grid for parameter optimization as a byproduct of model sensitivity analysis

机译:用于参数优化的搜索网格,作为模型敏感性分析的副产品

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摘要

Inverse problem solving, i.e. the retrieval of optimal values of model parameters from experimental data, remains a bottleneck for modelers. Therefore, a large variety of (heuristic) optimization algorithms has been developed to deal with the inverse problem. However, in some cases, the use of a grid search may be more appropriate or simply more practical. In this paper an approach is presented to improve the selection of the grid points to be evaluated and which does not depend on the knowledge or availability of the underlying model equations. It is suggested that using the information acquired through a sensitivity analysis can lead to better grid search results. Using the sensitivity analysis information, a Gauss-Newton-like matrix is constructed and the eigenvalues and eigenvectors of this matrix are employed to transform naive search grids into better thought-out ones. After a theoretical analysis of the approach, some computational experiments are performed using a simple linear model, as well as more complex nonlinear models. (C) 2015 Elsevier Inc. All rights reserved.
机译:逆问题解决,即从实验数据中检索模型参数的最佳值,仍然是建模者的瓶颈。因此,已经开发了各种各样的(启发式)优化算法来处理逆问题。但是,在某些情况下,使用网格搜索可能更合适或更简单。在本文中,提出了一种方法来改进对要评估的网格点的选择,并且该方法不依赖于基础模型方程式的知识或可用性。建议使用通过敏感性分析获得的信息可以导致更好的网格搜索结果。利用敏感度分析信息,构造了一个类似高斯-牛顿的矩阵,并利用该矩阵的特征值和特征向量将朴素的搜索网格转换为经过深思熟虑的搜索网格。在对该方法进行理论分析之后,使用简单的线性模型以及更复杂的非线性模型进行了一些计算实验。 (C)2015 Elsevier Inc.保留所有权利。

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