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The influence of parameter fitting methods on model structure selection in automated modeling of aquatic ecosystems

机译:参数拟合方法对水生生态系统自动建模中模型结构选择的影响

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摘要

Modeling dynamical systems involves two subtasks: structure identification and parameter estimation. ProBMoT is a tool for automated modeling of dynamical systems that addresses both tasks simultaneously. It takes into account domain knowledge formalized as templates for components of the process-based models: entities and processes. Taking a conceptual model of the system, the library of domain knowledge, and measurements of a particular dynamical system, it identifies both the structure and numerical parameters of the appropriate process-based model. ProBMoT has two main components corresponding to the two subtasks of modeling. The first component is concerned with generating candidate model structures that adhere to the conceptual model specified as input. The second subsystem uses the measured data to find suitable values for the constant parameters of a given model by using parameter estimation methods. ProBMoT uses model error to rank model structures and select the one that fits measured data best.In this paper, we investigate the influence of the selection of the parameter estimation methods on the structure identification. We consider one local (derivative-based) and one global (meta-heuristic) parameter estimation method. As opposed to other comparative studies of parameter estimation methods that focus on identifying parameters of a single model structure, we compare the parameter estimation methods in the context of repetitive parameter estimation for a number of candidate model structures. The results confirm the superiority of the global optimization methods over the local ones in the context of structure identification.
机译:动力学系统建模涉及两个子任务:结构识别和参数估计。 ProBMoT是用于动态系统自动化建模的工具,可同时解决这两个任务。它考虑了形式化为基于流程的模型的组件(实体和流程)的模板的领域知识。通过采用系统的概念模型,领域知识库和特定动力系统的度量,它可以识别适当的基于过程的模型的结构和数值参数。 ProBMoT具有与建模的两个子任务相对应的两个主要组件。第一部分涉及生成符合指定为输入的概念模型的候选模型结构。第二个子系统使用测得的数据通过使用参数估计方法为给定模型的常数参数找到合适的值。 ProBMoT使用模型误差对模型结构进行排名,并选择最适合实测数据的模型。本文研究了参数估计方法选择对结构识别的影响。我们考虑一种局部的(基于导数)和一种全局的(元启发式)参数估计方法。与其他侧重于确定单个模型结构参数的参数估计方法的比较研究相反,我们在重复参数估计的背景下比较了许多候选模型结构的参数估计方法。结果证实,在结构识别的背景下,全局优化方法优于局部优化方法。

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