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ACCOUNTING FOR UNCERTAINTY OF VARIABLES IN DATA-DRIVEN MODELLING BY EPR

机译:EPR进行数据驱动的建模中变量不确定性的会计处理

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The interest of hydroinformatics in data-driven modelling has significantly increased in recent years. Nonetheless, the description of physical phenomenon by reproducing patterns in input-output datasets is unavoidably affected by uncertainties surrounding data. On one hand, the mere maximization of model fit to uncertain data might result into incorrect identification of patterns. On the other hand, the quantification of uncertainty propagation from input variables to data-driven model output is needed for their correct use. This paper proposes the employment of a recent variant of the Evolutionary Polynomial Regression (EPR), named Multi Case Strategy for EPR (MCS-EPR) in order to account for uncertainty of input variables during model development. The resulting MSC-EPR model structures are expected to reflect the "physical" relationship between input variables and outputs, while the variance of regression parameters estimated for multiple realizations of the input dataset is likely to reproduce the propagation of uncertainty from inputs to model output. The analysis encompasses both a theoretical discussion and a numerical example.
机译:近年来,水文信息学对数据驱动的建模的兴趣显着增加。尽管如此,通过围绕输入-输出数据集中的模式进行物理现象的描述不可避免地会受到数据不确定性的影响。一方面,仅对不确定性数据进行模型拟合的最大化可能会导致模式识别错误。另一方面,需要正确量化从输入变量到数据驱动的模型输出的不确定性传播。本文提出采用进化多项式回归(EPR)的最新变种,称为EPR多案例策略(MCS-EPR),以解决模型开发过程中输入变量的不确定性。预期得到的MSC-EPR模型结构将反映输入变量和输出之间的“物理”关系,而为输入数据集的多种实现而估算的回归​​参数的方差可能会重现不确定性从输入到模型输出的传播。分析包括理论讨论和数值示例。

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