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首页> 外文期刊>Journal of environment informatics >An Intercomparison of Sampling Methods for Uncertainty Quantification of Environmental Dynamic Models
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An Intercomparison of Sampling Methods for Uncertainty Quantification of Environmental Dynamic Models

机译:环境动力学模型不确定性量化采样方法的比较

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Uncertainty quantification (UQ) of environmental dynamic models requires an efficient way to extract the information about the relationship between input parameter and model output. A uniformly scattered sample set is generally preferred over crude Monte Carlo sampling for its ability to explore the parameter space more effectively and efficiently. This paper compares eight commonly used uniform sampling methods along with the crude Monte Carlo sampling. The efficiency is measured by six uniformity metrics, while the effectiveness is measured by the goodness-of-fit of the surrogate models, and the sensitivity analysis and optimization results. We used two test problems: the Sobol' g-function and the SAC-SMA hydrological model. The results show that among the sampling methods evaluated, the Good Lattice Points (GLP) and Symmetric Latin hypercube (SLH) have the highest uniformity scores, and the Ranked Gram-Schmidt (RGS) de-correlation algorithm can further improve the uniformity of the lattice sample sets. On the other hand, the Quasi-Monte-Carlo (QMC) methods, such as Halton and Sobol' sequences, are not as uniform as their theoretical potential suggests when the number of sample points is low. Further, we found no clear relationship between the sampling methods used and their effectiveness, as the latter is affected by many factors other than the sampling methods, such as the choice of the surrogate modeling methods, sensitivity analysis and optimization methods, and the intrinsic properties of the dynamic models.
机译:环境动态模型的不确定性量化(UQ)需要一种有效的方法来提取有关输入参数和模型输出之间关系的信息。通常,均匀分散的样本集比原始的蒙特卡洛抽样更可取,因为它能够更有效地探索参数空间。本文比较了八种常用的统一采样方法以及原始的蒙特卡洛采样。效率通过六个均匀性度量标准进行度量,而有效性通过代理模型的拟合优度以及敏感性分析和优化结果进行度量。我们使用了两个测试问题:Sobol的g函数和SAC-SMA水文模型。结果表明,在所评估的采样方法中,良好格点(GLP)和对称拉丁超立方体(SLH)具有最高的均匀性评分,而排名格拉姆-施密特(RGS)去相关算法可以进一步提高图像的均匀性。点阵样本集。另一方面,类似的蒙特卡洛(QMC)方法,例如Halton和Sobol'序列,在采样点数量较少时,其理论潜力并不统一。此外,我们发现所使用的抽样方法与其有效性之间没有明确的关系,因为后者受抽样方法以外的许多因素影响,例如替代建模方法的选择,灵敏度分析和优化方法以及内在属性。动态模型。

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