首页> 外文期刊>Journal of Hydrology >Parameter and modeling uncertainty simulated by GLUE and a formal Bayesian method for a conceptual hydrological model
【24h】

Parameter and modeling uncertainty simulated by GLUE and a formal Bayesian method for a conceptual hydrological model

机译:用GLUE和形式贝叶斯方法模拟的概念水文模型的参数和建模不确定性

获取原文
获取原文并翻译 | 示例
           

摘要

Quantification of uncertainty of hydrological models has attracted much attention in hydrologic research in recent years. Many methods for quantification of uncertainty have been reported in the literature, of which GLUE and formal Bayesian method are the two most popular methods. There have been many discussions in the literature concerning differences between these two methods in theory (mathematics) and results, and this paper focuses on the computational efficiency and differences in their results, but not on philosophies and mathematical rigor that both methods rely on. By assessing parameter and modeling uncertainty of a simple conceptual water balance model (WASMOD) with the use of GLUE and formal Bayesian method, the paper evaluates differences in the results of the two methods and discusses the reasons for these differences. The main findings of the study are that: (1) the parameter posterior distributions generated by the Bayesian method are slightly less scattered than those by the GLUE method; (2) using a higher threshold value (>0.8) GLUE results in very similar estimates of parameter and model uncertainty as does the Bayesian method; and (3) GLUE is sensitive to the threshold value used to select behavioral parameter sets and lower threshold values resulting in a wider uncertainty interval of the posterior distribution of parameters, and a wider confidence interval of model uncertainty. More study is needed to generalize the findings of the present study.
机译:近年来,水文模型不确定性的量化引起了水文研究的广泛关注。文献中已经报道了许多不确定性定量方法,其中GLUE和形式贝叶斯方法是两种最受欢迎​​的方法。关于这两种方法在理论(数学)和结果上的差异,文献中进行了很多讨论,并且本文着重于计算效率和结果的差异,而不是这两种方法所依赖的哲学和严格的数学方法。通过使用GLUE和形式贝叶斯方法评估简单概念水平衡模型(WASMOD)的参数和建模不确定性,本文评估了两种方法结果的差异,并讨论了产生这些差异的原因。研究的主要发现是:(1)贝叶斯方法产生的参数后验分布比GLUE方法产生的参数后验分布略小。 (2)使用较高的阈值(> 0.8)GLUE会得出与贝叶斯方法非常相似的参数和模型不确定性估计; (3)GLUE对用于选择行为参数集的阈值和较低的阈值敏感,从而导致参数的后验分布的不确定性区间较大,模型不确定性的置信区间较大。需要更多的研究来概括本研究的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号