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Assessment of parameter uncertainty in hydrological model using a Markov-Chain-Monte-Carlo-based multilevel-factorial-analysis method

机译:基于Markov-Chain-Monte-Carlo的多级因子分析方法评估水文模型中的参数不确定性

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Without a realistic assessment of parameter uncertainty, decision makers may encounter difficulties in accurately describing hydrologic processes and assessing relationships between model parameters and watershed characteristics. In this study, a Markov-Chain-Monte-Carlo-based multilevel-factorial analysis (MCMC-MFA) method is developed, which can not only generate samples of parameters from a well constructed Markov chain and assess parameter uncertainties with straightforward Bayesian inference, but also investigate the individual and interactive effects of multiple parameters on model output through measuring the specific variations of hydrological responses. A case study is conducted for addressing parameter uncertainties in the Kaidu watershed of northwest China. Effects of multiple parameters and their interactions are quantitatively investigated using the MCMC-MFA with a three level factorial experiment (totally 81 runs). A variance-based sensitivity analysis method is used to validate the results of parameters' effects. Results disclose that (i) soil conservation service runoff curve number for moisture condition II (CN2) and fraction of snow volume corresponding to 50% snow cover (SNO50COV) are the most significant factors to hydrological responses, implying that infiltration excess overland flow and snow water equivalent represent important water input to the hydrological system of the Kaidu watershed; (ii) saturate hydraulic conductivity (SOL_K) and soil evaporation compensation factor (ESCO) have obvious effects on hydrological responses; this implies that the processes of percolation and evaporation would impact hydrological process in this watershed; (iii) the interactions of ESCO and SNO50COV as well as CN2 and SNO50COV have an obvious effect, implying that snow cover can impact the generation of runoff on land surface and the extraction of soil evaporative demand in lower soil layers. These findings can help enhance the hydrological model's capability for simulating/predicting water resources. (C) 2016 Elsevier B.V. All rights reserved.
机译:如果没有对参数不确定性的现实评估,决策者可能会在准确描述水文过程以及评估模型参数与流域特征之间的关系时遇到困难。在这项研究中,开发了一种基于Markov-Chain-Monte-Carlo的多级因子分析(MCMC-MFA)方法,该方法不仅可以从结构良好的Markov链中生成参数样本,而且可以通过直接的贝叶斯推断来评估参数不确定性,而且还通过测量水文响应的特定变化来研究多个参数对模型输出的个体和交互作用。为了解决中国西北开都流域的参数不确定性,进行了案例研究。使用三级因子实验(总共81次运行),使用MCMC-MFA定量研究了多个参数的影响及其相互作用。基于方差的灵敏度分析方法用于验证参数效果的结果。结果表明:(i)水分条件II(CN2)的土壤保护服务径流曲线数和对应于50%积雪的雪量分数(SNO50COV)是水文响应的最重要因素,这意味着渗透过量的陆上径流和积雪水当量是开都河流域水文系统的重要水输入。 (ii)饱和导水率(SOL_K)和土壤蒸发补偿因子(ESCO)对水文响应有明显影响;这意味着渗流和蒸发过程将影响该流域的水文过程; (iii)ESCO和SNO50COV以及CN2和SNO50COV的相互作用具有明显的作用,这表明积雪会影响地表径流的产生以及较低土壤层的土壤蒸发需求的提取。这些发现可以帮助增强水文模型模拟/预测水资源的能力。 (C)2016 Elsevier B.V.保留所有权利。

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