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Integrated sensitivity analysis, calibration, and uncertainty propagation analysis approaches for supporting hydrological modeling

机译:用于支持水文模拟的集成灵敏度分析,校准和不确定性传播分析方法

摘要

The successful performance of a hydrological model is usually challenged by the quality of the sensitivity analysis, calibration and uncertainty analysis carried out in the modeling exercise and subsequent simulation results. This is especially important under changing climatic conditions where there are more uncertainties associated with climate models and downscaling processes that increase the complexities of the hydrological modeling system. In response to these challenges and to improve the performance of the hydrological models under changing climatic conditions, this research proposed five new methods for supporting hydrological modeling.udFirst, a design of experiment aided sensitivity analysis and parameterization (DOE-SAP) method was proposed to investigate the significant parameters and provide more reliable sensitivity analysis for improving parameterization during hydrological modeling. The better calibration results along with the advanced sensitivity analysis for significant parameters and their interactions were achieved in the case study.udSecond, a comprehensive uncertainty evaluation scheme was developed to evaluate three uncertainty analysis methods, the sequential uncertainty fitting version 2 (SUFI-2), generalized likelihood uncertainty estimation (GLUE) and Parameter solution (ParaSol) methods. The results showed that the SUFI-2 performed better than the other two methods based on calibration and uncertainty analysis results. The proposed evaluation scheme demonstrated that it is capable of selecting the most suitable uncertainty method for case studies.udThird, a novel sequential multi-criteria based calibration and uncertainty analysis (SMC-CUA) method was proposed to improve the efficiency of calibration and uncertainty analysis and control the phenomenon of equifinality. The results showed that the SMC-CUA method was able to provide better uncertainty analysis results with high computational efficiency compared to the SUFI-2 and GLUE methods and control parameter uncertainty and the equifinality effect without sacrificing simulation performance.udFourth, an innovative response based statistical evaluation method (RESEM) was proposed for estimating the uncertainty propagated effects and providing long-term prediction for hydrological responses under changing climatic conditions. By using RESEM, the uncertainty propagated from statistical downscaling to hydrological modeling can be evaluated.udFifth, an integrated simulation-based evaluation system for uncertainty propagation analysis (ISES-UPA) was proposed for investigating the effects and contributions of different uncertainty components to the total propagated uncertainty from statistical downscaling. Using ISES-UPA, the uncertainty from statistical downscaling, uncertainty from hydrological modeling, and the total uncertainty from two uncertainty sources can be compared and quantified.udThe feasibility of all the methods has been tested using hypothetical and real-world case studies. The proposed methods can also be integrated as a hydrological modeling system to better support hydrological studies under changing climatic conditions. The results from the proposed integrated hydrological modeling system can be used as scientific references for decision makers to reduce the potential risk of damages caused by extreme events for long-term water resource management and planning.
机译:水文模型的成功执行通常受到建模练习和后续模拟结果中进行的敏感性分析,校准和不确定性分析质量的挑战。在气候条件不断变化的情况下,这尤其重要,因为气候模型的不确定性和降尺度过程会增加不确定性,从而增加水文建模系统的复杂性。为应对这些挑战并改善气候条件下水文模型的性能,本研究提出了五种支持水文建模的新方法。 ud首先,设计了实验辅助灵敏度分析和参数化(DOE-SAP)方法研究重要参数并提供更可靠的敏感性分析,以改善水文建模过程中的参数设置。在本案例研究中,获得了更好的校准结果以及对重要参数及其相互作用的高级灵敏度分析。 ud其次,开发了一种综合的不确定性评估方案来评估三种不确定性分析方法,即顺序不确定性拟合版本2(SUFI-2 ),广义似然不确定性估计(GLUE)和参数解(ParaSol)方法。结果表明,基于校准和不确定性分析结果,SUFI-2的性能优于其他两种方法。提议的评估方案表明,它能够为案例研究选择最合适的不确定性方法。 ud第三,提出了一种新颖的基于顺序多标准的校准和不确定性分析(SMC-CUA)方法,以提高校准和不确定性的效率分析和控制均等现象。结果表明,与SUFI-2和GLUE方法相比,SMC-CUA方法能够以较高的计算效率提供更好的不确定性分析结果,并且在不牺牲仿真性能的情况下控制参数不确定性和均等效果。 udFourth,基于创新的响应提出了一种统计评估方法(RESEM)来估计不确定性传播的影响,并为气候条件变化下的水文响应提供长期预测。通过使用RESEM,可以评估从统计缩减到水文模型传播的不确定性。 udFifth,提出了一种基于仿真的集成式不确定性传播分析评估系统(ISES-UPA),以研究不同不确定性分量对评估的影响和贡献。统计缩减带来的总传播不确定性。使用ISES-UPA,可以比较和量化来自统计缩减的不确定性,来自水文建模的不确定性以及来自两个不确定性源的总不确定性。 ud所有方法的可行性已使用假设和实际案例研究进行了测试。提议的方法也可以集成为水文建模系统,以更好地支持不断变化的气候条件下的水文研究。所提出的综合水文建模系统的结果可作为决策者的科学参考,以减少由极端事件引起的长期水资源管理和规划的潜在损害风险。

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    Wu Hongjing;

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  • 年度 2016
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