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首页> 外文期刊>Hydrology and Earth System Sciences >Calibration approaches for distributed hydrologic models in poorly gaged basins: implication for streamflow projections under climate change
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Calibration approaches for distributed hydrologic models in poorly gaged basins: implication for streamflow projections under climate change

机译:差积盆地中分布式水文模型的标定方法:对气候变化下的流量预测的启示

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This study tests the performance and uncertainty of calibration strategies for a spatially distributed hydrologic model in order to improve model simulation accuracy and understand prediction uncertainty at interior ungaged sites of a sparsely gaged watershed. The study is conducted using a distributed version of the HYMOD hydrologic model (HYMOD_DS) applied to the Kabul River basin. Several calibration experiments are conducted to understand the benefits and costs associated with different calibration choices, including (1) whether multisite gaged data should be used simultaneously or in a stepwise manner during model fitting, (2) the effects of increasing parameter complexity, and (3) the potential to estimate interior watershed flows using only gaged data at the basin outlet. The implications of the different calibration strategies are considered in the context of hydrologic projections under climate change. To address the research questions, high-performance computing is utilized to manage the computational burden that results from high-dimensional optimization problems. Several interesting results emerge from the study. The simultaneous use of multisite data is shown to improve the calibration over a stepwise approach, and both multisite approaches far exceed a calibration based on only the basin outlet. The basin outlet calibration can lead to projections of mid-21st century streamflow that deviate substantially from projections under multisite calibration strategies, supporting the use of caution when using distributed models in data-scarce regions for climate change impact assessments. Surprisingly, increased parameter complexity does not substantially increase the uncertainty in streamflow projections, even though parameter equifinality does emerge. The results suggest that increased (excessive) parameter complexity does not always lead to increased predictive uncertainty if structural uncertainties are present. The largest uncertainty in future streamflow results from variations in projected climate between climate models, which substantially outweighs the calibration uncertainty.
机译:这项研究测试了空间分布水文模型的校准策略的性能和不确定性,以提高模型仿真的准确性,并了解稀疏流域的内部非测量点的预测不确定性。该研究是使用应用于喀布尔河流域的HYMOD水文模型的分布式版本(HYMOD_DS)进行的。进行了几次校准实验以了解与不同校准选择相关的收益和成本,包括(1)在模型拟合期间是否应同时使用或以逐步方式使用多站点量具数据;(2)参数复杂度增加的影响;以及( 3)仅使用流域出口处的测量数据来估算内部集水量的潜力。在气候变化下的水文预测中考虑了不同校准策略的含义。为了解决研究问题,利用高性能计算来管理由高维优化问题导致的计算负担。这项研究得出了一些有趣的结果。显示了同时使用多站点数据可以通过逐步方法改善校准,并且两种多站点方法都远远超过仅基于流域出口的校准。流域出口的标定可能导致21世纪中叶的流量预测与多站点标定策略下的预测大相径庭,从而支持在数据稀少地区使用分布式模型进行气候变化影响评估时要谨慎使用。出乎意料的是,即使确实出现了参数相等性,增加的参数复杂度也不会显着增加流量预测的不确定性。结果表明,如果存在结构不确定性,则参数复杂性的增加(过度)并不总是导致预测不确定性的增加。未来流量最大的不确定性是由于气候模型之间的预计气候变化所致,其大大超过了标定不确定性。

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