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Uncertainty Analysis in Data-Scarce Urban Catchments

机译:数据稀缺的城市集水区的不确定性分析

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The evaluation of the uncertainties in model predictions is key for advancing urban drainage modelling practice. This paper investigates, for the first time in Mexico, the effect of parameter sensitivity and predictive uncertainty in an application of a well-known urban stormwater model. Two of the most common methods used for assessing hydrological model parameter uncertainties are used: the Generalised Likelihood Uncertainty Estimation (GLUE) and a multialgorithm, genetically adaptive multi-objective method (AMALGAM). The uncertainty is estimated from eight selected hydrologic parameters used in the setup of the rainfall-runoff model. To ensure the reliability of the model, four rainfall events varying from 20 mm to 120 mm from minor to major count classes were selected. The results show that, for the selected storms, both techniques generate results with similar effectiveness, as measured using well-known error metrics; GLUE was found to have a slightly better performance compared to AMALGAM. In particular, it was demonstrated that it is possible to obtain reliable models with an index of agreement (IAd) greater than 60 and average Absolute Percentage Error (EAP) less than 30 percent derived from the uncertainty analysis. Thus, the quantification of uncertainty enables the generation of more reliable flow predictions. Moreover, these methods show the impact of aggregation of errors arising from different sources, minimising the amount of subjectivity associated with the model’s predictions.
机译:评估模型预测中的不确定性是推进城市排水建模实践的关键。本文首次在墨西哥研究了在应用著名的城市雨水模型中参数敏感性和预测不确定性的影响。用于评估水文模型参数不确定性的两种最常用的方法是:广义似然不确定性估计(GLUE)和多算法,遗传自适应多目标方法(AMALGAM)。不确定性是根据降雨径流模型的建立中使用的八个选定水文参数估算的。为了确保模型的可靠性,选择了四个降雨事件,从次要计数类别到主要计数类别从20毫米到120毫米不等。结果表明,对于选定的风暴,两种技术所产生的结果均具有相似的效果,如使用众所周知的错误度量标准所测得的结果;发现GLUE与AMALGAM相比,性能稍好。特别是,已证明可以从不确定性分析中获得具有大于60的一致性指数(IAd)和小于30%的平均绝对百分比误差(EAP)的可靠模型。因此,不确定性的量化使得能够生成更可靠的流量预测。此外,这些方法显示了汇总来自不同来源的错误的影响,从而最大程度地减少了与模型预测相关的主观性。

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