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Urban Flood Depth Estimate With a New Calibrated Curve Number Runoff Prediction Model

机译:城市洪水深度估计与新的校准曲线数径流预测模型

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摘要

The 1954 Soil Conservation Services (SCS) runoff predictive model was adopted in engineering designs throughout the world. However, its runoff prediction reliability was under scrutiny by recent studies. The conventional curve number (CN) selection methodology is often very subjective and lacks scientific justification while nested soil group catchments complicate the issue with the risk of inappropriate curve number selection which produces unreliable runoff results. The SCS CN model was statistically invalid (alpha = 0.01 level) and over predicted runoff volume as much as 21% at the Sungai Kerayong catchment in Kuala Lumpur, Malaysia. Blind adoption of the model will commit a type II error. As such, this study presented a new method to calibrate and formulate an urban runoff model with inferential statistics and residual modelling technique to correct the runoff prediction results from the SCS CN model with a corrected equation. The new model out-performed the Asymptotic runoff model and SCS CN runoff model with low predictive model bias, reduced sum of squared errors by 32% and achieved high Nash-Sutcliffe efficiency value of 0.96. The derived urban curve number is 98.0 with 99% confidence interval ranging from 97.8 to 99.5 for Sungai Kerayong catchment. Twenty-five storms generated almost 29 million m(3) runoff (11,548 Olympic size swimming pools) from the Sungai Kerayong catchment in this study. 75%-94% of the rain water became runoff from those storms and lost through the catchment, without efficient drainage infrastructure in place, the averaged flood depth reached 6.5 cm while the actual flood depth will be deeper at the flood ponding area near to the catchment outlet.
机译:世界各地的工程设计采用了1954年的土壤保护服务(SCS)径流预测模型。然而,其径流预测可靠性受到最近的研究审查。传统的曲线数(CN)选择方法通常非常主观,并且缺乏科学的理由,而嵌套的土壤集群集群使问题复杂化了不适当的曲线编号选择的风险,这会产生不可靠的径流结果。 SCS CN模型在吉隆坡吉隆坡的Sungai Kerayong集水区具有统计无效(alpha = 0.01级),并且在吉隆坡的Sungai Kerayong集水区上有多达21%。模型的盲目采用将提交II型错误。因此,本研究提出了一种校准和制定具有推理统计和残余建模技术的城市径流模型的新方法,以利用校正的方程来校正SCS CN模型的径流预测结果。新模型出现了具有低预测模型偏置的渐近径流模型和SCS CN径流模型,将平方误差减少32%,实现了高纳什 - Sutcliffe效率值0.96。衍生的城市曲线数为98.0,置信区间99%至99.5为桑伊克莱通集水区。二十五种风暴从本研究中产生了近2900万米(3)米(3,548次奥运尺寸的游泳池),在这项研究中占Sungai Kerayong集水区。 75%-94%的雨水从那些风暴中脱沟,通过集水区丢失,没有高效的排水基础设施,平均洪水深度达到6.5厘米,而实际的洪水深度将深入了解附近的洪水池区集水区。

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