Thorndahl S
Department of Civil Engineering, Aalborg University, Sohngaardsholmsvej 57, 9000 Aalborg, Denmark.
Water Sci Technol. 2009;59(12):2331-9. doi: 10.2166/wst.2009.305.
Long term prediction of maximum water levels and combined sewer overflow (CSO) in drainage systems are associated with large uncertainties. Especially on rainfall inputs, parameters, and assessment of return periods. This paper proposes a Monte Carlo based methodology for stochastic prediction of both maximum water levels as well as CSO volumes based on operations of the urban drainage model MOUSE in a single catchment case study. Results show quite a wide confidence interval of the model predictions especially on the large return periods. Traditionally, return periods of drainage system predictions are based on ranking, but this paper proposes a new methodology for the assessment of return periods. Based on statistics of characteristic rainfall parameters and correlation with drainage system predictions, it is possible to predict return periods more reliably, and with smaller confidence bands compared to the traditional methodology.
排水系统中最高水位和合流制下水道溢流(CSO)的长期预测存在很大的不确定性。特别是在降雨输入、参数以及重现期评估方面。本文提出了一种基于蒙特卡洛的方法,用于在单个集水区案例研究中,基于城市排水模型MOUSE的运行情况,对最高水位和CSO流量进行随机预测。结果表明,模型预测的置信区间相当宽,尤其是在大重现期时。传统上,排水系统预测的重现期是基于排序的,但本文提出了一种评估重现期的新方法。基于特征降雨参数的统计以及与排水系统预测的相关性,与传统方法相比,可以更可靠地预测重现期,且置信区间更小。