Kleidorfer M, Deletic A, Fletcher T D, Rauch W
Unit of Environmental Engineering, Faculty of Civil Engineering, University of Innsbruck, Technikerstrasse 13, A6020 Innsbruck, Austria.
Water Sci Technol. 2009;60(6):1545-54. doi: 10.2166/wst.2009.493.
The use of urban drainage models requires careful calibration, where model parameters are selected in order to minimize the difference between measured and simulated results. It has been recognized that often more than one set of calibration parameters can achieve similar model accuracy. A probability distribution of model parameters should therefore be constructed to examine the model's sensitivity to its parameters. With increasing complexity of models, it also becomes important to analyze the model parameter sensitivity while taking into account uncertainties in input and calibration data. In this study a Bayesian approach was used to develop a framework for quantification of impacts of uncertainties in the model inputs on the parameters of a simple integrated stormwater model for calculating runoff, total suspended solids and total nitrogen loads. The framework was applied to two catchments in Australia. It was found that only systematic rainfall errors have a significant impact on flow model parameters. The most sensitive flow parameter was the effective impervious area, which can be calibrated to completely compensate for the input data uncertainties. The pollution model parameters were influenced by both systematic and random rainfall errors. Additionally an impact of circumstances (e.g. catchment type, data availability) has been recognized.
城市排水模型的使用需要仔细校准,在校准过程中要选择模型参数,以便将测量结果与模拟结果之间的差异降至最低。人们已经认识到,通常不止一组校准参数可以达到相似的模型精度。因此,应该构建模型参数的概率分布,以检验模型对其参数的敏感性。随着模型复杂性的增加,在考虑输入数据和校准数据的不确定性的同时分析模型参数敏感性也变得很重要。在本研究中,采用贝叶斯方法开发了一个框架,用于量化模型输入中的不确定性对一个用于计算径流、总悬浮固体和总氮负荷的简单综合雨水模型参数的影响。该框架应用于澳大利亚的两个集水区。结果发现,只有系统性降雨误差对流量模型参数有显著影响。最敏感的流量参数是有效不透水面积,它可以通过校准来完全补偿输入数据的不确定性。污染模型参数受系统性和随机性降雨误差的影响。此外,还认识到了环境因素(如集水区类型、数据可用性)的影响。