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Assessing uncertainty in pollutant wash-off modelling via model validation

机译:通过模型验证评估污染物冲刷模型的不确定性

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摘要

Stormwater pollution is linked to stream ecosystem degradation. In predicting stormwater pollution, various types of modelling techniques are adopted. The accuracy of predictions provided by these models depends on the data quality, appropriate estimation of model parameters, and the validation undertaken. It is well understood that available water quality datasets in urban areas span only relatively short time scales unlike water quantity data, which limits the applicability of the developed models in engineering and ecological assessment of urban waterways. This paper presents the application of leave-one-out (LOO) and Monte Carlo cross validation (MCCV) procedures in a Monte Carlo framework for the validation and estimation of uncertainty associated with pollutant wash-off when models are developed using a limited dataset. It was found that the application of MCCV is likely to result in a more realistic measure of model coefficients than LOO. Most importantly, MCCV and LOO were found to be effective in model validation when dealing with a small sample size which hinders detailed model validation and can undermine the effectiveness of stormwater quality management strategies.
机译:雨水污染与河流生态系统退化有关。在预测雨水污染时,采用了各种类型的建模技术。这些模型提供的预测的准确性取决于数据质量,模型参数的适当估计以及进行的验证。众所周知,与水量数据不同,城市地区可用的水质数据集仅跨越相对较短的时间尺度,这限制了已开发模型在城市水道工程和生态评估中的适用性。本文介绍了使用有限数据集开发模型时,留一法(LOO)和蒙特卡洛交叉验证(MCCV)程序在蒙特卡洛框架中用于验证和估计与污染物冲刷相关的不确定性的应用。已经发现,MCCV的应用可能比LOO导致对模型系数更现实的度量。最重要的是,当处理小样本量时,MCCV和LOO在模型验证中很有效,这阻碍了详细模型验证并可能破坏雨水质量管理策略的有效性。

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