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Evaluation of the Performance and the Predictive Capacity of Build-Up and Wash-Off Models on Different Temporal Scales

机译:不同时间尺度上建立和冲刷模型的性能和预测能力的评估

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Stormwater quality modeling has arisen as a promising tool to develop mitigation strategies. The aim of this paper is to assess the build-up and wash-off processes and investigate the capacity of several water quality models to accurately simulate and predict the temporal variability of suspended solids concentrations in runoff, based on a long-term data set. A Markov Chain Monte-Carlo (MCMC) technique is applied to calibrate the models and analyze the parameter’s uncertainty. The short-term predictive capacity of the models is assessed based on inter- and intra-event approaches. Results suggest that the performance of the wash-off model is related to the dynamic of pollutant transport where the best fit is recorded for first flush events. Assessment of SWMM (Storm Water Management Model) exponential build-up model reveals that better performance is obtained on short periods and that build-up models relying only on the antecedent dry weather period as an explanatory variable, cannot predict satisfactorily the accumulated mass on the surface. The predictive inter-event capacity of SWMM exponential model proves its inability to predict the pollutograph while the intra-event approach based on data assimilation proves its efficiency for first flush events only. This method is very interesting for management practices because of its simplicity and easy implementation.
机译:雨水质量建模已成为开发缓解策略的有前途的工具。本文的目的是基于长期数据集,评估积水和冲积过程,并研究几种水质模型准确模拟和预测径流中悬浮物浓度随时间变化的能力。应用了马尔可夫链蒙特卡罗(MCMC)技术来校准模型并分析参数的不确定性。基于事件间和事件内方法评估模型的短期预测能力。结果表明,冲刷模型的性能与污染物传输的动力学有关,其中最适合首次冲水事件的记录。对SWMM(暴雨水管理模型)指数积累模型的评估表明,短期内可以获得更好的性能,并且仅依靠干旱前期作为解释变量的积累模型无法令人满意地预测在干旱地区的累积质量。表面。 SWMM指数模型的预测事件间容量证明了其无法预测污染者,而基于数据同化的事件内方法证明了其仅对于首次冲洗事件有效。由于该方法简单且易于实现,因此对于管理实践而言非常有趣。

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