Department of Civil, Environmental and Natural Resources Engineering, Urban Water Engineering, Luleå University of Technology, Luleå 971 87, Sweden; Department of Civil and Environmental Engineering, water and wastewater (VA) group, Norwegian University of Science and Technology (NTNU), Trondheim N-7491, Norway E-mail:
Department of Civil and Environmental Engineering, water and wastewater (VA) group, Norwegian University of Science and Technology (NTNU), Trondheim N-7491, Norway.
Water Sci Technol. 2024 Jul;90(1):398-412. doi: 10.2166/wst.2024.194. Epub 2024 Jun 3.
In this study, we show that pollutants of emerging concern are, by nature, prone to the emergence of epistemic uncertainty. We also show that the current uncertainty quantification methods used for pollutant modelling rely almost exclusively on parameter uncertainty, which is not adequate to tackle epistemic uncertainty affecting the model structure. We, therefore, suggest a paradigm shift in the current pollutant modelling approaches by adding a term explicitly accounting for epistemic uncertainties. In a proof-of-concept, we use this approach to investigate the impact of epistemic uncertainty in the fluctuation of pollutants during wet-weather discharge (input information) on the distribution of mass of pollutants (output distributions). We found that the range of variability negatively impacts the tail of output distributions. The fluctuation time, associated with high covariance between discharge and concentration, is a major driver for the output distributions. Adapting to different levels of epistemic uncertainty, our approach helps to identify critical unknown information in the fluctuation of pollutant concentration. Such information can be used in a risk management context and to design smart monitoring campaigns.
在这项研究中,我们表明,新兴关注污染物本质上容易出现认识不确定性。我们还表明,目前用于污染物建模的不确定性量化方法几乎完全依赖于参数不确定性,这不足以解决影响模型结构的认识不确定性。因此,我们建议通过添加一个明确考虑认识不确定性的术语来改变当前的污染物建模方法。在一个概念验证中,我们使用这种方法来研究在雨天排放期间(输入信息)污染物波动的认识不确定性对污染物质量分布(输出分布)的影响。我们发现,变异性范围对输出分布的尾部产生负面影响。与排放和浓度之间的高协方差相关的波动时间是输出分布的主要驱动因素。适应不同程度的认识不确定性,我们的方法有助于确定污染物浓度波动中的关键未知信息。这种信息可以用于风险管理背景下,并设计智能监测活动。