...
首页> 外文期刊>Journal of Hydrology >Uncertainty in water quality modelling: The applicability of Variance Decomposition Approach
【24h】

Uncertainty in water quality modelling: The applicability of Variance Decomposition Approach

机译:水质建模的不确定性:方差分解法的适用性

获取原文
获取原文并翻译 | 示例

摘要

Quantification of uncertainty is of paramount interest in integrated urban drainage water quality modelling. Indeed, the assessment of the reliability of the results of complex water quality models is crucial in understanding their significance. However, the state of knowledge regarding uncertainties in urban drainage models is poor. In the case of integrated urban drainage water quality models, due to the fact that integrated approaches are basically a cascade of sub-models (simulating the sewer system, wastewater treatment plant and receiving water body), uncertainty produced in one sub-model propagates to the following ones in a manner dependent on the model structure, the estimation of parameters and the availability and uncertainty of measurements in the different parts of the system. Uncertainty basically propagates throughout a chain of models in which the simulation output from upstream models is transferred to the downstream ones as input. The Variance Decomposition Approach tracks uncertainty propagation commonly assuming that the correlation among error sources is negligible. In complex environmental models, the overall uncertainty can differ significantly from the simple sum of uncertainties generated in each sub-model, showing the well-known uncertainty accumulation problems due to non-linearity in the model and correlation among the sources of uncertainty. This work discusses the importance of such issues in the application of a complex integrated urban drainage model with the aim of evaluating the applicability of Variance Decomposition Approach. The integrated model and the methodology for the uncertainty decomposition were then applied to a complex integrated catchment: the Nocella basin (Italy). The results showed that the Variance Decomposition Approach can be a powerful tool for uncertainty analysis, but a possible correlation among uncertainty sources should be considered because it can greatly affect the analysis.
机译:在城市排水综合水质模型中,不确定性的量化至关重要。实际上,对复杂水质模型结果可靠性的评估对于理解其重要性至关重要。但是,关于城市排水模型不确定性的知识水平很差。在综合城市排水水质模型的情况下,由于综合方法基本上是一系列子模型(模拟下水道系统,废水处理厂和接收水体),因此在一个子模型中产生的不确定性会传播到以下内容取决于模型结构,参数估计以及系统不同部分中测量的可用性和不确定性。不确定性基本上遍及整个模型链,其中上游模型的模拟输出作为输入传递到下游模型。方差分解法通常在假设误差源之间的相关性可忽略的情况下跟踪不确定性传播。在复杂的环境模型中,总体不确定性可能与每个子模型中产生的不确定性的简单总和有很大不同,这表明了众所周知的不确定性累积问题,这是由于模型中的非线性以及不确定性来源之间的相关性所致。这项工作讨论了这些问题在应用复杂的综合城市排水模型中的重要性,目的是评估方差分解法的适用性。然后将不确定性分解的集成模型和方法应用于复杂的集成集水区:Nocella盆地(意大利)。结果表明,方差分解法可以作为不确定性分析的有力工具,但应考虑不确定性源之间的可能相关性,因为它会极大地影响分析。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号