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首页> 外文期刊>Journal of Mechanical Engineering >Investigating Prior Parameter Distributions in the Inverse Modelling of Water Distribution Hydraulic Models
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Investigating Prior Parameter Distributions in the Inverse Modelling of Water Distribution Hydraulic Models

机译:水分配水力模型反演中的先验参数分布研究

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Inverse modelling concentrates on estimating water distribution system (WDS) model parameters that are not directly measurable, e.g. pipe roughness coefficients, which can, therefore, only be estimated by indirect approaches, i.e. inverse modelling. Estimation of the parameter and predictive uncertainty of WDS models is an essential part of the inverse modelling process. Recently, Markov Chain Monte Carlo (MCMC) simulations have gained in popularity in uncertainty analyses due to their effective and efficient exploration of posterior parameter probability density functions (pdf). A Bayesian framework is used to infer prior parameter information via a likelihood function to plausible ranges of posterior parameter pdf. Improved parameter and predictive uncertainty are achieved through the incorporation of prior pdf of parameter values and the use of a generalized likelihood function. We used three prior information sampling schemes to infer the pipe roughness coefficients of WDS models. A hypothetical case study and a real-world WDS case study were used to illustrate the strengths and weaknesses of a particular selection of a prior information pdf. The results obtained show that the level of parameter identifiability (i.e. sensitivity) is an important property for prior pdf selection.
机译:逆建模集中于估计不可直接测量的水分配系统(WDS)模型参数,例如因此,管道粗糙度系数只能通过间接方法(即逆模型)进行估算。 WDS模型的参数估计和预测不确定性是逆建模过程的重要组成部分。最近,由于对后参数概率密度函数(pdf)的有效探索,Markov Chain Monte Carlo(MCMC)模拟已在不确定性分析中广受欢迎。贝叶斯框架用于通过似然函数推断后验参数pdf的合理范围的先验参数信息。通过合并先前的pdf参数值和使用广义似然函数,可以改善参数和预测不确定性。我们使用了三种先验信息采样方案来推断WDS模型的管道粗糙度系数。假设的案例研究和真实的WDS案例研究用于说明特定选择的先验信息pdf的优缺点。获得的结果表明,参数可识别性(即灵敏度)的水平对于先前的pdf选择是重要的。

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