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首页> 外文期刊>Journal of Water Resources Planning and Management >Effect of Data Collection on the Estimation of Wall Reaction Coefficients for Water Distribution Models
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Effect of Data Collection on the Estimation of Wall Reaction Coefficients for Water Distribution Models

机译:数据收集对水分配模型壁反应系数估计的影响

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During a model calibration process, errors in field measurements propagate to uncertainties in model parameter estimates and model predictions. This paper presents a means to quantify that effect in a water distribution water quality model and provides guidance on data collection experiment design. Water quality in the distribution systems is dominated by advective transport that is hydraulically driven. The hydraulic model, including the nodal demand, is assumed well calibrated and provides no uncertainty. Thus, only the wall decay coefficients are to be estimated and evaluated. The uncertainty assessment procedure consists of a parameter estimation model, parameter estimation uncertainty analysis, and model prediction uncertainty analysis. The shuffled frog leaping algorithm (SFLA), an optimization algorithm, is used to estimate the parameters in the water quality model in a least-squares regression given a set of field data. The parameter uncertainty is calculated using a first-order approximation and is further propagated to model prediction uncertainty. The model prediction uncertainty is calculated using a similar first-order analysis. The methodology is applied to two networks. Alternative conditions are analyzed in terms of data collection and model prediction conditions to examine the benefits of performing pulse injection test and data collection design. The results showed that pulse injection provides more information and better parameter estimates. As a result, parameters estimated from a data set with pulse injection produced lower model prediction uncertainty. For a given simulation time, earlier pulses remained in the system for a longer duration, providing more calibration information and, hence, improving parameter estimation accuracy.
机译:在模型校准过程中,现场测量中的误差会传播到模型参数估计和模型预测的不确定性中。本文提出了一种在配水水质模型中量化这种影响的方法,并为数据收集实验设计提供了指导。分配系统中的水质主要由液压驱动的对流运输控制。假定包括节点需求在内的水力模型已经过很好的校准,并且没有不确定性。因此,仅壁衰减系数将被估计和评估。不确定性评估程序包括参数估计模型,参数估计不确定性分析和模型预测不确定性分析。改组的蛙跳算法(SFLA)是一种优化算法,用于在给定一组现场数据的情况下以最小二乘回归估算水质模型中的参数。使用一阶逼近计算参数不确定性,并将其进一步传播到模型预测不确定性。使用类似的一阶分析计算模型预测的不确定性。该方法应用于两个网络。根据数据收集和模型预测条件对替代条件进行分析,以检查执行脉冲注入测试和数据收集设计的好处。结果表明,脉冲注入提供了更多的信息和更好的参数估计。结果,从具有脉冲注入的数据集估计的参数产生了较低的模型预测不确定性。对于给定的仿真时间,较早的脉冲在系统中保留的时间更长,从而提供了更多的校准信息,从而提高了参数估计的准确性。

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