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首页> 外文期刊>The Science of the Total Environment >Numerical approach for water distribution system model calibration through incorporation of multiple stochastic prior distributions
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Numerical approach for water distribution system model calibration through incorporation of multiple stochastic prior distributions

机译:通过合并多个随机先验分布的水分配系统模型校准的数值方法

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The use of water distribution system (WDS) hydraulic models facilitates the design and operation of such systems. For offline or online model applications, nodal water demands—variables with the highest levels of uncertainty—should be carefully calibrated because these can considerably affect the accuracy of model outputs in terms of hydraulics and water quality. With the increasing utilization of automatic water metering technology, nodal water demands can be modeled with high time resolution in certain forms of probability distributions. However, the fusion of various demand probability distributions with conventional measurements to improve the accuracy of WDS hydraulic models is a difficult problem. To resolve this, a numerical approach that incorporates various probability distributions and field measurements to calibrate nodal water demands based on Bayesian theory is proposed. In particular, the linearization of the exponential family prior distribution is well elaborated in this paper. The application of this proposed approach in two cases demonstrates that the technique is more accurate than methods that merely utilize measurements or prior information. Because this technique can avoid the overfitting of measurement noise and allow the retention of calibrated nodal water demands with stochastic nature, it is robust when errors or uncertainties exist in prior demand distribution or measurements. This method is expected to improve the WDS model accuracy relative to the increasing use of automatic water metering technology.
机译:水分配系统(WDS)液压模型的使用有助于此类系统的设计和操作。对于离线或在线模型应用,应仔细校准节点的需水量(不确定性最高的变量),因为这会严重影响模型输出在水力和水质方面的准确性。随着自动水计量技术的日益普及,可以以某些形式的概率分布以高时间分辨率对节点用水需求进行建模。但是,将各种需求概率分布与常规测量结果融合以提高WDS水力模型的精度是一个难题。为了解决这个问题,提出了一种基于贝叶斯理论的数值方法,该方法结合了各种概率分布和现场测量来校准节点的需水量。特别是,本文对指数族先验分布的线性化进行了详细阐述。在两种情况下,该建议方法的应用表明,该技术比仅利用测量或先验信息的方法更为准确。因为该技术可以避免测量噪声的过拟合并允许具有随机性质的校准节水需求保持,所以当先前的需求分配或测量中存在误差或不确定性时,该技术将非常可靠。相对于越来越多的自动水计量技术,该方法有望提高WDS模型的准确性。

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