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Optimal Meter Placement for Water Distribution System State Estimation

机译:配水系统状态估计的最佳仪表布置

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Real-time state estimates (SEs) of nodal demands in a water distribution system (WDS) can be developed using data from a supervisory control and data acquisition (SCADA) system. These estimates provide information for improved operations and customer service in terms of energy consumption and water quality. The SE results in a WDS are significantly affected by measurement characteristics, i.e., meter types, numbers, and topological distributions. The number and type of meters are generally selected prior to a SCADA layout. Thus, selecting measurement locations is critical. The aim of this study is to develop a methodology that optimally locates field measurement sites and leads to more reliable SEs. An optimal meter placement (OMP) problem is posed as a multiobjective optimization form. Three distinctive objectives are formulated: (1) minimization of nodal demand estimation uncertainty; (2) minimization of nodal pressure prediction uncertainty; and (3) minimization of absolute error between demand estimates and their expected values. Objectives (1) and (2) represent the model precisions while Objective (3) describes the model accuracy. The OMP is solved using a multiobjective genetic algorithm (MOGA) based on Pareto-optimal solutions. The trade-off between model precision and accuracy is clearly observed in two case studies and it is recommended to use both criteria as objectives. It is also concluded that the proposed objectives are more appropriate for OMP purposes compared to calibration sampling design studies in which minimization of metering costs (i.e., number of meters) is used as one of the multiple objectives. The MOGA saves computational effort while providing optimal Pareto solutions compared to full enumeration for a small hypothetical network. For real networks, GA solutions, although not guaranteed to be globally optimal, are improvements over those obtained using less robust methods or designers' experienced judgment.
机译:可以使用来自监督控制和数据采集(SCADA)系统的数据来开发供水系统(WDS)中节点需求的实时状态估计(SE)。这些估计值可提供有关能源消耗和水质方面改善运营和客户服务的信息。 WDS的SE结果受测量特性(即电表类型,数量和拓扑分布)的影响很大。仪表的数量和类型通常是在SCADA布局之前选择的。因此,选择测量位置至关重要。这项研究的目的是开发一种方法,该方法可以最佳地定位现场测量站点并导致更可靠的SE。最佳仪表放置(OMP)问题被提出为多目标优化形式。提出了三个独特的目标:(1)最小化节点需求估计的不确定性; (2)最小化节点压力预测的不确定性; (3)最小化需求估算与其期望值之间的绝对误差。目标(1)和(2)代表模型精度,而目标(3)描述模型精度。使用基于帕累托最优解的多目标遗传算法(MOGA)解决OMP问题。在两个案例研究中清楚地看到了模型精度和准确性之间的权衡,建议同时使用这两个标准作为目标。还得出结论,与标定抽样设计研究相比,拟议的目标更适合OMP目的,在标定抽样设计研究中,将计量成本(即计量表的数量)最小化用作多个目标之一。与小型假设网络的完整枚举相比,MOGA在提供最佳Pareto解决方案的同时节省了计算工作量。对于真实的网络,尽管不能保证GA解决方案在全球范围内都是最佳的,但它是对使用不太可靠的方法或设计人员经验丰富的判断所获得的解决方案的改进。

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