Department of Chemical Engineering, Indian Institute of Technology Guwahati, 781039 Assam, India.
Water Res. 2022 Jul 15;220:118666. doi: 10.1016/j.watres.2022.118666. Epub 2022 May 25.
Monitoring of water distribution network (WDN) requires placement of sensors at strategic locations to detect maximum contamination events at the earliest. The multi-objective optimization (MOO) of sensor placement is a complicated problem owing to its combinatorial nature, interconnected and large WDN sizes, and temporal flows producing complex outcomes for a given set of contamination events. In this study, a new method is proposed to reduce the complexity of the problem by condensing the nodal search space. This method first segregates the nodes based on intrusion events detected, using k-means clustering, followed by selecting nodes from each group based on the improvement observed in the objectives, namely, contamination event detection, expected detection time, and affected population. The selected nodes formed the decision variable space for the MOO study. The developed strategy was tested on two benchmark networks: BWSN Network1 and C-town network, and its performance is compared with the traditional method in terms of hypervolume contribution rate (CR) indicator and the number of Pareto points. The optimal subset of nodes generated twice the number of Pareto points than the complete set of nodes set for placing 20 sensors and had 10% more than CR indicator than the traditional method. For the placement of 5 sensors, the proposed solutions were better at the higher detection likelihood values, which is required to achieve maximum detection. The proposed sensor placement algorithm can be easily scaled to large WDNs. It is expected to provide a better optimal sensor placement solution irrespective of network size as compared to the traditional approach.
供水管网(WDN)的监测需要在战略位置放置传感器,以便尽早发现最大的污染事件。由于其组合性质、相互关联和大型 WDN 尺寸以及随时间变化的水流会对给定的一组污染事件产生复杂的结果,因此传感器放置的多目标优化(MOO)是一个复杂的问题。在这项研究中,提出了一种新方法,通过压缩节点搜索空间来降低问题的复杂性。该方法首先使用 k-均值聚类根据检测到的入侵事件对节点进行分类,然后根据目标观测到的改进从每个组中选择节点,即污染事件检测、预期检测时间和受影响的人口。所选节点构成了 MOO 研究的决策变量空间。该策略在两个基准网络上进行了测试:BWSN Network1 和 C-town 网络,并根据超体积贡献率(CR)指标和 Pareto 点的数量与传统方法进行了比较。与为放置 20 个传感器而设置的完整节点集相比,所生成的最优节点子集产生了两倍数量的 Pareto 点,并且比传统方法的 CR 指标高 10%。对于放置 5 个传感器,所提出的解决方案在更高的检测可能性值下表现更好,这是实现最大检测所需的。与传统方法相比,所提出的传感器放置算法可以很容易地扩展到大的 WDN。预计它可以提供更好的最优传感器放置解决方案,而与网络规模无关。