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An iterative method for leakage zone identification in water distribution networks based on machine learning

机译:基于机器学习的水分配网络泄漏区识别的迭代方法

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摘要

For leakage identification in water distribution networks, if each node is used as a category label of the classifier model, the accuracy of the classifier model will be low because of similar leakage characteristics. By clustering the nodes with similar leakage characteristics and using all the possible combinations of leakages as the category labels of the classifier model, the accuracy of the classifier model for leakage location can be improved. An iterative method combining k- means clustering with the random forest classifier is proposed to identify the leakage zones. In each iteration, k -means clustering is used to divide the leakage zone identified in the previous iterations into two zones, and then, the random forest classifier is used to identify the leakage zones and the number of leakages in each leakage zone. As the number of iterations increases, the number of candidate leakage zones and sensors that conduct leakage zone identification decreases. Thus, feature selection can be used in each iteration to select the minimum number of sensors for model training without affecting identification accuracy. Three leakage scenarios are considered: a single leakage, two simultaneous leakages, and four simultaneous leakages. A benchmark case is presented in this study to demonstrate the effectiveness of the proposed method. The influences of the number of pressure sensors and Gaussian noise level on the identification results are also discussed. Results indicate that the proposed method is effective for identifying simultaneous leakages.
机译:为了在水分配网络中泄漏识别,如果每个节点用作分类器模型的类别标签,因此由于相似的泄漏特性,分类器模型的准确性将是低的。通过将具有相似泄漏特性的节点进行聚类并使用所有可能的泄漏组合作为分类器模型的类别标签,可以提高泄漏位置的分类器模型的准确性。提出了一种与随机林分类器组合的迭代方法,以识别泄漏区域。在每次迭代中,k -means聚类用于将在前一个迭代中识别的泄漏区域划分为两个区域,然后,随机林分类器用于识别泄漏区域和每个泄漏区域中的泄漏次数。随着迭代的数量增加,导电泄漏区识别的候选泄漏区域和传感器的数量减小。因此,可以在每次迭代中使用特征选择以选择模型训练的最小传感器,而不会影响识别精度。考虑了三种泄漏场景:单一泄漏,两个同时泄漏和四个同时泄漏。本研究提出了基准情况,以证明提出的方法的有效性。还讨论了压力传感器数量和高斯噪声水平对识别结果的影响。结果表明,该方法对识别同时泄漏有效。

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