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首页> 外文期刊>Journal of Water Resources Planning and Management >Merging Fluid Transient Waves and Artificial Neural Networks for Burst Detection and Identification in Pipelines
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Merging Fluid Transient Waves and Artificial Neural Networks for Burst Detection and Identification in Pipelines

机译:合并流体瞬态波和人工神经网络,用于管道中的突发检测和识别

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摘要

The occurrence of bursts in water pipelines can not only prevent the system from functioning properly, but it can also produce significant water loss that disrupts activities in urban areas. Therefore, the detection and location of bursts in water distribution systems is a vital task for water utilities. Various techniques currently exist to detect the occurrence of these events, but there is a need for a permanent monitoring method that can detect and identify anomalous events quickly and accurately. This paper presents a new technique that uses artificial neural networks (ANNs) to detect and identify bursts in pipelines by interpreting the transient pressure waves that a burst causes along pipelines. The technique is divided into two stages: a model development stage and an application stage. The model development stage includes the generation of transient pressure traces and the training and testing of two different ANNs to (1) detect burst occurrence and (2) identify burst location and size. The application stage includes the processing of a potentially continuous transient pressure trace, analysis by the previously trained ANNs, and then the verification of the results using a transient flow forward numerical model. A numerical application demonstrates the principles of the technique and the potential for merging the use of fluid transient waves and ANNs. The technique has also been validated in the laboratory, indicating that the prediction of the location of the burst is very accurate while the prediction of the burst size requires an additional step to ensure its accuracy.
机译:水管道中的爆发的发生不仅可以防止系统正常运作,而且还可以产生显着的水分损失,扰乱城市地区的活动。因此,水分配系统中突发的检测和位置是水实用程序的重要任务。目前存在各种技术来检测这些事件的发生,但需要一种永久监测方法,可以快速准确地检测和识别异常事件。本文介绍了一种新技术,其通过解释沿管道突发导致的瞬态压力波来检测管道中的突发。该技术分为两个阶段:模型开发阶段和应用阶段。模型开发阶段包括生成瞬态压力迹线和两个不同ANN的训练和测试到(1)检测突发发生和(2)识别突发位置和大小。应用程序级包括潜在连续瞬时压力轨迹的由先前训练的人工神经网络中的处理,分析,然后使用瞬时流前进数值模型的结果的验证。数值应用演示了技术的原理以及合并使用流体瞬态波和ANN的可能性。该技术也在实验室中验证,表明突发位置的预测在突发大小的预测需要额外的步骤以确保其准确性。

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