管道运输
泄漏(经济)
光时域反射计
计算机科学
实时计算
卷积神经网络
泄漏
反射计
检漏
人工智能
电子工程
数据挖掘
海洋工程
工程类
光纤
时域
光纤传感器
计算机视觉
电信
机械工程
渐变折射率纤维
经济
宏观经济学
环境工程
作者
Shuo Zhang,Zijian Xiong,Boyuan Ji,Nan Li,Zhangwei Yu,Shengnan Wu,Sailing He
摘要
Leakage in water supply pipelines remains a significant challenge. It leads to resource and economic waste. Researchers have developed several leak detection methods, including the use of embedded sensors and pressure prediction. The former approach involves pre-installing detectors inside pipelines to detect leaks. This method allows for the precise localization of leak points. The stability is compromised because of the wireless signal strength. The latter approach, which relies on pressure measurements to predict leak events, does not achieve precise leak point localization. To address these challenges, in this paper, a coherent optical time-domain reflectometry (φ-OTDR) system is employed to capture vibration signal phase information. Subsequently, two pre-trained neural network models based on CNN and Resnet18 are responsible for processing this information to accurately identify vibration events. In an experimental setup simulating water pipelines, phase information from both leaking and non-leaking pipe segments is collected. Using this dataset, classical CNN and ResNet18 models are trained, achieving accuracy rates of 99.7% and 99.5%, respectively. The multi-leakage point experiment results indicate that the Resnet18 model has better generalization compared to the CNN model. The proposed solution enables long-distance water-pipeline precise leak point localization and accurate vibration event identification.
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