通过机器学习利用热成像和地震检波器信号进行地下供水系统泄漏检测和定位

Mohammed Rezwanul Islam , Sami Azam , Bharanidharan Shanmugam , Deepika Mathur
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引用次数: 0

摘要

地下输水管道系统是一种重要的基础设施,在很大程度上不为人们所注意。然而,它却是我们日常生活中清洁、不间断供水的源泉。包括腐蚀、材料退化、地面移动和维护不当在内的各种因素都会导致管道泄漏,这是一种无声的危机,每年造成的损失估计高达 390 亿美元。及时的渗漏检测和定位有助于减少损失。本研究探讨了两种机器学习模型作为辅助工具的潜力,用于勘测大面积区域,以识别和精确定位地下渗漏点。所提出的组合方法可确保渗漏勘测的速度和准确性。第一个机器学习模型是一个混合 ML 模型,利用热成像来识别地下漏水。它依靠检测与漏水相关的热异常和独特特征来识别和定位地下漏水。所开发的模型可以检测到最大 750 毫米的地下漏水,准确率高达 95.20%。第二个模型使用来自检波器的双耳音频来定位漏水位置。该模型利用耳间时差和耳间相位差进行定位,1D-CNN 网络以二十度为增量提供角度,准确率为 88.19%。该模型的大规模应用将有力地促进减少供水系统中的水损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leak detection and localization in underground water supply system using thermal imaging and geophone signals through machine learning

The underground water pipeline system is a crucial infrastructure that largely remains out of sight. However, it is the source of a clean and uninterrupted flow of water for our everyday lives. Various factors, including corrosion, material degradation, ground movement, and improper maintenance, cause pipe leaks, a silent crisis that causes an estimated 39 billion dollars of loss every year. Prompt leakage detection and localization can help reduce the loss. This research investigates the potential of two machine learning models as supporting tools for surveying extensive areas to identify and pinpoint the location of underground leaks. The presented combined approach ensures the speed and accuracy of the leakage survey. The first machine learning model is a hybrid ML model that employs thermal imaging to identify subterranean water leakage. It relies on detecting thermal anomalies and distinctive signatures associated with water leakage to identify and locate underground water leakage. The developed model can detect up to 750 mm underground leakage with 95.20 % accuracy. The second model uses binaural audio from geophones to localize the leakage position. The model utilizes interaural time difference and interaural phase difference for localization purposes, and the 1D-CNN network delivers an angle in twenty-degree increments with an accuracy of 88.19 %. Large-scale implementation of the proposed model could be a powerful catalyst to reduce water loss in the water supply system.

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