Department of Building and Real Estate, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong.
Environ Technol. 2023 Nov;44(25):3850-3866. doi: 10.1080/09593330.2022.2074320. Epub 2022 May 15.
Water scarcity as well as social and economic damages caused by the increasing amounts of non-revenue water in the water distribution networks (WDNs) have been prompting innovative solutions. A great deal of potable water is wasted due to leakage in the WDNs all over the world. Hence, various leak detection approaches have been explored, including the promising application of acoustic devices. Exploiting the benefits of technological advances in acoustic devices, signal processing, and machine learning (ML), this study aimed to develop a sophisticated system for leak detection in WDNs. Different from laboratory-based studies, this study was conducted on real WDNs in Hong Kong and lasted for about two years. Utilizing acoustic emissions acquired using wireless noise loggers, various ML algorithms were explored to develop inspection models for in-service and buried WDNs. ML classification algorithms can identify patterns in the acquired signals for leak and no-leak statuses. Thus, a combination of features describing acoustic signals in time and frequency domains was utilized to facilitate the development of ML models. Separately for metal and non-metal WDNs, ten well-known ML algorithms were used to develop leak detection models. The validation results demonstrate the promising application of noise loggers and ML for leak detection in real WDNs. Support Vector Machine (SVM), Artificial Neural Network (ANN), and Deep Learning (DL) leak detection models demonstrated a largely stable performance and a very good accuracy, particularly for new unlabelled cases.
水资源短缺以及供水管网中非收益水的增加所造成的社会和经济损失,促使人们寻求创新的解决方案。由于供水管网中的泄漏,全世界有大量的饮用水被浪费。因此,已经探索了各种检漏方法,包括声学设备的有前途的应用。本研究利用声学设备、信号处理和机器学习(ML)技术的进步,旨在为供水管网中的泄漏检测开发一个复杂的系统。与基于实验室的研究不同,本研究在香港的实际供水管网上进行,历时约两年。利用无线噪声记录仪采集的声发射,研究探索了各种 ML 算法,以开发用于在役和埋地供水管网的检测模型。ML 分类算法可以识别获取的信号中泄漏和无泄漏状态的模式。因此,利用描述声信号在时域和频域特征的组合,来促进 ML 模型的开发。分别针对金属和非金属供水管网,使用了十种著名的 ML 算法来开发检漏模型。验证结果表明,噪声记录仪和 ML 在实际供水管网中的检漏应用具有广阔的前景。支持向量机(SVM)、人工神经网络(ANN)和深度学习(DL)检漏模型表现出了非常稳定的性能和很高的准确性,特别是对于新的未标记案例。