基于多步预测策略的配水管网逐步泄漏检测

IF 3 3区 环境科学与生态学 Q2 ENGINEERING, CIVIL Journal of Water Resources Planning and Management Pub Date : 2023-08-01 DOI:10.1061/jwrmd5.wreng-6001
Xi Wan, Raziyeh Farmani, Edward Keedwell
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引用次数: 0

摘要

随着实时监测数据的日益普及,基于数据驱动方法的配水管网泄漏检测受到越来越多的关注。基于历史数据的准确预测可以提供有关WDN状况的有价值的信息,如果观察到的行为与典型行为有很大不同,则可以检测到异常事件。因此,准确的预测模型对于基于预测的泄漏检测方法至关重要。虽然大多数数据驱动的方法都侧重于爆裂检测,但对于逐渐发生的泄漏事件,开发早期预警系统也很重要,因为由于意识到泄漏的时间较长,会导致更多的失水。因此,本研究提出了一种基于多步预测策略的实时泄漏早期检测技术。介绍了一种多步流量预测模型,以捕获历史数据中的日、周和季节模式。将生成的多步预测结果与观测值进行比较,并根据余弦距离计算残差。通过对残差向量的分析,可以及时检测到渐进式泄漏事件。将该方法应用于包含一年实际流量监测数据的L-town数据集。结果表明,基于多步预测模型的方法比传统的一步预测模型更适合于渐进式泄漏检测。此外,结果表明,所提出的方法可以在短短几天内检测到小的渐进式泄漏事件,并且不会产生假警报。将该方法进一步应用于实际网络,得到了一致的结果。
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Gradual Leak Detection in Water Distribution Networks Based on Multistep Forecasting Strategy
With the availability of real-time monitoring data, leakage detection for water distribution networks (WDNs) based on data-driven methods has received increasing attention in recent years. Accurate forecasts based on historical data could provide valuable information about the condition of the WDN, and abnormal events could be detected if the observed behavior is substantially different from the typical behavior. Therefore, an accurate forecast model is essential for prediction-based leakage detection methods. While most data-driven methods focus on burst detection, it is also important to develop an early warning system for gradual leakage events because they will cause more water loss due to a longer time to awareness. Therefore, a real-time early leakage detection technique based on a multistep forecasting strategy is proposed in this study. A multistep flow forecasting model is introduced to capture the diurnal, weekly, and seasonal patterns in the historical data. The generated multistep forecasting is further compared with the observed measurements, and residuals are calculated based on cosine distance. Based on the analysis of the residual vector, the gradual leakage event could be detected in a timely manner. The proposed method is applied to the L-town datasets containing one year of real-life flow monitoring data. The results prove the superiority of the proposed multistep prediction model-based method over the traditional one-step prediction model for gradual leakage detection. In addition, the results show that the proposed methodology can detect small gradual leakage events within just a few days while generating no false alarms. The method was further applied to a real-life network and showed consistent results.
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来源期刊
CiteScore
6.30
自引率
19.40%
发文量
136
审稿时长
7 months
期刊介绍: The Journal of Water Resources Planning and Management reports on all phases of planning and management of water resources. The papers examine social, economic, environmental, and administrative concerns relating to the use and conservation of water. Social and environmental objectives in areas such as fish and wildlife management, water-based recreation, and wild and scenic river use are assessed. Developments in computer applications are discussed, as are ecological, cultural, and historical values.
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