Affiliation:
1. School of Information Engineering, North China University of Water Resources and Electric Power, Zhengzhou 450046, China
2. Henan Province Water Distribution Network Intelligent Management Engineering Research Center, Zhengzhou 450046, China
3. Zhengzhou Water Supply Investment Holdings Co., Ltd., Zhengzhou 450046, China
Abstract
As water distribution networks expand, evaluating pipeline network leakage risk has become increasingly crucial. Contrary to traditional evaluation methods, which are often hampered by subjective weight assignment, data scarcity, and high expenses, data-driven models provide advantages like autonomous weight learning, comprehensive coverage, and cost-efficiency. This study introduces a data-driven framework leveraging graph neural networks to assess leakage risk in water distribution networks. Employing geographic information system (GIS) data from a central Chinese city, encompassing pipeline network details and historical repair records, the model achieved superior performance compared to other data-driven approaches, evidenced by metrics such as precision, accuracy, recall, and the Matthews correlation coefficient. Further analysis of risk factors underscores the importance of factors like pipe age, material, prior failures, and length. This approach demonstrates robust predictive accuracy and offers significant reference value for leakage risk evaluation.
Reference30 articles.
1. Pietrucha-Urbanik, K., and Rak, J. (2023). Water, Resources, and Resilience: Insights from Diverse Environmental Studies. Water, 15.
2. Safety assessment and analysis for urban water supply distribution network;Peng;Water Purif. Technol.,2020
3. Safety assessment and analysis for urban municipal pipeline networks;Song;Water Purif. Technol.,2023
4. Use of a GIS-based hybrid artificial neural network to prioritize the order of pipe replacement in a water distribution network;Ho;Environ. Monit. Assess.,2010
5. Bubtiena, A.M., Elshafie, A.H., and Jafaar, O. (2011, January 4–6). Application of Artificial Neural networks in modeling water networks. Proceedings of the 2011 IEEE 7th International Colloquium on Signal Processing and Its Applications, Penang, Malaysia.