Failure Prediction for Large-scale Water Pipe Networks Using GNN and Temporal Failure Series

Shuming Liang, Zhidong Li, Binxin Liang, Yu Ding, Yang Wang, Fang Chen
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Abstract

Pipe failure prediction in the water industry aims to prioritize the pipes that are at high risk of failure for proactive maintenance. However, existing statistical or machine learning models that rely on historical failures and asset attributes can hardly leverage the structure information of pipe networks. In this work, we develop a failure prediction framework for pipe networks by jointly considering the pipes' features, the network structure, the geographical neighboring effect, and the temporal failure series. We apply a multi-hop Graph Neural Network (GNN) to failure prediction. We propose a method of constructing a geographical graph structure depending on not only the physical connections but also geographical distances between pipes. To differentiate the pipes with diverse properties, we employ an attention mechanism in the neighborhood aggregation process of each GNN layer. Also, residual connections and layer-wise aggregation are used to avoid the over-smoothing issue in deep GNNs. The historical failures exhibit a strong temporal pattern. Inspired by point process, we develop a module to learn the pipes' evolutionary effect and the time-decayed excitement of historical failures on the current state of the pipe. The proposed framework is evaluated on two real-world large-scale pipe networks. It outperforms the existing statistical, machine learning, and state-of-the-art GNN baselines. Our framework provides the water utility with core data-driven support for proactive maintenance including regular pipe inspection, pipe renewal planning, and sensor system deployment. It can be extended to other infrastructure networks in the future.
基于GNN和时序故障序列的大型管网故障预测
供水行业管道故障预测的目的是优先考虑高故障风险的管道进行主动维护。然而,现有的统计或机器学习模型依赖于历史故障和资产属性,很难利用管网的结构信息。本文综合考虑管道的特性、网络结构、地理邻近效应和时间序列等因素,建立了管网失效预测框架。我们将多跳图神经网络(GNN)应用于故障预测。我们提出了一种构造地理图形结构的方法,该方法不仅依赖于物理连接,而且依赖于管道之间的地理距离。为了区分具有不同属性的管道,我们在每个GNN层的邻域聚合过程中采用了注意机制。此外,残差连接和分层聚合也被用于避免深度gnn中的过度平滑问题。历史上的失败表现出强烈的时间模式。受点过程的启发,我们开发了一个模块来学习管道的演化效应和历史故障对管道当前状态的时间衰减刺激。在两个真实的大型管网中对所提出的框架进行了评估。它优于现有的统计、机器学习和最先进的GNN基线。我们的框架为水务公司提供了核心数据驱动的主动维护支持,包括定期管道检查、管道更新计划和传感器系统部署。它可以在未来扩展到其他基础设施网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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