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首页> 外文期刊>Journal of Environmental Engineering >Improving Urban Water Security through Pipe-Break Prediction Models: Machine Learning or Survival Analysis
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Improving Urban Water Security through Pipe-Break Prediction Models: Machine Learning or Survival Analysis

机译:通过管道断开预测模型提高城市水能:机器学习或生存分析

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North America's water distribution systems are aging and incurring increased pipe breaks. These breaks pose a serious threat to urban drinking water security, leading to service interruptions, loss of revenue, and increasing risk of water contamination. Prediction models have been developed to help identify when individual underground water pipes are expected to break, helping utilities develop pipe renewal projects and avoid costly pipe breaks that impact water supply reliability. This paper provides an in-depth comparison of the two leading statistical pipe-break modeling methods: machine-learning and survival-analysis algorithms. A gradient-boosting decision tree machine-learning model and a Weibull proportional hazard survival-analysis model are used to predict time to next break for cast-iron pipes in a major Canadian water distribution system. Results indicate that removal of censored events from the machine-learning model biases the model to predict earlier pipe breaks than occur. Overall, water utilities concerned with short-term security arising from impacts of pipe breaks on water security may favor the machine-learning approach, but the survival-analysis models' ability to incorporate right-censored data makes it more appropriate for long-term asset management planning.
机译:北美的水分配系统正在老化,导致增加管道突破。这些休息对城市饮用水安全构成了严重威胁,导致服务中断,收入丧失以及越来越大的水污染风险。已经开发出预测模型来帮助识别当预期各个地下水管何时会破坏,帮助公用事业开发管道更新项目,并避免昂贵的管道突破供水可靠性。本文提供了两种领先的统计管歇建模方法的深入比较:机器学习和生存分析算法。梯度升压决策树机学习模型和威布尔比例危害生存分析模型用于预测主要加拿大水分配系统中的铸铁管的下一次断裂时间。结果表明,从机器学习模型中删除官方事件偏置模型以预测比发生的较早的管道断裂。总体而言,涉及管道突破对水安全影响的短期安全的水公用事业可能有利于机器学习方法,但生存分析模型的合并数据的能力使得更适合长期资产更适合管理计划。

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