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A comparative study of statistical and machine learning methods to infer causes of pipe breaks in water supply networks

机译:统计和机器学习方法的比较研究,推断水供应网络中管道断裂的原因

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Water supply pipes age, deteriorate and break, which puts at risk the continuous provision of safe potable water endangering the public health in cities. Risk management methods are increasingly applied to optimise the capital investment for pipe replacement and rehabilitation, taking into account the probability and hydraulic impact of pipe breaks. As part of this process, however, historic pipe break data and statistical methods should be utilised to gather causal insights for past breaks to inform operational changes and/or capital investment decisions in order to reduce future breaks. This paper presents a comparative study of statistical and machine learning methods to carry out an exploratory causal analysis for historic pipe breaks in an operational water supply network. Regression models for count data and probabilistic models have been developed. The performance of these models was assessed and enhanced with the introduction of interactions and the inclusion of different network representations.
机译:供水管风时代,恶化和突破,危险危险地提供危及城市公共卫生的安全饮用水。风险管理方法越来越多地应用于优化管道替代和康复的资本投资,考虑到管道突破的概率和液压影响。然而,作为这一过程的一部分,应利用历史管休息数据和统计方法来收集过去休息的因果洞察,以告知运营变更和/或资本投资决策,以减少未来的休息。本文提出了统计和机器学习方法的比较研究,对运营供水网络中的历史管道突破进行探索性因果分析。已经开发了计数数据和概率模型的回归模型。通过引入互动和包含不同的网络表示,评估和增强这些模型的性能。

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