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首页> 外文期刊>OR Spectrum >Estimation of a logistic regression model by a genetic algorithm to predict pipe failures in sewer networks
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Estimation of a logistic regression model by a genetic algorithm to predict pipe failures in sewer networks

机译:遗传算法估计逻辑回归模型预测下水道网络中的管道故障

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摘要

Sewer networks are mainly composed of pipelines which are in charge of transporting sewage and rainwater to wastewater treatment plants. A failure in a sewer pipe has many negative consequences, such as accidents, flooding, pollution or extra costs. Machine learning arises as a very powerful tool to predict these incidents when the amount of available data is large enough. In this study, a real-coded genetic algorithm is implemented to estimate the optimal weights of a logistic regression model whose objective is to forecast pipe failures in wastewater networks. The goal is to create an autonomous and independent predictive system able to support the decisions about pipe replacement plans of companies.From the data processing to the validation of the model, all stages for the implementation of the machine-learning system are explored and carefully explained. Moreover, the methodology is applied to a real sewer network of a Spanish city to check its performance. Results demonstrate that by annually replacing 4% of pipe segments, those whose estimated failure probability is higher than 0.75, almost 30% of unexpected pipe failures are prevented. Furthermore, the analysis of the estimated weights of the logistic regression model reveals some weaknesses of the network as well as the influence of the features in the pipe failures. For instance, the predisposition of vitrified clay pipes to fail and of that pipes with smaller diameters.
机译:下水道网络主要由管道组成,这些管道负责将污水和雨水运送到废水处理厂。下水道管道的失败具有许多负面后果,例如事故,洪水,污染或额外费用。当可用数据量足够大时,机器学习是一种预测这些事件的非常强大的工具。在该研究中,实现了实际编码的遗传算法以估计其目的是在废水网络中预测管道故障的逻辑回归模型的最佳权重。目标是创建一个自主和独立的预测系统,能够支持关于替换公司的管道替换计划的决定。从数据处理到模型的验证,探讨了机器学习系统的实现的所有阶段都是仔细解释的。此外,该方法应用于西班牙城市的真正的下水道网络来检查其性能。结果表明,通过每年更换4%的管段,估计失效概率高于0.75,预防近30%的意外的管道故障。此外,对逻辑回归模型的估计权重的分析揭示了网络的一些弱点以及管道故障中的特征的影响。例如,玻璃化粘土管的预感失效,并且具有较小直径的该管道。

著录项

  • 来源
    《OR Spectrum》 |2021年第3期|759-776|共18页
  • 作者单位

    Univ Seville ETSI Dept Org Ind & Gest Empresas C Camino Descubrimientos S-N Seville 41092 Spain|Univ Seville EMASESA Catedra Agua Seville Spain;

    Univ Seville ETSI Dept Org Ind & Gest Empresas C Camino Descubrimientos S-N Seville 41092 Spain|Univ Seville EMASESA Catedra Agua Seville Spain;

    Univ Seville ETSI Dept Org Ind & Gest Empresas C Camino Descubrimientos S-N Seville 41092 Spain;

    Univ Seville ETSI Dept Org Ind & Gest Empresas C Camino Descubrimientos S-N Seville 41092 Spain;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Logistic regression; Binary classifier; Pipe failures; Genetic algorithm; Sewer networks;

    机译:Logistic回归;二进制分类器;管道故障;遗传算法;下水道网络;

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