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Improving the benefits of sewer condition deterioration modelling through information content analysis

机译:通过信息内容分析提高下水道状况恶化建模的好处

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摘要

As urban sewer infrastructures age, it becomes increasingly important to make effective decisions to maintain the structural condition of the sewers at an acceptable level. To support the decision-making process, the utility manager can apply sewer deterioration models. However, the quality of the decision support from such models is dependent on the accuracy and reliability of the predictions, and previous research has shown that sewer deterioration predictions can be unreliable. In this paper it is shown, by numerical experiment and analysis of information content, how the accuracy of sewer deterioration models is inhibited by data heterogeneity. The data heterogeneity arises when the condition class is used as a response variable, because the condition class is an aggregation of different failure modes, and contains information that does not describe structural deterioration. Based on these findings, the paper suggests changes to be implemented in the condition classification standard, which can mitigate heterogeneity and improve prediction reliability. The suggestions for improvement include distinguishing between structural and functional defect codes, defining new condition metrics better suited for deterioration modelling, and registration of detailed defect codes to allow distinction of different failure mechanisms.
机译:随着城市下水道基础设施的老化,做出有效决策以将下水道的结构条件维持在可接受的水平变得越来越重要。为了支持决策过程,公用事业经理可以应用下水道恶化模型。但是,来自此类模型的决策支持的质量取决于预测的准确性和可靠性,并且先前的研究表明下水道恶化的预测可能不可靠。通过数值实验和信息内容分析,本文表明了数据异质性如何抑制下水道恶化模型的准确性。当条件类别用作响应变量时,会出现数据异质性,因为条件类别是不同故障模式的集合,并且包含不描述结构恶化的信息。基于这些发现,本文提出了在条件分类标准中要执行的更改,这些更改可以减轻异质性并提高预测的可靠性。改进建议包括区分结构缺陷代码和功能缺陷代码,定义更适合于劣化建模的新条件度量,以及注册详细的缺陷代码以区分不同的故障机制。

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