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Cause and effect oriented sewer degradation evaluation to support scheduled inspection planning

机译:面向因果的下水道退化评估,以支持计划的检查计划

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Managing the subsurface urban infrastructure, while facing limited budgets, is one of the main challenges wastewater utilities currently face. In this context targeted planning of inspection and maintenance measures plays a crucial role. This paper introduces a cause and effect oriented sewer degradation evaluation approach to support decisions on inspection frequencies and priorities. Therefore, the application of logistic regression models, to predict the probability of failure categories as an alternative to the prediction of sewer condition classes, was introduced. We assume that analysing the negative effects resulting from different failure categories in extension to a condition class-based planning approach offers new possibilities for targeted inspection planning. In addition, a cross validation process was described to allow for a more accurate prediction of sewer degradation. The described approach was applied to an Austrian sewer system. The results show that the failure category-based regression models perform better than the conventional condition class-oriented models. The results of the failure category predictions are presented with respect to negative effects the failure may have on the hydraulic performance of the system. Finally, suggestions are given for how this performance-oriented sewer section evaluation can support scheduled inspection planning.
机译:在预算有限的情况下,管理地下城市基础设施是污水处理厂当前面临的主要挑战之一。在这种情况下,有针对性的检查和维护措施计划起着至关重要的作用。本文介绍了一种基于因果关系的下水道退化评估方法,以支持有关检查频率和优先级的决策。因此,介绍了逻辑回归模型的应用,以预测故障类别的可能性,以替代下水道状况类别的预测。我们假设分析由于扩展到基于条件类别的计划方法而导致的不同故障类别所带来的负面影响,为目标检查计划提供了新的可能性。另外,描述了交叉验证过程以允许更准确地预测下水道退化。所描述的方法被应用于奥地利的下水道系统。结果表明,基于故障类别的回归模型的性能优于传统的面向条件类的模型。针对故障可能对系统的液压性能产生的负面影响,给出了故障类别预测的结果。最后,针对这种以性能为导向的下水道评估如何支持计划的检查计划提出了建议。

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