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Pipe Failure Prediction in Water Distribution Systems Considering Static and Dynamic Factors

机译:考虑静态和动态因素的水分配系统管道故障预测

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Due to high economic, environmental and social costs resulting from pipe bursts in water distribution systems, development of a reliable and accurate prediction model to assess susceptibility of a pipe to failure is of paramount importance. This paper aims to consider the impact of both static and dynamic factors on pipe failure for long and mid-term predications. Length, diameter and age of pipes are the static and weather is the dynamic factors for the prediction model. To improve the performance of the pipe failure prediction models, the K-means clustering approach is considered. Evolutionary Polynomial Regression (EPR) is used as the pipe failure prediction model. To prepare the database for the prediction model, homogenous groups of pipes are created by aggregating individual pipes using their attributes of age, diameter and soil type. The created groups were divided into training and test datasets using the cross-validation technique. The K-means clustering approach is employed to partition the training data into a number of clusters with similar features based on diameter and age of the pipe groups. An EPR model is developed and calibrated for each data cluster. To predict pipe failures for new (unseen) data, the most suitable cluster is identified and the relevant EPR model is used to obtain the most accurate prediction. The proposed approach is demonstrated by application to a water distribution system in the UK. Comparison of the results shows that the cluster-based prediction model is able to significantly reduce the prediction error of pipe failures. Temperature-related factor is identified as the main dynamic factor influencing the t mid-term prediction of pipe failures. An EPR model is employed to predict the annual variation in the number of failures. Midterm and long-term prediction models are developed to present the relationship between number of pipe failures and temperature-related factors for better operation and long term for capital investment respectively.
机译:由于管道分配系统中的管道爆发的高经济,环境和社会成本,开发可靠和准确的预测模型,以评估管道对失效的易感性是至关重要的。本文旨在考虑静态和动态因素对长期和中期预测的管道失效的影响。管道的长度,直径和年龄是静态和天气是预测模型的动态因素。为了提高管道故障预测模型的性能,考虑K-Means聚类方法。进化多项式回归(EPR)用作管道故障预测模型。为了准备预测模型的数据库,通过使用年龄的年龄,直径和土壤类型的属性聚集各个管道来创造管道的均质组。使用交叉验证技术将创建的组分为训练和测试数据集。 K-Means聚类方法用于将训练数据分配给具有基于管道组直径和年龄的类似特征的多个簇。为每个数据集群开发和校准EPR模型。为了预测新的(看不见的)数据的管道故障,识别最合适的群集,并且使用相关的EPR模型来获得最准确的预测。拟议的方法是通过应用于英国的水分配系统。结果表明,基于群集的预测模型能够显着降低管道故障的预测误差。温度相关的因子被鉴定为影响管道故障的T中期预测的主要动态因素。使用EPR模型来预测失败次数的年度变化。开发中期和长期预测模型以呈现管道故障数与温度相关因素之间的关系,以便分别更好地运行和长期进行资本投资。

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