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Predicting water main failures using Bayesian model averaging and survival modelling approach

机译:使用贝叶斯模型平均和生存建模方法预测供水干线故障

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摘要

To develop an effective preventive or proactive repair and replacement action plan, water utilities often rely on water main failure prediction models. However, in predicting the failure of water mains, uncertainty is inherent regardless of the quality and quantity of data used in the model. To improve the understanding of water main failure, a Bayesian framework is developed for predicting the failure of water mains considering uncertainties. In this study, Bayesian model averaging method (BMA) is presented to identify the influential pipe-dependent and time-dependent covariates considering model uncertainties whereas Bayesian Weibull Proportional Hazard Model (BWPHM) is applied to develop the survival curves and to predict the failure rates of water mains. To accredit the proposed framework, it is implemented to predict the failure of cast iron (Cl) and ductile iron (DI) pipes of the water distribution network of the City of Calgary, Alberta, Canada. Results indicate that the predicted 95% uncertainty bounds of the proposed BWPHMs capture effectively the observed breaks for both Cl and DI water mains. Moreover, the performance of the proposed BWPHMs are better compare to the Cox-Proportional Hazard Model (Cox-PHM) for considering Weibull distribution for the baseline hazard function and model uncertainties. (C) 2015 Elsevier Ltd. All rights reserved.
机译:为了制定有效的预防或主动维修和更换行动计划,自来水公司通常依赖于供水主管的故障预测模型。但是,在预测水管故障时,不确定性是固有的,无论模型中使用的数据的质量和数量如何。为了增进对水管故障的理解,开发了一种贝叶斯框架,用于考虑不确定性来预测水管故障。在这项研究中,提出了贝叶斯模型平均法(BMA)来考虑模型不确定性来确定有影响力的管道相关和时间相关协变量,而贝叶斯威布尔比例危害模型(BWPHM)用于建立生存曲线并预测失效率水管。为了对提议的框架进行认证,该框架用于预测加拿大艾伯塔省卡尔加里市供水网络的铸铁(Cl)和球墨铸铁(DI)管道的故障。结果表明,拟议的BWPHM的预测的95%不确定性范围有效地捕获了Cl和DI水管的观测到的破裂。此外,考虑到基线危险函数和模型不确定性的威布尔分布,提出的BWPHMs的性能比Cox比例危害模型(Cox-PHM)更好。 (C)2015 Elsevier Ltd.保留所有权利。

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