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Pipe Break Rate Assessment While Considering Physical and Operational Factors: A Methodology based on Global Positioning System and Data-Driven Techniques

机译:管道休息率评估在考虑物理和运营因素的同时:基于全球定位系统的方法和数据驱动技术

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An accurate prediction of pipes failure rate plays a substantial role in the management of Water Distribution Networks (WDNs). In this study, a field study was conducted to register pipes break and relevant causes in the WDN of Yazd City, Iran. In this way, 851 water pipes were incepted and localized by the Global Positioning System (GPS) apparatus. Then, 1033 failure cases were reported in the eight zones of understudy WDN during March-December 2014. Pipes break rate (BRP) was calculated using the depth of pipe installation (h(P)), number of failures (N-P), the pressure of water pipes in operation (P), and age of pipe (A(P)). After completing a pipe break database, robust Artificial Intelligence models, namely Multivariate Adaptive Regression Spline (MARS), Gene-Expression Programming (GEP), and M5 Model Tree were employed to extract precise formulation for the pipes break rate estimation. Results of the proposed relationships demonstrated that the MARS model with Coefficient of Correlation (R) of 0.981 and Root Mean Square Error (RMSE) of 0.544 provided more satisfying efficiency than the M5 model (R = 0.888 and RMSE = 1.096). Furthermore, statistical results indicated that MARS and GEP models had comparatively at the same accuracy level. Explicit equations by Artificial Intelligence (AI) models were satisfactorily comparable with those obtained by literature review in terms of various conditions: physical, operational, and environmental factors and complexity of AI models. Through a probabilistic framework for the pipes break rate, the results of first-order reliability analysis indicated that the MARS technique had a highly satisfying performance when MARS-extracted-equation was assigned as a limit state function.
机译:准确预测管道故障率在水分配网络(WDNS)的管理中起着重要作用。在这项研究中,进行了一个田间研究,以登记伊朗亚兹德市WDN的管道休息和相关原因。以这种方式,通过全球定位系统(GPS)设备剥离和定位851个水管。然后,在2014年3月 - 12月期间,在八个区内报告了1033个破坏案件。使用管道安装深度(H(P)),故障数(NP),压力(NP)数量计算,压力(NP),压力(NP)的八个区域,计算了1033年在操作(P)和管道年龄(a(p))中的水管。在完成管道中断数据库之后,采用强大的人工智能模型,即多变量自适应回归花键(MARS),基因表达编程(GEP)和M5模型树以提取管道断裂速率估计的精确配方。所提出的关系的结果证明,具有0.981的相关系数(R)和0.544的根均线误差(RMSE)的MARS模型提供比M5模型更满意的效率(R = 0.888和RMSE = 1.096)。此外,统计结果表明火星和GEP模型相对相同的精度水平。人工智能(AI)模型的显式方程与各种条件的文献审查所获得的模型令人满意地媲美:物理,运营和环境因素和AI模型的复杂性。通过用于管道断裂率的概率框架,一阶可靠性分析的结果表明,当MARS提取的方程被分配为极限状态函数时,MARS技术具有高度令人满意的性能。

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