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首页> 外文期刊>Journal of Pipeline Systems Engineering and Practice >Leveraging Hydraulic Cyber-Monitoring Data to Support Primitive Condition Assessment of Water Mains
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Leveraging Hydraulic Cyber-Monitoring Data to Support Primitive Condition Assessment of Water Mains

机译:利用液压网络监测数据来支持水管的原始条件评估

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摘要

Buried water pipelines deteriorate in response to several variables such as pressure transients, corrosion, and pipeline material degradation, among others, that are dynamic processes, and it is therefore difficult to predict the pipeline condition without employing expensive sophisticated technologies. Such technologies are ad hoc in nature and may be worthwhile only for those pipelines that are known to be deteriorated and critical for the reliability of the water distribution network (WDN). Adopting cyber-monitoring methods for pipeline condition assessment, this paper presents and demonstrates a data-driven condition assessment platform that can serve as a primitive indicator of water pipeline conditions. Flow, pressure, and water consumption data collected in a synchronous manner are employed to predict pipeline roughness coefficients and effective internal diameters through a combination of hydraulic modeling, evolutionary algorithms, and neural networks utilizing two popular benchmark WDNs. The accuracy of pipeline condition prediction, measured using mean absolute percentage error (MAPE), ranged between 4.12% and 17.6% based on numerous scenarios in this study. Effective internal diameters were found to be more accurately predictable than pipeline roughness coefficients, and it was also found that pressure monitoring alone can suffice the requirements of the proposed framework in order to produce accurate pipeline condition prediction. It is recommended that future research be conducted over the robustness of this platform for other dynamic parameters such as leakages.
机译:掩埋水管道响应于几种变量,例如压力瞬变,腐蚀和管道材料劣化,其中包括动态过程,因此难以预测管道状态而不采用昂贵的复杂技术。这些技术本质上是临时的,并且仅对于那些已知的管道来说,这对于被劣化并且对于水分配网络(WDN)的可靠性至关重要。采用网络管道条件评估的网络监测方法,本文提供了一种数据驱动条件评估平台,可作为水管道条件的原始指标。采用同步方式收集的流动,压力和耗水数据来预测流水线粗糙度系数,通过液压建模,进化算法和利用两个流行的基准WDN的组合来预测流水线粗糙度系数和有效内径。使用平均绝对百分比误差(MAPE)测量的管道状况预测的准确性,基于本研究的多种情景,范围为4.12%和17.6%。发现有效的内径比管道粗糙度系数更准确地预测,并且还发现单独的压力监测可以足够的要求,以便产生准确的流水线状况预测。建议在该平台的稳健性上对其他动态参数进行诸如泄漏的其他动态参数进行的未来研究。

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