利用实时传感器数据分析进行地面管道泄漏检测

IF 4.8 Q2 ENERGY & FUELS Journal of Pipeline Science and Engineering Pub Date : 2023-06-01 DOI:10.1016/j.jpse.2022.100108
Francis Idachaba, Olusegun Tomomewo
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引用次数: 0

摘要

最常见类型的泄漏检测系统(LDS)设计用于检测产生足够压力变化的泄漏,该压力变化可以在入口或出口传感器处检测到。然而,低压泄漏在远离入口和出口的位置产生的压力变化在到达这些传感器之前就已经消散。因此,在检测到这些泄漏之前,这些泄漏可能会持续数周。这项工作开发了一种泄漏检测结构,该结构包括安装在管段中间的压力传感器。发现该传感器对远离入口和出口的泄漏引起的压力变化更敏感,这是因为即使在入口或出口处泄漏压力变化已降至零时,中点处的泄漏压力变化也更高。该工作还开发了一个泄漏检测即服务(LDaaS)平台,该平台利用本研究开发的泄漏检测算法以及入口和中点传感器的压力值来检测实时管道泄漏。中点传感器采用基于异常的传输协议,能够延长传感器的电池寿命。操作员可以通过安装中点传感器并将入口和中点压力值传输到平台来订阅泄漏检测服务。该平台将实时监测管道,并检测传统LDS通常会错过的高压和低压泄漏。
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Surface pipeline leak detection using realtime sensor data analysis

The most common type of Leak Detection System (LDS) is designed to detect leaks that generate a sufficient pressure variation which can be detected at either the inlet or the outlet sensors. However, the pressure variation from low-pressure leaks at locations far away from the inlet and outlet is dissipated before they arrive at these sensors. Thus, these leaks can continue for weeks before they are detected. This work developed a leak detection architecture which comprised of a pressure sensor installed in the middle of the pipeline segment. This sensor was found to be more sensitive to leak-induced pressure variations from leaks far away from the inlet and outlet and this was because leak-induced pressure variation was higher at the midpoint even when it had diminished to zero at the inlet or outlet. The work also developed a Leak Detection as a Service (LDaaS) platform, which utilizes the leak detection algorithm developed from this research and pressure values from the inlet and midpoint sensor to detect real-time pipeline leaks. The midpoint sensor utilizes an exception-based transmission protocol capable of extending the sensor's battery life. Operators can subscribe to the Leak Detection service by installing the midpoint sensor and transmitting the inlet and the midpoint pressure values to the platform. This platform will monitor the pipeline in real-time and detect both the high-pressure and low-pressure leaks which would have ordinarily been missed by the traditional LDSs.

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CiteScore
7.50
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0.00%
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