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Determination and analysis of leak estimation parameters in two-phase flow pipelines using OLGA multiphase software

机译:使用OLGA多相软件的两相流管道泄漏估计参数的测定与分析

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Pipeline leakage incidents have led to serious environmental concerns, prompting the development of various methods to detect leakage in pipelines. Hence, there is a justified need for early leakage detection as well as leakage prediction system. Many of the leak detection techniques are based on computational intelligence techniques such as artificial neural networks, support vector machine, and fuzzy systems. This paper focuses on determining leak detection parameters such as mass flow rate, temperature, and pressure with and without a leak in pipelines evaluated using OLGA multiphase software. An OLGA-based computerized model is used in leak simulation for analyzing inlet and outlet parameters such as mass flow rate, temperature, and pressure over the flow inside the pipeline. The leak sizes were varied from 0% to 50 % leak opening and the inlet and outlet parameters were measured and studied. The pressure and mass flow rates are observed to decrease with increasing leak size, while temperature decreases with leak size until 25 % and later increases. Mass flow rate is observed to be the most important parameter in detecting a leak and localizing it. The maximum percentage of variation in mass flow rate was observed to be 33.6 % for 50 % leak openings, for a single leak, and 32.4 % for multi-leak scenario.
机译:管道泄漏事件导致了严重的环境问题,促使开发各种方法来检测管道泄漏。因此,对早期泄漏检测以及泄漏预测系统存在合理的需求。许多泄漏检测技术基于计算智能技术,例如人工神经网络,支持向量机和模糊系统。本文重点介绍使用OLGA多相软件评估的管道中的质量流量,温度和压力等泄漏检测参数,例如,使用管道评估。基于OLGA的计算机化模型用于泄漏仿真,用于分析入口和出口参数,例如质量流量,温度和流量的流量的压力。泄漏尺寸从0%到50%的泄漏开口变化,并测量入口和出口参数并研究。随着泄漏尺寸的增加,观察到压力和质量流量降低,而温度随着泄漏尺寸而降低,直至25%,后来增加。观察到质量流量是检测泄漏并定位它的最重要参数。对于50%的泄漏开口,液体泄漏的最大变化的最大百分比为33.6%,对于多泄漏场景,32.4%。

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