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首页> 外文期刊>Journal of Engineering and Technological Sciences >Leak Detection Modeling and Simulation for Oil Pipeline with Artificial Intelligence Method
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Leak Detection Modeling and Simulation for Oil Pipeline with Artificial Intelligence Method

机译:石油管道泄漏检测的人工智能方法建模与仿真

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Leak detection is always interesting research topic, where leak location and leak rate are two pipeline leaking parameters that should be determined accurately to overcome pipe leaking problems. In this research those two parameters are investigated by developing transmission pipeline model and the leak detection model which is developed using Artificial Neural Network. The mathematical approach needs actual leak data to train the leak detection model, however such data could not be obtained from oil fields. Therefore, for training purposes hypothetical data are developed using the transmission pipeline model, by applying various physical configuration of pipeline and applying oil properties correlations to estimate the value of oil density and viscosity. The various leak locations and leak rates are also represented in this model. The prediction of those two leak parameters will be completed until the total error is less than certain value of tolerance, or until iterations level is reached. To recognize the pattern, forward procedure is conducted. The application of this approach produces conclusion that for certain pipeline network configuration, the higher number of iterations will produce accurate result. The number of iterations depend on the leakage rate, the smaller leakage rate, the higher number of iterations are required. The accuracy of this approach is clearly determined by the quality of training data. Therefore, in the preparation of training data the results of pressure drop calculations should be validated by the real measurement of pressure drop along the pipeline. For the accuracy purposes, there are possibility to change the pressure drop and fluid properties correlations, to get the better results. The results of this research are expected to give real contribution for giving an early detection of oil-spill in oil fields.
机译:泄漏检测一直是有趣的研究主题,泄漏位置和泄漏率是两个管道泄漏参数,应准确确定这些参数以克服管道泄漏问题。在本研究中,通过开发传输管道模型和使用人工神经网络开发的泄漏检测模型来研究这两个参数。数学方法需要实际的泄漏数据来训练泄漏检测模型,但是无法从油田获得此类数据。因此,出于训练目的,通过应用输油管道模型,通过应用管道的各种物理配置并应用油属性相关性来估计油密度和粘度的值,来开发假设数据。该模型还表示了各种泄漏位置和泄漏率。这两个泄漏参数的预测将完成,直到总误差小于一定的公差值为止,或者直到达到迭代级别为止。为了识别模式,执行前进程序。该方法的应用得出的结论是,对于某些管道网络配置,较高的迭代次数将产生准确的结果。迭代次数取决于泄漏率,泄漏率越小,需要的迭代次数就越高。这种方法的准确性显然取决于培训数据的质量。因此,在准备训练数据时,应通过实际测量沿管道的压降来验证压降的计算结果。为了准确起见,可以更改压降和流体特性的相关性,以获得更好的结果。这项研究的结果有望为早期发现油田漏油作出真正的贡献。

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