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首页> 外文期刊>Journal of natural gas science and engineering >Prediction of shockwave location in supersonic nozzle separation using self-organizing map classification and artificial neural network modeling
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Prediction of shockwave location in supersonic nozzle separation using self-organizing map classification and artificial neural network modeling

机译:自组织图分类和人工神经网络建模预测超音速喷嘴分离中的冲击波位置

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One of the novel technologies for natural gas dehydration and natural gas dew-point conditioning is supersonic separation, which has remarkable features, including compact and maintenance-free design. Due to its complex design and the difficulty of experimental analysis, researchers tend to conduct numerical modeling for behavior investigation of the nozzle focusing on shocicwave which is the main phenomena inside the nozzle. The present NN-model outperforms a selection of data and proposes an efficient NN-based algorithm for shockwave position estimation as the key nozzle geometry parameter. Data for the shockwave location was collected from a wide range of results from the literature and then a neural network based self-organizing map was adapted to the dataset. This created a classified dataset and the use of unreal weight and repeated experimental results from different research were avoided. A neural network was employed for modeling the shockwave location through the nozzle using a better quality dataset. Additionally, the one-dimensional inviscid theory was utilized in the recursive approach for comparison to the main proposed model. Simulation results presented in this research reveal the effectiveness of the proposed neural network technique for 'supersonic nozzle modeling and make it possible to determine the shocicwave location from the nozzle pressure boundary conditions. The results showed that the supersonic nozzle separation have capability to be used in both low-pressure applications and high pressure ones. The dimensionless length for shocicwave location is predicted in the range of 0.82-0.92 for the former and 0.72 to 0.95 for the later, depending on pressure recovery ratio. (C) 2016 Elsevier B.V. All rights reserved.
机译:超音速分离是天然气脱水和天然气露点调节的新技术之一,它具有非凡的功能,包括紧凑和免维护的设计。由于其复杂的设计和实验分析的困难,研究人员倾向于对喷嘴的行为进行数值建模,重点是作为喷嘴内部主要现象的短波。当前的NN模型优于数据选择,并提出了一种基于NN的高效算法,用于冲击波位置估计作为关键喷嘴几何参数。冲击波定位的数据是从文献中广泛收集的结果中收集的,然后将基于神经网络的自组织图应用于数据集。这样就创建了一个分类的数据集,避免了使用虚幻的权重和不同研究重复的实验结果。使用了神经网络,使用质量更好的数据集来模拟通过喷嘴的冲击波位置。另外,在递归方法中使用了一维无粘性理论与主要提出的模型进行比较。这项研究中给出的仿真结果揭示了所提出的神经网络技术在“超音速喷嘴建模”中的有效性,并使得从喷嘴压力边界条件确定震波位置成为可能。结果表明,超音速喷嘴分离具有用于低压和高压应用的能力。取决于压力回收率,对前震波定位的无因次长度在前者的预测范围为0.82-0.92,在后者的预测范围为0.72至0.95。 (C)2016 Elsevier B.V.保留所有权利。

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