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Flow regime identification of gas/liquid two-phase flow in vertical pipe using RBF neural networks

机译:利用RBF神经网络垂直管道气/液两相流的流量识别

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The gamma ray scattering energy spectrum detected by one detector was presented to distinguish the gas liquid two-phase flow regime of vertical pipe. The simulation geometries of the gamma ray scattering measurement were built using Monte Carlo software Geant4. Computer simulations were carried out with homogeneous flow, annular flow and slug flow. The results show that the scattering energy characters of homogeneous flow and annular flow have significantly different. The scattering spectrum of slug flow is similar to annular flow for long gas slugs and similar to homogeneous flow for short gas slugs. The RBF neural networks were used to predict the flow regime. The results show that the homogeneous flow and annular flow can be completely distinguished and most of the slug flows were recognized by the neural network. It was demonstrated that the method of one detector scattering energy spectrum has the ability to identify the typical gas liquid flow regime of vertical pipe and fit the applications in engineering.
机译:提出了一个检测器检测到的伽马射线散射能谱以区分垂直管的气液两相流动状态。使用Monte Carlo Software Geant4建造了伽马射线散射测量的仿真几何。通过均匀流动,环形流动和块状流来进行计算机仿真。结果表明,均匀流动和环形流动的散射能量具有显着不同。 SLUG流动的散射光谱类似于长气槽的环形流动,并且类似于用于短气块的均匀流动。 RBF神经网络用于预测流动制度。结果表明,均匀流动和环形流动可以完全区分,并且由神经网络识别出大部分块流。结果证明,一个检测器散射能谱的方法具有识别垂直管道的典型气体流动状态并符合工程中的应用。

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