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Local flow regime identification for boiling two-phase flow by BP neural networks approach

机译:BP神经网络方法识别沸腾两相流的局部流态

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The pressure fluctuation signals of the boiling two-phase flow in a upward tube were analyzed by statistical and fractal theory. Five parameters, i. e. the heat flux, standard deviation, Hurst index, correlation dimension and Kolmogorov entropy were obtained and used as the characteristic vector of BP neural network. Results show that the flow regime characteristic vector which was obtained by statistical and fractal parameters could reflect the difference between various flow regimes. The method has the merits such as easy computation and easily quantifying the characteristics of the measured signals.
机译:利用统计和分形理论分析了上升管内沸腾两相流的压力波动信号。五个参数,i。 e。获得了热通量,标准偏差,Hurst指数,相关维数和Kolmogorov熵,并将其用作BP神经网络的特征向量。结果表明,通过统计和分形参数获得的流态特征向量可以反映出不同流态之间的差异。该方法具有诸如容易计算和容易量化所测量信号的特性的优点。

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