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Research on flow regime identification of gas-liquid two-phase flow based on EMD-AR models and CHMM

机译:基于EMD-AR模型和CHMM的气液两相流流态识别研究

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In view of the non-stationary and nonlinear characteristics of conductance fluctuating signals from gas-liquid two-phase flow, while considering that the neural network has slow convergence in training process and is easy to fall into local minimum, a novel method applied to identify flow regimes was presented in this paper. Firstly, conductance fluctuating signals measured by conductance probes were processed through empirical mode decomposition (EMD), and then a few of stable intrinsic mode functions (IMF) could be obtained. Further several IMF components which contain main information of flow patterns were selected and normalized, and with regard to these IMF components AR models were constructed respectively. Thus, several main auto-regressive (AR) parameters from AR models were input into the continuous hidden Markov models (CHMMs) with different states as feature vectors, and the trained CHMMs were used to identify flow regimes. The results showed that this method has higher discrimination and is simpler and more effective when compared with RBF neural network.
机译:鉴于气液两相流电导波动信号的非平稳和非线性特性,考虑到神经网络在训练过程中收敛速度慢,容易陷入局部最小值,提出了一种新的辨识方法。本文介绍了流态。首先,通过经验模态分解(EMD)对电导探针测得的电导波动信号进行处理,然后得到一些稳定的内在模态函数(IMF)。进一步选择并归一化了包含流动模式主要信息的几个IMF组件,并针对这些IMF组件分别构建了AR模型。因此,将来自AR模型的几个主要自回归(AR)参数输入到具有不同状态作为特征向量的连续隐马尔可夫模型(CHMM)中,并使用经过训练的CHMM来识别流态。结果表明,与RBF神经网络相比,该方法具有更高的判别力,更简单,更有效。

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