Vertical-Downward Two-Phase Flow Regime Identification by Probabilistic Neural Network (PNN) and Nonlinear Support Vector Machine (SVM)

Wenyi Zhong, S. Qiao, Hao Sijia, Xupeng Li, Sichao Tan
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Abstract

The present study proposes a new feature extraction method based on non-stationary conductivity probe signals. Two types of discriminative network models, i.e., the probabilistic neural network (PNN) and nonlinear support vector machine (SVM), are established for flow regime identification using small sample sets. The eigenvectors are composed of 16 feature quantities obtained by wavelet packet decomposition (WPD) and 8 feature quantities in the time-domain derived from the reconstructed low-frequency signals. The 8 features include maximum, minimum, standard deviation, arithmetic mean, kurtosis, peak factor, impulse factor and margin factor. The signals are normalized based on features rather than samples before flow regime identification. In the current study, WPD results show that the conductivity probe signals in two-phase flow are mostly in low frequency. The identification accuracy of the nonlinear SVM is 90.47%, which is better than 83.33% by the PNN method. This study verifies the superiority of nonlinear SVM in solving small samples and nonlinear flow regime classification problems. However, the accuracy of flow regime identification near flow regime transitional boundaries still remains questionable and needs further improvement.
基于概率神经网络(PNN)和非线性支持向量机(SVM)的垂直向下两相流型识别
本研究提出了一种基于非平稳电导率探头信号的特征提取方法。建立了两种判别网络模型,即概率神经网络(PNN)和非线性支持向量机(SVM),用于小样本流型识别。特征向量由小波包分解(WPD)得到的16个特征量和重构低频信号得到的8个时域特征量组成。这8个特征包括最大值、最小值、标准差、算术平均值、峰度、峰值因子、脉冲因子和裕度因子。在流态识别之前,信号是基于特征而不是样本进行归一化的。在目前的研究中,WPD结果表明,两相流中电导率探头信号多为低频信号。非线性支持向量机的识别准确率为90.47%,优于PNN方法的83.33%。该研究验证了非线性支持向量机在解决小样本和非线性流型分类问题方面的优越性。然而,流型过渡边界附近流型识别的准确性仍然存在问题,需要进一步改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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