基于HHT的数据挖掘方法及其在流型识别中的应用研究

Bin Sun, Yuxiao Zhao
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引用次数: 1

摘要

为了识别气液两相流型,提出了一种基于Hilbert-Huang变换的数据挖掘方法。首先,利用HHT对文丘里管发出的动态压差信号进行处理,计算不同模式下的瞬时频率、瞬时摆幅和用户自定义特征变量;通过对瞬时频率和特性变量的可视化分析,得到了特性变量与流型的关系。然后,根据特征变量的分布,采用数据挖掘方法得到识别流型的模糊关联规则,通过模糊推理和计算得到流型识别结果。内径分别为50mm和40mm的垂直管内气水两相流实验结果表明,该方法能有效识别气泡流、段塞流和搅拌流,识别精度超过94%。该方法原理简单,受实验条件影响小,通用性好,能满足实际流型识别
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining Method Based on HHT and Application Research in Flow Regime Identification
For identifying gas-liquid two-phase flow regime, a kind of data mining method based on Hilbert-Huang transform was put forward. At first, the dynamic differential pressure signal coming from Venturitube was handled by HHT, the instantaneous frequency, instantaneous swing and user-defined characteristic variable of different mode were calculated. The relation of characteristic variable and flow regime was obtained by visual analyzing instantaneous frequency and characteristic variable. Afterwards, according to the distribution of characteristic variable, fuzzy association rules of identifying flow regime was gained adopting data mining method, and the results of flow regime identification were acquire through fuzzy illation and calculation. The experimental results of gas-water two-phase flow in vertical pipes with 50mm and 40mm inner diameter show, this method could identify bubble flow, slug flow and churn flow effectively, and discriminating precision exceed 94%. The method's principle is easy, has few influence by experimental condition and good universality, and it could settle for practical flow regime identification
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