Intelligent identification of the flow regimes of two-component particles in a fluidized bed with the optimized fuzzy c-means clustering algorithm

被引:0
|
作者
Heng Wang
Zhaoping Zhong
Xiaoyi Wang
Feihong Guo
机构
[1] Southeast University,Key Laboratory of Energy Thermal Conversion and Control of Ministry of Education, School of Energy and Environment
[2] Southeast University,Engineering Design & Research Institute
来源
Korean Journal of Chemical Engineering | 2016年 / 33卷
关键词
Fluidization; Flow Regime Identification; Fuzzy C-means Clustering; Two-component Particles; Hilbert-Huang Transform;
D O I
暂无
中图分类号
学科分类号
摘要
Flow regime identification is important in the application of fluidized beds. This paper provides a method for deciding flow regime number by objective criterion. The optimized fuzzy c-means clustering algorithm was used to cluster the flow regime classification of two-component particles in a fluidized bed. The genetic algorithm was applied to optimize the initial center clusters of fuzzy c-means clustering. Hilbert-Huang transform was applied to analyze pressure fluctuation signals and extract the characteristic parameters. Three clusters were found and respectively ascribed to three flow regimes: bubbling bed, slugging bed, and turbulent bed. A multilayer neural network was used to train and test the identification system of the flow regimes. The identification accuracies of bubbling bed, slugging bed, and turbulent bed can reach 91.67%, 92.85%, and 91.30%, respectively.
引用
收藏
页码:1674 / 1680
页数:6
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