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首页> 外文期刊>Powder Technology: An International Journal on the Science and Technology of Wet and Dry Particulate Systems >Recognition of the flow regimes in the spouted bed based on fuzzy c-means clustering
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Recognition of the flow regimes in the spouted bed based on fuzzy c-means clustering

机译:基于模糊c均值聚类的喷动床流态识别

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Hilbert-Huang transformation has been applied to extract eigenvectors from the pressure fluctuation signals in the spouted bed. According on these eigenvectors, the flow regimes in the spouted bed could be classified into 4 clusters including 'packed bed', 'stable spouting', 'bubbling fluidized bed' and 'slugging bed' by chaos optimized fuzzy c-means clustering algorithm. The Elman neural network was used to recognize these four flow regimes, and the parameters in the Elman neural network were optimized by adaptive fuzzy particle swarm optimization algorithm. The recognition accuracies of 'packed bed', 'stable spouting', 'bubbling fluidized bed' and 'slugging bed' can reach 85%, 90%, 85% and 80% respectively.
机译:希尔伯特-黄(Hilbert-Huang)变换已应用于从喷床中的压力波动信号中提取特征向量。根据这些特征向量,通过混沌优化的模糊c均值聚类算法,可将喷动床中的流态分为4类,包括“堆积床”,“稳定喷动”,“鼓泡流化床”和“弹床”。用Elman神经网络识别这四个流态,并通过自适应模糊粒子群优化算法对Elman神经网络中的参数进行优化。 “填充床”,“稳定喷射”,“鼓泡流化床”和“击打床”的识别准确率分别可以达到85%,90%,85%和80%。

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