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Flow regime recognition in spouted bed based on recurrence plot method

机译:基于递归图法的喷水床流态识别

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摘要

Recurrence plot and recurrence quantification analysis was applied into the analysis of the pressure fluctuation signals in spouted bed, and some parameters including recurrence rate, determinism, laminarity, averaged diagonal line length, trapping time and entropy were extracted from recurrence plots. Based on these characteristic parameters, least square support vector machine was applied to recognize the flow regimes, and parameters in least square support vector machine were optimized by adaptive genetic optimization algorithm. The recognition accuracies of packed bed, stable spouting, bubbly fluidized bed and slugging bed could reach 85%, 85%, 80% and 90% respectively.
机译:将递归图和递归量化分析应用于喷涌床压力波动信号的分析中,并从递归图中提取了一些参数,包括递归率,确定性,层流度,平均对角线长度,捕获时间和熵。基于这些特征参数,应用最小二乘支持向量机识别流态,并通过自适应遗传优化算法对最小二乘支持向量机进行参数优化。填料床,稳定的出水口,气泡流化床和击打床的识别准确率分别达到85%,85%,80%和90%。

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