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An artificial neural network as a model for chaotic behavior of a three-phase fluidized bed

机译:人工神经网络作为三相流化床混沌行为的模型

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Non-linear hydrodynamic behavior of bubble motion and that of particle motion in a three-phase fluidized bed have been modeled by resorting to an artificial neural network (ANN). The experiments were performed in a transparent acrylic resin column with an inner diameter of 0.184 m and a height of 2.0 m. Subsequently, the ANN was trained with the time-series data comprising temporal intervals, each of which was the period between two sequential signals of bubbles or particles from an optical transmittance probe. By successively adapting its output to input, the ANN has regenerated time-series data at any superficial gas velocity, U-g, thereby yielding the bifurcation diagrams of both bubble and particle motion. These diagrams exhibit complex behavior over a wide range of U-g, thus demonstrating that the ANN is capable of predicting and modeling non-linear dynamics of three-phase fluidized beds often behaving chaotically. (C) 2001 Elsevier Science Ltd. All rights reserved. [References: 26]
机译:借助人工神经网络(ANN)对气泡运动和颗粒在三相流化床中的非线性流体动力学行为进行了建模。实验在内径为0.184 m,高度为2.0 m的透明丙烯酸树脂柱中进行。随后,用包括时间间隔的时间序列数据对ANN进行训练,每个时间间隔是来自光学透射率探头的两个连续气泡或颗粒信号序列之间的周期。通过连续调整其输出以适应输入,ANN已在任何表观气体速度U-g下重新生成了时间序列数据,从而生成了气泡运动和粒子运动的分叉图。这些图在很宽的U-g范围内表现出复杂的行为,因此证明了ANN能够预测和建模通常表现为混乱的三相流化床的非线性动力学。 (C)2001 Elsevier ScienceLtd。保留所有权利。 [参考:26]

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