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MODELING NONLINEAR DYNAMICS OF CIRCULATING FLUIDIZED BEDS USING NEURAL NETWORKS

机译:基于神经网络的循环流化床非线性动力学建模

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摘要

In the present work, artificial neural networks (ANNs) were proposed to model nonlinear dynamic behaviors of local voidage fluctuations induced by highly turbulent interactions between the gas and solid phases in circulating fluidized beds. The fluctuations of local voidage were measured by using an optical transmittance probe at various axial and radial positions in a circulating fluidized bed with a riser of 0.10 m in inner diameter and 10 m in height. The ANNs trained with experimental time series were applied to make short-term and long-term predictions of dynamic characteristics in the circulating fluidized bed. An early stop approach was adopted to enhance the long-term prediction capability of ANNs. The performance of the trained ANN was evaluated in terms of time-averaged characteristics, power spectra, cycle number and short-term predictability analysis of time series measured and predicted by the model.
机译:在目前的工作中,提出了人工神经网络(ANN)来建模由循环流化床中的气相和固相之间的高度湍流相互作用引起的局部空隙率波动的非线性动力学行为。通过使用光学透射探针在循环流化床中的各种轴向和径向位置处测量局部空隙的波动,循环流化床的内径为0.10 m,高度为10 m。用实验时间序列训练的人工神经网络用于对循环流化床中的动态特性进行短期和长期预测。采用了提前停止的方法来增强人工神经网络的长期预测能力。根据时间平均特性,功率谱,周期数和模型测量和预测的时间序列的短期可预测性分析,评估了训练后的人工神经网络的性能。

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