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首页> 外文期刊>Chemical Engineering Communications >Artificial neural network model for the flow regime recognition in the drying of guava pieces in the spouted bed
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Artificial neural network model for the flow regime recognition in the drying of guava pieces in the spouted bed

机译:喷出床番烤纱件干燥中流动制度识别的人工神经网络模型

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摘要

In this article, an artificial neural network model (ANN) was developed for the flow regime recognition in the spouted bed dryer. Instabilities and changes were observed in the hydrodynamics of the bed during the drying of guava pieces with deformability and variation in physical properties. Changes in the Archimedes number and Littman parameter directly affected the hydrodynamics of the bed. Experimental data on the variation of the properties of the dried guava pieces were used to obtain the fluid dynamics parameters this was also used as an input data in the ANN model whereas the operating regime of the spouted bed dryer, fixed-,fluidized-,spouted-, and slugging beds were the output model variables. The architecture of the neural network model was selected using the particle swarm optimization algorithm (PSO). The optimized neural model achieved a recognition accuracy of 86% for the fixed and fluidized beds and 99% for the spouted and slugging beds.
机译:在本文中,开发了一种人工神经网络模型(ANN),用于喷出床烘干机中的流动方案识别。 在纬纱件的干燥过程中观察到潜水动力学的稳定性和变化,具有可变形性和物理性质的变化。 Archimedes号码和Littman参数的变化直接影响了床的流体动力学。 关于干燥的番石榴片的性能变化的实验数据用于获得流体动力学参数,这也被用作ANN模型中的输入数据,而喷出床干燥器的操作制度,固定,流化的,则喷出 - 和折叠床是输出模型变量。 使用粒子群优化算法(PSO)选择神经网络模型的架构。 优化的神经模型实现了固定和流化床的识别精度为86%,为喷出和折叠床进行99%。

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