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Modeling the Physical Properties of Gamma Alumina Catalyst Carrier Based on an Artificial Neural Network

机译:基于人工神经网络的γ-氧化铝催化剂载体物理性能建模

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摘要

Porous γ-alumina is widely used as a catalyst carrier due to its chemical properties. These properties are strongly correlated with the physical properties of the material, such as porosity, density, shrinkage, and surface area. This study presents a technique that is less time consuming than other techniques to predict the values of the above-mentioned physical properties of porous γ-alumina via an artificial neural network (ANN) numerical model. The experimental data that was implemented was determined based on 30 samples that varied in terms of sintering temperature, yeast concentration, and socking time. Of the 30 experimental samples, 25 samples were used for training purposes, while the other five samples were used for the execution of the experimental procedure. The results showed that the prediction and experimental data were in good agreement, and it was concluded that the proposed model is proficient at providing high accuracy estimation data derived from any complex analytical equation.
机译:多孔γ-氧化铝由于其化学性质而被广泛用作催化剂载体。这些特性与材料的物理特性(例如孔隙率,密度,收缩率和表面积)密切相关。这项研究提出了一种比其他通过人工神经网络(ANN)数值模型预测多孔γ-氧化铝的上述物理性能值的技术更省时的技术。实施的实验数据是根据30个样品确定的,这些样品在烧结温度,酵母浓度和缩短时间方面有所不同。在30个实验样本中,有25个样本用于训练目的,而其他五个样本则用于执行实验程序。结果表明,该预测模型与实验数据吻合良好,结论是该模型能够很好地提供从任何复杂解析方程推导出的高精度估计数据。

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