Application of Artificial Neural Network to predict phosphoric acid slurry viscosity

Ahmed Bichri, Afaf Saaidi, S. Abderafi
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Abstract

At the level of the attack unit of the phosphoric acid production process, the control and monitoring of the dynamic viscosity of phosphoric acid slurry is crucial to understand its rheological behavior. This information contributes to the resolution of problems that may be encountered in the flow. The objective of this work is to obtain a reliable artificial neural network model to predict this rheological property. First, experimental data of phosphoric acid slurry are analyzed. The dataset is composed of 468 samples with three explanatory variables namely: temperature, shear rate and solid content and a target variable which is dynamic viscosity of the phosphoric acid slurry. Results have shown that solid content has the greatest effect on the dynamic viscosity of the slurry, followed by shear rate and then comes temperature. Then, a neural network model with the topology (3-5-1) have been developed and have shown accurate predictions of the slurry viscosity.
人工神经网络在磷酸浆粘度预测中的应用
在磷酸生产过程的攻击单元层面,对磷酸浆体动态粘度的控制和监测是了解其流变行为的关键。这些信息有助于解决流中可能遇到的问题。本工作的目的是获得一个可靠的人工神经网络模型来预测这种流变性能。首先,对磷酸料浆的实验数据进行了分析。该数据集由468个样品组成,有三个解释变量:温度、剪切速率和固含量,目标变量为磷酸料浆的动态粘度。结果表明:固含量对料浆动态粘度的影响最大,其次是剪切速率,其次是温度;在此基础上,建立了拓扑结构为(3-5-1)的神经网络模型,并对浆料粘度进行了准确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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