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Modelling the process of Al(OH)3 crystallization from industrial sodium aluminate solutions using artificial neural networks

机译:使用人工神经网络建模从工业铝酸钠溶液中结晶Al(OH)3的过程

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摘要

This paper presents an attempt to define the non-linear correlation dependence between the degree of decomposition of the aluminate solution, the average diameter of the crystallized gibbsite, the total Na2O content in the obtained alumina and the specific utilization level of the process on the one hand and important input parameters of the process on the other. As input parameters having an influence on the process, the concentration of Na2O (caustic), the caustic ratio and the crystallization ratio, the starting and final temperature of the process, the average diameter of the crystallization seed and the duration of the decomposition process were considered. As the result of measurements of these process parameters and the acquisition of the resulting output parameters of the process, a database with 500 data lines was obtained. To define the correlation dependence, with the aim of predicting the process parameters of the decomposition process of the sodium aluminate solution, the artificial neural network (ANN) methodology was applied.
机译:本文提出了一种尝试来定义铝酸盐溶液的分解程度,结晶三水铝石的平均直径,所获得的氧化铝中的总Na2O含量以及该方法在其中的特定利用率之间的非线性相关性。另一方面,过程的重要输入参数。作为影响工艺的输入参数,Na 2 O(苛性碱)的浓度,苛性比和结晶率,工艺的开始和最终温度,结晶种子的平均直径和分解过程的持续时间为考虑过的。作为这些过程参数的测量结果以及过程的最终输出参数的获取的结果,获得了具有500条数据线的数据库。为了定义相关性,以预测铝酸钠溶液分解过程的过程参数为目的,应用了人工神经网络(ANN)方法。

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