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Hybrid neural network first-principles approach to process modeling.

机译:混合神经网络的第一原理方法用于过程建模。

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A hybrid model for a flotation column is presented which combines a first-principles model with artificial neural networks. The first-principles model is derived by making material balances on both phosphate and silica particles in the slurry phase. Neural networks are used to relate the model parameters with operating variables such as particle size, superficial air velocity, frother concentration, collector and extender concentration, and pH. One-level and two-level hybrid modeling structures are compared and it is shown that the two-level structure offers significant advantages over the other. Finally, a sequential run-to run optimization algorithm is developed which combines the hybrid model with an optimization technique. The algorithm guides the changes in the manipulated variables after each experiment to determine the optimal column conditions. Designed experiments were performed in a lab scale column to generate data for the initial training of the neural networks.
机译:提出了一种浮选塔的混合模型,该模型结合了第一原理模型和人工神经网络。第一性原理模型是通过在浆料相中使磷酸盐和二氧化硅颗粒上的材料达到平衡而得出的。使用神经网络将模型参数与操作变量相关联,例如颗粒大小,表面空气速度,起泡剂浓度,收集剂和增量剂浓度以及pH。比较了一级和二级混合建模结构,结果表明,二级结构比另一级结构具有明显的优势。最后,开发了将混合模型与优化技术相结合的顺序运行优化算法。该算法可在每次实验后指导操纵变量的变化,以确定最佳的色谱柱条件。在实验室规模的列中执行设计的实验,以生成用于神经网络的初始训练的数据。

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