基于人工神经网络的精馏过程优化设计

Ahmed Tgarguifa, T. Bounahmidi, S. Fellaou
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引用次数: 0

摘要

蒸馏是化学工业中最常用的分离操作;该工艺的主要缺点是高能量消耗,而不能达到高纯度的生物乙醇。本研究的目的是优化精馏过程的回流比、进料塔位置和塔压等操作条件,以降低操作能耗和成本。采用中心复合设计(CCD)和人工神经网络方法(ANN)结合期望函数进行优化。针对操作能量和成本的最优神经网络配置有一个包含树神经元的隐藏层。建立了两个模型,用于控制和优化精馏过程的操作条件。精馏塔的运行能耗和成本降低了50%左右。
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Optimal Design of the Distillation Process Using the Artificial Neural Networks Method
Distillation is the most used separation operation in chemical industries; the important disadvantage of this process is the high energy consumption without reaching a high level of purity of bioethanol. The objective of this study is to optimize the operating conditions such as the reflux ratio, feeding tray position and column pressure of the distillation process in order to reduce the operating energy consumption and cost. The optimization was performed by the principles of central composite design (CCD) and the Artificial Neural Networks method (ANN) coupled with the desirability function. The optimal neural network configuration for the operating energy and cost has one hidden layer with tree neurons. Two models are developed and used to control and optimize the operating conditions of the distillation process. The operating energy consumption and cost of distillation column were reduced to about 50 %.
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