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Modeling of Chemical Plant's Rectifying Towers Using Artificial Neural Networks

机译:用人工神经网络建模矫正塔的矫正塔

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An artificial neural network based modeling method of a chemical plant's rectifying towers is presented in this paper. There are many approaches on chemical plant modeling. Some of them use neural networks to model some part of chemical plants or processes. This paper also tries to model a component of chemical plants. Standard multilayer perceptron (MLP) and back-propagation (BP) learning algorithm are used in this study. Using actual data obtained from real operation of rectifying towers MLP is trained at first and then tested for real data not used for training. Experimental results for two O2 production increase cases, 3000nm3/h and 5000nm3/h, NN based modeling shows that the model mimics well actual rectifying towers. In the experiments, 22 inputs are selected as inputs and 5 outputs are selected as outs to model rectifying towers.
机译:本文提出了一种化学厂精馏塔的基于人工神经网络的建模方法。化工厂建模有许多方法。其中一些使用神经网络来模拟化学植物或过程的某些部分。本文还试图模拟化学植物的一部分。本研究使用标准多层erceptron(MLP)和反向传播(BP)学习算法。使用从整流塔MLP的实际操作获得的实际数据首先培训,然后测试用于不用于训练的真实数据。实验结果对于两个O2生产增加案例,3000nm3 / h和5000nm3 / h,NN基础建模表明,模型模仿实际整流塔。在实验中,选择22个输入作为输入,选择5个输出,以模拟整流塔。

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