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神经网络技术在试验精馏塔控制中的应用
引用本文:袁荣华,王毅,陈春刚.神经网络技术在试验精馏塔控制中的应用[J].西安交通大学学报,2002,36(9):987-990.
作者姓名:袁荣华  王毅  陈春刚
作者单位:西安交通大学环境与化学工程学院,710049,西安
摘    要:为了预测精馏塔底部产品的成分,建立了4层前馈神经网络结构,作为动态系统的正向模型,并采用BP学习算法对神经网络进行了训练;建立了动态系统的神经网络逆模型,作为系统控制器;采用神经网络内模控制结构,根据精馏塔第2级的温度,对底部产品成分进行控制,试验表明,神经网络法与气相层析法相比,能够以任意精度逼近任意非线性映射,更快地提供成品估算值,使控制系统更及时地采取措施,改善控制效果。

关 键 词:试验精馏塔控制  神经网络  过程控制  BP学习算法  化工过程  正向模型  内模控制
文章编号:0253-987X(2002)09-0987-04
修稿时间:2001年12月14

Application of Neural Networks Technique in Tentative Distillation Tower Control
Yuan Ronghua,Wang Yi,Chen Chungang.Application of Neural Networks Technique in Tentative Distillation Tower Control[J].Journal of Xi'an Jiaotong University,2002,36(9):987-990.
Authors:Yuan Ronghua  Wang Yi  Chen Chungang
Abstract:In order to forecast the product composition in bottom of the distillation tower, a four layers multi layer perceptron (MLP) neural network is set up. The neural network is the positive orientation model of dynamic system predicting the product composition. Back propagation algorithm is introduced to neural network train.The contrary model of neural network of the dynamic system is established as a controller. Applying the neural network inner model control construction, the product composition in bottom is controlled according to the second degree temperature of the distillation tower. Experiment shows that the neural network can approach discretional nonlinear mapping with freewill precision such that sooner provide the estimation of product composition than the meteorology analysis, and can make the control system react in time so as to improve the control effect.
Keywords:neural network  distillation tower  process control  modeling
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