Identification of Ethane-Ethylene Distillation Column Using Neural Network and ANFIS

E. Abdul Jaleel, K. Aparna
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引用次数: 9

Abstract

In this work a non linear multiple input multiple output model for binary ethane-ethylene distillation column is derived. Identification is carried out on nonlinear auto regressive with exogenous inputs (NARX) structure based neural network (using both Steepest Descent algorithm and Levenberg-Marquardt algorithm) and NARX based ANFIS. Data used for identification is obtained from Daisy database. Ratio between reboiler duty and feed flow, ratio between reflux rate and feed flow, ratio between distillate and feed flow, input ethane composition and top pressure were used as input variables while top ethane composition, bottom ethylene composition and differential pressure between top and bottom were used as output variables. In this work a new method for identification of distillation column using NARX based ANFIS is proposed. Result showed neural network model and ANFIS model was able to capture nonlinear dynamic behavior of the distillation column. Results were compared with statistical criterion (Correlation Coefficient and Root Mean Square Error) for each of the neural network model and ANFIS model to understand which model performs better. Considering the results it is obvious that NARX based ANFIS model is more accurate with less number of iteration.
基于神经网络和ANFIS的乙烷-乙烯精馏塔辨识
本文建立了乙烷-乙烯二元精馏塔的非线性多输入多输出模型。对基于非线性自回归外源输入(NARX)结构的神经网络(同时使用最陡下降算法和Levenberg-Marquardt算法)和基于NARX的ANFIS进行辨识。用于标识的数据来自Daisy数据库。再沸器负荷与进料流量比、回流率与进料流量比、馏分与进料流量比、输入乙烷组分和顶压为输入变量,输出变量为顶乙烷组分、底乙烷组分和顶、底压差。本文提出了一种基于NARX的ANFIS识别精馏塔的新方法。结果表明,神经网络模型和ANFIS模型能较好地反映精馏塔的非线性动态行为。将结果与各神经网络模型和ANFIS模型的统计准则(相关系数和均方根误差)进行比较,以了解哪个模型表现更好。结果表明,基于NARX的ANFIS模型在迭代次数较少的情况下精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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