Neural network and support vector machine predictive control of tert-amyl methyl ether reactive distillation column

N. Sharma, Kailash Singh
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引用次数: 15

Abstract

An algorithm of model predictive control based on artificial neural network and least-square support vector machine method is presented for a class of industrial process with strong nonlinearity such as tert-amyl methyl ether (TAME). Integral constant is added to improve the performance of the controller. In the present work, two different control methodologies neural network predictive control (NNPC) and support vector machine-based predictive control (SVMPC) are implemented and compared with a conventional proportional-integral-derivative (PID) control methodology to a TAME reactive distillation column. The simulation result shows that both NNPC and SVMPC gives better control performance than PID for set-point change as well as for load change of±10% in methanol feed flow rate and molar ratio of methanol to isoamylene in reactor effluent feed.
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叔戊基甲基醚反应精馏塔的神经网络与支持向量机预测控制
针对叔戊基甲基醚(TAME)等一类非线性较强的工业过程,提出了一种基于人工神经网络和最小二乘支持向量机的模型预测控制算法。为了提高控制器的性能,增加了积分常数。本文采用神经网络预测控制(NNPC)和基于支持向量机的预测控制(SVMPC)两种不同的控制方法对TAME反应精馏塔进行控制,并与传统的比例-积分-导数(PID)控制方法进行了比较。仿真结果表明,对于甲醇进料流量和反应器出水甲醇与异戊烯摩尔比±10%的负荷变化,NNPC和SVMPC的控制性能均优于PID。
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