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首页> 外文期刊>Computers & Chemical Engineering >Grade transition using dynamic neural networks for an industrial high-pressure ethylene-vinyl acetate (EVA) copolymerization process
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Grade transition using dynamic neural networks for an industrial high-pressure ethylene-vinyl acetate (EVA) copolymerization process

机译:使用动态神经网络进行工业高压乙烯-乙酸乙烯酯(EVA)共聚过程的梯度转变

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摘要

In this paper, estimating of melt index (MI) in an industrial ethylene and vinyl acetate (EVA) copolymerization process will be studied. Three products with their melt indexes ranging from 2.49 to 167.21 are dynamically estimated by an artificial neural networks (ANN) model based on available plant measurements. With this dynamic estimator, a simple Ml controller with only proportional-integral mode can be established for the purpose of grade transition by suitably adjusting the chain modifier feed rate. Simulation results demonstrate that significant reduction in the grade transition time can be gained in comparison with the base strategy by step-changing of the operating recipe. A simple model updating algorithm is also proposed for the adjustment of the predicted MI using infrequent lab measurement to handle plant-model mismatches.
机译:在本文中,将研究工业乙烯和乙酸乙烯酯(EVA)共聚过程中熔体指数(MI)的估算。通过人工神经网络(ANN)模型,根据可用的工厂测量值,动态估算三种熔体指数在2.49至167.21之间的产品。利用该动态估计器,可以通过适当地调节链调节剂的进料速度来建立仅具有比例-积分模式的简单的MI控制器,以用于等级转变。仿真结果表明,与基本策略相比,通过逐步更改操作配方可以显着减少等级转换时间。还提出了一种简单的模型更新算法,用于通过使用不频繁的实验室测量来处理工厂模型失配来调整预测的MI。

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