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Modelling of methanol synthesis in a network of forced unsteady-state ring reactors by artificial neural networks for control purposes

机译:出于控制目的,通过人工神经网络对强迫非稳态环反应堆网络中的甲醇合成进行建模

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摘要

A numerical model based on artificial neural networks (ANN) was developed to simulate the dynamic behaviour of a three reactors network (or ring reactor), with periodic change of the feed position, when low-pressure methanol synthesis is carried out. A multilayer, feedforward, fully connected ANN was designed and the history stack adaptation algorithm was implemented and tested with quite good results both in terms of model identification and learning rates. The influence of the ANN parameters was addressed, leading to simple guidelines for the selection of their values. A detailed model was used to generate the patterns adopted for the learning and testing phases. The simplified model was finalised to develop a model predictive control scheme in order to maximise methanol yield and to fulfil process constraints.
机译:建立了基于人工神经网络(ANN)的数值模型,以模拟在进行低压甲醇合成时,随着进料位置的周期性变化,三个反应器网络(或环形反应器)的动态行为。设计了多层,前馈,全连接的人工神经网络,并实施和测试了历史堆栈自适应算法,无论是在模型识别还是学习率方面,都取得了很好的结果。解决了人工神经网络参数的影响,从而为选择其值提供了简单的指南。使用了详细的模型来生成用于学习和测试阶段的模式。最后确定简化模型,以开发模型预测控制方案,以最大程度地提高甲醇收率并满足工艺要求。

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