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Applications of recurrent neural networks in batch reactors. Part I: NARMA modelling of the dynamic behaviour of the heat transfer fluid

机译:递归神经网络在间歇式反应器中的应用。第一部分:NaRma模拟传热流体的动态行为

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摘要

This paper is focused on the development of nonlinear models, using artificial neural networks, able to provide appropriate predictions when acting as process simulators. The dynamic behaviour of the heat transfer fluid temperature in a jacketed chemical reactor has been selected as a case study. Different structures of NARMA (Non-linear ARMA) models have been studied. The experimental results have allowed to carry out a comparison between the different neural approaches and a first-principles model. The best neural results are obtained using a parallel model structure based on a recurrent neural network architecture, which guarantees better dynamic approximations than currently employed neural models. The results suggest that parallel models built up with recurrent networks can be seen as an alternative to phenomenological models for simulating the dynamic behaviour of the heating/cooling circuits which change from batch installation to installation.
机译:本文致力于使用人工神经网络开发非线性模型,当充当过程仿真器时能够提供适当的预测。案例研究选择了夹套化学反应器中传热流体温度的动态行为。已经研究了NARMA(非线性ARMA)模型的不同结构。实验结果允许在不同的神经方法和第一性原理模型之间进行比较。使用基于递归神经网络架构的并行模型结构可获得最佳的神经结果,与当前采用的神经模型相比,该模型保证了更好的动态逼近。结果表明,使用递归网络建立的并行模型可以看作是现象学模型的替代方案,用于模拟加热/冷却回路的动态行为,这种行为随批次的安装而变化。

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  • 作者单位
  • 年度 1997
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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