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Analysis and Comparison of Recurrent Neural Networks for the Identification of a Pilot Plant Distillation Column

机译:递归神经网络识别中试蒸馏塔的分析与比较

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摘要

In this paper we develop neural network-based models to estimate the top and bottom product composition in a pilot plant distillation column. We study and compare the performance of several recurrent neural network architectures, namely the multiplayer Neural Network in Parallel-configuraiton (MLNP), the Jordan Sequential Neural network (JSNN), the Elman Recurrent Neural Network (ELNN), the Diagonal Recurrent Neural Network DRNN and the State Predictor Neural Network (SPNN). The models obtained can produce multi-step-ahead predictions, and therefore can be considered an alternative for on-line composition analyzers. We find that the JSNN-based model gives worse results with respect to the other models, when used in the identification of the distillation process under consideration. This may be due to structural limitations of networks of the JSNN type.
机译:在本文中,我们开发了基于神经网络的模型来估算中试装置蒸馏塔中顶部和底部产物的组成。我们研究并比较了几种递归神经网络体系结构的性能,即并行配置的多人神经网络(MLNP),约旦顺序神经网络(JSNN),埃尔曼递归神经网络(ELNN),对角递归神经网络DRNN状态预测器神经网络(SPNN)。获得的模型可以产生多步提前预测,因此可以被认为是在线成分分析仪的替代方案。我们发现,当用于考虑中的蒸馏过程的识别时,基于JSNN的模型给出的结果比其他模型差。这可能是由于JSNN类型的网络的结构限制。

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