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首页> 外文期刊>Chemical Product and Process Modeling >First Principle Modeling and Neural Network-Based Empirical Modeling with Experimental Validation of Binary Distillation Column
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First Principle Modeling and Neural Network-Based Empirical Modeling with Experimental Validation of Binary Distillation Column

机译:基于二元蒸馏塔实验验证的第一原理建模和基于神经网络的经验建模

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摘要

To get the better product quality and to decrease the energy consumption of the distillation column, an accurate and suitable nonlinear model is crucial important. In this work, two types of model have been developed for an existing experimental setup of continuous binary distillation column (BDC). First model is a theoretical tray-to-tray binary distillation model for describing the steady-state behavior of composition in response to changes in reflux flows and in reboiler duty. Another model is an artificial neural network (ANN)-based input/output data relationship model. In ANN-based model, temperature of first tray, feed flow rate, and column pressures have been taken in addition to reflux flow rate and reboiler heat duty as inputs to give the more accurate I/O relationship. The comparison of output of ANN model and the equation-based model with the real-time output of the experimental setup of BDC has been given for the validation of developed models.
机译:为了获得更好的产品质量并减少蒸馏塔的能耗,准确而合适的非线性模型至关重要。在这项工作中,已经为连续二元蒸馏塔(BDC)的现有实验装置开发了两种类型的模型。第一个模型是理论上的塔盘到塔盘二元蒸馏模型,用于描述响应于回流流量和再沸器负荷变化的组成的稳态行为。另一个模型是基于人工神经网络(ANN)的输入/输出数据关系模型。在基于ANN的模型中,除回流流量和再沸器热负荷外,还采用了第一塔板温度,进料流量和塔压力作为输入,以提供更准确的I / O关系。将神经网络模型和基于方程的模型的输出与BDC实验装置的实时输出进行了比较,以验证已开发的模型。

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