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Experimental study and nonlinear modelling by artificial neural networks of a distillation column

机译:精馏塔人工神经网络的实验研究和非线性建模

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摘要

Chemical industries are characterised by complex nonlinear processes. A suitable class of Non-linear Auto-Regressive Moving Average with exogenous (NARMAX) models is considered which captures most of the system dynamics. The use of this model should reflect the normal behaviour of the process and be used for developing a cost-effective Fault Detection and Diagnosis (FDD) method. An Artificial Neural Network (ANN) is used to model plant input-output data by means of a NARMAX model. Three statistical criteria are used for the validation of the experimental data. A realistic and complex application as a distillation column is presented in order to illustrate the proposed ideas concerning the dynamics modelling and model reduction. Satisfactory agreement between identified and experimental data is found and results show that the reduced neural model successfully predicts the evolution of the product composition.
机译:化学工业的特征是复杂的非线性过程。考虑使用一类合适的带有外生(NARMAX)模型的非线性自回归移动平均线,它可以捕获大多数系统动态信息。该模型的使用应反映过程的正常行为,并用于开发具有成本效益的故障检测和诊断(FDD)方法。人工神经网络(ANN)用于通过NARMAX模型对工厂的输入输出数据进行建模。三种统计标准用于验证实验数据。提出了一种现实而复杂的应用作为蒸馏塔,以说明有关动力学建模和模型简化的建议思想。发现已鉴定和实验数据之间的令人满意的一致性,结果表明,简化的神经模型成功地预测了产品组成的演变。

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