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Data-Driven Dynamic Modeling of the Acetylene Hydrogenation Process based on Nonlinear Slow Feature Analysis

机译:基于非线性慢特征分析的乙炔加氢过程数据驱动动态建模

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The accuracy of process model has a significant impact on control and optimization. However, for complex time-variant systems, the traditional steady state modeling method is generally not effective on dynamic process. In this paper, a data-driven dynamic modeling method based on nonlinear slow feature analysis (SFA) is proposed to reduce the effect of deterioration with age, such as catalyst deactivation. Variables obtained by known mechanisms are used to consider nonlinear relationships between process variables, then, the SFA is executed to extract slowly changing characteristics, and finally, slow features predict model is constructed. The method is applied to the industrial acetylene hydrogenation reaction process, and it can be confirmed that the proposed method enables models to predict response accurately.
机译:过程模型的准确性对控制和优化有重大影响。但是,对于复杂的时变系统,传统的稳态建模方法通常对动态过程无效。本文提出了一种基于非线性慢特征分析(SFA)的数据驱动的动态建模方法,以减少随着时间的推移退化的影响,例如催化剂失活。通过已知机制获得的变量用于考虑过程变量之间的非线性关系,然后执行SFA提取缓慢变化的特征,最后构建慢特征预测模型。该方法应用于工业乙炔加氢反应过程中,可以证实该方法使模型能够准确预测反应。

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