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首页> 外文期刊>Brazilian journal of chemical engineering >CONTROL PROPOSAL FOR A HIGH PURITY COLUMN BASED ON THE SEPARATION OF VARIABLES BY THE INDEPENDENT COMPONENT ANALYSIS METHOD
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CONTROL PROPOSAL FOR A HIGH PURITY COLUMN BASED ON THE SEPARATION OF VARIABLES BY THE INDEPENDENT COMPONENT ANALYSIS METHOD

机译:基于独立分量分析法分离变量的高纯柱控制方案

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Many industries are complex when it comes to operation mode. In order to reduce the problems related to strong coupling in these processes, the search for the incorporation of artificial intelligence devices has shown an increasing trend in recent years. Due to this complexity and control in multivariable processes, diagnosis and fault monitoring in the processes have become increasingly difficult. Therefore, the application of these devices has achieved satisfactory results regarding the procedures performed with human operators. Independent Component Analysis (ICA) is a signal separation technique that is based on the use of higher order statistics to estimate each of the unknown sources, through observation of various mixtures generated from these sources. Although there are recent works on using the ICA in industrial processes, few studies have been made in cases involving distillation columns. This paper proposes a control strategy based on the ICA technique, which makes the control loops decoupled and hence the performance easier. Compared to the conventional method, the technique provided a great improvement in control performance. Control structures were implemented in Simulink/Matlab ?? in communication with a 1,2-dichloroethane (1,2-EDC) plant simulated in Aspen Plus Dynamics TM .
机译:操作模式涉及许多行业。为了减少与这些过程中的强耦合有关的问题,近年来,寻求并入人工智能设备的趋势正在增加。由于这种复杂性和多变量过程中的控制,过程中的诊断和故障监视变得越来越困难。因此,这些设备的应用在与人工操作者一起执行的程序方面已经获得令人满意的结果。独立成分分析(ICA)是一种信号分离技术,其基础是使用高阶统计量,通过观察从这些来源产生的各种混合物来估计每个未知来源。尽管最近有关于在工业过程中使用ICA的工作,但在涉及蒸馏塔的案例中很少进行研究。本文提出了一种基于ICA技术的控制策略,该策略使控制回路解耦,从而使性能更容易。与常规方法相比,该技术在控制性能上有很大的提高。控制结构在Simulink / Matlab中实现?与Aspen Plus Dynamics TM模拟的1,2-二氯乙烷(1,2-EDC)工厂进行了通讯。

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