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Data-driven process decomposition and robust online distributed modelling for large-scale processes

机译:大规模流程的数据驱动流程分解和强大的在线分布式建模

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With the increasing attention of networked control, system decomposition and distributed models show significant importance in the implementation of model-based control strategy. In this paper, a data-driven system decomposition and online distributed subsystem modelling algorithm was proposed for large-scale chemical processes. The key controlled variables are first partitioned by affinity propagation clustering algorithm into several clusters. Each cluster can be regarded as a subsystem. Then the inputs of each subsystem are selected by offline canonical correlation analysis between all process variables and its controlled variables. Process decomposition is then realised after the screening of input and output variables. When the system decomposition is finished, the online subsystem modelling can be carried out by recursively block-wise renewing the samples. The proposed algorithm was applied in the Tennessee Eastman process and the validity was verified.
机译:随着网络控制的日益关注,系统分解和分布式模型在基于模型的控制策略的实施中显示出重要的意义。本文针对大规模化工过程,提出了一种数据驱动的系统分解和在线分布式子系统建模算法。首先,通过亲和力传播聚类算法将关键控制变量划分为几个聚类。每个群集都可以视为一个子系统。然后,通过所有过程变量及其受控变量之间的离线典型相关分析,选择每个子系统的输入。然后在筛选输入和输出变量之后实现过程分解。当系统分解完成时,可以通过递归地逐块更新样本来执行在线子系统建模。将该算法应用于田纳西州伊斯曼过程,并验证了其有效性。

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