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Batch Process Monitoring Based on Multilinear Principal Component Analysis

机译:基于多线性主成分分析的批生产过程监控

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A new batch process monitoring based on Multilinear Principal Component Analysis (MLPCA) is proposed in this paper. In the existing vector-based method on batch process monitoring such as Multiway Principal Component Analysis (MPCA), a batch data is represented as a vector in high-dimensional space. But vectorizing the batch data will lead to large storage requirements and information loss. MLPCA can be used to deal with the three-way data (or tensor) directly instead of performing vectorizing procedure. Hence, MLPCA has some advantages such as low memory and storage requirements for Normal Operation Condition (NOC) model. Furthermore, the MLPCA is able to extract more meaningful information from the batch dataset. The MLPCA monitoring approach is tested with the data from a Reactor of Thermal Anneal (RTA) batch process. Simulation results show that MLPCA early finds the process fault and improves the accuracy of process monitoring compared with MPCA.
机译:提出了一种基于多线性主成分分析(MLPCA)的批处理过程监控方法。在现有的基于矢量的批处理过程监控方法(如多路主成分分析(MPCA))中,批处理数据被表示为高维空间中的矢量。但是矢量化批处理数据将导致大量的存储需求和信息丢失。 MLPCA可以直接用于处理三向数据(或张量),而无需执行矢量化过程。因此,MLPCA具有一些优势,例如正常操作条件(NOC)模型的低内存和存储要求。此外,MLPCA能够从批处理数据集中提取更多有意义的信息。使用来自热退火反应堆(RTA)批处理过程的数据对MLPCA监视方法进行了测试。仿真结果表明,与MPCA相比,MLPCA能够更早地发现过程故障并提高过程监控的准确性。

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