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Application of Multi-Way Principal Component Analysis on Batch Data

机译:多路主成分分析在批量数据中的应用

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In this paper, we propose the use of Multi-way Principal Component Analysis (MPCA) to classify batch operation data as normal or abnormal. MPCA also helps in isolating the batches having higher noise levels than the nominal conditions and the variables that deviate significantly from the nominal trajectory. Additionally, this paper proposes a novel approach of generating data for building the robust MPCA model based on limited number of batch run data. The paper successfully demonstrates the application of proposed method using data from a milk pasteurization process.
机译:在本文中,我们提出了使用多路主成分分析(MPCA)来将批量操作数据分类为正常或异常。 MPCA还有助于将具有较高噪声水平的批次与标称条件和从标称轨迹显着偏离的变量隔离。此外,本文提出了一种基于有限数量的批量运行数据来创建用于构建鲁棒MPCA模型的数据的新方法。本文成功地展示了使用来自牛奶杀菌过程中的数据的提出方法的应用。

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