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INFLUENCE OF SCALING AND UNFOLDING IN PCA BASED MONITORING OF NUTRIENT REMOVING BATCH PROCESS

机译:标度和展开对基于PCA的养分去除过程的监测

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摘要

The data set of batch biological and biotechnological processes can be organized in a three-way data matrix. In this paper the usefulness of different PCA approaches for monitoring is analyzed. Different ways of unfolding and scaling of data have been applied to a pilot-scale SBR data. PCA is used to reduce the dimensionality and to remove the non-linearity dynamic of the data. Moreover, a new method to select the number of principal components is proposed. Loadings graphics are used to determinate the predominant variables for each one. The results show that whatever model can be applied depending on the goal of the monitoring, however the models implicate possible false alarms or faults omission.
机译:批处理生物和生物技术过程的数据集可以组织为三向数据矩阵。在本文中,分析了不同PCA方法用于监视的有用性。数据的展开和缩放的不同方法已应用于中试规模的SBR数据。 PCA用于减少维数并消除数据的非线性动态。此外,提出了一种选择主成分数的新方法。加载图形用于确定每个变量的主要变量。结果表明,可以根据监控目标应用任何模型,但是这些模型暗示了可能的错误警报或故障遗漏。

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