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Using Unfold-PCA for batch-to-batch start-up process understanding and steady-state identification in a sequencing batch reactor

机译:使用展开 - PCA进行批量批量启动过程的批量启动过程,在测序批量反应堆中的理解和稳态识别

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摘要

In chemical and biochemical processes,steady-state models are widely used for process assessment,control and optimisation.In these models,parameter adjustment requires data collected under nearly steady-state conditions.Several approaches have been developed for steady-state identification(SSID)in continuous processes,but no attempt has been made to adapt them to the singularities of batch processes.The main aim of this paper is to propose an automated method based on batch-wise unfolding of the three-way batch process data followed by a principal component analysis(Unfold-PCA)in combination with the methodology of Brown and Rhinehart[2]for SSID.A second goal of this paper is to illustrate how by using Unfold-PCA,process understanding can be gained from the batch-to-batch start-ups and transitions data analysis.The potential of the proposed methodology is illustrated using historical data from a laboratory-scale sequencing batch reactor(SBR)operated for enhanced biological phosphorus removal(EBPR).The results demonstrate that the proposed approach can be efficiently used to detect when the batches reach the steady-state condition,to interpret the overall batch-to-batch process evolution and also to isolate the causes of changes between batches using contribution plots.
机译:在化学和生化过程中,稳态模型广泛用于过程评估,控制和优化。在这些模型中,参数调整需要在几乎稳态的条件下收集的数据。已经开发了稳态识别(SSID)的方法。在连续过程中,没有尝试将它们调整到批量过程的奇数。本文的主要目的是提出基于三元批处理数据之后的三元批处理数据的批量展开的自动化方法组件分析(展开-CCA)与SSID的棕色和RHINEHART [2]的方法组合。本文的第二个目标是说明如何使用展开-CCA,可以从批处理到批处理中获得流程理解启动和转换数据分析。使用来自实验室测量批量反应器(SBR)的历史数据来说明所提出的方法的潜力,用于增强的生物磷R.催乳(EBPR)。结果表明,所提出的方法可以有效地用于检测批次何时达到稳态条件,以解释整体批量到批处理进化以及使用批次之间的变化的原因贡献情节。

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