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Process Optimisation Based on Large Databases of Routinely Monitored Industrial Process Data

机译:基于大型常规监控工业过程数据数据库的过程优化

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摘要

Huge amounts of data are routinely logged and stored during the monitoring of biotechnological production processes.A concept is described to extract and analyse the information these data contain and to subsequently apply it for process improvement.In total,roughly 100,000 time series of raw and derived signals which stemmed from 173 high-cell-density processes with recombinant microorganisms at 50 m~3 scale (working volume) were processed.As is often the case,no mathematical process models were readily available and therefore data-driven,computer-intensive methods were applied.These endeavours helped to stimulate a change in manufacturing strategy,which in turn has led to an increase in the final product titre of 26% on average.
机译:在监测生物技术生产过程中,通常会记录和存储大量数据。描述了一种概念来提取和分析这些数据包含的信息,然后将其应用于过程改进。总共大约有100,000个原始和衍生时间序列处理了来自173个高细胞密度过程的信号,这些过程来自50 m〜3规模(工作量)的重组微生物。通常情况下,没有数学过程模型可用,因此需要数据驱动的计算机密集型方法这些努力有助于刺激制造策略的改变,进而使最终产品的效价平均提高了26%。

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