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Observability Analysis of Biochemical Process Models as a Valuable Tool for the Development of Mechanistic Soft Sensors

机译:生化过程模型的可观察性分析作为开发机械软传感器的重要工具

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摘要

By enabling the estimation of difficult-to-measure target variables using available indirect measurements, mechanistic soft sensors have become important tools for various bioprocess monitoring and control scenarios. Despite promising higher process efficiencies and increased process understanding, widespread application of soft sensors has been stalled by uncertainty about the feasibility and reliability of their estimations given present process analytical constraints. Observability analysis can provide an indication of the possibility and reliability of soft sensor estimations by analyzing the structural properties of first-principle (mechanistic) models. In addition, it can provide a criteria for selection of suitable measurement methods with respect to their information content; thereby leading to successful implementation of soft sensors in bioprocess development and manufacturing environments. We demonstrate the utility of observability analysis for two classes of upstream bioprocesses: the processes involving growth and ethanol formation by Saccharomyces cerevisiae and the process of penicillin production by Penicillium chrysogenum. Results obtained from laboratory-scale cultivations in addition to in-silico experiments enable a comparison of theoretical aspects of observability analysis and the real-life performance of soft sensors. By taking the expected error of measurements provided to the soft sensor into account, an innovative scaling approach facilitates a higher degree of comparability of observability results among various measurement configurations and process conditions. (C) 2015 American Institute of Chemical Engineers
机译:通过使用可用的间接测量值来估算难以测量的目标变量,机械式软传感器已成为用于各种生物过程监视和控制方案的重要工具。尽管有前途的更高的过程效率和对过程的了解,但鉴于目前的过程分析限制,软传感器的广泛应用已因不确定其估计的可行性和可靠性而陷入停顿。可观察性分析可以通过分析第一原理(力学)模型的结构特性来提供软传感器估计的可能性和可靠性的指示。此外,它可以为选择适合的测量方法的信息内容提供标准。从而导致软传感器在生物工艺开发和制造环境中的成功实施。我们展示了两类上游生物过程的可观察性分析的实用性:涉及酿酒酵母生长和乙醇形成的过程以及产黄青霉生产青霉素的过程。除了计算机模拟实验以外,从实验室规模的培养获得的结果还可以比较可观察性分析的理论方面和软传感器的实际性能。通过考虑提供给软传感器的预期测量误差,创新的缩放方法有助于在各种测量配置和过程条件之间提高可观察性结果的可比性。 (C)2015美国化学工程师学会

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