气泡大小动态的贝叶斯校正应用于CO2气体发酵罐

IF 3.9 3区 工程技术 Q2 ENGINEERING, CHEMICAL Chemical Engineering Research & Design Pub Date : 2025-03-01 Epub Date: 2025-02-03 DOI:10.1016/j.cherd.2025.01.034
Malik Hassanaly, John M. Parra-Alvarez, Mohammad J. Rahimi, Federico Municchi, Hariswaran Sitaraman
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引用次数: 0

摘要

为了加速气态CO2发酵反应器的放大,计算模型需要预测气液传质,这需要捕获气泡大小动态,即气泡破裂和合并。然而,除了空气-水混合物之外,现有模型的适用性仍有待建立。在这里,一种反向建模方法,通过神经网络代理加速,校准在种群平衡建模(PBM)的类方法中使用的分裂和聚结闭合模型。校准是根据在co2 -空气-水共流气泡塔反应器中获得的实验结果进行的。贝叶斯推理用于解释实验数据集中的噪声和模拟结果中的偏差。结果表明,为了准确地捕捉气含率和相间传质,需要将破碎率提高一个数量级。然后在单独的配置中使用推断出的模型参数,并显示这些参数也可以改善气泡大小分布的预测。
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Bayesian calibration of bubble size dynamics applied to CO2 gas fermenters
To accelerate the scale-up of gaseous CO2 fermentation reactors, computational models need to predict gas-to-liquid mass transfer which requires capturing the bubble size dynamics, i.e. bubble breakup and coalescence. However, the applicability of existing models beyond air–water mixtures remains to be established. Here, an inverse modeling approach, accelerated with a neural network surrogate, calibrates the breakup and coalescence closure models, that are used in class methods for population balance modeling (PBM). The calibration is performed based on experimental results obtained in a CO2-air–water-coflowing bubble column reactor. Bayesian inference is used to account for noise in the experimental dataset and bias in the simulation results. To accurately capture gas holdup and interphase mass transfer, the results show that the breakage rate needs to be increased by one order of magnitude. The inferred model parameters are then used on a separate configuration and shown to also improve bubble size distribution predictions.
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来源期刊
Chemical Engineering Research & Design
Chemical Engineering Research & Design 工程技术-工程:化工
CiteScore
6.10
自引率
7.70%
发文量
623
审稿时长
42 days
期刊介绍: ChERD aims to be the principal international journal for publication of high quality, original papers in chemical engineering. Papers showing how research results can be used in chemical engineering design, and accounts of experimental or theoretical research work bringing new perspectives to established principles, highlighting unsolved problems or indicating directions for future research, are particularly welcome. Contributions that deal with new developments in plant or processes and that can be given quantitative expression are encouraged. The journal is especially interested in papers that extend the boundaries of traditional chemical engineering.
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