{"title":"贝叶斯优化法快速确定模拟移动床色谱的操作变量","authors":"Woohyun Jeong , Namjin Jang , Jay H. Lee","doi":"10.1016/j.compchemeng.2024.108872","DOIUrl":null,"url":null,"abstract":"<div><p>The Simulated Moving Bed (SMB) is a continuous chromatographic separation process that operates on the principle of counter-current movement between the solid and liquid phases. Due to periodic switching of feed and product ports across numerous connected columns, adjusting SMB operating variables such as feed and product flow rates and switching time to achieve desired separations is challenging. While equilibrium theory can help narrow the search space, obtaining essential information such as accurate adsorption isotherms is crucial. This requirement, combined with often highly stringent production specifications, makes it challenging to identify even a feasible operating condition, let alone an optimal one. Trial-and-error-based approaches are often impractical as reaching cyclic steady state can be time-consuming, and any waste produced during this period can lead to significant economic losses. While rigorous dynamic models are available, they are computationally intensive and often do not accurately mirror actual process behavior. To address these challenges, the use of Bayesian Optimization (BO) is proposed to sequentially approach optimal SMB operation. Furthermore, it is suggested to employ the simpler True Moving Bed (TMB) model as a prior for the BO, which significantly accelerates convergence. This approach is demonstrated on an SMB process for cresol separation. Initially, the effectiveness of the BO using the TMB model is examined to gain insights into its behavior. Subsequently, we apply BO to the rigorous SMB model, informed by prior knowledge from the TMB model. Our results show that the developed BO framework rapidly converges to the optimal operating parameters that satisfy the purity constraints. We examine the efficiency improvements over various search algorithms and highlight the advantages of using the TMB model as a prior.</p></div>","PeriodicalId":286,"journal":{"name":"Computers & Chemical Engineering","volume":"192 ","pages":"Article 108872"},"PeriodicalIF":3.9000,"publicationDate":"2024-09-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S0098135424002904/pdfft?md5=b35b8203b96305a9afe7ed2b2f470f89&pid=1-s2.0-S0098135424002904-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Bayesian optimization for quick determination of operating variables of simulated moving bed chromatography\",\"authors\":\"Woohyun Jeong , Namjin Jang , Jay H. 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Trial-and-error-based approaches are often impractical as reaching cyclic steady state can be time-consuming, and any waste produced during this period can lead to significant economic losses. While rigorous dynamic models are available, they are computationally intensive and often do not accurately mirror actual process behavior. To address these challenges, the use of Bayesian Optimization (BO) is proposed to sequentially approach optimal SMB operation. Furthermore, it is suggested to employ the simpler True Moving Bed (TMB) model as a prior for the BO, which significantly accelerates convergence. This approach is demonstrated on an SMB process for cresol separation. Initially, the effectiveness of the BO using the TMB model is examined to gain insights into its behavior. Subsequently, we apply BO to the rigorous SMB model, informed by prior knowledge from the TMB model. Our results show that the developed BO framework rapidly converges to the optimal operating parameters that satisfy the purity constraints. 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引用次数: 0
摘要
模拟移动床(SMB)是一种连续色谱分离过程,其工作原理是固相和液相之间的逆流运动。由于进料口和产品口会在多个相连的色谱柱之间周期性切换,因此调整 SMB 的操作变量(如进料和产品流速以及切换时间)以实现理想的分离效果非常具有挑战性。虽然平衡理论可以帮助缩小搜索空间,但获得精确的吸附等温线等基本信息至关重要。这一要求加上通常非常严格的生产规格,使得确定可行的操作条件都具有挑战性,更不用说最佳条件了。基于试错的方法往往不切实际,因为达到周期性稳定状态需要耗费大量时间,而在此期间产生的任何废料都可能导致重大经济损失。虽然有严格的动态模型,但这些模型的计算量很大,而且往往不能准确反映实际的工艺行为。为了应对这些挑战,我们建议使用贝叶斯优化法(BO)来依次优化 SMB 的运行。此外,还建议采用更简单的真实移动床(TMB)模型作为贝叶斯优化的先验模型,这将大大加快收敛速度。这种方法在甲酚分离的 SMB 过程中得到了验证。首先,我们考察了使用 TMB 模型的 BO 的有效性,以深入了解其行为。随后,我们根据 TMB 模型的先验知识,将 BO 应用于严格的 SMB 模型。结果表明,所开发的 BO 框架能迅速收敛到满足纯度约束的最佳运行参数。我们检验了与各种搜索算法相比的效率改进,并强调了使用 TMB 模型作为先验知识的优势。
Bayesian optimization for quick determination of operating variables of simulated moving bed chromatography
The Simulated Moving Bed (SMB) is a continuous chromatographic separation process that operates on the principle of counter-current movement between the solid and liquid phases. Due to periodic switching of feed and product ports across numerous connected columns, adjusting SMB operating variables such as feed and product flow rates and switching time to achieve desired separations is challenging. While equilibrium theory can help narrow the search space, obtaining essential information such as accurate adsorption isotherms is crucial. This requirement, combined with often highly stringent production specifications, makes it challenging to identify even a feasible operating condition, let alone an optimal one. Trial-and-error-based approaches are often impractical as reaching cyclic steady state can be time-consuming, and any waste produced during this period can lead to significant economic losses. While rigorous dynamic models are available, they are computationally intensive and often do not accurately mirror actual process behavior. To address these challenges, the use of Bayesian Optimization (BO) is proposed to sequentially approach optimal SMB operation. Furthermore, it is suggested to employ the simpler True Moving Bed (TMB) model as a prior for the BO, which significantly accelerates convergence. This approach is demonstrated on an SMB process for cresol separation. Initially, the effectiveness of the BO using the TMB model is examined to gain insights into its behavior. Subsequently, we apply BO to the rigorous SMB model, informed by prior knowledge from the TMB model. Our results show that the developed BO framework rapidly converges to the optimal operating parameters that satisfy the purity constraints. We examine the efficiency improvements over various search algorithms and highlight the advantages of using the TMB model as a prior.
期刊介绍:
Computers & Chemical Engineering is primarily a journal of record for new developments in the application of computing and systems technology to chemical engineering problems.