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Optimization of batch reactions using data-driven & knowledge-driven models: The case of asymmetric catalytic hydrogenation.

机译:使用数据驱动和知识驱动模型优化间歇反应:不对称催化加氢的情况。

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摘要

The goal of this research work is to develop a systematic methodology that enables the rapid calculation of the optimal operation conditions for batch reactions. The primary objective is to optimize the process through Data-Driven models. However, their efficiency is compared with this of the Knowledge-Driven approaches.;The new methodology of Design of Dynamic Experiments (DoDE) (Georgakis, 2008, 2009) is the Data-Driven method applied to optimize the important pharmaceutical reaction of Asymmetric Catalytic Hydrogenation, a system provided by Sepracor, Inc.. The DoDE approach enables the discovery of optimal time-variant operating conditions that are better than the optimal time-invariant conditions discovered by the classical Design of Experiments (DoE) approach. Only composition measurements at the end of each batch are used to develop Response Surface Models (RSMs).;The Knowledge-Driven approach entails the development of a systematic method for the identification of the appropriate form of kinetic models. This approach is the Generalized Tendency Modeling Optimization and Control (GTeMoC) approach (Makrydaki & Georgakis, 2007), which is a generalization of the Tendency Modeling Optimization and Control (TeMoC) approach (Fotopoulos, Georgakis, & Stenger, 1994) where an approximate kinetic model of the reaction is developed in a systematic fashion. A novel pseudo-linearization and Stepwise Regression (SWR) are used to identify plausible kinetic structures. Once the preferred kinetic form(s) are identified, Non-Linear parameter estimation of the kinetic form(s) completes the modeling task of GTeMOC. If more than one model is identified, the statistically most accurate is selected.;The GTeMOC method is first tested in two simulated cases, the hydrogenation of D-glucose (Crezee et al., 2003), and the epoxidation of Oleic Acid (Rastogi, 1991; Rastogi et al., 1992; Rastogi et al., 1990). For the experiments of the industrial example, online Raman spectra and a PLS model, which relate spectra to the reaction mixture compositions, are used to develop the generalized tendency kinetic model using both DoE and DoDE data.;Finally, the two methodologies (data-driven and knowledge-driven) combined with the DoE or DoDE data are used to optimize the operational conditions of asymmetric hydrogenation reaction. The optimization maximizes the reactant conversion with a minimum diastereoselectivity constraint. Using data-driven models, the DoDE approach has a definitive advantage over the DoE approach. The knowledge-driven GTeMOC approach achieves similar process optimization to the data-driven one but requires a larger effort and time for the model development and the process optimization.
机译:这项研究工作的目的是开发一种系统的方法,能够快速计算出批反应的最佳操作条件。主要目标是通过数据驱动模型优化流程。然而,将它们的效率与知识驱动方法进行比较。;动态实验设计(DoDE)的新方法(Georgakis,2008,2009)是数据驱动方法,用于优化不对称催化的重要药物反应氢化,由Sepracor,Inc.提供的系统。DoDE方法能够发现最佳时变操作条件,该条件优于经典的实验设计(DoE)方法所发现的最佳时不变条件。仅使用每批末尾的成分测量值来开发响应表面模型(RSM)。知识驱动的方法需要开发一种系统的方法来识别合适形式的动力学模型。这种方法是广义趋势建模优化和控制(GTeMoC)方法(Makrydaki&Georgakis,2007),是对趋势建模优化和控制(TeMoC)方法(Fotopoulos,Georgakis,&Stenger,1994)的推广。反应的动力学模型是以系统的方式开发的。一种新颖的伪线性化和逐步回归(SWR)用于识别合理的动力学结构。一旦确定了首选的动力学形式,就可以对动力学形式进行非线性参数估计,从而完成GTeMOC的建模任务。如果识别出多个模型,则选择统计学上最准确的模型; GTeMOC方法首先在两种模拟情况下进行测试:D-葡萄糖的氢化(Crezee等人,2003)和油酸的环氧化(Rastogi) ,1991; Rastogi等,1992; Rastogi等,1990)。对于工业实例的实验,使用在线拉曼光谱和PLS模型(将光谱与反应混合物的成分相关联)来使用DoE和DoDE数据开发广义趋势动力学模型。最后,两种方法(数据-驱动程序和知识驱动程序)与DoE或DoDE数据结合使用,以优化不对称氢化反应的操作条件。该优化以最小的非对映选择性约束最大化了反应物转化率。使用数据驱动的模型,DoDE方法比DoE方法具有确定的优势。知识驱动的GTeMOC方法实现了与数据驱动的方法类似的过程优化,但是需要花费更多的精力和时间进行模型开发和过程优化。

著录项

  • 作者

    Makrydaki, Foteini.;

  • 作者单位

    Tufts University.;

  • 授予单位 Tufts University.;
  • 学科 Engineering Chemical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 219 p.
  • 总页数 219
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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