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首页> 外文期刊>Chromatographia >Optimizing Column Length and Particle Size in Preparative Batch Chromatography Using Enantiomeric Separations of Omeprazole and Etiracetam as Models: Feasibility of Taguchi Empirical Optimization
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Optimizing Column Length and Particle Size in Preparative Batch Chromatography Using Enantiomeric Separations of Omeprazole and Etiracetam as Models: Feasibility of Taguchi Empirical Optimization

机译:使用奥美拉唑和埃拉基乙胺的对映体分离优化制备批量色谱法中的柱长和粒径作为模型:TAGUCHI经验优化的可行性

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摘要

The overreaching purpose of this study is to evaluate new approaches for determining the optimal operational and column conditions in chromatography laboratories, i.e., how best to select a packing material of proper particle size and how to determine the proper length of the column bed after selecting particle size. As model compounds, we chose two chiral drugs for preparative separation: omeprazole and etiracetam. In each case, two maximum allowed pressure drops were assumed: 80 and 200?bar. The processes were numerically optimized (mechanistic modeling) with a general rate model using a global optimization method. The numerical predictions were experimentally verified at both analytical and pilot scales. The lower allowed pressure drop represents the use of standard equipment, while the higher allowed drop represents more modern equipment. For both compounds, maximum productivity was achieved using short columns packed with small-particle size packing materials. Increasing the allowed backpressure in the separation leads to an increased productivity and reduced solvent consumption. As advanced numerical calculations might not be available in the laboratory, we also investigated a statistically based approach, i.e., the Taguchi method (empirical modeling), for finding the optimal decision variables and compared it with advanced mechanistic modeling. The Taguchi method predicted that shorter columns packed with smaller particles would be preferred over longer columns packed with larger particles. We conclude that the simpler optimization tool, i.e., the Taguchi method, can be used to obtain “good enough” preparative separations, though for accurate processes, optimization, and to determine optimal operational conditions, classical numerical optimization is still necessary.
机译:本研究的过度展示目的是评估用于确定色谱实验室中最佳操作和柱状条件的新方法,即如何最好地选择适当粒径的填充材料以及在选择颗粒后如何确定柱床的适当长度尺寸。作为模型化合物,我们选择了两种手性药物用于制备分离:奥美拉唑和埃拉克兰。在每种情况下,假设两个最大允许的压降:80和200?棒。使用全局优化方法用一般速率模型进行数值优化(机械建模)。在分析和导频尺度上进行了实验验证了数值预测。较低允许的压降代表了标准设备的使用,而较高的允许液滴代表更现代化的设备。对于两种化合物,使用具有小粒子尺寸包装材料的短柱实现的最大生产率。增加分离中允许的背压导致生产率提高和降低的溶剂消耗。由于在实验室中不可用先进的数值计算,我们还在统计上进行了统计上的方法,即Taguchi方法(实证建模),用于找到最佳决策变量,并将其与先进的机械建模进行比较。 Taguchi方法预测,较短的颗粒填充的较短柱是优选的,在填充较大粒子的较长柱上是优选的。我们得出结论,更简单的优化工具,即Taguchi方法,可用于获得“足够好的”的制备分离,但对于准确的过程,优化,并确定最佳运行条件,仍然需要进行经典的数值优化。

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