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On the use of model-based tools to optimize in-line a pharmaceuticals freeze-drying process

机译:关于使用基于模型的工具优化药品冷冻干燥过程的在线方法

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This article is focused on the use of model-based tools to design and optimize in-line a pharmaceutical freeze-drying process. Two control systems have been compared, a predictive one that uses the pressure rise test to monitor the state of the system and to estimate in-line the values of model parameters, named LyoDriver in the previous literature, and a controller where a soft sensor uses the temperature measurement obtained by a thermocouple to get the same information and to calculate on-line the design space of the process. In both cases, the goal of the controller is to maintain product temperature as close as possible to a limit value, without trespassing it, throughout the primary drying stage. An extended experimental campaign has been performed, where various products, with different characteristics, have been processed, namely, aqueous solutions containing sucrose, mannitol, or polyvinylpyrrolidone. Results evidence that both systems are effective in optimizing in-line the freeze-drying process, but shorter cycles can be obtained using the soft sensor. This is due to the fact that the soft sensor is not responsible for any product overheating and, thus, product temperature can be maintained very close to the limit value, while when using the pressure rise test as monitoring tool, a safety margin has to be used, because of the temperature increase during the pressure rise test. Besides, when using the soft sensor no least-square optimization problem is solved to estimate model parameters, and this can improve the robustness of the system. The main drawback is represented by the fact that this system requires thermocouples to measure product temperature, and this can be difficult in industrial-scale freeze-dryers, used to process large batches of vials in sterile conditions, but it can be performed quite easily in lab-scale units used for process design.
机译:本文的重点是基于模型的工具的使用,以设计和优化在线药品冷冻干燥过程。比较了两种控制系统,一种是预测性系统,它使用压力上升测试来监视系统状态并在线估计模型参数的值(在先前的文献中称为LyoDriver),以及一种使用软传感器的控制器热电偶获得的温度测量值以获取相同的信息并在线计算过程的设计空间。在这两种情况下,控制器的目标都是在整个初级干燥阶段中将产品温度保持在尽可能接近极限值的水平,而不会超出极限值。已经进行了扩展的实验活动,其中已经加工了具有不同特性的各种产品,即含有蔗糖,甘露醇或聚乙烯吡咯烷酮的水溶液。结果证明,这两种系统都可以有效地优化在线冷冻干燥过程,但是使用软传感器可以缩短周期。这是由于以下事实:软传感器不对任何产品过热负责,因此,产品温度可以保持在非常接近极限值的水平,而当使用压力上升测试作为监视工具时,必须保持安全裕度。使用,因为在升压测试期间温度会升高。此外,当使用软传感器时,不存在最小二乘优化问题来估计模型参数,这可以提高系统的鲁棒性。主要缺陷在于以下事实:该系统需要热电偶来测量产品温度,这在工业规模的冷冻干燥机中可能很困难,该干燥机用于在无菌条件下处理大批小瓶,但在生产过程中却非常容易执行。用于过程设计的实验室规模单位。

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