首页> 外文期刊>IFAC PapersOnLine >Set-Membership Parameter Estimation: Improved Understanding of Microgel Polymerization ?
【24h】

Set-Membership Parameter Estimation: Improved Understanding of Microgel Polymerization ?

机译:集合成员参数估计:对微凝胶聚合的理解得到改善

获取原文
       

摘要

Functional microgels based on N-Isopropylacrylamide (NIPAM) are in the focus of research because their properties are promising for diverse applications, such as drug delivery and tunable membranes. However, the synthesis of microgels with optimal properties for the respective applications is challenging and time-intensive due to the sensitivity of the product properties to the synthesis conditions. Optimal synthesis strategies can be determined and controlled with model-based approaches. This in turn requires process models with parameters estimated based on experimental measurements. However, available measurement are not always sufficient to determine all model parameters. Herein, we use inline Raman and calorimetric data. We use a set-membership approach for parameter estimation and identifiability analysis. We solve a series of constrained dynamic optimization problems to approximate the feasible parameter set by a box. The results show that, while kinetic parameters corresponding to the main monomer are identifiable, a subset of parameters corresponding to the cross-linker have wide confidence ranges. This is caused by the low initial concentration of cross-linker in comparison to the concentration of monomer. The determined parameters enable the improved model-based prediction of the properties of microgels based on NIPAM and pave the way towards model-based control applications.
机译:基于N-异丙基丙烯酰胺(NIPAM)的功能性微凝胶是研究的重点,因为它们的特性对于诸如药物输送和可调膜之类的各种应用是很有希望的。然而,由于产物性质对合成条件的敏感性,因此合成具有针对各种应用的最佳性质的微凝胶是具有挑战性和费时的。最佳的合成策略可以通过基于模型的方法来确定和控制。这进而需要具有基于实验测量值估计参数的过程模型。但是,可用的测量并不总是足以确定所有模型参数。在此,我们使用内联拉曼和量热数据。我们使用集合成员方法进行参数估计和可识别性分析。我们解决了一系列受约束的动态优化问题,以逼近一个盒子设置的可行参数。结果表明,虽然可以识别出与主要单体相对应的动力学参数,但与交联剂相对应的参数子集却具有较宽的置信度范围。这是由于与单体的浓度相比,交联剂的初始浓度低。确定的参数使基于NIPAM的微凝胶特性的基于模型的改进预测成为可能,并为基于模型的控制应用铺平了道路。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号