A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes

Crystallization is a widely used chemical engineering separation unit operation process. Since this technique can produce high purity products it is used for the industrial production of many chemical compounds, such as pharmaceuticals, agrochemicals, and fine chemicals. The production of these prod...

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Main Author: Widenski, David John
Other Authors: Romagnoli, Jose A.
Format: Others
Language:en
Published: LSU 2012
Subjects:
Online Access:http://etd.lsu.edu/docs/available/etd-03302012-084257/
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spelling ndltd-LSU-oai-etd.lsu.edu-etd-03302012-0842572013-01-07T22:53:46Z A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes Widenski, David John Chemical Engineering Crystallization is a widely used chemical engineering separation unit operation process. Since this technique can produce high purity products it is used for the industrial production of many chemical compounds, such as pharmaceuticals, agrochemicals, and fine chemicals. The production of these products is a multi-million dollar industry. Any methods to improve the production of these products would be highly valued. Thus, the main objective of this work is to target model-based optimal strategies for crystallization operations specifically targeting crystal size and crystal size distribution (CSD). In particular, take the knowledge gained and translate it into an economically and practically feasible implementation that is utilizable by the pharmaceutical industry. To achieve this, a comprehensive crystallization modeling framework is developed. This framework predicts the CSD while taking into account temperature, seeding variables, and antisolvent feed rates. In addition, this framework takes into account the recent proliferation of predictive thermodynamic solubility models. These solubility models have the potential to greatly reduce the need for experimental data, thus, improving the crystallization models predictive ability. Finally, these crystallization models are implemented into the gPROMS modeling software and are used for model-based optimization. The crystallization modeling framework is developed for several different scenarios. One framework consists of a full thermodynamic crystallization model for potassium chloride. This modeling framework when combined with model-based optimization is proven to be superior to heuristic methods. Another framework, which utilizes several different predictive thermodynamic solubility models, evaluates their use to predict crystallization behavior and to determine optimal operating conditions, cooling profiles, and antisolvent feed profiles. It is shown that these models can be used to determine optimal operating conditions and cooling profiles, but they are not sufficiently accurate to be used to determine optimal antisolvent feed profiles. The last crystallization framework is developed for the non-isothermal antisolvent crystallization of sodium chloride. This framework shows that for systems whose solute solubility is relatively independent of temperature, adding temperature control as a second degree of freedom is beneficial. In particular, it allows for the production of crystal mean sizes unattainable at other temperatures, and for the joint control of particle mean size and dispersion. Romagnoli, Jose A. Hung, Francisco R. Spivey, James J. Thompson, Karsten E. Kundu, Sukhamay LSU 2012-04-03 text application/pdf http://etd.lsu.edu/docs/available/etd-03302012-084257/ http://etd.lsu.edu/docs/available/etd-03302012-084257/ en unrestricted I hereby certify that, if appropriate, I have obtained and attached herein a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to LSU or its agents the non-exclusive license to archive and make accessible, under the conditions specified below and in appropriate University policies, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report.
collection NDLTD
language en
format Others
sources NDLTD
topic Chemical Engineering
spellingShingle Chemical Engineering
Widenski, David John
A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes
description Crystallization is a widely used chemical engineering separation unit operation process. Since this technique can produce high purity products it is used for the industrial production of many chemical compounds, such as pharmaceuticals, agrochemicals, and fine chemicals. The production of these products is a multi-million dollar industry. Any methods to improve the production of these products would be highly valued. Thus, the main objective of this work is to target model-based optimal strategies for crystallization operations specifically targeting crystal size and crystal size distribution (CSD). In particular, take the knowledge gained and translate it into an economically and practically feasible implementation that is utilizable by the pharmaceutical industry. To achieve this, a comprehensive crystallization modeling framework is developed. This framework predicts the CSD while taking into account temperature, seeding variables, and antisolvent feed rates. In addition, this framework takes into account the recent proliferation of predictive thermodynamic solubility models. These solubility models have the potential to greatly reduce the need for experimental data, thus, improving the crystallization models predictive ability. Finally, these crystallization models are implemented into the gPROMS modeling software and are used for model-based optimization. The crystallization modeling framework is developed for several different scenarios. One framework consists of a full thermodynamic crystallization model for potassium chloride. This modeling framework when combined with model-based optimization is proven to be superior to heuristic methods. Another framework, which utilizes several different predictive thermodynamic solubility models, evaluates their use to predict crystallization behavior and to determine optimal operating conditions, cooling profiles, and antisolvent feed profiles. It is shown that these models can be used to determine optimal operating conditions and cooling profiles, but they are not sufficiently accurate to be used to determine optimal antisolvent feed profiles. The last crystallization framework is developed for the non-isothermal antisolvent crystallization of sodium chloride. This framework shows that for systems whose solute solubility is relatively independent of temperature, adding temperature control as a second degree of freedom is beneficial. In particular, it allows for the production of crystal mean sizes unattainable at other temperatures, and for the joint control of particle mean size and dispersion.
author2 Romagnoli, Jose A.
author_facet Romagnoli, Jose A.
Widenski, David John
author Widenski, David John
author_sort Widenski, David John
title A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes
title_short A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes
title_full A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes
title_fullStr A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes
title_full_unstemmed A Thermodynamic Framework for the Modeling and Optimization of Crystallization Processes
title_sort thermodynamic framework for the modeling and optimization of crystallization processes
publisher LSU
publishDate 2012
url http://etd.lsu.edu/docs/available/etd-03302012-084257/
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