LAPSE:2025.0037v1
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LAPSE:2025.0037v1
Process Design of an Industrial Crystallization Based on Degree of Agglomeration
March 13, 2025
Abstract
This study proposes a model-based approach utilizing a hybrid population balance model (PBM) to optimize temperature profiles for minimizing agglomeration and enhancing crystal growth. The PBM incorporates key mechanisms—nucleation, growth, dissolution, agglomeration, and deagglomeration—and is ap-plied to the crystallization of an industrial active pharmaceutical ingredient (API), Compound K. Parameters were estimated through prior design of experiments (DoE) and refined via additional thermocycle experiments. In-silico DoE simulations demonstrate that the hybrid PBM outperforms traditional methods in assessing process performance under agglomeration-prone conditions. Results confirm that thermocycles effectively reduce agglomeration and promote bulk crystal formation, though their efficiency plateaus be-yond a certain cycle number. This model-based approach provides a more robust strategy for agglomeration control compared to conventional methods, offering valuable insights for industrial crystallization optimization.
This study proposes a model-based approach utilizing a hybrid population balance model (PBM) to optimize temperature profiles for minimizing agglomeration and enhancing crystal growth. The PBM incorporates key mechanisms—nucleation, growth, dissolution, agglomeration, and deagglomeration—and is ap-plied to the crystallization of an industrial active pharmaceutical ingredient (API), Compound K. Parameters were estimated through prior design of experiments (DoE) and refined via additional thermocycle experiments. In-silico DoE simulations demonstrate that the hybrid PBM outperforms traditional methods in assessing process performance under agglomeration-prone conditions. Results confirm that thermocycles effectively reduce agglomeration and promote bulk crystal formation, though their efficiency plateaus be-yond a certain cycle number. This model-based approach provides a more robust strategy for agglomeration control compared to conventional methods, offering valuable insights for industrial crystallization optimization.
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Keywords
Batch Process, Crystallization, Dynamic Modelling, Population Balance Modeling
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Suggested Citation
KANG YS. Process Design of an Industrial Crystallization Based on Degree of Agglomeration. (2025). LAPSE:2025.0037v1
Author Affiliations
KANG YS: Purdue University
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Year
2025
Publication Date
2025-03-13
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Original Submission
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[v1] (Original Submission)
Mar 13, 2025
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Mar 14, 2025
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Yung-Shun
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Process Design of an Industrial Crystallization Based on Degree of Agglomeration
Process Design of an Industrial Crystallization Based on Degree of Agglomeration