Re-visitation of Two Models for Predicting Mechanically-Induced Disordering after Cryogenic Impact Milling
Pharmaceutical research(2023)
摘要
Purpose To compare the prediction accuracy of two models used to characterize the complete disordering potential of materials after extensive cryogenic milling. Methods Elastic shear moduli (μ s ) were simulated in silico. Comparison with available literature values confirmed that computations were reasonable. Complete disordering potential was predicted using the critical dislocation density (ρ crit ) and bivariate empirical models. To compare the prediction accuracy of the models, each material added for dataset expansion was cryomilled for up to 5 hr. Mechanical disordering after comminution was characterized using PXRD and DSC, and pooled with previously published results. Results Simulated μ s enabled predictions using the ρ crit model for 29 materials. This model mischaracterized the complete disordering behavior for 13/29 materials, giving an overall prediction accuracy of 55%. The originally published bivariate empirical model classification boundary correctly grouped the disordering potential for 31/32 materials from the expanded dataset. Recalibration of this model retained a 94% prediction accuracy, with only 2 misclassifications. Conclusions Prediction accuracy of the ρ crit model decreased with dataset expansion, relative to previously published results. Overall, the ρ crit model was considerably less accurate relative to the bivariate empirical model, which retained very high prediction accuracy for the expanded dataset. Although the empirical model does not imply a mechanism, model robustness suggests the importance of glass transition temperature (T g ) and molar volume (M v ) on formation and persistence of amorphous materials following extensive cryomilling.
更多查看译文
关键词
critical dislocation,glass transition,milling-induced phase transformation,molar volume,simulated shear modulus
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要