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New insights on estimating pore size distribution of latex particles: Statistical mechanics approach and modeling

机译:估计乳胶颗粒孔径分布的新见解:统计力学方法和建模

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New statistical mechanics approach for pore size distribution applied in wide the relative pressure range is proposed. The new proposed model was applied to nitrogen adsorption-desorption isotherms at 77 K onto five functionalized polystyrene latices. Results showed that the proposed model can reproduce all results found by traditional methods such as NLDFT, BJH and VBS where some of them can be applied only for a specific range of pore size. A segmentation procedure is adopted and it is shown that the corresponding algorithm can be successfully applied for determining pore size distributions over a wide range of pore size. When this method is applied an isotherms Type II and III (materials with larger mesopores and/or macropores) gives additional information that is not obtained with the other methods. The obtained results showed that the copolymerization plays an important role in the porosity and the specific surface area, whereas, the high polydispersity index, PDI, can reduce the porosity. The samples studied within the present work present small and large mesopores and even macropores as it is suggested by the new proposed model, and part of this porosity could be related to the interparticle and also to the intraparticle porosity. (C) 2016 Elsevier Inc. All rights reserved.
机译:提出了在较宽的相对压力范围内应用孔径分布的统计力学新方法。将新提出的模型应用于五个功能化的聚苯乙烯胶乳上在77 K下的氮吸附-解吸等温线。结果表明,提出的模型可以重现传统方法(如NLDFT,BJH和VBS)发现的所有结果,其中某些方法仅适用于特定孔径范围。采用了分段程序,结果表明,该算法可以成功地应用于确定大孔径范围内的孔径分布。当应用此方法时,等温线类型II和III(具有较大中孔和/或大孔的材料)会提供其他方法无法获得的其他信息。所得结果表明,共聚在孔隙率和比表面积中起重要作用,而高多分散指数PDI可降低孔隙率。在本工作中研究的样品呈现出新的模型所建议的大中孔,甚至大孔,并且该孔隙率的一部分可能与颗粒间以及颗粒内的孔隙率有关。 (C)2016 Elsevier Inc.保留所有权利。

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