首页> 外文期刊>Powder Technology: An International Journal on the Science and Technology of Wet and Dry Particulate Systems >Characterization of colloidal nanoparticles in mixtures with polydisperse and multimodal size distributions using a particle tracking analysis and electrospray-scanning mobility particle sizer
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Characterization of colloidal nanoparticles in mixtures with polydisperse and multimodal size distributions using a particle tracking analysis and electrospray-scanning mobility particle sizer

机译:使用粒子跟踪分析和电喷雾扫描迁移率粒子分发的多模尺寸分布混合物中胶体纳米粒子的表征

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Characterization of polydisperse liquid-borne particles was investigated using a particle tracking analysis (PTA) and electrospray-scanning mobility particle sizer (ES-SMPS). The results showed PTA measurements based on light scattering accurately predicted mode sizes of monodisperse colloidal particles, but the geometric standard deviation of 40 nm polystyrene latex (PSL) particles was underestimated because of a screening effect that makes the smaller particles less visible. ES-SMPS could precisely predict the size distributions with sizes and standard deviations of monodisperse particles when compared to scanning electron microscopy data. From the results for the mixture of 40 nm Au and PSL and mixtures of 40 nm Au and 100, 150 and 240 nm PSL, it was shown that ES-SMPS is a very promising method to characterize colloidal particles with a wide or multimodal size distributions. Therefore, the results of this study provide detailed insights into various applications that require accurate characterizations of polydisperse colloidal particles. (C) 2019 Published by Elsevier B.V.
机译:使用颗粒跟踪分析(PTA)和电喷雾扫描迁移率粒子Sizer(ES-SMPS)研究了多分散液体颗粒的表征。结果显示了基于光散射精确预测的单分散胶体颗粒的模式尺寸的PTA测量,但由于使较小颗粒不太可见的筛分效果,40nm聚苯乙烯胶乳(PSL)颗粒的几何标准偏差被低估。与扫描电子显微镜数据相比,ES-SMP可以精确地预测单分散颗粒的尺寸和标准偏差的尺寸分布。从结果为40nm Au和psl的混合物和40nm au和100,150和240nm psl的混合物,显示ES-SMP是一种非常有希望的方法,以表征具有宽或多模码分布的胶体颗粒。因此,该研究的结果提供了对需要对多分散胶体颗粒的准确表现的各种应用的详细见解。 (c)2019年由elestvier b.v发布。

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