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Optimizing the yield and selectivity of high purity nanoparticle clusters

机译:优化高纯度纳米颗粒簇的产率和选择性

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Here we investigate the parameters that govern the yield and selectivity of small clusters composed of nanoparticles using a Monte Carlo simulation that accounts for spatial and dimensional distributions in droplet and nanoparticle density and size. Clustering nanoparticles presents a powerful paradigm with which to access properties not otherwise available using individual molecules, individual nanoparticles or bulk materials. However, the governing parameters that precisely tune the yield and selectivity of clusters fabricated via an electrospray droplet evaporation method followed by purification with differential mobility analysis (DMA) remain poorly understood. We find that the product of the electrospray droplet mean diameter to the third power and nanoparticle concentration governs the yield of individual clusters, while the ratio of the nanoparticle standard deviation to the mean diameter governs the selectivity. The resulting, easily accessible correlations may be used to minimize undesirable clustering, such as protein aggregation in the biopharmaceutical industry, and maximize the yield of a particular type of cluster for nanotechnology and energy applications.
机译:在这里,我们使用蒙特卡洛模拟方法研究控制由纳米颗粒组成的小团簇的产率和选择性的参数,该模型考虑了液滴的空间和尺寸分布以及纳米颗粒的密度和大小。簇状纳米颗粒提供了强大的范例,通过该范例可以访问使用单个分子,单个纳米颗粒或散装材料无法获得的特性。然而,对于精确调节通过电喷雾液滴蒸发法制造的簇的产率和选择性并随后通过差动迁移率分析(DMA)进行纯化的控制参数仍然知之甚少。我们发现电喷雾液滴平均直径乘以三次方与纳米颗粒浓度的乘积决定了各个簇的产率,而纳米颗粒标准偏差与平均直径的比值决定了选择性。所产生的,容易接近的相关性可以用于最小化不希望的簇,例如生物制药工业中的蛋白质聚集,并最大化用于纳米技术和能源应用的特定类型簇的产量。

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