4.6 Article

A simple semi-empirical model for effective density measurements of fractal aggregates

期刊

JOURNAL OF AEROSOL SCIENCE
卷 87, 期 -, 页码 28-37

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.jaerosci.2015.05.003

关键词

Effective density; Aggregates; Fractal; miniCAST generator; Spark discharge generator; Bulk density

资金

  1. MERMOSE project
  2. DGAC (French national funds)

向作者/读者索取更多资源

Effective density measurements are used extensively to convert submicron particle sizes based on a particle's mobility diameter into mass. Measurements of the effective density also provide information concerning the particle morphology. For example, the effective density curves of fractal aggregates reveal a scaling factor that seems to correlate with the fractal dimension of the particles. The present paper proposes a simple semi-empirical model that permits the quantitative interpretation of these measurements to determine parameters such as the fractal dimension, the primary particle size, and the bulk density of an aggregate particle. The proposed model is based on the assumption that the hydrodynamic drag force of an aggregate is proportional to the drag force applied to isolated primary spheres and to the number of primary spheres in the aggregate at power a. The model was applied to soot particles produced by either a spark discharge (PALAS GFG1000) or by combustion (miniCAST 5206)-both mechanisms enable the generation of aggregates or agglomerates with very different primary sphere diameters. The proposed model showed a good fit for all of the effective density measurements obtained in this study; the a parameter was driven by the aggregate fractal dimension and by the Knudsen number that was determined based on the primary particle diameter. Finally, for a known primary particle diameter, the fractal dimension and the bulk density were determined successfully with the proposed model. (C) 2015 Elsevier Ltd. All rights reserved.

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