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Numerical Investigation of Non-Spherical Particle Deposition Characteristics on Filter Media

BUILDING SIMULATION(2023)

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摘要
In the building environment, PM2.5 seriously affects people’s health and quality of life, so it is necessary to study the particle deposition characteristics. In addition, it is essential for a thorough investigation of the dust removal mechanism to understand the non-spherical particles deposition characteristics. The stacking angle experiment was used to calibrate the discrete element simulation parameters. And four simulation methods (CFD-DPM, CFD-DEM, API interface loading drag model based on EDEM software and EDEM simulation) were used to numerically simulate the non-spherical particles deposition characteristics. The optimal simulation method EDEM was applied to study the non-spherical particles deposition characteristics in filter media, which saves the calculation time obviously. On this basis, the particle parameters on the particle deposition characteristics of filter media were investigated. The results show that the deposition rate of non-spherical (special shape) particles with the same volume is basically consistent on the filter media, hence it is more realistic that the dust actual shape is simplified into the triangular-shaped particles. As the particle size increases, the number of deposited particles on the filter media decreases. And the larger the particle size, the more dispersed the distribution. It has a significant impact on the number of particles deposited on the filter media when the particle velocity is 0.1 m/s. The particle deposits to the lower part of the filter media in the form of a parabola and deviates from the outlet seriously at 0.1 m/s. Moreover, it has little effect on the number of particle deposition at the other velocities, and most particles are deposited on the upper part of the filter media with the increase of particle velocity.
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关键词
particle deposition,non-spherical particles,calibration of stacking angle,discrete element method
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