Modeling snow accumulation in the bogie region caused by train slipstream based on sliding mesh and particle capture criteria

The accumulated snow swept by the high-speed train's slipstream tends to aggregate on the train's bogie, thereby posing a significant threat to operational safety. In this paper, utilizing the sliding mesh technique and a novel particle injection scheme, the combination of Unsteady Reynold...

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Bibliographic Details
Main Authors: Yuzhe Ma, Jiye Zhang, Jiawei Shi, Lan Zhang, Yao Zhang
Format: Article
Language:English
Published: Elsevier 2025-01-01
Series:Alexandria Engineering Journal
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Online Access:http://www.sciencedirect.com/science/article/pii/S1110016824014212
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Summary:The accumulated snow swept by the high-speed train's slipstream tends to aggregate on the train's bogie, thereby posing a significant threat to operational safety. In this paper, utilizing the sliding mesh technique and a novel particle injection scheme, the combination of Unsteady Reynolds-Average Navier-Stokes simulation, discrete phase model and particle capture criteria is employed to simulate and analyze the attachment components and accumulation mass of snow particles on the bogie of high-speed trains at speeds of 200 km/h, 250 km/h, and 300 km/h. The results indicate that for the first bogie, snow particles primarily enter from between the rear wheels and the cavity wall; for subsequent bogies, snow particles also enter from between the front wheels and the frame. The accumulation of snow on the rear bogies is markedly greater than on the front ones, with bogie 4 exhibiting the most severe accumulation. The cavity wall and frame of the bogie are the primary components where snow accumulates. Additionally, secondary snow accumulation components include bolster. With increasing speed, snow accumulation decreases on the first three bogies while increasing on the last three bogies. Bogie 4 is most affected by speed variations.
ISSN:1110-0168