基于集群的粒子跟踪测速算法,结合颗粒运动重建中的准平行校正

IF 2.4 3区 工程技术 Granular Matter Pub Date : 2024-08-02 DOI:10.1007/s10035-024-01456-w
Kaiyuan Guan, Yang Zhang, Yuanwei Lin, Minghan Jiao, Bin Yang, Xiaomiao Fan
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引用次数: 0

摘要

粒子跟踪测速(PTV)是一种基于拉格朗日的流动可视化技术,可同时跟踪多个粒子或颗粒的运动。随着三维(3D)粒子成像系统的广泛应用,三维 PTV 算法引起了人们的极大兴趣,而许多三维算法都是由相应的二维算法发展而来的;此外,与三维算法相比,二维算法更适用于工业领域的实时流动监测。本文提出了一种基于 Voronoi 图(VD)的二维 PTV 算法,该算法通过最小包围椭圆(MEE)进行优化,然后开发了一种基于自制的准平行校正(QPC)方法的重新匹配过程,以校正 PTV 在帧间粒子位移较大时产生的异常结果。这种 PTV 因此被命名为 MQ-PTV。随后,MQ-PTV 被用于重建由致密聚丙烯颗粒组成的沿下降滑道的颗粒流、沙床上的风化沙流、星群的迁移以及恒星的运动,从而证实了它在各种颗粒运动重建中的实用性。
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Cluster-based particle tracking velocimetry algorithm combining the quasi-parallel correction in granular motions reconstruction

Particle Tracking Velocimetry (PTV) is a Lagrange-based flow visualization technique that tracks the motion of multiple particles or granules simultaneously. With the widespread application of three-dimensional (3D) particle imaging systems, 3D PTV algorithms have attracted considerable interest, whereas many 3D algorithms are developed from the corresponding 2D algorithms; moreover, compared with 3D algorithms, 2D algorithms are more suitable for real-time flow monitoring in industry. This paper proposes a 2D PTV algorithm based on the Voronoi diagram (VD) that is optimized by the minimum enclosing ellipse (MEE); then a re-matching process based on a homemade method called Quasi-Parallel Correction (QPC) is developed to correct the abnormal results produced by PTV at large inter-frame particle displacement. This PTV is thereby named MQ-PTV. MQ-PTV is then employed for reconstructing a granular flow made of dense polypropylene particles along a declined chute, an aeolian sand flow over sand bed, the migration of a barchans swarm and the motion of stars, thus confirming its practicability in a wide variety of particle motion reconstruction.

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来源期刊
Granular Matter
Granular Matter MATERIALS SCIENCE, MULTIDISCIPLINARY-MECHANICS
CiteScore
4.30
自引率
8.30%
发文量
95
期刊介绍: Although many phenomena observed in granular materials are still not yet fully understood, important contributions have been made to further our understanding using modern tools from statistical mechanics, micro-mechanics, and computational science. These modern tools apply to disordered systems, phase transitions, instabilities or intermittent behavior and the performance of discrete particle simulations. >> Until now, however, many of these results were only to be found scattered throughout the literature. Physicists are often unaware of the theories and results published by engineers or other fields - and vice versa. The journal Granular Matter thus serves as an interdisciplinary platform of communication among researchers of various disciplines who are involved in the basic research on granular media. It helps to establish a common language and gather articles under one single roof that up to now have been spread over many journals in a variety of fields. Notwithstanding, highly applied or technical work is beyond the scope of this journal.
期刊最新文献
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