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A modified cross-correlation algorithm for Ply image processing of particle-fluid two-phase flow

机译:一种改进的互相关算法,用于颗粒流两相流的Ply图像处理

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PIV (Particle Image Velocimetry) technique for flow field measurement has achieved popular self-identify through over ten years development, and its application range is becoming wider and wider. Ply post-processing techniques have a great influence on the success of particle-fluid two-phase flow field measurement and thus become a hot and difficult topic. In the present study, a Phase Respective Identification Algorithm (PRIA) is introduced to separate low-density solid particles or bubbles and high-density tracer particles from the PIV image of particle-fluid two-phase flow. PTV (Particle Tracking Velocimetry) technique is employed to calculate the velocity fields of low-density solid particles or bubbles. For the velocity fields of high-density solid particles or bubble phase and continuous phase traced by high-density smaller particles, based on the thought of wavelet transform and multi-resolution analysis and the theory of cross-correlation of image, a delaminated processing algorithm (MCCWM) is presented to conquer the limitation of conventional Fourier transform. The algorithm is firstly testified on synthetic two-phase flows, such as uniform steady flow, shearing flow and rotating flow, and the computational results from the simulated particle images are in reasonable agreement with the given simulated data. The algorithm is then applied to images of actual bubble-liquid two-phase flow and jet flow, and the results also confirmed that the algorithm proposed in the present study has good performance and reliability for post-processing Ply images of particle-fluid two-phase flow. (C) 2015 Elsevier Ltd. All rights reserved.
机译:通过十多年的发展,用于流场测量的PIV(粒子图像测速)技术已经获得了广泛的自我识别,其应用范围越来越广。层板后处理技术对颗粒流体两相流场测量的成功有很大的影响,因此成为一个热门和困难的话题。在本研究中,引入了相位分别识别算法(PRIA)从颗粒流体两相流的PIV图像中分离出低密度固体颗粒或气泡以及高密度示踪剂颗粒。 PTV(粒子跟踪测速)技术用于计算低密度固体颗粒或气泡的速度场。对于高密度固体颗粒或气泡相以及由高密度较小颗粒描绘的连续相的速度场,基于小波变换和多分辨率分析的思想以及图像的互相关理论,采用分层处理算法(MCCWM)被提出来克服传统傅立叶变换的局限性。该算法首先在均匀的稳态流,剪切流和旋转流等合成两相流上进行了验证,仿真粒子图像的计算结果与给定的仿真数据基本吻合。然后将该算法应用于实际的气泡-液体两相流和射流的图像,结果也证实了本研究提出的算法对颗粒-流体两相的Ply图像的后处理具有良好的性能和可靠性。相流。 (C)2015 Elsevier Ltd.保留所有权利。

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