Title
Pod-Based Data Mining Of Turbulent Flows In Front Of And On Top Of Smooth And Roughness-Resolved Forward-Facing Steps
Abstract
A new application of proper orthogonal decomposition (POD) to uncover the relation of the instantaneous energetic large-scale turbulent structures to the dominant POD modes had been reported. Motivated on this method, the data mining from the velocity vector fields measured by the particle image velocimetry and structural analysis on the selected POD-based reconstructed turbulent flows in front of and on top of smooth and roughness-resolved forward-facing steps (FFSs) has been performed. The velocity fields containing the most energetic large-scale structures are conditionally chosen. The conditional criterion is that the chosen velocity fields whose POD temporal coefficients of the first or second mode are correspondingly larger than twice of their root mean square values. Typically, the most energetic instantaneous structures are the large-scale second-quadrant (Q2) or fourth-quadrant (Q4) events and the mostly open separation bubbles in front of these FFSs; while the large-scale structures behave as a strong shear layer, and near or in which are a few spanwise prograde or retrograde vortices; and sometimes the alternating node and saddle points appeared. Similarly, for the flow on top of the FFSs, the most energetic structures are presented as a great many large-scale Q4 or Q2 events and a few secondary vortices at the very near wall; while the large-scale structures are overall exhibited as a strong shear layer, and in which a large number of vertex structures are created. These energetic large-scale structures here are not only sensitive to the surface roughness conditions but also to the spanwise locations.
Year
DOI
Venue
2019
10.1109/ACCESS.2019.2894715
IEEE ACCESS
Keywords
Field
DocType
Proper orthogonal decomposition, data mining, PIV, turbulent flow, forward-facing step, reconstructed flow structure, surface roughness
Data mining,Particle image velocimetry,Shear (sheet metal),Saddle point,Computer science,Vortex,Flow (psychology),Turbulence,Root mean square,Surface roughness
Journal
Volume
ISSN
Citations 
7
2169-3536
1
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Yang Shaoqiong110.34
Wang Yanhui210.34
Yang Ming3277.66
Song Yang463.20
Wu Yanhua510.34