Pressure from data-driven-estimated velocity fields using snapshot PIV and fast probes

Authors

  • Marco Raiola Universidad Carlos III de Madrid, Spain
  • Junwei Chen Universidad Carlos III de Madrid, Spain
  • Stefano Discetti Universidad Carlos III de Madrid, Spain

DOI:

https://doi.org/10.18409/ispiv.v1i1.157

Keywords:

pressure estimation, Extended Proper Orthogonal Decomposition, data-driven methods

Abstract

This work explores the use of data-driven techniques to retrieve time-resolved information from snapshot PIV by exploiting the information from synchronized high-repetition rate sensors measuring flow quantities in few points, and to compute from it the instantaneous pressure field leveraging the Navier-Stokes momentum equation of the flow. This work focus on a technique rooted in the Extended Proper Orthogonal Decomposition, which already proven good performances in estimating time-resolved velocity fields from a finite number of probes synchronized with field measurements. The performances of the technique and its robustness to noise are tested on 2 synthetic dataset, a laminar one and a turbulent one, and compared to the most commonly applied technique to retrieve time-resolved information from snapshot PIV which exploits Taylor’s hypothesis.

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Published

2021-08-01

Issue

Section

Pressure and Force