Spurious PIV Vector Correction Using Linear Stochastic Estimation

Techniques for the experimental determination of velocity fields such as particle image velocimetry (PIV) can often be hampered by spurious vectors or sparse regions of measurement which may occur due to a number of reasons. Commonly used methods for detecting and replacing erroneous values are ofte...

Full description

Bibliographic Details
Main Authors: Daniel Butcher, Adrian Spencer
Format: Article
Language:English
Published: MDPI AG 2019-07-01
Series:Fluids
Subjects:
PIV
Online Access:https://www.mdpi.com/2311-5521/4/3/139
id doaj-b6e2647a890a4bee9e9090c58d929544
record_format Article
spelling doaj-b6e2647a890a4bee9e9090c58d9295442020-11-25T01:26:22ZengMDPI AGFluids2311-55212019-07-014313910.3390/fluids4030139fluids4030139Spurious PIV Vector Correction Using Linear Stochastic EstimationDaniel Butcher0Adrian Spencer1Department of Aeronautical and Automotive Engineering, Loughborough University, Loughborough LE11 3TU, UKDepartment of Aeronautical and Automotive Engineering, Loughborough University, Loughborough LE11 3TU, UKTechniques for the experimental determination of velocity fields such as particle image velocimetry (PIV) can often be hampered by spurious vectors or sparse regions of measurement which may occur due to a number of reasons. Commonly used methods for detecting and replacing erroneous values are often based on statistical measures of the surrounding vectors and may be influenced by further poor data quality in the region. A new method is presented in this paper using Linear Stochastic Estimation for vector replacement (LSEVR) which allows for increased flexibility in situations with regions of spurious vectors. LSEVR is applied to PIV dataset to demonstrate and assess its performance relative to commonly used bilinear and bicubic interpolation methods. For replacement of a single vector, all methods performed well, with LSEVR having an average error of 11% in comparison to 14% and 18% for bilinear and bicubic interpolation respectively. A more significant difference was found in replacement of clusters of vectors which showed average vector angle errors of 10°, 9° and 6° for bilinear, bicubic and LSEVR respectively. Error in magnitude was 3% for both interpolation techniques and 1% for LSEVR showing a clear benefit to using LSEVR for conditions that require multiple clustered vectors to be replaced.https://www.mdpi.com/2311-5521/4/3/139linear stochastic estimationvector processingdata qualityvector flow fieldsPIV
collection DOAJ
language English
format Article
sources DOAJ
author Daniel Butcher
Adrian Spencer
spellingShingle Daniel Butcher
Adrian Spencer
Spurious PIV Vector Correction Using Linear Stochastic Estimation
Fluids
linear stochastic estimation
vector processing
data quality
vector flow fields
PIV
author_facet Daniel Butcher
Adrian Spencer
author_sort Daniel Butcher
title Spurious PIV Vector Correction Using Linear Stochastic Estimation
title_short Spurious PIV Vector Correction Using Linear Stochastic Estimation
title_full Spurious PIV Vector Correction Using Linear Stochastic Estimation
title_fullStr Spurious PIV Vector Correction Using Linear Stochastic Estimation
title_full_unstemmed Spurious PIV Vector Correction Using Linear Stochastic Estimation
title_sort spurious piv vector correction using linear stochastic estimation
publisher MDPI AG
series Fluids
issn 2311-5521
publishDate 2019-07-01
description Techniques for the experimental determination of velocity fields such as particle image velocimetry (PIV) can often be hampered by spurious vectors or sparse regions of measurement which may occur due to a number of reasons. Commonly used methods for detecting and replacing erroneous values are often based on statistical measures of the surrounding vectors and may be influenced by further poor data quality in the region. A new method is presented in this paper using Linear Stochastic Estimation for vector replacement (LSEVR) which allows for increased flexibility in situations with regions of spurious vectors. LSEVR is applied to PIV dataset to demonstrate and assess its performance relative to commonly used bilinear and bicubic interpolation methods. For replacement of a single vector, all methods performed well, with LSEVR having an average error of 11% in comparison to 14% and 18% for bilinear and bicubic interpolation respectively. A more significant difference was found in replacement of clusters of vectors which showed average vector angle errors of 10°, 9° and 6° for bilinear, bicubic and LSEVR respectively. Error in magnitude was 3% for both interpolation techniques and 1% for LSEVR showing a clear benefit to using LSEVR for conditions that require multiple clustered vectors to be replaced.
topic linear stochastic estimation
vector processing
data quality
vector flow fields
PIV
url https://www.mdpi.com/2311-5521/4/3/139
work_keys_str_mv AT danielbutcher spuriouspivvectorcorrectionusinglinearstochasticestimation
AT adrianspencer spuriouspivvectorcorrectionusinglinearstochasticestimation
_version_ 1725109294778548224