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Experiments in Fluids | Vol.61, Issue.4 | 2020-04-06 | Pages 1-23

Experiments in Fluids

Time-resolved reconstruction of flow field around a circular cylinder by recurrent neural networks based on non-time-resolved particle image velocimetry measurements

Hui Li   Shujin Laima   Wen-Li Chen   Xiaowei Jin  
Abstract

Particle image velocimetry (PIV) has been extensively used in wind-tunnel test for flow-field measurement. However, the sampling frequency of traditional P

Original Text (This is the original text for your reference.)

Time-resolved reconstruction of flow field around a circular cylinder by recurrent neural networks based on non-time-resolved particle image velocimetry measurements

Particle image velocimetry (PIV) has been extensively used in wind-tunnel test for flow-field measurement. However, the sampling frequency of traditional P

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Hui Li,Shujin Laima,Wen-Li Chen,Xiaowei Jin,.Time-resolved reconstruction of flow field around a circular cylinder by recurrent neural networks based on non-time-resolved particle image velocimetry measurements. 61 (4),1-23.

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