De-noising and super-resolution of fluid-flow velocity measurements by optimising a discrete loss (ODIL)

IF 2.6 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Stephen Terrington, Mark Thompson, Kerry Hourigan
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引用次数: 0

Abstract

This article presents a comparison between two techniques – optimising a discrete loss (ODIL) and physics informed neural networks (PINN) – for reconstructing the velocity field from low resolution and noisy planar PIV measurements. Both techniques are capable of accurately reconstructing the velocity and pressure fields from low resolution and noisy velocity measurements sampled from 2D numerical simulations. Both techniques provide reasonable reconstruction of the in-plane velocity components when provided with two-component velocity measurements in a single plane sampled from a 3D numerical simulation. However, ODIL generally over-fits to any noise in the measurement data, and therefore PINN achieves higher accuracy. While PINN can achieve a reconstruction more accurate than that of ODIL, PINN converges much slower than ODIL, requiring substantially more training epochs and walltime to produce results of similar accuracy to ODIL. Both methods are superior to statistical noise reduction approaches, such as low-pass filtering.

Abstract Image

优化离散损耗(ODIL)的流体流速测量降噪和超分辨率
本文介绍了两种技术之间的比较-优化离散损失(ODIL)和物理通知神经网络(PINN) -用于从低分辨率和噪声平面PIV测量中重建速度场。这两种技术都能够从二维数值模拟中采样的低分辨率和噪声速度测量中精确地重建速度和压力场。当从三维数值模拟中获得单平面的双分量速度测量时,这两种技术都能合理地重建平面内的速度分量。然而,ODIL通常会过度拟合测量数据中的任何噪声,因此PINN可以达到更高的精度。虽然PINN可以实现比ODIL更准确的重建,但PINN的收敛速度比ODIL慢得多,需要更多的训练epoch和walltime才能产生与ODIL相似精度的结果。这两种方法都优于统计降噪方法,如低通滤波。
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来源期刊
International Journal of Heat and Fluid Flow
International Journal of Heat and Fluid Flow 工程技术-工程:机械
CiteScore
5.00
自引率
7.70%
发文量
131
审稿时长
33 days
期刊介绍: The International Journal of Heat and Fluid Flow welcomes high-quality original contributions on experimental, computational, and physical aspects of convective heat transfer and fluid dynamics relevant to engineering or the environment, including multiphase and microscale flows. Papers reporting the application of these disciplines to design and development, with emphasis on new technological fields, are also welcomed. Some of these new fields include microscale electronic and mechanical systems; medical and biological systems; and thermal and flow control in both the internal and external environment.
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