利用卷积神经网络在明渠水流图像中实现从稀疏到密集的表征

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY Inventions Pub Date : 2024-03-04 DOI:10.3390/inventions9020027
F. Sofos, G. Sofiadis, Efstathios Chatzoglou, Apostolos Palasis, T. Karakasidis, Antonios Liakopoulos
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引用次数: 0

摘要

过去几年,卷积神经网络(CNN)因其提取和处理流体流场特征的能力而被广泛应用于流体动力学研究。无论是在稀疏网格模拟还是基于传感器的实验数据中,建立包含所有空间和时间流动信息的密集流场都是一个未决问题,尤其是在湍流情况下。本文介绍了一种基于计算 CNN 层的深度学习(DL)方法,重点是重建不同分辨率的湍流明渠流场。我们从低/高分辨率的图像耦合开始,训练我们的 DL 模型,以高效地重建连续低分辨率数据(来自稀疏网格直接数值模拟(DNS))的速度场,并专注于获得相应密集网格 DNS 的精度。根据峰值信噪比(PSNR)对重建进行评估,发现即使地面实况输入缩减到 25 倍,峰值信噪比也很高。
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From Sparse to Dense Representations in Open Channel Flow Images with Convolutional Neural Networks
Convolutional neural networks (CNN) have been widely adopted in fluid dynamics investigations over the past few years due to their ability to extract and process fluid flow field characteristics. Both in sparse-grid simulations and sensor-based experimental data, the establishment of a dense flow field that embeds all spatial and temporal flow information is an open question, especially in the case of turbulent flows. In this paper, a deep learning (DL) method based on computational CNN layers is presented, focusing on reconstructing turbulent open channel flow fields of various resolutions. Starting from couples of images with low/high resolution, we train our DL model to efficiently reconstruct the velocity field of consecutive low-resolution data, which comes from a sparse-grid Direct Numerical Simulation (DNS), and focus on obtaining the accuracy of a respective dense-grid DNS. The reconstruction is assessed on the peak signal-to-noise ratio (PSNR), which is found to be high even in cases where the ground truth input is scaled down to 25 times.
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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