Schepperle Mark, Junaid Shayan, Woias Peter
Laboratory for the Design of Microsystems, Department of Microsystems Engineering-IMTEK, University of Freiburg, 79110 Freiburg, Germany.
Sensors (Basel). 2024 May 24;24(11):3363. doi: 10.3390/s24113363.
The aim of this article is to introduce a novel approach to identifying flow regimes and void fractions in microchannel flow boiling, which is based on binary image segmentation using digital image processing and deep learning. The proposed image processing pipeline uses adaptive thresholding, blurring, gamma correction, contour detection, and histogram comparison to separate vapor from liquid areas, while the deep learning method uses a customized version of a convolutional neural network (CNN) called U-net to extract meaningful features from video frames. Both approaches enabled the automatic detection of flow boiling conditions, such as bubbly, slug, and annular flow, as well as automatic void fraction calculation. Especially CNN demonstrated its ability to deliver fast and dependable results, presenting an appealing substitute to manual feature extraction. The U-net-based CNN was able to segment flow boiling images with a Dice score of 99.1% and classify the above flow regimes with an overall classification accuracy of 91%. In addition, the neural network was able to predict resistance sensor readings from image data and assign them to a flow state with a mean squared error (MSE) < 10.
本文旨在介绍一种识别微通道流动沸腾中流型和空隙率的新方法,该方法基于使用数字图像处理和深度学习的二值图像分割。所提出的图像处理管道使用自适应阈值处理、模糊处理、伽马校正、轮廓检测和直方图比较来分离蒸汽和液体区域,而深度学习方法使用一种名为U-net的卷积神经网络(CNN)的定制版本从视频帧中提取有意义的特征。两种方法都能够自动检测流动沸腾条件,如泡状流、弹状流和环状流,以及自动计算空隙率。特别是CNN展示了其提供快速可靠结果的能力,为手动特征提取提供了一个有吸引力的替代方案。基于U-net的CNN能够以99.1%的骰子系数分割流动沸腾图像,并以91%的总体分类准确率对上述流型进行分类。此外,神经网络能够根据图像数据预测电阻传感器读数,并将其分配到一个均方误差(MSE)<10的流动状态。