Wada Yuki, Hirose Yoshiyasu, Sibamoto Yasuteru
Japan Atomic Energy Agency, 319-1195, 2-4 Shirakata, Tokai, Ibaraki, Japan.
Japan Atomic Energy Agency, 319-1195, 2-4 Shirakata, Tokai, Ibaraki, Japan.
Ultrasonics. 2024 Jul;141:107346. doi: 10.1016/j.ultras.2024.107346. Epub 2024 May 18.
Ultrasound tomography (UT) of bubbly two-phase flows using machine learning (ML) was investigated by performing two-dimensional ultrasound numerical simulations using a finite element method simulator. Studies on UT for two-phase flow measurements have been conducted only for some bubbles. However, in an actual bubbly flow, numerous bubbles are complexly distributed in the cross-section of the flow channel. This limitation of previous studies originates from the transmission characteristics of ultrasound waves through a medium. The transmission characteristics of ultrasound waves differ from those of other probe signals, such as radiation, electrical, and optical signals. This study evaluated the feasibility of combining UT with ML for predicting dense bubble distributions with up to 20 bubbles (cross-sectional average void fraction of approximately 0.29). We investigated the effects of the temporal length of the received waveform and the number of sensors to optimize the system on the prediction performance of the bubble distribution. The simultaneous driving of the installed sensors was simulated to reduce the measurement time for the entire cross-section and verify the method's applicability. Thus, it was confirmed that UT using ML has sufficient prediction performance, even for a complex bubble distribution with many bubbles, and that the cross-sectional average void fraction can be predicted with high accuracy.
通过使用有限元方法模拟器进行二维超声数值模拟,研究了利用机器学习(ML)对气泡两相流进行超声层析成像(UT)。关于用于两相流测量的超声层析成像的研究仅针对一些气泡进行过。然而,在实际的气泡流中,大量气泡在流道横截面上复杂地分布。先前研究的这一局限性源于超声波在介质中的传播特性。超声波的传播特性不同于其他探测信号,如辐射、电和光信号。本研究评估了将超声层析成像与机器学习相结合以预测多达20个气泡(横截面平均空隙率约为0.29)的密集气泡分布的可行性。我们研究了接收波形的时间长度和传感器数量对优化系统的气泡分布预测性能的影响。模拟了已安装传感器的同时驱动,以减少整个横截面的测量时间并验证该方法的适用性。因此,证实了即使对于具有许多气泡的复杂气泡分布,使用机器学习的超声层析成像也具有足够的预测性能,并且可以高精度预测横截面平均空隙率。