Jiang Yunfan, Si Jingjing, Zhang Rui, Enemali Godwin, Zhou Bin, McCann Hugh, Liu Chang
IEEE Trans Neural Netw Learn Syst. 2023 Nov;34(11):9248-9258. doi: 10.1109/TNNLS.2022.3157689. Epub 2023 Oct 27.
Chemical species tomography (CST) has been widely used for in situ imaging of critical parameters, e.g., species concentration and temperature, in reactive flows. However, even with state-of-the-art computational algorithms, the method is limited due to the inherently ill-posed and rank-deficient tomographic data inversion and by high computational cost. These issues hinder its application for real-time flow diagnosis. To address them, we present here a novel convolutional neural network, namely CSTNet, for high-fidelity, rapid, and simultaneous imaging of species concentration and temperature using CST. CSTNet introduces a shared feature extractor that incorporates the CST measurements and sensor layout into the learning network. In addition, a dual-branch decoder with internal crosstalk, which automatically learns the naturally correlated distributions of species concentration and temperature, is proposed for image reconstructions. The proposed CSTNet is validated both with simulated datasets and with measured data from real flames in experiments using an industry-oriented sensor. Superior performance is found relative to previous approaches in terms of reconstruction accuracy and robustness to measurement noise. This is the first time, to the best of our knowledge, that a deep learning-based method for CST has been experimentally validated for simultaneous imaging of multiple critical parameters in reactive flows using a low-complexity optical sensor with a severely limited number of laser beams.
化学物质断层扫描(CST)已被广泛用于对反应流中的关键参数(例如物质浓度和温度)进行原位成像。然而,即使使用最先进的计算算法,由于断层扫描数据反演本质上的不适定性和秩亏性以及计算成本高,该方法仍受到限制。这些问题阻碍了其在实时流动诊断中的应用。为了解决这些问题,我们在此提出一种新颖的卷积神经网络,即CSTNet,用于使用CST对物质浓度和温度进行高保真、快速且同时的成像。CSTNet引入了一个共享特征提取器,该提取器将CST测量值和传感器布局纳入学习网络。此外,还提出了一种具有内部串扰的双分支解码器,用于图像重建,该解码器可自动学习物质浓度和温度的自然相关分布。所提出的CSTNet在模拟数据集以及使用面向工业的传感器的实验中对真实火焰的测量数据上均得到了验证。在重建精度和对测量噪声的鲁棒性方面,相对于先前的方法发现了优越的性能。据我们所知,这是首次通过实验验证基于深度学习的CST方法能够使用具有极有限数量激光束的低复杂度光学传感器对反应流中的多个关键参数进行同时成像。