Wu Yi, Li Zhen, Wang Qianlong, Legros Guillaume, Li Chaomin, Yan Zhiwen
Opt Express. 2022 Jun 6;30(12):21230-21240. doi: 10.1364/OE.458096.
An original convolutional neural network, i.e. U-net approach, has been designed to retrieve simultaneously local soot temperature and volume fraction fields from line-of-sight measurements of soot radiation fields. A five-stage U-net architecture is established and detailed. Based on a set of N diluted ethylene non-premixed flames, the minimum batch size requirement for U-net model training is discussed and the U-net model prediction ability is validated for the first time by fields provided by the modulated absorption emission (MAE) technique documenting the N diluted flame. Additionally, the U-net model's flexibility and robustness to noise are also quantitatively studied by introducing 5% & 10% Gaussian random noises into training together with the testing data. Eventually, the U-net predictive results are directly contrasted with those of Bayesian optimized back propagation neural network (BPNN) in terms of testing score, prediction absolute error (AE), soot parameter field smoothness, and time cost.
一种原始的卷积神经网络,即U-net方法,已被设计用于从烟尘辐射场的视线测量中同时获取局部烟尘温度和体积分数场。建立并详细说明了一种五级U-net架构。基于一组N个稀释乙烯非预混火焰,讨论了U-net模型训练的最小批量大小要求,并首次通过记录N个稀释火焰的调制吸收发射(MAE)技术提供的场来验证U-net模型的预测能力。此外,还通过在训练数据和测试数据中引入5%和10%的高斯随机噪声,对U-net模型对噪声的灵活性和鲁棒性进行了定量研究。最后,在测试分数、预测绝对误差(AE)、烟尘参数场平滑度和时间成本方面,将U-net预测结果与贝叶斯优化反向传播神经网络(BPNN)的结果进行了直接对比。