A methodology is proposed, which addresses the caveat that line-of-sight emission spectroscopy presents in that it cannot provide spatially resolved temperature measurements in nonhomogeneous temperature fields. The aim of this research is to explore the use of data-driven models in measuring temperature distributions in a spatially resolved manner using emission spectroscopy data. Two categories of data-driven methods are analyzed: (i) Feature engineering and classical machine learning algorithms, and (ii) end-to-end convolutional neural networks (CNN). In total, combinations of fifteen feature groups and fifteen classical machine learning models, and eleven CNN models are considered and their performances explored. The results indicate that the combination of feature engineering and machine learning provides better performance than the direct use of CNN. Notably, feature engineering which is comprised of physics-guided transformation, signal representation-based feature extraction and Principal Component Analysis is found to be the most effective. Moreover, it is shown that when using the extracted features, the ensemble-based, light blender learning model offers the best performance with RMSE, RE, RRMSE and R values of 64.3, 0.017, 0.025 and 0.994, respectively. The proposed method, based on feature engineering and the light blender model, is capable of measuring nonuniform temperature distributions from low-resolution spectra, even when the species concentration distribution in the gas mixtures is unknown.
翻译:研究的目的是探讨使用数据驱动模型,利用排放光谱学数据,以空间分辨率测定温度分布; 分析两类数据驱动方法:(一) 地形工程和经典机器学习算法,以及(二) 端到端的神经网络(CNN)。总共考虑并探索了15个特征组和15个经典机器学习模型以及11个CNN模型的结合,这些模型的性能和性能。研究结果表明,特征工程和机器学习相结合比CNN的直接使用具有更好的性能。 值得注意的是,由物理制导变、信号式特征提取和主要组成部分分析组成的特征工程被认为最为有效。此外,还表明,在使用提取的特征时,基于通识的轻混合学习模型甚至提供RME、RE、RMSME和RMNA模型的最佳性能,以及11个CNNM模型和11个CNN模型的性能。