Kang Ruiyuan, Kyritsis Dimitrios C, Liatsis Panos
Directed Energy Research Center, Technology Innovation Institute, Abu Dhabi, UAE.
College of Technology and Design, Neom University, Neom, Saudi Arabia.
PLoS One. 2025 Jan 24;20(1):e0317703. doi: 10.1371/journal.pone.0317703. eCollection 2025.
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 non-homogeneous 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.
本文提出了一种方法,该方法解决了视线发射光谱法存在的一个问题,即它无法在非均匀温度场中提供空间分辨的温度测量。本研究的目的是探索使用数据驱动模型,以空间分辨的方式利用发射光谱数据测量温度分布。分析了两类数据驱动方法:(i)特征工程和经典机器学习算法,以及(ii)端到端卷积神经网络(CNN)。总共考虑了十五个特征组与十五个经典机器学习模型的组合,以及十一个CNN模型,并探讨了它们的性能。结果表明,特征工程与机器学习的组合比直接使用CNN具有更好的性能。值得注意的是,由物理引导变换、基于信号表示的特征提取和主成分分析组成的特征工程被发现是最有效的。此外,结果表明,在使用提取的特征时,基于集成的轻混合器学习模型表现最佳,其均方根误差(RMSE)、相对误差(RE)、相对均方根误差(RRMSE)和相关系数(R)分别为64.3、0.017、0.025和0.994。所提出的基于特征工程和轻混合器模型的方法,即使在气体混合物中的物种浓度分布未知的情况下,也能够从低分辨率光谱中测量非均匀温度分布。