Efficient and robust CNN-LSTM prediction of flame temperature aided light field online tomography

被引:0
作者
ZhiTian Niu
Hong Qi
AnTai Sun
YaTao Ren
MingJian He
BaoHai Gao
机构
[1] Harbin Institute of Technology,School of Energy Science and Engineering
[2] Ministry of Industry and Information Technology,Key Laboratory of Aerospace Thermophysics
来源
Science China Technological Sciences | 2024年 / 67卷
关键词
temperature prediction; convolutional neural network; long short-term memory; light field imaging; online tomography;
D O I
暂无
中图分类号
学科分类号
摘要
Light field tomography, an optical combustion diagnostic technology, has recently attracted extensive attention due to its easy implementation and non-intrusion. However, the conventional iterative methods are high data throughput, low efficiency and time-consuming, and the existing machine learning models use the radiation spectrum information of the flame to realize the parameter field measurement at the current time. It is still an offline measurement and cannot realize the online prediction of the instantaneous structure of the actual turbulent combustion field. In this work, a novel online prediction model of flame temperature instantaneous structure based on deep convolutional neural network and long short-term memory (CNN-LSTM) is proposed. The method uses the characteristics of local perception, shared weight, and pooling of CNN to extract the three-dimensional (3D) features of flame temperature and outgoing radiation images. Moreover, the LSTM is used to comprehensively utilize the ten historical time series information of high dynamic combustion flame to accurately predict 3D temperature at three future moments. A chaotic time-series dataset based on the flame radiation forward model is built to train and validate the performance of the proposed CNN-LSTM model. It is proven that the CNN-LSTM prediction model can successfully learn the evolution pattern of combustion flame and make accurate predictions.
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页码:271 / 284
页数:13
相关论文
共 134 条
[1]  
Ma L(2018)Characterization of temperature and soot volume fraction in laminar premixed flames: Laser absorption/extinction measurement and two-dimensional computational fluid dynamics modeling Energy Fuels 32 12962-12970
[2]  
Ning H(2017)Flame imaging reconstruction method using high resolution spectral data of OH*, CH* and C2* radicals Int J Thermal Sci 121 228-236
[3]  
Wu J(2017)Infrared laser-absorption sensing for combustion gases Prog Energy Combust Sci 60 132-176
[4]  
Alviso D(2022)Three-dimensional temperature reconstruction of diffusion flame from the light-field convolution imaging by the focused plenoptic camera Sci China Tech Sci 65 302-323
[5]  
Mendieta M(2022)Development of a single-camera volumetric thermometry for gas flows based on space division multiplexing Sci China Tech Sci 65 1646-1650
[6]  
Molina J(2023)Assessment of various full-spectrum correlated K-distribution methods in radiative heat transfer in oxy-fuel sooting flames Int J Thermal Sci 184 107919-2155
[7]  
Goldenstein C S(2021)Thermodynamics second-law analysis of hydrocarbon diffusion flames: Effects of soot and temperature Combust Flame 234 111618-1243
[8]  
Spearrin R M(2022)Real-time adaptive particle image velocimetry for accurate unsteady flow field measurements Sci China Tech Sci 65 2143-299
[9]  
Jeffries J B(2019)Joint method for reconstructing three-dimensional temperature of flame using Lucy-Richardson and nearest neighbor filtering using light-field imaging Sci China Tech Sci 62 1232-260
[10]  
Shi J W(2018)Instantaneous 3D flame imaging by background-oriented schlieren tomography Combust Flame 196 284-14198