共 58 条
Modeling of Combustion Characteristics of Particles in Transient Gas-Solid Reacting Flow via a Machine Learning Approach
被引:1
作者:
Qu, Sibo
[1
]
Zhang, Wei
[1
]
You, Changfu
[1
,2
]
机构:
[1] Tsinghua Univ, Dept Energy & Power Engn, Key Lab Thermal Sci & Power Engn, Minist Educ, Beijing 100084, Peoples R China
[2] Tsinghua Univ, Shanxi Res Inst Clean Energy, Taiyuan 030000, Peoples R China
关键词:
DIRECT NUMERICAL-SIMULATION;
PULVERIZED COAL COMBUSTION;
ARTIFICIAL NEURAL-NETWORK;
OXY-FUEL COMBUSTION;
DRAG FORCE;
OPTIMIZATION;
BOILER;
PERFORMANCE;
EFFICIENCY;
CARBON;
D O I:
10.1021/acs.iecr.2c02697
中图分类号:
TQ [化学工业];
学科分类号:
0817 ;
摘要:
Particle group combustion presents a strong temporal and spatial inhomogeneity owing to the complicated interphase interactions. Based on the data set from the fictitious domain method, the recurrent fully connected and convolutional parallel neural network (R-FC&CNN) architecture and its two comparable simplified models, that is, the recurrent fully connected neural network (R-FCNN) and the recurrent convolutional neural network (R-CNN) architectures, were constructed for predicting the gas-solid momentum exchange coefficient, beta (kg center dot s(-1)center dot m(-3)), average combustion rate per unit surface area of particles, (r) over bar (c)/A (kg center dot s(-1)center dot m(-2)), and comprehensive NaCl release parameter, gamma, selectively. A time sequence of average particle temperature, (T) over bar (K), and particle volume fraction, epsilon, which can be extended in the matrix form, were constructed as the features selectively according to their correlation with the target physical quantity. The average relative error, (delta) over bar and coefficient of determination, R-2, were used as the evaluators. Through final testing, in the mild combustion domain, the R-CNN and R-FCNN models with simple structures showed good performance for beta((beta) over bar = 0.13, R-2 = 0.8) and (r) over bar (c)/A ((delta) over bar = 0.04, R-2 = 0.84), respectively, while in the severe combustion domain, the R-FC&CNN model, with more complete features and functional structure, performed the best (for beta, (delta) over bar= 0.12, R-2 = 0.85; for rc/A, (delta) over bar= 0.05, R-2 = 0.92; and for gamma, = 0.05, R = 0.96). A fine-tuning and interpolated prediction method was developed to investigate further the model's expansibility. Both ensured acceptable performance on a new similar problem. In summary, the feasibility of physical meaning-oriented machine learning-based model(s) for predicting the combustion characteristics of nonuniformly distributed particles was confirmed.
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页码:725 / 740
页数:16
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