state analysis
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2022 ◽  
Vol 172 ◽  
pp. 108852
Canh V. Le ◽  
Vu Q. Ho ◽  
Phuc L.H. Ho ◽  
Phuong H. Nguyen

2022 ◽  
Sanil Shah

Abstract Numerical study of heat transfer between circular jet arrays and the flat moving surface is carried out. Two jet patterns: inline and staggered, are chosen. Total nine circular jets are used in both jet patterns. The analysis is carried out for steady-state and transient conditions with the turbulent flow of jet fluid. In steady-state analysis, the influence of surface motion on the flow field and heat transfer by the array of jets is analyzed. The surface-to-jet velocity ratio (r) varies from 0 to 2. In transient analysis, the effect of jet pattern on the cooling of hot moving plate is analyzed. The two-equation shear stress transport (SST) k-? turbulence model is used for solving Reynolds averaged Navier-Stokes (RANS) equations of conservation of mass, momentum, and energy for incompressible turbulent flow. The steady-state analysis shows that surface motion has a significant effect on the flow field and heat transfer. The transient analysis results show that a staggered jet pattern cools the plate more uniformly than an inline jet pattern.

2022 ◽  
Tim Stuart ◽  
Avi Srivastava ◽  
Shaista Madad ◽  
Caleb A. Lareau ◽  
Rahul Satija

Carbon ◽  
2022 ◽  
Vol 186 ◽  
pp. 83-90
M.N. Drozdov ◽  
A.E. Ieshkin ◽  
O.A. Streletskiy ◽  
O. Yu Nishchak ◽  
S.F. Belykh ◽  
Tof Sims ◽  

2021 ◽  
Vol 2021 ◽  
pp. 1-11
Dong Huang ◽  
WeiXin Zhang

In basic education, timely and accurate grasp of students’ classroom learning status can provide real-time information reference and overall evaluation for teachers and managers, which has a very important educational application value. At present, a lot of information technology is applied in the analysis of classroom student behavior state, and the state analysis technology based on a classroom video has the characteristics of strong timeliness, wide dimension, and large capacity, which is especially suitable for the analysis and acquisition of students’ classroom state, and attracts the attention of major educational technology companies. However, the current student state acquisition technology based on video analysis lacks large scenes and has low practicability, and finally, the video-based student classroom behavior state analysis technology mainly focuses on a single behavior feature, which cannot fully reflect the student’s classroom behavior state. In view of the above problems, this study introduces the face recognition algorithm based on a student classroom video and its implementation process, improves the hybrid face detection model based on a traditional model, and proposes the neural network algorithm of student expression recognition based on a visual transformer. The experimental results show that the proposed algorithm based on students' classroom videos can effectively detect students’ attention and emotional state in class.

2021 ◽  
pp. 411-460
Alfonso Novales ◽  
Esther Fernández ◽  
Jesús Ruiz

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