On large scale CFD–DEM simulation for gas–liquid–solid three-phase flows

Particuology ◽  
2020 ◽  
Author(s):  
Kimiaki Washino ◽  
Ei L. Chan ◽  
Tetsushi Kaji ◽  
Yoshiaki Matsuno ◽  
Toshitsugu Tanaka
1989 ◽  
Vol 4 (2) ◽  
pp. 487-493 ◽  
Author(s):  
E.B. Makram ◽  
V.O. Zambrano ◽  
R.G. Harley ◽  
J.C. Balda

2015 ◽  
Vol 2015.28 (0) ◽  
pp. _260-1_-_260-2_
Author(s):  
Seiya WATANABE ◽  
Takayuki AOKI ◽  
Satori TSUZUKI

Author(s):  
Yusuke Shigeto ◽  
Mikio Sakai ◽  
Shin Mizutani ◽  
Seiichi Koshizuka ◽  
Shuji Matsusaka

Large amount of particles are used in the industrial systems. Numerical analyses of these systems are expected to reduce designing cost. However the numerical analysis of powder is not used practically, because it requires high calculation cost which grows up with the number of particles. Besides, there are memory consumption problem which is required for calculation space. In this paper, the parallel simulation techniques of the Discrete Element Method (DEM) on multi-core processors are described. In the present study, it is shown that the algorithm enables all the processes of the DEM to be executed parallel. Moreover, a new algorithm which makes the memory space usage effectively and accelerates the calculation speed is proposed for multi-thread parallel computing of the DEM. In the present study, the memory space usage is shown to be reduced drastically by introducing this algorithm. In addition, the coarse grain model which emulates original particles with less calculation particles is applied in order to reduce calculation cost. For the practical usage of the DEM in industries, the simulation is performed in a large-scale powder system which possesses a complicated drive unit. In the current study, it is shown that the large scale DEM simulation of practical systems is enabled to be executed by our proposing algorithms.


1989 ◽  
Vol 9 (5) ◽  
pp. 47-47
Author(s):  
Elham B. Makram ◽  
V. Omar Zambrano ◽  
Ronald G. Harley ◽  
Juan C. Balda

Author(s):  
Jigneshkumar Pramodbhai Desai ◽  
Vijay Hiralal Makwana

AbstractOut-of-step protection of one or a group of synchronous generators is unreliable in a power system which has significant renewable power penetration. In this work, an innovative out-of-step protection algorithm using wavelet transform and deep learning is presented to protect synchronous generators and transmission lines. The specific patterns are generated from both stable and unstable power swing, and three-phase fault using the wavelet transform technique. Data containing 27,008 continuous samples of 48 different features is used to train a two-layer feed-forward network. The proposed algorithm gives an automatic, setting free and highly accurate classification for the three-phase fault, stable power swing, and unstable power swing through pattern recognition within a half cycle. The proposed algorithm uses the Kundur 2-area system and a 29-bus electric network for testing under different swing center locations and levels of renewable power penetration. Hardware-in-the-loop (HIL) tests show the hardware compatibility of the developed out-of-step algorithm. The proposed algorithm is also compared with recently reported algorithms. The comparison and test results on different large-scale systems show that the proposed algorithm is simple, fast, accurate, and HIL tested, and not affected by changes in power system parameters.


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