Abstract
An artificial neural network (ANN) for predicting critical heat flux (CHF) of concentric-tube open thermosyphon has been trained successfully based on the experimental data from the literature. The dimensionless input parameters of the ANN are density ratio, ρl/ρv, the ratio of the heated tube length to the inner diameter of the outer tube L/Di, the ratio of frictional area, di/(Di + do), and the ratio of equivalent heated diameter to characteristic bubble size, D he/[σ/g(ρl-ρv)]0.5, the output is Kutateladze number, Ku. The predicted values of ANN are found to be in reasonable agreement with the actual values from the experiments with a mean relative error (MRE) of 8.46%. For a particular outer tube, the CHF increases initially and then decreases with increasing inner tube diameter, and has a maximum at an optimum diameter of inner tube (do,opt). The do,opt is correlated with the working fluid and may decrease with the increase of ρl/ρv. CHF decreases with the increase of L/Di, and the decreasing rate decreases as L/D i increases. In the influence scope of pressure, the CHF decreases with increasing pressure for R22, while increases with increasing pressure for R113.
Original language | English |
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Title of host publication | International Conference on Nuclear Engineering, Proceedings, ICONE |
Pages | 689-696 |
Number of pages | 8 |
Volume | 4 |
Edition | PARTS A AND B |
DOIs | |
Publication status | Published - 2010 |
Event | 18th International Conference on Nuclear Engineering, ICONE18 - Xi'an Duration: 2010 May 17 → 2010 May 21 |
Other
Other | 18th International Conference on Nuclear Engineering, ICONE18 |
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City | Xi'an |
Period | 10/5/17 → 10/5/21 |
ASJC Scopus subject areas
- Nuclear Energy and Engineering