Tree-Based Ensemble Learning Models for Wall Temperature Predictions in Post-Critical Heat Flux Flow Regimes at Subcooled and Low-Quality ConditionsSource: ASME Journal of Heat and Mass Transfer:;2023:;volume( 145 ):;issue: 004::page 41604-1DOI: 10.1115/1.4056763Publisher: The American Society of Mechanical Engineers (ASME)
Abstract: Accurately predicting post-critical heat flux (CHF) heat transfer is an important but challenging task in water-cooled reactor design and safety analysis. Although numerous heat transfer correlations have been developed to predict post-CHF heat transfer, these correlations are only applicable to relatively narrow ranges of flow conditions due to the complex physical nature of the post-CHF heat transfer regimes. In this paper, a large quantity of experimental data is collected and summarized from the literature for steady-state subcooled and low-quality film boiling regimes with water as the working fluid in vertical tubular test sections. A low-quality water film boiling (LWFB) database is consolidated with a total of 22,813 experimental data points, which cover a wide flow range of the system pressure from 0.1 to 9.0 MPa, mass flux from 25 to 2750 kg/m2 s, and inlet subcooling from 1 to 70 °C. Two machine learning (ML) models, based on random forest (RF) and gradient boosted decision tree (GBDT), are trained and validated to predict wall temperatures in post-CHF flow regimes. The trained ML models demonstrate significantly improved accuracies compared to conventional empirical correlations. To further evaluate the performance of these two ML models from a statistical perspective, three criteria are investigated and three metrics are calculated to quantitatively assess the accuracy of these two ML models. For the full LWFB database, the root-mean-square errors between the measured and predicted wall temperatures by the GBDT and RF models are 5.7% and 6.2%, respectively, confirming the accuracy of the two ML models.
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contributor author | Liu, Qingqing | |
contributor author | Liu, Yang | |
contributor author | Burak, Adam | |
contributor author | Kelly, Joseph | |
contributor author | Bajorek, Stephen | |
contributor author | Sun, Xiaodong | |
date accessioned | 2023-08-16T18:25:53Z | |
date available | 2023-08-16T18:25:53Z | |
date copyright | 2/8/2023 12:00:00 AM | |
date issued | 2023 | |
identifier issn | 2832-8450 | |
identifier other | ht_145_04_041604.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4291950 | |
description abstract | Accurately predicting post-critical heat flux (CHF) heat transfer is an important but challenging task in water-cooled reactor design and safety analysis. Although numerous heat transfer correlations have been developed to predict post-CHF heat transfer, these correlations are only applicable to relatively narrow ranges of flow conditions due to the complex physical nature of the post-CHF heat transfer regimes. In this paper, a large quantity of experimental data is collected and summarized from the literature for steady-state subcooled and low-quality film boiling regimes with water as the working fluid in vertical tubular test sections. A low-quality water film boiling (LWFB) database is consolidated with a total of 22,813 experimental data points, which cover a wide flow range of the system pressure from 0.1 to 9.0 MPa, mass flux from 25 to 2750 kg/m2 s, and inlet subcooling from 1 to 70 °C. Two machine learning (ML) models, based on random forest (RF) and gradient boosted decision tree (GBDT), are trained and validated to predict wall temperatures in post-CHF flow regimes. The trained ML models demonstrate significantly improved accuracies compared to conventional empirical correlations. To further evaluate the performance of these two ML models from a statistical perspective, three criteria are investigated and three metrics are calculated to quantitatively assess the accuracy of these two ML models. For the full LWFB database, the root-mean-square errors between the measured and predicted wall temperatures by the GBDT and RF models are 5.7% and 6.2%, respectively, confirming the accuracy of the two ML models. | |
publisher | The American Society of Mechanical Engineers (ASME) | |
title | Tree-Based Ensemble Learning Models for Wall Temperature Predictions in Post-Critical Heat Flux Flow Regimes at Subcooled and Low-Quality Conditions | |
type | Journal Paper | |
journal volume | 145 | |
journal issue | 4 | |
journal title | ASME Journal of Heat and Mass Transfer | |
identifier doi | 10.1115/1.4056763 | |
journal fristpage | 41604-1 | |
journal lastpage | 41604-13 | |
page | 13 | |
tree | ASME Journal of Heat and Mass Transfer:;2023:;volume( 145 ):;issue: 004 | |
contenttype | Fulltext |