Machine Learning based algorithms for modeling natural convection fluid flow and heat and mass transfer in rectangular cavities filled with non-Newtonian fluids

被引:20
|
作者
Tizakast, Youssef [1 ]
Kaddiri, Mourad [1 ]
Lamsaadi, Mohamed [2 ]
Makayssi, Taoufik [2 ]
机构
[1] Sultan Moulay Slimane Univ, Ind Engn & Surface Engn Lab LGIIS, BP 523, Beni Mellal 23000, Morocco
[2] Sultan Moulay Slimane Univ, Polydisciplinary Fac, Res Lab Phys & Sci Engineers LRPSI, B P 592, Beni Mellal, Morocco
关键词
Natural double-diffusive convection; Non-Newtonian fluids; Machine Learning; Artificial Neural Networks; Random Forests; Gradient Boosting; DOUBLE-DIFFUSIVE CONVECTION; SQUARE CAVITY; NUMERICAL-SIMULATION; NEURAL-NETWORKS; ENCLOSURE; SOLIDIFICATION; TEMPERATURE; GROWTH; SORET; WALL;
D O I
10.1016/j.engappai.2022.105750
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The importance of studying double-diffusive fluid flows along with the significance of non-Newtonian fluids have been well recognized in the fluid dynamics field for scientific and practical purposes. However, and given the ever-rising complexity of such non-linear flows, the conventional simulation methods are confronted with problems related to accuracy and required computation time and resources. As a result, the Machine Learning approach qualifies as a promising solution to said limitations. The present study investigates the application of Machine Learning models to study double-diffusive natural convection in rectangular cavities filled with non -Newtonian fluids. The flow is governed by four dimensionless parameters, namely: thermal Rayleigh number RaT, Lewis number Le, buoyancy ratio N, and power-law behavior index n, employed as input features. To precisely model fluid flow, three characteristics are predicted: flow intensity symbolscript symbolscript average Nusselt number Nu, and average Sherwood number Sh using four machine learning models: Artificial Neural Networks (ANN), Random Forests (RF), Gradient Boosted Decision Trees (GBDT), and Extreme Gradient Boosting (XGBoost). The analysis of investigated models' fine-tuned architectures using various tools confirms the non-linear complexity of the problem and allows to explore and discuss in details the inner-workings of each model. The ANN predicts the test data with R2 = 0.9999, R2 = 0.9996, and R2 = 0.9999 followed by XGBoost with R2 = 0.9979, R2 = 0.9802, and R2 = 0.9979, and that for symbolscript symbolscript Nu, and Sh, respectively. The study shows the strong and correlated effects of RaT and n on the flow characteristics. The models' generalization is further examined using fluids with power-law behavior indexes outside the learning range. The present paper validates the choice of Machine Learning approach as a promising solution to model non-Newtonian double-diffusive fluid flows and encourages future works in this direction.
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页数:28
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