Investigating the interaction parameters on ventilation supercavitation phenomena: Experimental and numerical analysis with machine learning interpretation

被引:14
作者
Kamali, Hossein Ali [1 ]
Pasandidehfard, Mahmoud [1 ]
机构
[1] Ferdowsi Univ Mashhad, Dept Mech Engn, Mashhad, Iran
关键词
CAVITATING FLOWS; DRAG REDUCTION;
D O I
10.1063/5.0172371
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Understanding the optimal values and interactions of parameters within each process is of highest importance. This study is dedicated to exploring the influence of various parameters and their interactions on ventilation supercavitation phenomena through interpretable machine learning (ML) models. In this study, the characteristics of supercavitation on a disk cavitator with enhanced ventilation at different Froude numbers have been examined through both experimental and numerical means. Subsequently, the data generated from the experimental and numerical methods have been employed to create the optimized ML model. Then, to investigate the behavior of important parameters, their interactions with each other, and the resulting impact of these interactions on conditioned cavitation, interpretable machine learning techniques, such as shapley additive explanations, partial dependence plots, and individual conditional expectations, were employed within an optimized ML model. The findings highlight that the ventilation coefficient is the most crucial parameter affecting the characteristics of supercavitation. Ventilation coefficient exhibits a non-linear behavior and performs effectively within the range of 0.06-0.12. Additionally, the water speed parameter and the ratio of the back-body's diameter significantly influence the cavity length and cavitation number. These parameters exhibit complex interactions, shaping the characteristics of blowing supercavitation.
引用
收藏
页数:15
相关论文
共 49 条
[1]   Hydrofoil drag reduction by partial cavitation [J].
Amromin, Eduard ;
Kopriva, Jim ;
Arndt, Roger E. A. ;
Wosnik, Martin .
JOURNAL OF FLUIDS ENGINEERING-TRANSACTIONS OF THE ASME, 2006, 128 (05) :931-936
[2]  
Arndt R., 2006, AIAA Paper No. 2006-3046
[3]   Characteristics prediction of hydrothermal biochar using data enhanced interpretable machine learning [J].
Chen, Chao ;
Wang, Zhi ;
Ge, Yadong ;
Liang, Rui ;
Hou, Donghao ;
Tao, Junyu ;
Yan, Beibei ;
Zheng, Wandong ;
Velichkova, Rositsa ;
Chen, Guanyi .
BIORESOURCE TECHNOLOGY, 2023, 377
[4]   Application of Random Forest and SHAP Tree Explainer in Exploring Spatial (In)Justice to Aid Urban Planning [J].
Deb, Debzani ;
Smith, Russell M. .
ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2021, 10 (09)
[5]   Machine learning-assisted multi-objective optimization of battery manufacturing from synthetic data generated by physics-based simulations [J].
Duquesnoy, Marc ;
Liu, Chaoyue ;
Dominguez, Diana Zapata ;
Kumar, Vishank ;
Ayerbe, Elixabete ;
Franco, Alejandro A. .
ENERGY STORAGE MATERIALS, 2023, 56 :50-61
[6]  
Dutta N, 2018, 2018 IEEE INTERNATIONAL CONFERENCE ON ENVIRONMENT AND ELECTRICAL ENGINEERING AND 2018 IEEE INDUSTRIAL AND COMMERCIAL POWER SYSTEMS EUROPE (EEEIC / I&CPS EUROPE)
[7]   An interpretable machine learning approach based on DNN, SVR, Extra Tree, and XGBoost models for predicting daily pan evaporation [J].
El Bilali, Ali ;
Abdeslam, Taleb ;
Ayoub, Nafii ;
Lamane, Houda ;
Ezzaouini, Mohamed Abdellah ;
Elbeltagi, Ahmed .
JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2023, 327
[8]   Applications of machine learning in friction stir welding: Prediction of joint properties, real-time control and tool failure diagnosis [J].
Elsheikh, Ammar H. .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 121
[9]  
Franc J.-P., 2006, Fundamentals of cavitation, V76
[10]   Peeking Inside the Black Box: Visualizing Statistical Learning With Plots of Individual Conditional Expectation [J].
Goldstein, Alex ;
Kapelner, Adam ;
Bleich, Justin ;
Pitkin, Emil .
JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2015, 24 (01) :44-65