Performance Augmentation Study on a Solar Flat Plate Water Collector System with Modified Absorber Flow Design and its Performance Prediction Using the XGBoost Algorithm: A Machine Learning Approach

被引:0
作者
M. Sridharan
机构
[1] SRM Institute of Science and Technology,Department of Mechanical Engineering
来源
Iranian Journal of Science and Technology, Transactions of Mechanical Engineering | 2024年 / 48卷
关键词
Absorber; Design; Novel; Performance; Prediction; Solar flat plate collector; Thermal power; XGBoost;
D O I
暂无
中图分类号
学科分类号
摘要
This study compares the thermal performance between a conventional and a newly configured solar flat plate water collector system. The principal goal of this newly configured system is to increase the heat transfer rate between the tube and sheet assembly by increasing the contact surface length. The comparative experiments between the conventional and newly configured system were conducted in Tiruchirappalli, India. The experimental outcomes indicated that the overall performance delivered by the modified system with increased contact surface length is 12.41% higher than the existing system. Further, this research attempts to predict the thermal performance delivered by the system using the XGBoost algorithm, a machine-learning technique. The XGBoost algorithm proposed in this study includes four features (three inputs and one output). Real-time data were used to measure the performance delivered by the XGBoost algorithm. The results recorded by this XGBoost algorithm are closer to real-time values. The accuracy of the proposed XGBoost algorithm in predicting the thermal power of a flat plate collector is 99.80%.
引用
收藏
页码:133 / 144
页数:11
相关论文
共 84 条
[11]  
Chandrasekar M(2014)Water flat plate PV—thermal collectors: a review Sol Energy 102 1-44
[12]  
Sridharan M(2022)Improving the thermal efficiency of a solar flat plate collector using MWCNT-Fe Case Stud Therm Eng 14 128566-undefined
[13]  
Das D(2022)O J Therm Sci Eng Appl 348 101404-undefined
[14]  
Bordoloi U(2019)/water hybrid nanofluids and ensemble machine learning J Sol Energy Eng 47 30-undefined
[15]  
Dilip A(2020)Effect of sucrose catalyst in the catalytic converter on performance and emission of spark ignition engine Ann Data Sci 64 120351-undefined
[16]  
Hihu H(2021)Application of generalized regression neural network in predicting the performance of natural convection solar dryer Int J Ambient Energy 162 undefined-undefined
[17]  
Krishna R(2021)Application of generalized regression neural network in predicting the performance of solar photovoltaic thermal water collector J Ambient Intell Humaniz Comput undefined undefined-undefined
[18]  
Kalita P(2022)Short review on various applications of fuzzy logic-based expert systems in the field of solar energy Int J Ambient Energy undefined undefined-undefined
[19]  
Dhif K(2022)Application of Mamdani fuzzy inference system in predicting the thermal performance of solar distillation still Constr Build Mater undefined undefined-undefined
[20]  
Mebarek-Oudina F(2020)Performance comparison study on differently configured solar photovoltaic thermal water collector systems Energy undefined undefined-undefined