Ensemble Learning Algorithms for Solar Radiation Prediction in Santo Domingo: Measurements and Evaluation

被引:0
|
作者
Ramirez-Rivera, Francisco A. [1 ]
Guerrero-Rodriguez, Nestor F. [1 ]
机构
[1] Pontificia Univ Catolica Madre & Maestra PUCMM, Engn Sci, Av Abraham Lincoln Esq Romulo Betancourt, Santo Domingo, Dominican Rep
关键词
ensemble learning; evaluation metrics; heterogeneous ensemble learning; homogeneous ensemble learning; hyperparameter; time horizon; solar radiation; HORIZONTAL DIFFUSE; MODELS;
D O I
10.3390/su16188015
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Solar radiation is a fundamental parameter for solar photovoltaic (PV) technology. Reliable solar radiation prediction has become valuable for designing solar PV systems, guaranteeing their performance, operational efficiency, safety in operations, grid dispatchment, and financial planning. However, high quality ground-based solar radiation measurements are scarce, especially for very short-term time horizons. Most existing studies trained machine learning (ML) models using datasets with time horizons of 1 h or 1 day, whereas very few studies reported using a dataset with a 1 min time horizon. In this study, a comprehensive evaluation of nine ensemble learning algorithms (ELAs) was performed to estimate solar radiation in Santo Domingo with a 1 min time horizon dataset, collected from a local weather station. The ensemble learning models evaluated included seven homogeneous ensembles: Random Forest (RF), Extra Tree (ET), adaptive gradient boosting (AGB), gradient boosting (GB), extreme gradient boosting (XGB), light gradient boosting (LGBM), histogram-based gradient boosting (HGB); and two heterogeneous ensembles: voting and stacking. RF, ET, GB, and HGB were combined to develop voting and stacking ensembles, with linear regression (LR) being adopted in the second layer of the stacking ensemble. Six technical metrics, including mean squared error (MSE), root mean squared error (RMSE), relative root mean squared error (rRMSE), mean absolute error (MAE), mean absolute percentage error (MAPE), and coefficient of determination (R2), were used as criteria to determine the prediction quality of the developed ensemble algorithms. A comparison of the results indicates that the HGB algorithm offers superior prediction performance among the homogeneous ensemble learning models, while overall, the stacking ensemble provides the best accuracy, with metric values of MSE = 3218.27, RMSE = 56.73, rRMSE = 12.700, MAE = 29.87, MAPE = 10.60, and R2 = 0.964.
引用
收藏
页数:27
相关论文
共 50 条
  • [21] Prediction of hourly solar radiation in Tamil Nadu using ANN model with different learning algorithms
    Geetha, A.
    Santhakumar, J.
    Sundaram, K. Mohana
    Usha, S.
    Thentral, T. M. Thamizh
    Boopathi, C. S.
    Ramya, R.
    Sathyamurthy, Ravishankar
    ENERGY REPORTS, 2022, 8 : 664 - 671
  • [22] Soil Categorization and Liquefaction Prediction Using Deep Learning and Ensemble Learning Algorithms
    Ghani, Sufyan
    Thapa, Ishwor
    Adhikari, Dhan Kumar
    Waris, Kenue Abdul
    TRANSPORTATION INFRASTRUCTURE GEOTECHNOLOGY, 2025, 12 (01)
  • [23] Evaluation of Scikit-Learn Machine Learning Algorithms for Improving CMA-WSP v2.0 Solar Radiation Prediction
    Wang, Dan
    Shen, Yanbo
    Ye, Dong
    Yang, Yanchao
    Da, Xuanfang
    Mo, Jingyue
    ATMOSPHERE, 2024, 15 (08)
  • [24] Forecasting Solar Radiation Strength Using Machine Learning Ensemble
    Al-Hajj, Rami
    Assi, Ali
    Fouad, Mohamad M.
    2018 7TH INTERNATIONAL CONFERENCE ON RENEWABLE ENERGY RESEARCH AND APPLICATIONS (ICRERA), 2018, : 184 - 188
  • [25] Forecasting Solar Radiation: Using Machine Learning Algorithms
    Chaudhary, Pankaj
    Gattu, Rohith
    Ezekiel, Soundarajan
    Rodger, James Allen
    JOURNAL OF CASES ON INFORMATION TECHNOLOGY, 2021, 23 (04)
  • [26] On estimation of atmospheric scattering characteristics from spectral measurements of solar radiation using machine learning algorithms
    Nikitin, Stanislav, V
    Chulichkov, Alexey, I
    Borovski, Alexander N.
    Postylyakov, Oleg, V
    REMOTE SENSING OF CLOUDS AND THE ATMOSPHERE XXV, 2020, 11531
  • [27] Ensemble learning algorithms based on easyensemble sampling for financial distress prediction
    Liu, Wei
    Suzuki, Yoshihisa
    Du, Shuyi
    ANNALS OF OPERATIONS RESEARCH, 2025, : 2141 - 2172
  • [28] Prediction of organophosphorus pesticide adsorption by biochar using ensemble learning algorithms
    Nighojkar, Amrita
    Nagpal, Jyoti
    Soboyejo, Winston
    Plappally, Anand
    Pandey, Shilpa
    ENVIRONMENTAL MONITORING AND ASSESSMENT, 2023, 195 (08)
  • [29] The effect of data distribution in Ensemble Learning Algorithms on WLCSP reliability Prediction
    Chang, H. M.
    Chen, B. W.
    Chiang, K. N.
    2021 16TH INTERNATIONAL MICROSYSTEMS, PACKAGING, ASSEMBLY AND CIRCUITS TECHNOLOGY CONFERENCE (IMPACT), 2021, : 60 - 63
  • [30] Prediction of cryptocurrency's price using ensemble machine learning algorithms
    Balijepalli, N. S. S. Kiranmai
    Thangaraj, Viswanathan
    EUROPEAN JOURNAL OF MANAGEMENT AND BUSINESS ECONOMICS, 2025,