Evaluation of air temperature with machine learning regression methods using Seoul City meteorological data

被引:9
作者
Apaydin, Merve [1 ]
Yumus, Mehmethan [1 ]
Degirmenci, Ali [1 ]
Karal, Omer [1 ]
机构
[1] Ankara Yildirim Beyazit Univ, Sch Engn & Nat Sci, Dept Elect & Elect, Ankara, Turkey
来源
PAMUKKALE UNIVERSITY JOURNAL OF ENGINEERING SCIENCES-PAMUKKALE UNIVERSITESI MUHENDISLIK BILIMLERI DERGISI | 2022年 / 28卷 / 05期
关键词
Machine learning; Daily weather forecasting; Regression method; Seoul;
D O I
10.5505/pajes.2022.66915
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Weather has a significant impact on human life and activities. As abrupt changes in air temperature negatively affect daily life and various industries, the importance of weather forecast accuracy is increasing day by day. Current weather forecasting methods can be divided into two main groups: numerical-based and machine learning-based approaches. Numerical-based weather forecasting methods use complex mathematical formulas that significantly increase the computational cost. On the other hand, machine learning-based methods have been preferred more in recent years due to their lower computational costs. In this study, the next day's maximum and minimum air temperature are estimated for Seoul, South Korea by using 12 different regression methods together with the boosting-based machine learning algorithms developed in recent years, as well as traditional machine learning methods. Furthermore, since tuning of hyperparameters affects the process time and performance of machine learning algorithms, all 12 methods have been extensively studied in terms of time and hyperparameters. The square correlation coefficient (R-2), which is frequently adopted in the literature, is used to compare the performances of the methods. According to the observed results, the boosting-based XGBoost and LightGBM methods are the most successful machine learning algorithms in predicting the maximum and minimum air temperature for all years with both statistical test analysis and the highest R-2 score.
引用
收藏
页码:737 / 747
页数:11
相关论文
共 32 条
[1]  
Akyuz A. O., 2020, GUMUSHANE U FEN BILI, V10, P146, DOI [10.17714/gumusfenbil.511481, DOI 10.17714/GUMUSFENBIL.511481]
[2]   Large-Scale Machine Learning with Stochastic Gradient Descent [J].
Bottou, Leon .
COMPSTAT'2010: 19TH INTERNATIONAL CONFERENCE ON COMPUTATIONAL STATISTICS, 2010, :177-186
[3]  
Bushara N.O., 2014, J NETW INNOV COMPUT, V2, P309
[4]   Comparative Assessment of Various Machine Learning-Based Bias Correction Methods for Numerical Weather Prediction Model Forecasts of Extreme Air Temperatures in Urban Areas [J].
Cho, Dongjin ;
Yoo, Cheolhee ;
Im, Jungho ;
Cha, Dong-Hyun .
EARTH AND SPACE SCIENCE, 2020, 7 (04)
[5]  
Degirmenci A., 2018, Am. J. Eng. Res. Rev., V7, P238
[6]   Estimating spatio-temporal air temperature in London (UK) using machine learning and earth observation satellite data [J].
dos Santos, Rochelle Schneider .
INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2020, 88
[7]  
Duo D, 2021, UCI MACHINE LEARNING
[8]  
Enireddy VamsidharK., 2010, (IJCSE) International Journal on Computer Science and Engineering, V02, P1119, DOI DOI 10.5120/21052-3693
[9]   New approach to estimate daily reference evapotranspiration based on hourly temperature and relative humidity using machine learning and deep learning [J].
Ferreira, Lucas Borges ;
da Cunha, Fernando Franca .
AGRICULTURAL WATER MANAGEMENT, 2020, 234
[10]   A decision-theoretic generalization of on-line learning and an application to boosting [J].
Freund, Y ;
Schapire, RE .
JOURNAL OF COMPUTER AND SYSTEM SCIENCES, 1997, 55 (01) :119-139