Yıl: 2022 Cilt: 12 Sayı: 1 Sayfa Aralığı: 56 - 65 Metin Dili: İngilizce DOI: 10.11121/ijocta.2022.1084 İndeks Tarihi: 22-06-2022

Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS

Öz:
Residential customers are the main users generally need a great quantity of natural gas in distribution systems, especially, in the wintry weather season since it is particularly consumed for cooking and space heating. Hence, it ought to be non- interruptible. Since distribution systems have a restricted ability for supply, reasonable planning and prediction through the whole year, especially in winter seasons, have emerged as vital. The Ridge Regression (RR) is formulated mainly to decrease collinearity results through shrinking the regression coefficients and reducing the impact in the model of variables. Conic multivariate adaptive regression splines ((C)MARS) model is constructed as an effective choice for MARS by using inverse problems, statistical learning, and multi-objective optimization theories. In this approach, the model complexity is penalized in the structure of RR and it is constructed a relaxation by utilizing continuous optimization, called Conic Quadratic Programming (CQP). In this study, CMARS and RR are applied to obtain forecasts of residential natural gas demand for local distribution companies (LDCs) that require short-term forecasts, and the model performances are compared by using some criteria. Here, our analysis shows that CMARS models outperform RR models. For one-day-ahead forecasts, CMARS yields a MAPE of about 4.8%, while the same value under RR reaches 8.5%. As the forecast horizon increases, it can be seen that the performance of the methods becomes worse, and for a forecast one week ahead, the MAPE values for CMARS and RR are 9.9% and 18.3%, respectively.
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APA Özmen A (2022). Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. , 56 - 65. 10.11121/ijocta.2022.1084
Chicago Özmen Ayse Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. (2022): 56 - 65. 10.11121/ijocta.2022.1084
MLA Özmen Ayse Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. , 2022, ss.56 - 65. 10.11121/ijocta.2022.1084
AMA Özmen A Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. . 2022; 56 - 65. 10.11121/ijocta.2022.1084
Vancouver Özmen A Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. . 2022; 56 - 65. 10.11121/ijocta.2022.1084
IEEE Özmen A "Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS." , ss.56 - 65, 2022. 10.11121/ijocta.2022.1084
ISNAD Özmen, Ayse. "Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS". (2022), 56-65. https://doi.org/10.11121/ijocta.2022.1084
APA Özmen A (2022). Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. An International Journal of Optimization and Control: Theories & Applications (IJOCTA), 12(1), 56 - 65. 10.11121/ijocta.2022.1084
Chicago Özmen Ayse Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. An International Journal of Optimization and Control: Theories & Applications (IJOCTA) 12, no.1 (2022): 56 - 65. 10.11121/ijocta.2022.1084
MLA Özmen Ayse Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. An International Journal of Optimization and Control: Theories & Applications (IJOCTA), vol.12, no.1, 2022, ss.56 - 65. 10.11121/ijocta.2022.1084
AMA Özmen A Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. An International Journal of Optimization and Control: Theories & Applications (IJOCTA). 2022; 12(1): 56 - 65. 10.11121/ijocta.2022.1084
Vancouver Özmen A Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS. An International Journal of Optimization and Control: Theories & Applications (IJOCTA). 2022; 12(1): 56 - 65. 10.11121/ijocta.2022.1084
IEEE Özmen A "Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS." An International Journal of Optimization and Control: Theories & Applications (IJOCTA), 12, ss.56 - 65, 2022. 10.11121/ijocta.2022.1084
ISNAD Özmen, Ayse. "Multi-objective regression modeling for natural gas prediction with ridge regression and CMARS". An International Journal of Optimization and Control: Theories & Applications (IJOCTA) 12/1 (2022), 56-65. https://doi.org/10.11121/ijocta.2022.1084