Forecasting daily natural gas consumption with regression, time series and machine learning based methods

被引:12
|
作者
Yucesan, Melih [1 ]
Pekel, Engin [2 ]
Celik, Erkan [3 ]
Gul, Muhammet [4 ]
Serin, Faruk [5 ]
机构
[1] Munzur Univ, Dept Mech Engn, Tunceli, Turkey
[2] Hitit Univ, Dept Ind Engn, Corum, Turkey
[3] Istanbul Univ, Dept Transportat & Logist, Istanbul, Turkey
[4] Munzur Univ, Dept Emergency Aid & Disaster Management, Tunceli, Turkey
[5] Munzur Univ, Dept Comp Engn, Tunceli, Turkey
关键词
Natural gas consumption; forecasting methods; regression; time series; machine learning; Turkey;
D O I
10.1080/15567036.2021.1875082
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
An effective short-term natural gas forecasting method contributes to social contributions and allows industrial chain elements to function effectively and minimize economic losses. We dealt with a comparative framework on the applicability of different methods in daily natural gas service (NGS) consumption forecasting. In this context, time series, machine learning, evolutionary and population-based approaches, and their hybrid versions are applied to the NGS data. Hybridized approaches are tested in the scope of NGS consumption forecasting for the first time in the literature in this study. The case of Turkey is handled, and its NGS data is used to demonstrate the comparative framework's applicability. The comparative study is assessed in the lights of common forecasting accuracy measures of mean absolute percentage error (MAPE), R-squared (R-2), and mean squared error (MSE). According to each method's results, the seasonal autoregressive integrated moving average with exogenous regressors (SARIMAX) and artificial neural network (ANN) hybrid model provides the most dominant performance with respect to MAPE. The lowest error was obtained with a MAPE value of 0.357 in this hybrid model constructed under seven neurons in its ANN structure. This model is followed by another hybrid model, autoregressive integrated moving average (ARIMA)-ANN, with a MAPE value of 0.5 under nine neurons in terms of accuracy performance. The worst performance value belongs to the Genetic algorithm-ANN hybrid model with a MAPE value of approximately 26%.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Daily Natural Gas Load Forecasting Based on a Hybrid Deep Learning Model
    Wei, Nan
    Li, Changjun
    Duan, Jiehao
    Liu, Jinyuan
    Zeng, Fanhua
    [J]. ENERGIES, 2019, 12 (02)
  • [22] Wind power forecasting based on time series and machine learning models
    Park, Sujin
    Lee, Jin-Young
    Kim, Sahm
    [J]. KOREAN JOURNAL OF APPLIED STATISTICS, 2021, 34 (05) : 723 - 734
  • [23] Forecasting energy consumption time series using machine learning techniques based on usage patterns of residential householders
    Chou, Jui-Sheng
    Duc-Son Tran
    [J]. ENERGY, 2018, 165 : 709 - 726
  • [24] Ensemble Deep Learning for Regression and Time Series Forecasting
    Qiu, Xueheng
    Zhang, Le
    Ren, Ye
    Suganthan, P. N.
    Amaratunga, Gehan
    [J]. 2014 IEEE SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE IN ENSEMBLE LEARNING (CIEL), 2014, : 21 - 26
  • [25] A study of time series forecasting using statistical methods, machine learning methods and deep learning: historical aspects
    Kitov, V. V.
    Mishustina, M., V
    Ustyuzhanin, A. O.
    [J]. VOPROSY ISTORII, 2022, 4 (02) : 201 - 218
  • [26] Forecasting daily meteorological time series using ARIMA and regression models
    Murat, Malgorzata
    Malinowska, Iwona
    Gos, Magdalena
    Krzyszczak, Jaromir
    [J]. INTERNATIONAL AGROPHYSICS, 2018, 32 (02) : 253 - 264
  • [27] Density-based unsupervised ensemble learning methods for time series forecasting of aggregated or clustered electricity consumption
    Laurinec, Peter
    Loderer, Marek
    Lucka, Maria
    Rozinajova, Viera
    [J]. JOURNAL OF INTELLIGENT INFORMATION SYSTEMS, 2019, 53 (02) : 219 - 239
  • [28] Density-based unsupervised ensemble learning methods for time series forecasting of aggregated or clustered electricity consumption
    Peter Laurinec
    Marek Lóderer
    Mária Lucká
    Viera Rozinajová
    [J]. Journal of Intelligent Information Systems, 2019, 53 : 219 - 239
  • [29] Forecasting Natural Gas Spot Prices with Machine Learning
    Mouchtaris, Dimitrios
    Sofianos, Emmanouil
    Gogas, Periklis
    Papadimitriou, Theophilos
    [J]. ENERGIES, 2021, 14 (18)
  • [30] Assessment of Time-Series Machine Learning Methods for Forecasting Hospital Discharge Volume
    McCoy Jr, Thomas H.
    Pellegrini, Amelia M.
    Perlis, Roy H.
    [J]. JAMA NETWORK OPEN, 2018, 1 (07)