Forecasting energy consumption using ensemble ARIMA-ANFIS hybrid algorithm

被引:227
作者
Barak, Sasan [1 ,3 ]
Sadegh, S. Saeedeh [2 ]
机构
[1] Tech Univ Ostrava, Fac Econ, Ostrava, Czech Republic
[2] Tarbiat Modares Univ, Dept Ind Engn, Tehran, Iran
[3] Univ Bergamo, Dept SAEQM, Via Caniana 2, I-24127 Bergamo, Italy
关键词
Energy forecasting; ARIMA; ANFIS; AdaBoost; Ensemble algorithm; FUZZY INFERENCE SYSTEM; PARTICLE SWARM OPTIMIZATION; AUTOREGRESSIVE-MOVING-AVERAGE; ARTIFICIAL NEURAL-NETWORKS; TIME-SERIES; ELECTRICITY CONSUMPTION; ANT COLONY; ADABOOST ALGORITHM; DEMAND; LOGIC;
D O I
10.1016/j.ijepes.2016.03.012
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Energy consumption is on the rise in developing economies. In order to improve present and future energy supplies, forecasting energy demands is essential. However, lack of accurate and comprehensive data set to predict the future demand is one of big problems in these countries. Therefore, using ensemble hybrid forecasting models that can deal with shortage of data set could be a suitable solution. In this paper, the annual energy consumption in Iran is forecasted using 3 patterns of ARIMA-ANFIS model. In the first pattern, ARIMA (Auto Regressive Integrated Moving Average) model is implemented on 4 input features, where its nonlinear residuals are forecasted by 6 different ANFIS (Adaptive Neuro Fuzzy Inference System) structures including grid partitioning, sub clustering, and fuzzy c means clustering (each with 2 training algorithms). In the second pattern, the forecasting of ARIMA in addition to 4 input features is assumed as input variables for ANFIS prediction. Therefore, four mentioned inputs beside ARIMA's output are used in energy prediction with 6 different ANFIS structures. In the third pattern, due to dealing with data insufficiency, the second pattern is applied with AdaBoost (Adaptive Boosting) data diversification model and a novel ensemble methodology is presented. The results indicate that proposed hybrid patterns improve the accuracy of single ARIMA and ANFIS models in forecasting energy consumption, though third pattern, used diversification model, acts better than others and model's MSE criterion was decreased to 0.026% from 0.058% of second hybrid pattern. Finally, a comprehensive comparison between other hybrid prediction models is done. (C) 2016 Elsevier Ltd. All rights reserved.
引用
收藏
页码:92 / 104
页数:13
相关论文
共 61 条
[1]  
Abbasimehr H., 2011, International Journal of Computer Applications, V19, P35
[2]  
Abraham A., 2001, Applied Soft Computing, V1, P127, DOI 10.1016/S1568-4946(01)00013-8
[3]   A fuzzy logic model to predict specific energy requirement for TBM performance prediction [J].
Acaroglu, O. ;
Ozdemir, L. ;
Asbury, B. .
TUNNELLING AND UNDERGROUND SPACE TECHNOLOGY, 2008, 23 (05) :600-608
[4]   Long-term load forecasting based on adaptive neural fuzzy inference system using real energy data [J].
Akdemir, Bayram ;
Cetinkaya, Nurettin .
2011 2ND INTERNATIONAL CONFERENCE ON ADVANCES IN ENERGY ENGINEERING (ICAEE), 2012, 14 :794-799
[5]   Projection of future transport energy demand of Jordan using adaptive neuro-fuzzy technique [J].
Al-Ghandoor, Ahmed ;
Samhouri, Murad ;
Al-Hinti, Ismael ;
Jaber, Jamal ;
Al-Rawashdeh, Mohammad .
ENERGY, 2012, 38 (01) :128-135
[6]   Bankruptcy forecasting:: An empirical comparison of AdaBoost and neural networks [J].
Alfaro, Esteban ;
Garcia, Noelia ;
Gamez, Matias ;
Elizondo, David .
DECISION SUPPORT SYSTEMS, 2008, 45 (01) :110-122
[7]   Comparison of different input selection algorithms in neuro-fuzzy modeling [J].
Alizadeh, Meysam ;
Jolai, Fariborz ;
Aminnayeri, Majid ;
Rada, Roy .
EXPERT SYSTEMS WITH APPLICATIONS, 2012, 39 (01) :1536-1544
[8]   A new boosting algorithm for improved time-series forecasting with recurrent neural networks [J].
Assaad, Mohammad ;
Bone, Romuald ;
Cardot, Hubert .
INFORMATION FUSION, 2008, 9 (01) :41-55
[9]   A simulated-based neural network algorithm for forecasting electrical energy consumption in Iran [J].
Azadeh, A. ;
Ghaderi, S. F. ;
Sohrabkhani, S. .
ENERGY POLICY, 2008, 36 (07) :2637-2644
[10]   An emotional learning-neuro-fuzzy inference approach for optimum training and forecasting of gas consumption estimation models with cognitive data [J].
Azadeh, A. ;
Asadzadeh, S. M. ;
Mirseraji, G. H. ;
Saberi, M. .
TECHNOLOGICAL FORECASTING AND SOCIAL CHANGE, 2015, 91 :47-63