A CNN-Sequence-to-Sequence network with attention for residential short-term load forecasting

被引:36
作者
Aouad, Mosbah [1 ]
Hajj, Hazem [1 ]
Shaban, Khaled [2 ]
Jabr, Rabih A. [1 ]
El-Hajj, Wassim [3 ]
机构
[1] Amer Univ Beirut, Dept Elect & Comp Engn, Beirut, Lebanon
[2] Qatar Univ, Dept Comp Sci & Engn, Doha, Qatar
[3] Amer Univ Beirut, Dept Comp Sci, Beirut, Lebanon
关键词
Attention; Convolutional Neural Network; Deep learning; Long short-term memory; Residential load forecasting; NEURAL-NETWORKS; CONSUMPTION;
D O I
10.1016/j.epsr.2022.108152
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
Residential short-term load forecasting has become an essential process to develop successful demand response strategies, and help utilities and customers optimize energy production and consumption. Most previous works focused on capturing the spatial and temporal characteristics of residential load data but fell short in accurately comprehending its variations and dynamics. The challenges come from the high non-linearity and volatility of the electric load data, and their complex spatial and temporal characteristics. To address these challenges, we propose a hybrid deep learning approach consisting of a Convolutional Neural Network and an attention-based Sequence-to-Sequence network. The model aims at capturing the spatial and temporal features from time-series data, the irregular load pattern, and the frequent peak consumption values to improve the overall quality of the forecasts. The proposed model is compared to several state-of-the-art approaches, and the performance is validated on the residential load data for a household in Sceaux, France. The results showed an improvement of 9.6% in the mean square error on different prediction time horizons. The proposed approach produced more accurate real-time forecasts and showed better adaptation at peak consumption instances.
引用
收藏
页数:9
相关论文
共 46 条
[31]  
Minh-Thang L., 2015, Effective approaches to attention-based neural machine translation, DOI DOI 10.18653/V1/D15-1166
[32]   Deep learning for estimating building energy consumption [J].
Mocanu, Elena ;
Nguyen, Phuong H. ;
Gibescu, Madeleine ;
Kling, Wil L. .
SUSTAINABLE ENERGY GRIDS & NETWORKS, 2016, 6 :91-99
[33]   Very short term load forecasting of residential electricity consumption using the Markov-chain mixture distribution (MCM) model [J].
Munkhammar, Joakim ;
van der Meer, Dennis ;
Widen, Joakim .
APPLIED ENERGY, 2021, 282
[34]  
Nair V., 2010, PROC 27 INT C MACH L
[35]   Short-term load forecasting method based on fuzzy time series, seasonality and long memory process [J].
Sadaei, Hossein Javedani ;
Guimaraes, Frederico Gadelha ;
da Silva, Cidiney Jose ;
Lee, Muhammad Hisyam ;
Eslami, Tayyebeh .
INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2017, 83 :196-217
[36]   A Novel CNN-GRU-Based Hybrid Approach for Short-Term Residential Load Forecasting [J].
Sajjad, Muhammad ;
Khan, Zulfiqar Ahmad ;
Ullah, Amin ;
Hussain, Tanveer ;
Ullah, Waseem ;
Lee, Mi Young ;
Baik, Sung Wook .
IEEE ACCESS, 2020, 8 :143759-143768
[37]   Deep Learning for Household Load Forecasting-A Novel Pooling Deep RNN [J].
Shi, Heng ;
Xu, Minghao ;
Li, Ran .
IEEE TRANSACTIONS ON SMART GRID, 2018, 9 (05) :5271-5280
[38]  
Srivastava N, 2014, J MACH LEARN RES, V15, P1929
[39]   Using the ensemble Kalman filter for electricity load forecasting and analysis [J].
Takeda, Hisashi ;
Tamura, Yoshiyasu ;
Sato, Seisho .
ENERGY, 2016, 104 :184-198
[40]   Short-term load forecasting using a two-stage sarimax model [J].
Tarsitano, Agostino ;
Amerise, Ilaria L. .
ENERGY, 2017, 133 :108-114