Forecasting Nodal Price Difference Between Day-Ahead and Real-Time Electricity Markets Using Long-Short Term Memory and Sequence-to-Sequence Networks

被引:6
作者
Das, Ronit [1 ]
Bo, Rui [1 ]
Chen, Haotian [1 ]
Rehman, Waqas Ur [1 ]
Wunsch, Donald, II [1 ]
机构
[1] Missouri Univ Sci & Technol, Dept Elect & Comp Engn, Rolla, MO 65409 USA
基金
美国国家科学基金会;
关键词
Forecasting; Predictive models; Deep learning; Electricity supply industry; Time series analysis; Timing; Convergence; Electricity markets; DA; RT price difference; forecasting; long-short term memory; LSTM; sequence to sequence; Seq2Seq; deep learning; ENSEMBLE; MODEL;
D O I
10.1109/ACCESS.2021.3133499
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Price forecasting is at the center of decision making in electricity markets. Much research has been done in forecasting energy prices for a single market while little research has been reported on forecasting price difference between markets, which presents higher volatility and yet plays a critical role in applications such as virtual trading. To this end, this paper takes the first attempt at it and employs novel deep learning architecture with Bidirectional Long-Short Term Memory (LSTM) units and Sequence-to-Sequence (Seq2Seq) architecture to forecast nodal price difference between day-ahead and real-time markets. In addition to value prediction, these deep learning architectures are also used to develop classification models to predict the price difference bands/ranges. The proposed methods are tested using historical PJM market data, and evaluated using Root Mean Squared Error (RMSE) and other customized performance metrics. Case studies show that both deep learning methods outperform common methods including ARIMA, XGBoost and Support Vector Regression (SVR) methods. More importantly, the deep learning methods can capture the magnitude and timing of price difference spikes. Numerical results show the Seq2Seq model performs particularly well and demonstrates generalization capability to extended forecasting lead time.
引用
收藏
页码:832 / 843
页数:12
相关论文
共 30 条
[21]   Advanced financial transmission rights in the PJM market [J].
Ma, XW ;
Sun, DI ;
Rosenwald, GW ;
Ott, AL .
2003 IEEE POWER ENGINEERING SOCIETY GENERAL MEETING, VOLS 1-4, CONFERENCE PROCEEDINGS, 2003, :1031-1038
[22]   Day-ahead electricity price forecasting using back propagation neural networks and weighted least square technique [J].
Reddy, S. Surender ;
Jung, Chan-Mook ;
Seog, Ko Jun .
FRONTIERS IN ENERGY, 2016, 10 (01) :105-113
[23]   Price forecasting of day-ahead electricity markets using a hybrid forecast method [J].
Shafie-khah, M. ;
Moghaddam, M. Parsa ;
Sheikh-El-Eslami, M. K. .
ENERGY CONVERSION AND MANAGEMENT, 2011, 52 (05) :2165-2169
[24]  
Siami-Namini S, 2019, IEEE INT CONF BIG DA, P3285, DOI 10.1109/BigData47090.2019.9005997
[25]   Electricity price forecasting using artificial neural networks [J].
Singhal, Deepak ;
Swarup, K. S. .
INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2011, 33 (03) :550-555
[26]  
Terasvirta T., 1993, Journal of Time Series Analysis, V14, P209, DOI [DOI 10.1111/J.1467-9892.1993.TB00139.X, 10.1111/j.1467-9892.1993.tb00139.x]
[27]   Gaussian Processes for Short-Term Traffic Volume Forecasting [J].
Xie, Yuanchang ;
Zhao, Kaiguang ;
Sun, Ying ;
Chen, Dawei .
TRANSPORTATION RESEARCH RECORD, 2010, (2165) :69-78
[28]  
Yang L, 2019, IEEE INT C SM E GR E, P283, DOI 10.1109/SEGE.2019.8859896
[29]  
Zaremba W., 2014, RECURRENT NEURAL NET, P1
[30]   Locational Marginal Price Forecasting: A Componential and Ensemble Approach [J].
Zheng, Kedi ;
Wang, Yi ;
Liu, Kai ;
Chen, Qixin .
IEEE TRANSACTIONS ON SMART GRID, 2020, 11 (05) :4555-4564