Electricity Load and Price Forecasting Using Enhanced Machine Learning Techniques

The exponential increase in electricity generation and consumption pattern are the two main issues in the wholesale markets. To handle these issues different machine learning techniques are used for load and price prediction in the research field. The wholesale utilities provide real-time data of load and price for the better prediction of electricity generation purposes. The New York Independent System Operator (NY-ISO) is one of the utility which provide electricity to different counties like United States, Canada and Israel. In this paper, hourly data of 2016–2017 is used for the forecasting process of load and price of New York City. Feature selection and extraction are used to achieve important features. The feature selection is done by two techniques Classification and Regression Tree (CART) and Recursive Feature Elimination (RFE) and Feature extraction by using Singular Value Decomposition (SVD). The Multiple Layer Perceptron (MLP), Support Vector Machine (SVM) and Logistic Regression (LR) classifiers are separately used for forecasting purposes of electricity load and price. Further enhance these three techniques EMLP, ESVM and ELR to take more accurate results for electricity load and price forecasting.

[1]  Nadeem Javaid,et al.  An Accurate and Fast Converging Short-Term Load Forecasting Model for Industrial Applications in a Smart Grid , 2017, IEEE Transactions on Industrial Informatics.

[2]  Madan Mohan Tripathi,et al.  Long term load forecasting with hourly predictions based on long-short-term-memory networks , 2018, 2018 IEEE Texas Power and Energy Conference (TPEC).

[3]  Song Guo,et al.  Robust Big Data Analytics for Electricity Price Forecasting in the Smart Grid , 2019, IEEE Transactions on Big Data.

[4]  Yi Yang,et al.  A hybrid model for electricity price forecasting based on least square support vector machines with combined kernel , 2018 .

[5]  Ping-Huan Kuo,et al.  An Electricity Price Forecasting Model by Hybrid Structured Deep Neural Networks , 2018 .

[6]  Hossam Mosbah,et al.  Hourly Electricity Price Forecasting for the Next Month Using Multilayer Neural Network , 2016, Canadian Journal of Electrical and Computer Engineering.

[7]  Xiaohua Li,et al.  Electric load forecasting in smart grids using Long-Short-Term-Memory based Recurrent Neural Network , 2017, 2017 51st Annual Conference on Information Sciences and Systems (CISS).

[8]  Joao P. S. Catalao,et al.  Daily pattern prediction based classification modeling approach for day-ahead electricity price forecasting , 2019, International Journal of Electrical Power & Energy Systems.

[9]  Taher Niknam,et al.  Probabilistic Forecasting of Hourly Electricity Price by Generalization of ELM for Usage in Improved Wavelet Neural Network , 2017, IEEE Transactions on Industrial Informatics.

[10]  Wei Gao,et al.  Different states of multi-block based forecast engine for price and load prediction , 2019, International Journal of Electrical Power & Energy Systems.

[11]  Alagan Anpalagan,et al.  Improved short-term load forecasting using bagged neural networks , 2015 .

[12]  Neeraj Kumar,et al.  Consumption-Aware Data Analytical Demand Response Scheme for Peak Load Reduction in Smart Grid , 2018, IEEE Transactions on Industrial Electronics.

[13]  Mohammad Moradzadeh,et al.  A novel hybrid algorithm for electricity price and load forecasting in smart grids with demand-side management , 2016 .

[14]  Vitor Nazário Coelho,et al.  A self-adaptive evolutionary fuzzy model for load forecasting problems on smart grid environment , 2016 .

[15]  Agostino Tarsitano,et al.  Short-term load forecasting using a two-stage sarimax model , 2017 .

[16]  Song Guo,et al.  Big Data Analytics for Price Forecasting in Smart Grids , 2016, 2016 IEEE Global Communications Conference (GLOBECOM).

[17]  Wei Wang,et al.  Electricity load forecasting by an improved forecast engine for building level consumers , 2017 .

[18]  Nima Amjady,et al.  Solar energy forecasting based on hybrid neural network and improved metaheuristic algorithm , 2018, Comput. Intell..

[19]  Niu Dongxiao,et al.  Power load forecasting by wavelet least squares support vector machine with improved fruit fly optimization algorithm , 2017 .

[20]  Hossein Shayeghi,et al.  Day-ahead electricity price forecasting using WPT, GMI and modified LSSVM-based S-OLABC algorithm , 2015, Soft Computing.

[21]  Jie Gu,et al.  Short-term load forecasting using a long short-term memory network , 2017, 2017 IEEE PES Innovative Smart Grid Technologies Conference Europe (ISGT-Europe).

[22]  Jie Zhang,et al.  A data-driven multi-model methodology with deep feature selection for short-term wind forecasting , 2017 .

[23]  Mehdi Khashei,et al.  A seasonal direct optimal hybrid model of computational intelligence and soft computing techniques for electricity load forecasting , 2017 .

[24]  Jin-peng Liu,et al.  The Short-Term Power Load Forecasting Based on Sperm Whale Algorithm and Wavelet Least Square Support Vector Machine with DWT-IR for Feature Selection , 2017 .

[25]  Yitao Liu,et al.  Deep belief network based deterministic and probabilistic wind speed forecasting approach , 2016 .

[26]  Florentina Paraschiv,et al.  Extended forecast methods for day-ahead electricity spot prices applying artificial neural networks , 2016 .

[27]  D. Dijk,et al.  Forecasting Day-Ahead Electricity Prices: Utilizing Hourly Prices , 2013 .