Affiliation:
1. Department of Marketing, Taian Power Supply Company of State Grid Shandong Electric Power Company, Taian, China
Abstract
Background:
Electricity consumption forecast is an important basis for the power system to achieve regional electricity balance and electricity spot market transactions.
Objective:
In view of the fact that many electricity consumption prediction models do not make good use of the correlation of data in time dimension and space dimension, this paper proposes a day-ahead forecasting model based on spatiotemporal correction, which further improves the forecasting accuracy of electricity demand.
Methods:
Firstly, the long short-term memory (LSTM) model is used to construct the forecasting model. Secondly, from the perspectives of time correlation and space correlation, meanwhile considering calendar factors and meteorological factors, the K-Nearest Neighbors (KNN) model is taken to construct correction models, which can correct the forecasting results of LSTM.
Results:
According to the analysis of power consumption data of 9 areas in New England, the mean absolute percentage error (MAPE), mean absolute error (MAE), and root mean square error (RMSE) of time dimension correction model are reduced by 0.35%, 5.87% and 5.06%, and the 3 evaluation metrics in space dimension are decreased by 0.52%, 6.82% and 7.06% on average.
Conclusion:
The results prove that the models proposed in this paper are effective.
Funder
State Grid Shandong Electric Power Company Project
Publisher
Bentham Science Publishers Ltd.
Subject
Electrical and Electronic Engineering,Electronic, Optical and Magnetic Materials
Reference29 articles.
1. Hu L.; Zhang L.; Wang T.; Li K.; Short-term load forecasting based on support vector regression considering cooling load in summer In 2020 Chinese Control And Decision Conference
(CCDC) Hefei, China, 2020, pp. 5495-5498
2. Jin F.; Liu X.; Xing F.; Wen G.; Wang S.; He H.; Jiao R.; Day-ahead load probabilistic forecasting based on space-time correction. Recent Adv Electr Electron Eng 2021,14,360-374
3. Avdakovic S.; Ademovic A.; Nuhanovic A.; Correlation between air temperature and electricity demand by linear regression and wavelet coherence approach: UK, Slovakia and Bosnia and Herzegovina case study. Archives of Electrical Engineering 2013,62,521-532
4. Tran N.; Tranh N.; Grid search of convolutional neural network
model in the case of load forecasting In: Archives of Electrical
Engineering 2021, pp. 25-30.
5. Yanan D.; Zhijuan G.; Lingzhi L.; Jianru M.; Peng Y.; Summary of short term power system load forecasting methods Technol Mark 2015, pp. 339-240.