Abstract
Prediction of electricity consumption plays critical roles in the economy. Accurate electricity consumption forecasting is essential for policy makers to formulate electricity supply policies. However, limited data and variables generally cannot provide sufficient information to gain satisfactory prediction accuracy. To address this problem, we propose a novel improved grey forecasting model, which combines data transformation for the original data sequence and combination interpolation optimization of the background value of the GM(1,1) model, and is therefore named DCOGM(1,1). To evaluate the simulation and prediction performance of DCOGM(1,1), two case studies are carried out. In addition, the results show that DCOGM(1,1) outperforms most existing improved grey models in terms of forecasting accuracy. Finally, DCOGM(1,1) is employed to predict the total electricity consumption of Shanghai City in China from 2017 to 2021. In addition, the results suggest that DCOGM(1,1) performs well compared with the traditional GM(1,1) model and other grey modification models in this context and Shanghai’s electricity consumption will increase stably in the following five years. In summary, DCOGM(1,1) proposed in our study has competent exploration and exploitation ability, and could be utilized as an effective and promising tool for short-term planning for other forecasting issues with limited source data as well.
Highlights
We propose a novel improved grey forecasting model, DCOGM(1,1), which combines data transformation for the original data sequence and combination interpolation optimization of the background value
We optimized the background value by improving the algebraic accuracy of the Newton–Cotes integral formula to improve the prediction accuracy of the model
Accurate prediction of electricity consumption plays an important role in electricity management and economy development
Summary
Rapid development of the economy has led to fast-growing electric power demand all over the world. Electricity is regarded as one of the most significant driving forces of economic development and is deemed essential in our daily life [1,2,3]. Prediction of electricity consumption has become urgent and important for a country or region [4,5,6]. Establishment of an accurate and reliable forecasting model for electricity consumption, which could provide valuable information for electricity system operators to formulate policies and plans of electricity [7], is vital for the management of power system
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