Abstract

Short-term electric load forecasting plays a significant role in the safe and stable operation of the power system and power market transactions. In recent years, with the development of new energy sources, more and more sources have been integrated into the grid. This has posed a serious challenge to short-term electric load forecasting. Focusing on load series with non-linear and time-varying characteristics, an approach to short-term electric load forecasting using a “decomposition and ensemble” framework is proposed in this paper. The method is verified using hourly load data from Oslo and the surrounding areas of Norway. First, the load series is decomposed into five components by variational mode decomposition (VMD). Second, a support vector regression (SVR) forecasting model is established for the five components to predict the electric load components, and the grey wolf optimization (GWO) algorithm is used to optimize the cost and gamma parameters of SVR. Finally, the predicted values of the five components are superimposed to obtain the final electric load forecasting results. In this paper, the proposed method is compared with GWO-SVR without modal decomposition and using empirical mode decomposition (EMD) to test the impact of VMD on prediction. This paper also compares the proposed method with the SVR model using VMD and other optimization algorithms. The four evaluation indexes of the proposed method are optimal: MAE is 71.65 MW, MAPE is 1.41%, MSE is 10,461.32, and R2 is 0.9834. This indicates that the proposed method has a good application prospect for short-term electric load forecasting.

Highlights

  • As a result of increasing air pollution and the threat of global warming, there is a growing demand for the development of new technology for energy generation [1]

  • By using the genetic optimization algorithm (GA) [43,44], particle swarm optimization algorithm [45,46], artificial bee colony algorithm (ABC) [47,48], and grey wolf optimization algorithm [49], the parameters of the prediction model can be optimized to improve the accuracy of the model

  • If the central frequency is similar to the modal component, it is considered that variational mode decomposition (VMD) has overdecomposition

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Summary

Introduction

As a result of increasing air pollution and the threat of global warming, there is a growing demand for the development of new technology for energy generation [1]. With the development of electrical energy conversion technology [2,3], a large number of new energy sources are being integrated into the grid. Hybrid vehicles are developing rapidly [4]. These developments are leading to changes in the grid pattern and electricity consumption structure. The electric energy generated by new energy sources is affected by many factors, including light, wind speed, and so on. Power generation and power frequency are uncertain, which brings great challenges to load balance, load management, and stable operation [6] of the grid. Short-term electric load forecasting has a great impact on price determination, power dispatch, power system economic operation, and reliability and is a crucial type of electric load forecasting

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