With the rapid growth of electricity demand in society, short-term load forecasting is challenging to meet the market demand. To improve the accuracy and stability of system load forecasting, this paper proposes an integrated forecasting model based on LSTM with variational modal decomposition and residual network. The model combines BiLSTM, VMD, and ResNet, extracts power load feature in-depth, and builds an efficient load forecasting system by considering the historical load and various influencing factors. This method fully uses the advantages of neural networks in information processing and effectively solves the problem of insufficiency and instability in short-term forecasting. The experimental results show that the model is significantly better than the existing mainstream prediction models in accuracy.
Zhai et al. (Sun,) studied this question.
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