2024
DOI: 10.1371/journal.pone.0311194
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Short-term power load forecasting in China: A Bi-SATCN neural network model based on VMD-SE

Yuan Huang,
Qimeng Feng,
Feilong Han

Abstract: This study focuses on improving short-term power load forecasting, a critical aspect of power system planning, control, and operation, especially within the context of China’s "dual-carbon" policy. The integration of renewable energy under this policy has introduced complexities such as nonlinearity and instability. To enhance forecasting accuracy, the VMD-SE-BiSATCN prediction model is proposed. This model improves computational efficiency and reduces prediction errors by analyzing and reconstructing sequence… Show more

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