2024
DOI: 10.3389/fenrg.2024.1384142
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Short-term power load forecasting for integrated energy system based on a residual and attentive LSTM-TCN hybrid network

Hongyi Li,
Shenhao Li,
Yuxin Wu
et al.

Abstract: In the context of Integrated Energy System (IES), accurate short-term power demand forecasting is crucial for ensuring system reliability, optimizing operational efficiency through resource allocation, and supporting effective real-time decision-making in energy management. However, achieving high forecasting accuracy faces significant challenges due to the inherent complexity and stochastic nature of IES’s short-term load profiles, resulting from diverse consumption patterns among end-users and the intricate … Show more

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