IAVOA–EATCN: An Adaptive Deep Framework for Accurate Power Load Forecasting
Indexed incrossref
Abstract
With the large-scale integration of renewable energy, the operational complexity of power systems has increased, placing higher demands on the accuracy of load forecasting. To address the nonlinear characteristics of load variations and improve feature utilization, this paper proposes an IAVOA–EATCN load forecasting model. In the feature engineering stage, an expand–reduce transformation is employed to reconstruct the original multi-feature inputs, and variational mode decomposition (VMD) is further applied to extract low- and high-frequency components, thereby compressing redundant features while preserving essential information structures. In terms of model architecture, the nonlinear representation…
Citation impact
4
total citations
- FWCI
- 35.01
- Percentile
- 99%
- References
- 24
Too recent for citation history.
Authors
3Topics & keywords
Topics
Keywords
- Benchmark (surveying)
- Nonlinear system
- Electric power system
- Population
- Representation (politics)
- Feature (linguistics)
- Mode (computer interface)
- Generalization
UN Sustainable Development Goals
- Affordable and clean energy
No related works found for this paper.