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A day-ahead prediction method for high-resolution electricity consumption in residential units

Author

Listed:
  • Liu, Che
  • Li, Fan
  • Zhang, Chenghui
  • Sun, Bo
  • Zhang, Guanguan
Abstract
In order to accurately predict the day-ahead of household electric demand, a day-ahead high-resolution prediction model termed temporal-behavior coalescing forecast is proposed for the household energy demand. This model considers both behavioral and temporal dependencies. Feature extraction and data decomposition techniques are used to construct the behavioral and temporal inputs for the proposed model to reduce the negative impact of invalid data on its performance. In the proposed model the behavioral feature step and temporal feature step are constructed based on the convolutional network and long short-term memory network. Particularly, a coalescing step is designed in end the proposed model to strive for model convergence and enables the model to process two input matrices of different dimensions simultaneously. A 15-min resolution residential building energy demand dataset is used to validate the proposed model. The accuracy and generality of the proposed method are increased by 20.69% and 25.28%, respectively, compared with other related models. The validity of the proposed model is verified. In the robustness experimental, the proposed model can still maintain excellent prediction performance with the large noise introduced. A basis for its reproducibility and engineering application is provided.

Suggested Citation

  • Liu, Che & Li, Fan & Zhang, Chenghui & Sun, Bo & Zhang, Guanguan, 2023. "A day-ahead prediction method for high-resolution electricity consumption in residential units," Energy, Elsevier, vol. 265(C).
  • Handle: RePEc:eee:energy:v:265:y:2023:i:c:s0360544222028857
    DOI: 10.1016/j.energy.2022.125999
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    References listed on IDEAS

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