Paper
23 May 2023 Dual attention LSTM for building power load forecasting based on feature selection
Author Affiliations +
Proceedings Volume 12645, International Conference on Computer, Artificial Intelligence, and Control Engineering (CAICE 2023); 1264559 (2023) https://doi.org/10.1117/12.2680970
Event: International Conference on Computer, Artificial Intelligence, and Control Engineering (CAICE 2023), 2023, Hangzhou, China
Abstract
Load forecasting plays an important role in ensuring the safe operation of the power grid. Accurate load forecasting is mainly influenced by historical load data, PV, precipitation and other factors. A load forecasting model with double attention LSTM based on feature selection is proposed, which is designed to comprehensively solve the impact of multiple factors on load forecasting. This model uses Recursive Feature Elimination to remove redundant influencing factors and outputs features with high correlation to the real load. Based on the Long-Short Term Memory network, the feature selection and timing dual attention mechanisms are introduced to merge and dynamically explore the connection between load and input features, which then improves the accuracy of load forecasting. The experimental results show that the accuracy of the proposed model for load forecasting is significantly improved compared with the traditional model.
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Bin Wu, Li Yang, and Tengfei Wang "Dual attention LSTM for building power load forecasting based on feature selection", Proc. SPIE 12645, International Conference on Computer, Artificial Intelligence, and Control Engineering (CAICE 2023), 1264559 (23 May 2023); https://doi.org/10.1117/12.2680970
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KEYWORDS
Feature selection

Data modeling

Simulations

Education and training

Photovoltaics

Tunable filters

Feature extraction

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