2021
DOI: 10.48550/arxiv.2108.11763
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Attention-based Neural Load Forecasting: A Dynamic Feature Selection Approach

Abstract: Encoder-decoder-based recurrent neural network (RNN) has made significant progress in sequence-to-sequence learning tasks such as machine translation and conversational models. Recent works have shown the advantage of this type of network in dealing with various time series forecasting tasks. The present paper focuses on the problem of multi-horizon short-term load forecasting, which plays a key role in the power system's planning and operation. Leveraging the encoder-decoder RNN, we develop an attention model… Show more

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