The bi-long short-term memory based on multiscale and mesoscale feature extraction for electric load forecasting

Author:

Fan Guo-Feng,Li Jin-Wei,Peng Li-Ling,Huang Hsin-Pou,Hong Wei-ChiangORCID

Publisher

Elsevier BV

Reference40 articles.

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3. A hybrid prediction model for residential electricity consumption using holtwinters and extreme learning machine;Liu;Appl. Energy,2020

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