Deep learning for load forecasting with smart meter data: Online Adaptive Recurrent Neural Network

Applied Energy - Tập 282 - Trang 116177 - 2021
Mohammad Navid Fekri1, Harsh Patel1, Katarina Grolinger1, Vinay Sharma2
1Department of Electrical and Computer Engineering, Western University, London, ON, N6A 5B9, Canada
2London Hydro London, ON, Canada N6A 4H6

Tài liệu tham khảo

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