Multi-quantile recurrent neural network for feeder-level probabilistic energy disaggregation considering roof-top solar energy

Engineering Applications of Artificial Intelligence - Tập 110 - Trang 104707 - 2022
Xiao-Yu Zhang1,2, Chris Watkins3, Stefanie Kuenzel2
1School of Artificial Intelligence, Anhui University, Hefei 230601, Anhui, China
2Department of Electronic Engineering, Royal Holloway, University of London, Egham Hill, Egham, TW20 0EX, UK
3Department of Computer Science, Royal Holloway, University of London, Egham Hill, Egham, TW20 0EX, UK

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