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1 Ergebnisse
1
A Meta-learning based Method for Day Ahead Electricity Pric..:
, In:
2023 IEEE 12th Global Conference on Consumer Electronics (GCCE)
,
Huang, Siwan
;
Shi, Jianheng
;
Wang, Baoyue
... - p. 288-290 , 2023
Link:
https://doi.org/10.1109/GCCE59613.2023.10315513
RT T1
2023 IEEE 12th Global Conference on Consumer Electronics (GCCE)
: T1
A Meta-learning based Method for Day Ahead Electricity Price Forecasting in Markets with Renewable Energy Resources
UL https://suche.suub.uni-bremen.de/peid=ieee-10315513&Exemplar=1&LAN=DE A1 Huang, Siwan A1 Shi, Jianheng A1 Wang, Baoyue A1 Lyu, Jiawei A1 Nie, Nina A1 Dong, Xiwei A1 Li, Haoyi A1 Zhang, Sui A1 Ren, Xin YR 2023 SN 2693-0854 K1 Metalearning K1 Measurement K1 Renewable energy sources K1 Predictive models K1 Electricity supply industry K1 Prediction algorithms K1 Boosting K1 renewable energy K1 electricity price forecasting K1 meta-learning K1 machine learning K1 deep learning SP 288 OP 290 LK http://dx.doi.org/https://doi.org/10.1109/GCCE59613.2023.10315513 DO https://doi.org/10.1109/GCCE59613.2023.10315513 SF ELIB - SuUB Bremen
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