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Cost-Oriented Prediction Intervals: On Bridging the Gap Between Forecasting and Decision
Journal article
Zhao, Changfei, Wan, Can, Song, Yonghua. Cost-Oriented Prediction Intervals: On Bridging the Gap Between Forecasting and Decision[J]. IEEE Transactions on Power Systems, 2022, 37(4), 3048-3062.
Authors:
Zhao, Changfei
;
Wan, Can
;
Song, Yonghua
Favorite
|
TC[WOS]:
32
TC[Scopus]:
37
IF:
6.5
/
7.4
|
Submit date:2022/05/13
Costs
Decision Making
Decision Making
Forecasting
Forecasting
Machine Learning
Prediction Interval
Probabilistic Logic
Renewable Energy
Renewable Energy Sources
Uncertainty
Uncertainty
Wind Power Generation
Conformalized temporal convolutional quantile regression networks for wind power interval forecasting
Journal article
Hu, Jianming, Luo, Qingxi, Tang, Jingwei, Heng, Jiani, Deng, Yuwen. Conformalized temporal convolutional quantile regression networks for wind power interval forecasting[J]. ENERGY, 2022, 248, 123497.
Authors:
Hu, Jianming
;
Luo, Qingxi
;
Tang, Jingwei
;
Heng, Jiani
;
Deng, Yuwen
Favorite
|
TC[WOS]:
27
TC[Scopus]:
33
IF:
9.0
/
8.2
|
Submit date:2022/05/13
Conformalized Quantile Regression
Temporal Convolutional Network
Wind Power Interval Prediction
Operating Reserve Quantification Using Prediction Intervals of Wind Power: An Integrated Probabilistic Forecasting and Decision Model
Journal article
Zhao,Changfei, Wan,Can, Song,Yonghua. Operating Reserve Quantification Using Prediction Intervals of Wind Power: An Integrated Probabilistic Forecasting and Decision Model[J]. IEEE Transactions on Power Systems, 2021, 36(4), 3701-3714.
Authors:
Zhao,Changfei
;
Wan,Can
;
Song,Yonghua
Favorite
|
TC[WOS]:
50
TC[Scopus]:
66
IF:
6.5
/
7.4
|
Submit date:2021/03/09
Probabilistic Forecasting
Wind Power
Machine Learning
Operating Reserve
Prediction Interval
Mixed Integer Linear Programming
Chance Constrained Extreme Learning Machine for Nonparametric Prediction Intervals of Wind Power Generation
Journal article
Can Wan, Changfei Zhao, Yonghua Song. Chance Constrained Extreme Learning Machine for Nonparametric Prediction Intervals of Wind Power Generation[J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2020, 35(5), 3869-3884.
Authors:
Can Wan
;
Changfei Zhao
;
Yonghua Song
Favorite
|
TC[WOS]:
45
TC[Scopus]:
60
IF:
6.5
/
7.4
|
Submit date:2021/05/10
Prediction Interval
Forecasting
Wind Power
Chance Constraint
Extreme Learning Machine
Dc Optimization
An Adaptive Bilevel Programming Model for Nonparametric Prediction Intervals of Wind Power Generation
Journal article
Zhao,Changfei, Wan,Can, Song,Yonghua. An Adaptive Bilevel Programming Model for Nonparametric Prediction Intervals of Wind Power Generation[J]. IEEE TRANSACTIONS ON POWER SYSTEMS, 2020, 35(1), 424-439.
Authors:
Zhao,Changfei
;
Wan,Can
;
Song,Yonghua
Favorite
|
TC[WOS]:
59
TC[Scopus]:
74
IF:
6.5
/
7.4
|
Submit date:2021/03/09
Bilevel Programming
Forecasting
Prediction Interval
Quantile Regression
Spatial Branch-and-bound
Wind Power