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THE STATE KEY LA... [2]
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LAO KENG WENG [1]
GAO LIANG [1]
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Journal article [2]
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2024 [1]
2022 [1]
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Predicting Power Outage at Low-Lying Area Substations During Storm Surge Disasters Using Multi-Grained Cascaded Forest
Journal article
Liu, Fengrui, Lao, Keng Weng, Gao, Liang, Lei, Chi Cheng, Hu, Xiaorui, Li, Yang. Predicting Power Outage at Low-Lying Area Substations During Storm Surge Disasters Using Multi-Grained Cascaded Forest[J]. IEEE Transactions on Industry Applications, 2024.
Authors:
Liu, Fengrui
;
Lao, Keng Weng
;
Gao, Liang
;
Lei, Chi Cheng
;
Hu, Xiaorui
; et al.
Favorite
|
TC[Scopus]:
2
IF:
4.2
/
4.5
|
Submit date:2024/05/16
Artificial Intelligence
Data Collection
Data Mining
Digital Twins
Feature Extraction
Power Supplies
Power System Security
Sea Measurements
Storm Surge
Surges
Tropical Cyclones
Urban Areas
Vectors
A novel probabilistic framework with interpretability for generator coherency identification
Journal article
Liu, Fengrui, Yin, Yikun, Li, Baitong. A novel probabilistic framework with interpretability for generator coherency identification[J]. INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2022, 143, 108474.
Authors:
Liu, Fengrui
;
Yin, Yikun
;
Li, Baitong
Favorite
|
TC[WOS]:
1
TC[Scopus]:
5
IF:
5.0
/
4.6
|
Submit date:2022/08/02
Generator Coherency Identification
Interpretability
Multi-task Learning
Spatial–temporal Auto-encoder
Wide-area Measurement