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Field Data–driven Online Prediction Model for Icing Load on Power Transmission Lines
Measurement and Control
- United States
doi 10.1177/0020294019878872
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Categories
Control
Instrumentation
Applied Mathematics
Optimization
Date
November 22, 2019
Authors
Yong Chen
Peng Li
Wenping Ren
Xin Shen
Min Cao
Publisher
SAGE Publications
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