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A Novel Machine Learning Method for Accelerated Modeling of the Downwelling Irradiance Field in the Upper Ocean
Xuanting Hao,
Lian Shen
St. Anthony Falls Laboratory
Research output
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Contribution to journal
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Article
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peer-review
1
Scopus citations
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Dive into the research topics of 'A Novel Machine Learning Method for Accelerated Modeling of the Downwelling Irradiance Field in the Upper Ocean'. Together they form a unique fingerprint.
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Keyphrases
Monte Carlo Simulation
100%
Machine Learning Techniques
100%
Upper Ocean
100%
Novel Machine
100%
Downwelling Irradiance
100%
Irradiance
75%
Machine Learning Models
75%
Machine Learning
25%
Energy Sources
25%
Dimensionality Reduction
25%
Computationally Expensive
25%
Wave Field
25%
Computational Cost
25%
Training Data
25%
Monte Carlo Model
25%
Artificial Neural Network
25%
Acceleration Model
25%
Spread Function
25%
Photosynthesis Process
25%
Beam Spreading
25%
Turbid Seawater
25%
Air-sea Heat Flux
25%
Engineering
Machine Learning Method
100%
Irradiance
100%
Learning System
80%
Simulation Result
20%
Raw Data
20%
Computational Cost
20%
Major Energy Source
20%
Beam Spreading
20%
Artificial Neural Network
20%
Heat Flux
20%
Material Science
Seawater
100%