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A climate-isotope regression model with seasonally-varying and time-integrated relationships
Matt J. Fischer,
Lisa M. Baldini
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Keyphrases
Regression Model
100%
Local Predictor
100%
Interannual Time Scale
66%
Short Time Scale
66%
Physical Processes
33%
Dublin
33%
Predictor Variables
33%
Multivariable
33%
Seasonal Effects
33%
Observational Data
33%
Increasing Complexity
33%
Simulation Data
33%
Complex Link
33%
Daily Precipitation
33%
Daily Rainfall Amount
33%
NAO Index
33%
Climate Variables
33%
Large-scale Climate
33%
Multi-scalar
33%
Mean Annual Precipitation
33%
Engineering
Illustrates
100%
Climate Variable
100%
Predictor Variable
100%
Mathematics
Regression Model
100%
Variance
33%
Statistical Simulation
33%
Observational Data
33%
Statistical Modeling
33%
Predictor Variable
33%
Seasonal Effect
33%
Earth and Planetary Sciences
Time Series
100%
Physical Process
100%