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Rainfall-runoff modeling using Artificial Neural Networks
A. Sezin Tokar, Peggy A. Johnson
Civil and Environmental Engineering
Research output
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Contribution to journal
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Article
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peer-review
577
Scopus citations
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Keyphrases
Artificial Neural Network
100%
Artificial Neural Network Model
33%
Calibration Data
33%
Daily Precipitation
33%
Daily Runoff
33%
Existing Techniques
33%
Maryland
33%
Neural Network Method
33%
Precipitation Temperature
33%
Prediction Accuracy
66%
Rainfall-runoff Modeling
100%
River Watershed
33%
Snowmelt
33%
Statistical Regression
33%
Training Content
33%
Training Data
33%
Training Length
33%
Engineering
Artificial Neural Network
100%
Artificial Neural Network Model
33%
Systematic Approach
33%
Earth and Planetary Sciences
Artificial Neural Network
100%
Maryland
25%
Snowmelt
25%
Mathematics
Calibration Data
33%