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Machine learning and urban drainage systems: State-of-the-art review
Soon Ho Kwon,
Joong Hoon Kim
Research output
:
Contribution to journal
›
Review article
›
peer-review
24
Citations (Scopus)
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Keyphrases
Machine Learning
100%
Urban Drainage System
100%
System State
100%
State-of-the-art Review
100%
Machine Learning Technology
57%
Modelling Applications
42%
Complex Data
28%
Application-oriented
28%
Machine Learning Based
28%
Data Distribution
28%
Real-time Operation
14%
Model Performance
14%
Distribution Pattern
14%
Neural Network Model
14%
Engineering Discipline
14%
Daily Life
14%
Defect Detection
14%
Operation Control
14%
Model Efficiency
14%
Flood Inundation
14%
Automatic Computation
14%
Rapid Capture
14%
Pipe Defect
14%
Inundation Forecast
14%
Feature Capture
14%
Computer Science
Machine Learning
100%
Learning System
100%
Machine Learning Technology
80%
Application Modeling
60%
Data Distribution
40%
Performance Model
20%
Engineering Discipline
20%
Neural Network Model
20%
Research Topic
20%
Future Direction
20%
Potential Issue
20%
Distribution Pattern
20%
Engineering
System State
100%
Learning System
100%
Engineering
11%
Early Stage
11%
Network Model
11%
Review Paper
11%
Daily Life
11%
Control Operation
11%
Engineering Discipline
11%
Defect Detection
11%
Chemical Engineering
Learning System
100%
Neural Network
11%