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Damage identification scheme based on compressive sensing
Y. Wang, Hong Hao
Research output
:
Contribution to journal
›
Article
›
peer-review
65
Citations (Scopus)
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Dive into the research topics of 'Damage identification scheme based on compressive sensing'. Together they form a unique fingerprint.
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Engineering
Compressive Sensing
100%
Applications
33%
Pipe
33%
Demonstrates
33%
Optimization
16%
Structural Response
16%
Simulation Result
16%
Time History
16%
Computer Simulation
16%
Simulated Data
16%
Time Domain
16%
Breakthrough
16%
Frequency Domain
16%
Service Life
16%
Damage Scenario
16%
Steel Pipe
16%
Negative Impact
16%
Structural Design
16%
Classification Problem
16%
Structural Damage Identification
16%
Input Information
16%
Service Period
16%
Nyquist Rate
16%
Failure (Mechanical)
16%
Structural Health Monitoring
16%
Infrastructure
16%
Models
16%
Research
16%
Investment
16%
Physics
Detection
100%
Utilization
33%
Area
33%
Matrix
33%
Domains
33%
Signal Processing
16%
Degradation
16%
Service Life
16%
Structural Health Monitoring
16%
Structural Engineering
16%
Independent Variables
16%
Information
16%
Acoustics
16%
Model
16%
Frequencies
16%
Impact
16%
Simulation
16%
Responses
16%
Optimization
16%
Identifying
16%
Failure
16%
Increasing
16%
Steel
16%
Computer Science
Compressive Sensing
100%
Identification
100%
Application
33%
Service
33%
Signal Processing
33%
Structural Damage
16%
Pattern Classification
16%
Theoretical Background
16%
Process Optimization
16%
Simulated Data
16%
Frequency Domain
16%
Negative Impact
16%
Interaction Model
16%
Sparse Representation
16%
Classification Problem
16%
Domains
16%
Numerical Simulation
16%
Structural Health
16%
Identification Problem
16%
Material Science
Spring Steel
16%