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ℒ
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nonlinear system identification via recurrent neural networks
Choon Ki Ahn
Research output
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Contribution to journal
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Article
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peer-review
10
Citations (Scopus)
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Dive into the research topics of 'ℒ
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nonlinear system identification via recurrent neural networks'. Together they form a unique fingerprint.
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Mathematics
Nonlinear System Identification
100%
Identification Scheme
96%
Recurrent Neural Networks
80%
Learning Algorithm
37%
Linear Matrix Inequality
34%
Stability and Convergence
32%
Disturbance
29%
Boundedness
25%
Nonlinear Systems
25%
Formulation
19%
Design
19%
Numerical Examples
19%
Norm
19%
Demonstrate
18%
Standards
17%
Engineering & Materials Science
Recurrent neural networks
65%
Identification (control systems)
55%
Nonlinear systems
53%
Linear matrix inequalities
30%
Learning algorithms
26%