SCIENCE CHINA Information Sciences, Volume 59 , Issue 9 : 092202(2016) https://doi.org/10.1007/s11432-015-5498-0

Modeling of nonlinear dynamical systems based on deterministic learning and structural stability

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  • ReceivedAug 25, 2015
  • AcceptedOct 28, 2015
  • PublishedMay 27, 2016



National Science Fund for Distinguished Young Scholars(61225014)

National Major Scientific Instruments Development Project(61527811)

Guangdong Natural Science Foundation(2014A030312005)



This work was supported by National Science Fund for Distinguished Young Scholars (Grant No. 61225014), National Major Scientific Instruments Development Project (Grant No. 61527811), Guangdong Natural Science Foundation (Grant No. 2014A030312005), Guangdong Key Laboratory of Biomedical Engineering, and Space Intelligent Control Key Laboratory of Science and Technology for National Defense.


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