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The Lyapunov dimension, convergency and entropy for a dynamical model of Chua memristor circuit

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 Added by Nikolay Kuznetsov
 Publication date 2018
  fields Physics
and research's language is English




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For the study of chaotic dynamics and dimension of attractors the concepts of the Lyapunov exponents was found useful and became widely spread. Such characteristics of chaotic behavior, as the Lyapunov dimension and the entropy rate, can be estimated via the Lyapunov exponents. In this work an analytical approach to the study of the Lyapunov dimension, convergency and entropy for a dynamical model of Chua memristor circuit is demonstrated.



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