Experimental implementation of maximally synchronizable networks

@article{SevillaEscoboza2015ExperimentalIO,
  title={Experimental implementation of maximally synchronizable networks},
  author={R. Sevilla-Escoboza and J. Buld{\'u} and S. Boccaletti and D. Papo and D.-U. Hwang and G. Huerta-Cu{\'e}llar and R. Guti{\'e}rrez},
  journal={Physica A-statistical Mechanics and Its Applications},
  year={2015},
  volume={448},
  pages={113-121}
}
  • R. Sevilla-Escoboza, J. Buldú, +4 authors R. Gutiérrez
  • Published 2015
  • Physics, Mathematics
  • Physica A-statistical Mechanics and Its Applications
  • Maximally synchronizable networks (MSNs) are acyclic directed networks that maximize synchronizability. In this paper, we investigate the feasibility of transforming networks of coupled oscillators into their corresponding MSNs. By tuning the weights of any given network so as to reach the lowest possible eigenratio λN/λ2, the synchronized state is guaranteed to be maintained across the longest possible range of coupling strengths. We check the robustness of the resulting MSNs with an… CONTINUE READING
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