Nonlinear analysis of bivariate data with cross recurrence plots
@article{Marwan2002NonlinearAO,
title={Nonlinear analysis of bivariate data with cross recurrence plots},
author={Norbert Marwan and J{\"u}rgen Kurths},
journal={Physics Letters A},
year={2002},
volume={302},
pages={299-307},
url={https://api.semanticscholar.org/CorpusID:8020903}
}Figures from this paper
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