
Traditional noise-filtering techniques are known to significantly alter features of chaotic data. In this paper, we present a noncausal topology-based filtering method for continuous-time dynamical systems that is effective in removing additive, uncorrelated noise from time-series data. Signal-to-noise ratios and Lyapunov exponent estimates are dramatically improved following the removal of the identified noisy points.
Signal theory (characterization, reconstruction, filtering, etc.), Detection theory in information and communication theory, Time series analysis of dynamical systems, Applications of dynamical systems
Signal theory (characterization, reconstruction, filtering, etc.), Detection theory in information and communication theory, Time series analysis of dynamical systems, Applications of dynamical systems
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