Extracting dynamical behaviour via Markov models
نویسنده
چکیده
Ulam's method of discretising the dynamics of a smooth deterministic system to produce a nite state Markov chain approximation has been in use for over two decades. We review what can be done with the constructions, in the sense of how various dy-namical indicators and behaviour can be numerically extracted.
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