Predicting Synchronization with Strong Resetting
نویسندگان
چکیده
Introduction. Several complex behaviors and motor patterns generated by biological systems are the result of well coordinated and strongly interacting populations of neurons [1, 2]. For instance Central Pattern Generators are responsible for the maintenance of vital rhythms (circadian, circulatory, respiratory, etc) [3]. These systems have been successfully studied using interdisciplinary techniques led by biology, physics and dynamical systems. They are usually described by a group of interacting (non-linear) oscillators [4], trapped in limit cycles with huge basins of attraction [5].
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تاریخ انتشار 2014