Abstract:
Many complex networks are known to exhibit sudden transitions between alternative steady states with
contrasting properties. Such a sudden transition demonstrates a network’s resilience, which is the ability of
a system to persist in the face of perturbations. Most of the research on network resilience has focused on the
transition from one equilibrium state to an alternative equilibrium state. Although the presence of nonequilibrium
dynamics in some nodes may advance or delay sudden transitions in networks and give early warning signals
of an impending collapse, it has not been studied much in the context of network resilience. Here we bridge
this gap by studying a neuronal network model with diverse topologies, in which nonequilibrium dynamics
may appear in the network even before the transition to a resting state from an active state in response to
environmental stress deteriorating their external conditions. We find that the percentage of uncoupled nodes
exhibiting nonequilibrium dynamics plays a vital role in determining the network’s transition type. We show
that a higher proportion of nodes with nonequilibrium dynamics can delay the tipping and increase networks’
resilience against environmental stress, irrespective of their topology. Further, predictability of an upcoming
transition weakens, as the network topology moves from regular to disordered.