Abstract:
Many interacting dynamical systems ranging from ecosystems to neuronal systems
can be modeled using complex networks. In complex networks, the dynamical
properties of an uncoupled node and the interaction topology between nodes are
two critical determinants of network dynamics. Therefore, a variation in node
dynamics and/or network topology results in several interesting collective dynamics,
including synchronization and cascading failures. The occurrence of synchronization
in population abundance is known to influence population persistence and is an
important research topic. Similarly, cascading failure in networks can trigger
sudden collapse or tipping points in many natural systems. This thesis investigates
synchronization, stability, and resilience properties of different complex networks.
We study how time-varying species interactions in an ecological network affect
synchrony patterns. We identify the condition for which the synchronization state
will be stable using the master stability function and by computing the basin
stability. Most seasonally forced ecosystems consider forcing with a fixed frequency;
in contrast, we study the dynamics of a driven spatial ecological network with
frequency modulation. With an increase in the strength of frequency modulation,
the region of stable synchronous solution increases in the parameter space. We show
that the phase reduction method can help to distinguish intermittent synchrony from
synchrony and asynchrony. Next, we develop a bio-energetic model of mutualistic
networks. We show that the system can experience sudden community collapse with
temperature variations. Further, by using a dimension reduction method, we study
the stability of the considered network. We mitigate sudden network collapse and
study how network structural properties affect such mitigation policies. Cooperative
interspecific competition, a widely observed behavior among individuals at different
levels, can be modeled using evolutionary game theory. Species can change their
strategy due to population feedback or varying resource availability. We incorporate
an adaptive species strategy within a higher dimensional Lotka-Volterra system. We
find that adaptive strategy results in increased species persistence across various
games and network structures. Another less explored area in complex networks is
the loss of resilience in the presence of nonequilibrium dynamics. In this thesis, we
report that the percentage of nodes exhibiting nonequilibrium dynamics plays a vital
role in determining a network’s resilience against environmental stress, irrespective
of its topology. Additionally, we identify a covariance-based early warning signal to
forecast network tipping points.