Abstract:
Transportation is a fundamental aspect of human and biological systems, serving
as the mechanism for the movement of people, goods, and organisms from one place to
another. Its significance lies in its ability to connect diverse locations, assist in economic
growth, cultural exchange, and ecological balance. In biological systems, intricate
mechanisms such as motor proteins traveling along microtubules play a crucial role in
cellular transport, ensuring the proper distribution of essential molecules within cells.
Onamacroscopic scale, vehicular traffic and pedestrian flow are essential components of
urban life, influencing the efficiency and livability of cities. The coordinated movement
of ants, exemplifying collective behavior, showcases how transportation is vital for the
survival and thriving of social organisms. Therefore, it is important to investigate the
collective motion of the entities involved, by employing a mathematical model, with the
objective of explaining the complex dynamics that characterize their interactions.
Over the years, a discrete lattice gas model, namely totally asymmetric simple
exclusion process (TASEP), has emerged as a paradigmatic model, which is often
adopted to study the non-equilibrium stochastic motion of various physical and
biological transport processes. Treating entities such as vehicles, motor proteins, and
ants as particles, this model aptly captures their unidirectional movement along the
respective track by representing them with discrete lattice structures. Considering
the numerous scenarios involving systems with open boundaries, the terminal points
of the lattice are linked to boundary reservoirs and the dynamics of the particles
are governed by simple Poisson process. To provide a sound theoretical framework,
mean-field theory and its variants are adopted which neglects all the correlations
between neighbouring particles. A notable consistency between mean-field predictions
and Monte Carlo simulations is observed, affirming the theoretical predictions of the
stationary properties.
In this thesis, we contribute to a thorough understanding of collective behaviour
of particles by incorporating various realistic features. The first part is inspired by
the motion of a limited number of motor proteins like kinesin and dynein in opposite
directions on a microtubules. In particular, we examine the influence of individual
particle constraints on both species in a one-dimensional bidirectional transport model.
The stationary properties of the system is regulated by the entry-exit rates of the species
as well as the occupancy of the respective reservoir. Continuing our exploration in
bidirectional transport, further we analyze an exclusion model resembling the structure
of a roundabout.
The second part broadens a single-lane model to a two-lane TASEP by introducing
diverse elements such as stochastic blockages at each site, the existence of narrow
entrances, reservoir crowding, or inter-lane coupling. These incorporated features
emulate various scenarios found in both intracellular transport and vehicular traffic.
Initially, our focus is on a system characterized by narrow two-lane entrances, where
defects can stochastically bind and unbind within a resource-constrained environment.
Despite the inherent complexity, we are able to derive theoretical expressions for
stationary properties through the usage of mean-field theory. Furthermore, we
explore a resource-limited, two-lane coupled model where simple mean-field methods
prove inadequate for obtaining explicit solutions. To conduct a thorough analysis
of this challenging problem, we utilize vertical cluster mean-field in conjunction with
singular-perturbation technique.
The last part of the thesis centers around the attachment and detachment dynamics
of motor proteins on complex structure of microtubules, known as the Langmuir
kinetics. Initially, a network junction model is investigated under conditions of infinite
resources, followed by an examination under finite resource constraints.
Overall, the objective of this work is to utilize mathematical modeling as a tool to
attain a deep comprehension of the complexities that may emerge in a transport system
where particles undergo random motion.