In this book the formation, elasticity, and structure
of randomly cross-linked networks is investigated
analytically and with the help of computer simulations. In
the first two chapters, two polymer models are studied by
means of equilibrium statistical mechanics and replica theory
an isotropic model of randomly cross-linked particles and
an anisotropic model of cross-linked directed
polymers. For both models, a suitable order parameter
describing the gelation transition is developed at first.
With it, the elastic properties of the isotropic network is
determined for arbitrary cross-link concentration and the
extent of the chain fluctuations and the role of the
preferred direction are studied for the anisotropic system. As
a real life example, the structure of spider silk is
analyzed, a material with very high toughness despite its low
density. Here nano-crystallites are randomly connected by an
amorphous network of chains. A model for the embedding of
the crystallites in the amorphous matrix is developed,
accounting for the crystallites' structure, arrangement, and
their random orientation relative to the fiber axis. With
this model, the scattering function S(q) of the
crystallites can be calculated and compared to experimental
scattering intensities enabling the determination of the
geometric and statistical parameters. The rather general
model for nano-crystalline materials can also be used to
determine the importance of disorder and coherent
scattering between different crystallites, which is usually
neglected for wide angle X-ray scattering.Random networks of
capillary bridges can occur in wet sand. By adding a small
amount of a liquid to a granular system, the particles can
create liquid capillary bridges between each other. When such
a bridge ruptures, a fixed amount of energy is
dissipated different from the ordinary granular interaction
where a fraction of the kinetic energy is dissipated in a
collision. A freely cooling system is shown to undergo a
nonequilibrium dynamic phase transition from a state with
mainly single particles and fast cooling to a state with
growing aggregates, where bridge rupture becomes a rare event
and cooling is slow. Initially, the aggregation of
particles into clusters is a self-similar growth process,
where fractal objects are generated and with a cluster size
distribution that can be described by a scaling function. At
later times a percolating cluster is found, which gradually
absorbs all other particles.