2,571 research outputs found
Renormalization procedure for random tensor networks and the canonical tensor model
We discuss a renormalization procedure for random tensor networks, and show
that the corresponding renormalization-group flow is given by the Hamiltonian
vector flow of the canonical tensor model, which is a discretized model of
quantum gravity. The result is the generalization of the previous one
concerning the relation between the Ising model on random networks and the
canonical tensor model with N=2. We also prove a general theorem which relates
discontinuity of the renormalization-group flow and the phase transitions of
random tensor networks.Comment: 23 pages, 5 figures; Comments on first order transitions and
discontinuity of RG added, and minor correction
Interpreting canonical tensor model in minisuperspace
Canonical tensor model is a theory of dynamical fuzzy spaces in arbitrary
space-time dimensions. Examining its simplest case, we find a connection to a
minisuperspace model of general relativity in arbitrary dimensions. This is a
first step in interpreting variables in canonical tensor model based on the
known language of general relativity.Comment: 9 page
Charged Particle Diffusion in a Magnetic Dipole Trap
When particles are magnetized, a diffusion process is influenced by the
ambient magnetic field. While the entropy increases, the constancy of the
magnetic moment puts a constraint. Here, we compare the E-cross-B diffusion
caused by random fluctuations of the electric field in two different systems,
the Penning-Malmberg trap and the magnetic dipole trap. A Fokker-Planck
equation is derived by applying the ergodic ansatz on the invariant measure of
the system. In the dipole magnetic field particles diffuse inward and
accumulate in the higher magnetic field region, while, in a homogeneous
magnetic field, particles diffuse out from the confinement region. The
properties of analogous transport in a more general class of magnetic fields
are also briefly discussed.Comment: 10 pages, 5 figure
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