arXiv Analytics

Sign in

arXiv:2402.01553 [cond-mat.stat-mech]AbstractReferencesReviewsResources

Q-factor: A measure of competition between the topper and the average in percolation and in SOC

Asim Ghosh, S. S. Manna, Bikas K. Chakrabarti

Published 2024-02-02, updated 2024-07-09Version 3

We define the $Q$-factor in the percolation problem as the quotient of the size of the largest cluster and the average size of all clusters. As the occupation probability $p$ is increased, the $Q$-factor for the system size $L$ grows systematically to its maximum value $Q_{max}(L)$ at a specific value $p_{max}(L)$ and then gradually decays. Our numerical study of site percolation problems on the square, triangular and the simple cubic lattices exhibits that the asymptotic values of $p_{max}$ though close, are distinctly different from the corresponding percolation thresholds of these lattices. We have also shown using the scaling analysis that at $p_{max}$ the value of $Q_{max}(L)$ diverges as $L^d$ ($d$ denoting the dimension of the lattice) as the system size approaches to their asymptotic limit. We have further extended this idea to the non-equilibrium systems such as the sandpile model of self-organized criticality. Here, the $Q(\rho,L)$-factor is the quotient of the size of the largest avalanche and the cumulative average of the sizes of all the avalanches; $\rho$ being the drop density of the driving mechanism. This study has been prompted by some observations in Sociophysics.

Related articles: Most relevant | Search more
Site percolation in distorted square and simple cubic lattices with flexible number of neighbors
Behavior of the Random Field $XY$ Model on Simple Cubic Lattices at $h_r = 1.5$
Jamming and percolation of $k^3$-mers on simple cubic lattices