Classifying minimum energy states for interacting particles: Spherical Shells
Cameron Davies, Tongseok Lim, Robert J. McCann

TL;DR
This paper characterizes energy-minimizing configurations of particles with long-range attraction and short-range repulsion, proving spherical shells are optimal in certain parameter regimes and analyzing stability of these configurations.
Contribution
It provides rigorous proofs that spherical shells minimize energy for specific parameters and establishes nonlinear stability of these states without linearization.
Findings
Spherical shells uniquely minimize energy for 2<α<4 on the mildly repulsive frontier.
Existence of a threshold α_{Δ^n}(β) determining when particles distribute uniformly on a simplex.
At (α,β)=(2,4), minimizers are characterized by sharing moments with spherical shells.
Abstract
Particles interacting through long-range attraction and short-range repulsion given by power-laws have been widely used to model physical and biological systems, and to predict or explain many of the patterns they display. Apart from rare values of the attractive and repulsive exponents , the energy minimizing configurations of particles are not explicitly known, although simulations and local stability considerations have led to conjectures with strong evidence over a much wider region of parameters. For a segment on the mildly repulsive frontier we employ strict convexity to conclude that the energy is uniquely minimized (up to translation) by a spherical shell. In a companion work, we show that in the mildly repulsive range , a unimodal threshold exists such that equidistribution…
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Taxonomy
TopicsMathematical Biology Tumor Growth · Advanced Thermodynamics and Statistical Mechanics · Micro and Nano Robotics
