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arxiv: 2510.25034 · v2 · pith:H5JGQQZAnew · submitted 2025-10-28 · 🧮 math.NA · cs.NA· math-ph· math.AP· math.MP· math.PR

Cluster formation for weakly interacting kinetic Langevin dynamics

classification 🧮 math.NA cs.NAmath-phmath.APmath.MPmath.PR
keywords dynamicsclusterformationkineticlangevinclustersinteractingparticles
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In this paper, we study the formation of clusters for stochastic interacting particle systems (IPS) that interact through short-range attractive potentials in a periodic domain. We consider kinetic (underdamped) Langevin dynamics and focus on the low-friction regime. Employing a linear stability analysis for the kinetic McKean-Vlasov equation, we show that, at sufficiently low temperatures, and for sufficiently short-ranged interactions, the particles form clusters that correspond to metastable states of the mean-field dynamics. We derive the friction and particle-count dependent cluster-formation time and numerically measure the friction-dependent times to reach a stationary state (given by a state in which all particles are bound in a single cluster). By providing both theory and numerical methods in the inertial stochastic setting, this work acts as a bridge between cluster formation studies in overdamped Langevin dynamics and the Hamiltonian (microcanonical) limit.

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