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arxiv: 2603.13549 · v2 · pith:EEOCPYQ5new · submitted 2026-03-13 · ⚛️ physics.chem-ph · cond-mat.stat-mech· physics.comp-ph

Adaptive tensor train metadynamics for high-dimensional free energy exploration

classification ⚛️ physics.chem-ph cond-mat.stat-mechphysics.comp-ph
keywords metadynamicsfreemethodtt-metadynamicsbiascomputationalcostefficient
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A key challenge for molecular dynamics simulations is efficient exploration of free energy landscapes over relevant collective variables (CV). Common methods for enhancing sampling become prohibitively inefficient beyond only a few CVs; in the case of the widely-used metadynamics method, the computational cost of evaluating and storing the bias potential grows exponentially with the number of dimensions. Here, we introduce TT-Metadynamics, in which the accumulated sum of Gaussian functions in the original metadynamics method is periodically compressed into a low-rank tensor train (TT) representation. The TT enables efficient memory use and prevents the computational cost of evaluating the bias potential from increasing with simulation time. We present a "sketching" algorithm that allows us to construct the TT with linear scaling in the number of CVs. Applied to benchmark systems with up to 14 CVs, the accuracy of TT-Metadynamics matches or exceeds that of standard metadynamics in long simulations, particularly in systems with high barriers. These results establish TT-Metadynamics as a scalable and effective method for computing free energies that are functions of several CVs.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. High-Dimensional Enhanced Sampling via Regularized Path-Dependent McKean--Vlasov Dynamics using Tensor Density Approximation

    math.NA 2026-05 unverdicted novelty 7.0

    A new regularized path-dependent McKean-Vlasov formulation with optimization-free tensor density approximation scales enhanced sampling to collective variable dimensions up to 64.