On the Application of Non-Gaussian Noise in Stochastic Langevin Simulations
Niels Gr{\o}nbech-Jensen

TL;DR
This paper investigates the impact of using non-Gaussian noise in Langevin simulations, concluding that Gaussian noise is essential for accurate thermodynamic properties and time-step invariance in modern stochastic integrators.
Contribution
It demonstrates that non-Gaussian noise distorts higher moments and thermodynamic measures, emphasizing the necessity of Gaussian noise for reliable Langevin simulations with large time steps.
Findings
Non-Gaussian noise causes deviations in higher moments of system coordinates.
Gaussian noise ensures time-step independent thermodynamic results.
Non-Gaussian noise impairs the accuracy of thermodynamic measures, especially at large time steps.
Abstract
In light of recent advances in time-step independent stochastic integrators for Langevin equations, we revisit the considerations for using non-Gaussian distributions for the thermal noise term in discrete-time thermostats. We find that the desirable time-step invariance of the modern methods is rooted in the Gaussian noise, and that deviations from this distribution will distort the Boltzmann statistics arising from the fluctuation-dissipation balance of the integrators. We use the GJ stochastic Verlet methods as the focus of our investigation since these methods are the ones that contain the most accurate thermodynamic measures of existing methods. Within this set of methods we find that any distribution of applied noise, which satisfies the two first moments given by the fluctuation-dissipation theorem, will result in correct, time-step independent results that are generated by the…
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Taxonomy
TopicsAdvanced Thermodynamics and Statistical Mechanics · Spectroscopy and Quantum Chemical Studies · stochastic dynamics and bifurcation
