| Literature DB >> 33286685 |
Diego González Diaz1,2, Sergio Davis3, Sergio Curilef1.
Abstract
A permanent challenge in physics and other disciplines is to solve Euler-Lagrange equations. Thereby, a beneficial investigation is to continue searching for new procedures to perform this task. A novel Monte Carlo Metropolis framework is presented for solving the equations of motion in Lagrangian systems. The implementation lies in sampling the path space with a probability functional obtained by using the maximum caliber principle. Free particle and harmonic oscillator problems are numerically implemented by sampling the path space for a given action by using Monte Carlo simulations. The average path converges to the solution of the equation of motion from classical mechanics, analogously as a canonical system is sampled for a given energy by computing the average state, finding the least energy state. Thus, this procedure can be general enough to solve other differential equations in physics and a useful tool to calculate the time-dependent properties of dynamical systems in order to understand the non-equilibrium behavior of statistical mechanical systems.Entities:
Keywords: Monte Carlo Metropolis; equation of motion; least action principle; maximum caliber
Year: 2020 PMID: 33286685 PMCID: PMC7597156 DOI: 10.3390/e22090916
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Explanatory diagram for a Monte Carlo Metropolis (MCM) sampling in the path space.
Figure 2Dynamical trajectories sampled for the free particle action.
Figure 3Paths sampled for the harmonic oscillator action considering short time intervals.
Figure 4Harmonic oscillator with fixed kinetic foci.