In physics, Brownian dynamics is a mathematical approach for describing the dynamics of molecular systems in the diffusive regime. It is a simplified version of Langevin dynamics and corresponds to the limit where no average acceleration takes place. This approximation is also known as overdamped Langevin dynamics or as Langevin dynamics without inertia.

Definition

In Brownian dynamics, the following equation of motion is used to describe the dynamics of a stochastic system with coordinates :[1][2][3]

where:

  • is the velocity, the dot being a time derivative
  • is the particle interaction potential
  • is the gradient operator, such that is the force calculated from the particle interaction potential.
  • is Boltzmann's constant.
  • is the temperature.
  • is a diffusion coefficient in units of .
  • is a white noise term, in units of , satisfying and

Derivation

In Langevin dynamics, the equation of motion using the same notation as above is as follows:[1][2][3]

where:

  • is the mass of the particle.
  • is the acceleration
  • is the friction constant or tensor, in units of .
    • It is often of form , where is the collision frequency with the solvent, a damping constant in units of .
    • For spherical particles of radius r in the limit of low Reynolds number, Stokes' law gives .


The above equation may be rewritten as

In Brownian dynamics, the inertial force term is so much smaller than the other three that it is considered negligible. In this case, the equation is approximately[1]

For spherical particles of radius in the limit of low Reynolds number, we can use the Stokes-Einstein relation. In this case, , and the equation reads:

For example, when the magnitude of the friction tensor increases, the damping effect of the viscous force becomes dominant relative to the inertial force. Consequently, the system transitions from the inertial to the diffusive (Brownian) regime. For this reason, Brownian dynamics are also known as overdamped Langevin dynamics or Langevin dynamics without inertia.

Algorithms

In 1978, Ermack and McCammon suggested an algorithm for efficiently computing Brownian dynamics with hydrodynamic interactions.[2] Hydrodynamic interactions occur when the particles interact indirectly by generating and reacting to local velocities in the solvent. For a system of three-dimensional particle diffusing subject to a force vector F(X), the derived Brownian dynamics scheme becomes:[1]

where is a diffusion matrix specifying hydrodynamic interactions in non-diagonal entries and is a Gaussian noise vector with zero mean and a standard deviation of in each vector entry.

See also

References

  1. 1 2 3 4 Schlick, Tamar (2002). Molecular Modeling and Simulation. Interdisciplinary Applied Mathematics. Vol. 21. Springer. p. 480-494. doi:10.1007/978-0-387-22464-0. ISBN 978-0-387-22464-0.
  2. 1 2 3 Ermack, Donald L; McCammon, J. A. (1978). "Brownian dynamics with hydrodynamic interactions". J. Chem. Phys. 69 (4): 1352–1360. Bibcode:1978JChPh..69.1352E. doi:10.1063/1.436761.
  3. 1 2 Loncharich, R J; Brooks, B R; Pastor, R W (1992). "Langevin Dynamics of Peptides: The Frictional Dependence of lsomerization Rates of N-Acetylalanyl-WMethylamid". Biopolymers. 32 (5): 523–35. doi:10.1002/bip.360320508. PMID 1515543. S2CID 23457332.


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