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Free Energy from Unconstrained MD Simulations
The Adaptive Biasing Force (ABF) Method calculates the free energy as a function of selected collective variables from unconstrained molecular dynamics (MD) simulations. The method does not provide the free energy directly, but instead, it provides the free energy gradient  , which must be integrated to get the free energy:
, which must be integrated to get the free energy:
 ... (1)
 ... (1)
The free energy gradient is calculated as a mean of instantaneous collective force  :
:
 ... (2)
 ... (2)
with the instantaneous collective force calculated from the time evolution of the collective variable:
 ... (3)
 ... (3)
where  is the matrix in the form:
 is the matrix in the form:
![{\displaystyle [Z]_{ij}=\sum_{k=1}^{N_{atoms}} \frac{1}{m_k} \frac{\partial \xi_i}{\partial \bold x_k} \frac{\partial \xi_j}{\partial \bold x_k}}](/wiki6/index.php?title=Special:MathShowImage&hash=0c241ee70df5fa42531b35acbd963568&mode=mathml) ... (4)
 ... (4)
The analytical calculation of instantaneous collective force by Equation 3 requires the second derivatives of collective variables with respect to Cartesian coordinates. Since this can be prohibitive for complex collective variables such as the simple base-pair parameters, Equation 3 is evaluated numerically by a finite-difference approach, as suggested by Darve et al.
Sampling Space Discretization
Due to numerical reasons, mean forces are collected on a regular grid. The averaging of instantaneous collective force is then done in small intervals centered at discrete CV values:
 ... (5)
 ... (5)
with the standard error:
 ... (6)
 ... (6)
where the standard deviation is given by:
 ... (7)
 ... (7)
where  is the interval size also called a bin,
 is the interval size also called a bin,  is the number of samples collected in a bin centered at
 is the number of samples collected in a bin centered at  , and
, and  is a statistical inefficiency due to correlation in time series.
 is a statistical inefficiency due to correlation in time series.
Adaptive Bias
ABF introduces an adaptive bias, which improves the sampling of rare events. The bias removes barriers or higher free energy regions in the space described by predefined collective variables  . As a result, the system evolves alongside these collective variables by free diffusions. The bias is derived from the free energy, which is projected in the form of biasing force
. As a result, the system evolves alongside these collective variables by free diffusions. The bias is derived from the free energy, which is projected in the form of biasing force  to the Cartesian space and removed from force
 to the Cartesian space and removed from force  originated from interatomic interaction potential
 originated from interatomic interaction potential  . The application of the bias thus leads to the modified equations of motions:
. The application of the bias thus leads to the modified equations of motions:
 ... (8)
 ... (8)
where  is mass of atom i,
 is mass of atom i,  is atom position, and
 is atom position, and  is time.
 is time.
Instanteous Collective Forces
TBA
References