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|
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\section{\label{sec:mechanics}Mechanics} |
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|
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\subsection{\label{integrate}Integrating the Equations of Motion: the |
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DLM method} |
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|
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The default method for integrating the equations of motion in {\sc |
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oopse} is a velocity-Verlet version of the symplectic splitting method |
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proposed by Dullweber, Leimkuhler and McLachlan |
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(DLM).\cite{Dullweber1997} When there are no directional atoms or |
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rigid bodies present in the simulation, this integrator becomes the |
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standard velocity-Verlet integrator which is known to sample the |
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microcanonical (NVE) ensemble.\cite{} |
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|
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Previous integration methods for orientational motion have problems |
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that are avoided in the DLM method. Direct propagation of the Euler |
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angles has a known $1/\sin\theta$ divergence in the equations of |
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motion for $\phi$ and $\psi$,\cite{AllenTildesley} leading to |
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numerical instabilities any time one of the directional atoms or rigid |
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bodies has an orientation near $\theta=0$ or $\theta=\pi$. More |
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modern quaternion-based integration methods have relatively poor |
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energy conservation. While quaternions work well for orientational |
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motion in other ensembles, the microcanonical ensemble has a |
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constant energy requirement that is quite sensitive to errors in the |
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equations of motion. An earlier implementation of {\sc oopse} |
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utilized quaternions for propagation of rotational motion; however, a |
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detailed investigation showed that they resulted in a steady drift in |
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the total energy, something that has been observed by |
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others.\cite{Laird97} |
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|
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The key difference in the integration method proposed by Dullweber |
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\emph{et al.} is that the entire rotation matrix is propagated from |
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one time step to the next. In the past, this would not have been |
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feasible, since that the rotation matrix for a single body has nine |
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elements compared to 3 or 4 elements for Euler angles and quaternions |
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respectively. System memory has become less costly in recent times, |
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and this can be translated into substantial benefits in energy |
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conservation. |
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|
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The basic equations of motion being integrated are derived from the |
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Hamiltonian for conservative systems containing rigid bodies, |
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\begin{equation} |
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H = \sum_{i} \left( \frac{1}{2} m_i {\bf v}_i^T \cdot {\bf v}_i + |
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\frac{1}{2} {\bf j}_i^T \cdot \overleftrightarrow{\mathsf{I}}_i^{-1} \cdot |
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{\bf j}_i \right) + |
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V\left(\left\{{\bf r}\right\}, \left\{\mathsf{A}\right\}\right) |
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\end{equation} |
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where ${\bf r}_i$ and ${\bf v}_i$ are the cartesian position vector |
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and velocity of the center of mass of particle $i$, and ${\bf j}_i$ |
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and $\overleftrightarrow{\mathsf{I}}_i$ are the body-fixed angular |
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momentum and moment of inertia tensor, respectively. $\mathsf{A}_i$ |
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is the $3 \times 3$ rotation matrix describing the instantaneous |
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orientation of the particle. $V$ is the potential energy function |
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which may depend on both the positions $\left\{{\bf r}\right\}$ and |
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orientations $\left\{\mathsf{A}\right\}$ of all particles. The |
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equations of motion for the particle centers of mass are derived from |
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Hamilton's equations and are quite simple, |
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\begin{eqnarray} |
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\dot{{\bf r}} & = & {\bf v} \\ |
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\dot{{\bf v}} & = & \frac{{\bf f}}{m} |
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\end{eqnarray} |
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where ${\bf f}$ is the instantaneous force on the center of mass |
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of the particle, |
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\begin{equation} |
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{\bf f} = - \frac{\partial}{\partial |
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{\bf r}} V(\left\{{\bf r}(t)\right\}, \left\{\mathsf{A}(t)\right\}). |
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\end{equation} |
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|
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The equations of motion for the orientational degrees of freedom are |
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\begin{eqnarray} |
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\dot{\mathsf{A}} & = & \mathsf{A} \cdot |
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\mbox{ skew}\left(\overleftrightarrow{I}^{-1} \cdot {\bf j}\right) \\ |
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\dot{{\bf j}} & = & {\bf j} \times \left( \overleftrightarrow{I}^{-1} |
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\cdot {\bf j} \right) - \mbox{ rot}\left(\mathsf{A}^{T} \cdot \frac{\partial |
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V}{\partial \mathsf{A}} \right) |
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\end{eqnarray} |
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In these equations of motion, the $\mbox{skew}$ matrix of a vector |
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${\bf v} = \left( v_1, v_2, v_3 \right)$ is defined: |
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\begin{equation} |
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\mbox{skew}\left( {\bf v} \right) := \left( |
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\begin{array}{ccc} |
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0 & v_3 & - v_2 \\ |
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-v_3 & 0 & v_1 \\ |
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v_2 & -v_1 & 0 |
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\end{array} |
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\right) |
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\end{equation} |
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The $\mbox{rot}$ notation refers to the mapping of the $3 \times 3$ |
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rotation matrix to a vector of orientations by first computing the |
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skew-symmetric part $\left(\mathsf{A} - \mathsf{A}^{T}\right)$ and |
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then associating this with a length 3 vector by inverting the |
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$\mbox{skew}$ function above: |
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\begin{equation} |
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\mbox{rot}\left(\mathsf{A}\right) := \mbox{ skew}^{-1}\left(\mathsf{A} |
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- \mathsf{A}^{T} \right) |
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\end{equation} |
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Written this way, the $\mbox{rot}$ operation creates a set of |
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conjugate angle coordinates to the body-fixed angular momenta |
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represented by ${\bf j}$. This equation of motion for angular momenta |
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is equivalent to the more familiar body-fixed form: |
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\begin{eqnarray} |
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\dot{j_{x}} & = & \tau^b_x(t) + |
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\left(\overleftrightarrow{\mathsf{I}}_{yy} - \overleftrightarrow{\mathsf{I}}_{zz} \right) j_y j_z \\ |
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\dot{j_{y}} & = & \tau^b_y(t) + |
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\left(\overleftrightarrow{\mathsf{I}}_{zz} - \overleftrightarrow{\mathsf{I}}_{xx} \right) j_z j_x \\ |
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\dot{j_{z}} & = & \tau^b_z(t) + |
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\left(\overleftrightarrow{\mathsf{I}}_{xx} - \overleftrightarrow{\mathsf{I}}_{yy} \right) j_x j_y |
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\end{eqnarray} |
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which utilize the body-fixed torques, ${\bf \tau}^b$. Torques are |
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most easily derived in the space-fixed frame, |
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\begin{equation} |
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{\bf \tau}^b(t) = \mathsf{A}(t) \cdot {\bf \tau}^s(t) |
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\end{equation} |
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where |
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\begin{equation} |
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{\bf \tau}^s(t) = - \hat{\bf u}(t) \times \left( \frac{\partial} |
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{\partial \hat{\bf u}} V\left(\left\{ {\bf r}(t) \right\}, \left\{ |
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\mathsf{A}(t) \right\}\right) \right) |
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\end{equation} |
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where $\hat{\bf u}$ is a unit vector pointing along the principal axis |
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of the particle in the space-fixed frame. |
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|
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The DLM method uses a Trotter factorization of the orientational |
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propagator. This has three effects: |
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\begin{enumerate} |
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\item the integrator is area preserving in phase space (i.e. it is |
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{\it symplectic}), |
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\item the integrator is time-{\it reversible}, making it suitable for Hybrid |
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Monte Carlo applications, and |
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\item the error for a single time step is of order $O\left(h^3\right)$ |
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for timesteps of length $h$. |
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\end{enumerate} |
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|
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In the integration method, the |
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orientational propagation involves a sequence of matrix evaluations to |
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update the rotation matrix.\cite{Dullweber1997} These matrix rotations |
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end up being more costly computationally than the simpler arithmetic |
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quaternion propagation. With the same time step, a 1000 SSD particle |
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simulation shows an average 7\% increase in computation time using the |
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symplectic step method in place of quaternions. This cost is more than |
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justified when comparing the energy conservation of the two methods as |
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illustrated in figure |
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\ref{timestep}. |
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|
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\begin{figure} |
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\epsfxsize=6in |
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\epsfbox{timeStep.epsi} |
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\caption{Energy conservation using quaternion based integration versus |
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the symplectic step method proposed by Dullweber \emph{et al.} with |
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increasing time step. For each time step, the dotted line is total |
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energy using the symplectic step integrator, and the solid line comes |
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from the quaternion integrator. The larger time step plots are shifted |
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up from the true energy baseline for clarity.} |
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\label{timestep} |
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\end{figure} |
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|
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In figure \ref{timestep}, the resulting energy drift at various time |
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steps for both the symplectic step and quaternion integration schemes |
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is compared. All of the 1000 SSD particle simulations started with the |
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same configuration, and the only difference was the method for |
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handling rotational motion. At time steps of 0.1 and 0.5 fs, both |
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methods for propagating particle rotation conserve energy fairly well, |
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with the quaternion method showing a slight energy drift over time in |
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the 0.5 fs time step simulation. At time steps of 1 and 2 fs, the |
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energy conservation benefits of the symplectic step method are clearly |
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demonstrated. Thus, while maintaining the same degree of energy |
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conservation, one can take considerably longer time steps, leading to |
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an overall reduction in computation time. |
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|
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Energy drift in these SSD particle simulations was unnoticeable for |
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time steps up to three femtoseconds. A slight energy drift on the |
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order of 0.012 kcal/mol per nanosecond was observed at a time step of |
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four femtoseconds, and as expected, this drift increases dramatically |
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with increasing time step. To insure accuracy in the constant energy |
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simulations, time steps were set at 2 fs and kept at this value for |
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constant pressure simulations as well. |
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|
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|
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\subsection{\label{sec:extended}Extended Systems for other Ensembles} |
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|
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{\sc oopse} implements a number of extended system integrators for |
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sampling from other ensembles relevant to chemical physics. The |
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integrator can selected with the {\tt ensemble} keyword in the |
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{\tt .bass} file: |
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|
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\begin{center} |
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\begin{tabular}{lll} |
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{\bf Integrator} & {\bf Ensemble} & {\bf {\tt .bass} line} \\ |
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NVE & microcanonical & {\tt ensemble = ``NVE''; } \\ |
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NVT & canonical & {\tt ensemble = ``NVT''; } \\ |
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NPTi & isobaric-isothermal (with isotropic volume changes) & {\tt |
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ensemble = ``NPTi'';} \\ |
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NPTf & isobaric-isothermal (with changes to box shape) & {\tt |
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ensemble = ``NPTf'';} \\ |
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NPTxyz & approximate isobaric-isothermal & {\tt ensemble = |
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``NPTxyz'';} \\ |
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& (with separate barostats on each box dimension) & |
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\end{tabular} |
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\end{center} |
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|
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The relatively well-known Nos\'e-Hoover thermostat is implemented in |
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{\sc oopse}'s NVT integrator. This method couples an extra degree of |
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freedom (the thermostat) to the kinetic energy of the system, and has |
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been shown to sample the canonical distribution in the system degrees |
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of freedom while conserving a quantity that is, to within a constant, |
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the Helmholtz free energy. |
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|
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NPT algorithms attempt to maintain constant pressure in the system by |
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coupling the volume of the system to a barostat. {\sc oopse} contains |
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three different constant pressure algorithms. The first two, NPTi and |
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NPTf have been shown to conserve a quantity that is, to within a |
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constant, the Gibbs free energy. The Melchionna modification to the |
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Hoover barostat is implemented in both NPTi and NPTf. NPTi allows |
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only isotropic changes in the simulation box, while box {\it shape} |
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variations are allowed in NPTf. The NPTxyz integrator has {\it not} |
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been shown to sample from the isobaric-isothermal ensemble. It is |
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useful, however, in that it maintains orthogonality for the axes of |
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the simulation box while attempting to equalize pressure along the |
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three perpendicular directions in the box. |
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|
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Each of the extended system integrators requires additional keywords |
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to set target values for the thermodynamic state variables that are |
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being held constant. Keywords are also required to set the |
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characteristic decay times for the dynamics of the extended |
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variables. |
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|
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\begin{tabular}{llll} |
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{\bf variable} & {\bf {\tt .bass} keyword} & {\bf units} & {\bf |
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default value} \\ |
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$T_{\mathrm{target}}$ & {\tt targetTemperature = 300;} & K & none \\ |
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$P_{\mathrm{target}}$ & {\tt targetPressure = 1;} & atm & none \\ |
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$\tau_T$ & {\tt tauThermostat = 1e3;} & fs & none \\ |
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$\tau_B$ & {\tt tauBarostat = 5e3;} & fs & none \\ |
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& {\tt resetTime = 200;} & fs & none \\ |
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& {\tt useInitialExtendedSystemState = ``true'';} & logical & |
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false |
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\end{tabular} |
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|
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Two additional keywords can be used to either clear the extended |
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system variables periodically ({\tt resetTime}), or to maintain the |
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state of the extended system variables between simulations ({\tt |
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useInitialExtendedSystemState}). More details on these variables |
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and their use in the integrators follows below. |
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|
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\subsubsection{\label{sec:noseHooverThermo}Nos\'{e}-Hoover Thermostatting} |
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|
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The Nos\'e-Hoover equations of motion are given by\cite{Hoover85} |
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\begin{eqnarray} |
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\dot{{\bf r}} & = & {\bf v} \\ |
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\dot{{\bf v}} & = & \frac{{\bf f}}{m} - \chi {\bf v} \\ |
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\dot{\mathsf{A}} & = & \\ |
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\dot{{\bf j}} & = & - \chi {\bf j} |
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\label{eq:nosehoovereom} |
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\end{eqnarray} |
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|
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$\chi$ is an ``extra'' variable included in the extended system, and |
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it is propagated using the first order equation of motion |
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\begin{equation} |
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\dot{\chi} = \frac{1}{\tau_{T}^2} \left( \frac{T}{T_{\mathrm{target}}} - 1 \right). |
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\label{eq:nosehooverext} |
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\end{equation} |
262 |
|
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The instantaneous temperature $T$ is proportional to the total kinetic |
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energy (both translational and orientational) and is given by |
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\begin{equation} |
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T = \frac{2 K}{f k_B} |
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\end{equation} |
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Here, $f$ is the total number of degrees of freedom in the system, |
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\begin{equation} |
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f = 3 N + 3 N_{\mathrm{orient}} - N_{\mathrm{constraints}} |
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\end{equation} |
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and $K$ is the total kinetic energy, |
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\begin{equation} |
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K = \sum_{i=1}^{N} \frac{1}{2} m_i {\bf v}_i^T \cdot {\bf v}_i + |
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\sum_{i=1}^{N_{\mathrm{orient}}} \sum_{\alpha=x,y,z} \frac{{\bf |
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j}_{i\alpha}^T \cdot {\bf j}_{i\alpha}}{2 |
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\overleftrightarrow{\mathsf{I}}_{i,\alpha \alpha}} |
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\end{equation} |
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|
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In eq.(\ref{eq:nosehooverext}), $\tau_T$ is the time constant for |
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relaxation of the temperature to the target value. To set values for |
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$\tau_T$ or $T_{\mathrm{target}}$ in a simulation, one would use the |
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{\tt tauThermostat} and {\tt targetTemperature} keywords in the {\tt |
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.bass} file. The units for {\tt tauThermostat} are fs, and the units |
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for the {\tt targetTemperature} are degrees K. The integration of |
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the equations of motion is carried out in a velocity-Verlet style 2 |
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part algorithm: |
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|
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{\tt moveA:} |
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\begin{eqnarray} |
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T(t) & \leftarrow & \left\{{\bf v}(t)\right\}, \left\{{\bf j}(t)\right\} \\ |
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{\bf v}\left(t + \delta t / 2\right) & \leftarrow & {\bf |
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v}(t) + \frac{\delta t}{2} \left( \frac{{\bf f}(t)}{m} - {\bf v}(t) |
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\chi(t)\right) \\ |
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{\bf r}(t + \delta t) & \leftarrow & {\bf r}(t) + \delta t {\bf |
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v}\left(t + \delta t / 2 \right) \\ |
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{\bf j}\left(t + \delta t / 2 \right) & \leftarrow & {\bf |
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j}(t) + \frac{\delta t}{2} \left( {\bf \tau}^b(t) - {\bf j}(t) |
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\chi(t) \right) \\ |
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\mathsf{A}(t + \delta t) & \leftarrow & \mathrm{rot}({\bf j}(t + |
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\delta t / 2) \overleftrightarrow{\mathsf{I}}^{b}, |
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\delta t) \\ |
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\chi\left(t + \delta t / 2 \right) & \leftarrow & \chi(t) + |
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\frac{\delta t}{2 \tau_T^2} \left( \frac{T(t)}{T_{\mathrm{target}}} - 1 |
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\right) |
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\end{eqnarray} |
307 |
|
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Here $\mathrm{rot}( {\bf j} / {\bf I} )$ is the same symplectic Trotter |
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factorization of the three rotation operations that was discussed in |
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the section on the DLM integrator. Note that this operation modifies |
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both the rotation matrix $\mathsf{A}$ and the angular momentum ${\bf |
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j}$. {\tt moveA} propagates velocities by a half time step, and |
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positional degrees of freedom by a full time step. The new positions |
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(and orientations) are then used to calculate a new set of forces and |
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torques. |
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|
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{\tt doForces:} |
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\begin{eqnarray} |
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{\bf f}(t + \delta t) & \leftarrow & - \frac{\partial V}{\partial {\bf |
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r}(t + \delta t)} \\ |
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{\bf \tau}^{s}(t + \delta t) & \leftarrow & {\bf u}(t + \delta t) |
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\times \frac{\partial V}{\partial {\bf u}} \\ |
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{\bf \tau}^{b}(t + \delta t) & \leftarrow & \mathsf{A}(t + \delta t) |
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\cdot {\bf \tau}^s(t + \delta t) |
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\end{eqnarray} |
326 |
|
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Here ${\bf u}$ is a unit vector pointing along the principal axis of |
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the rigid body being propagated, ${\bf \tau}^s$ is the torque in the |
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space-fixed (laboratory) frame, and ${\bf \tau}^b$ is the torque in |
330 |
the body-fixed frame. ${\bf u}$ is automatically calculated when the |
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rotation matrix $\mathsf{A}$ is calculated in {\tt moveA}. |
332 |
|
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Once the forces and torques have been obtained at the new time step, |
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the velocities can be advanced to the same time value. |
335 |
|
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{\tt moveB:} |
337 |
\begin{eqnarray} |
338 |
T(t + \delta t) & \leftarrow & \left\{{\bf v}(t + \delta t)\right\}, |
339 |
\left\{{\bf j}(t + \delta t)\right\} \\ |
340 |
\chi\left(t + \delta t \right) & \leftarrow & \chi\left(t + \delta t / |
341 |
2 \right) + \frac{\delta t}{2 \tau_T^2} \left( \frac{T(t+\delta |
342 |
t)}{T_{\mathrm{target}}} - 1 \right) \\ |
343 |
{\bf v}\left(t + \delta t \right) & \leftarrow & {\bf |
344 |
v}\left(t + \delta t / 2 \right) + \frac{\delta t}{2} \left( |
345 |
\frac{{\bf f}(t + \delta t)}{m} - {\bf v}(t + \delta t) |
346 |
\chi(t \delta t)\right) \\ |
347 |
{\bf j}\left(t + \delta t \right) & \leftarrow & {\bf |
348 |
j}\left(t + \delta t / 2 \right) + \frac{\delta t}{2} \left( {\bf |
349 |
\tau}^b(t + \delta t) - {\bf j}(t + \delta t) |
350 |
\chi(t + \delta t) \right) |
351 |
\end{eqnarray} |
352 |
|
353 |
Since ${\bf v}(t + \delta t)$ and ${\bf j}(t + \delta t)$ are required |
354 |
to caclculate $T(t + \delta t)$ as well as $\chi(t + \delta t)$, the |
355 |
indirectly depend on their own values at time $t + \delta t$. {\tt |
356 |
moveB} is therefore done in an iterative fashion until $\chi(t + |
357 |
\delta t)$ becomes self-consistent. The relative tolerance for the |
358 |
self-consistency check defaults to a value of $\mbox{10}^{-6}$, but |
359 |
{\sc oopse} will terminate the iteration after 4 loops even if the |
360 |
consistency check has not been satisfied. |
361 |
|
362 |
The Nos\'e-Hoover algorithm is known to conserve a Hamiltonian for the |
363 |
extended system that is, to within a constant, identical to the |
364 |
Helmholtz free energy, |
365 |
\begin{equation} |
366 |
H_{\mathrm{NVT}} = V + K + f k_B T_{\mathrm{target}} \left( |
367 |
\frac{\tau_{T}^2 \chi^2(t)}{2} + \int_{0}^{t} \chi(t\prime) dt\prime |
368 |
\right) |
369 |
\end{equation} |
370 |
Poor choices of $\delta t$ or $\tau_T$ can result in non-conservation |
371 |
of $H_{\mathrm{NVT}}$, so the conserved quantity is maintained in the |
372 |
last column of the {\tt .stat} file to allow checks on the quality of |
373 |
the integration. |
374 |
|
375 |
Bond constraints are applied at the end of both the {\tt moveA} and |
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{\tt moveB} portions of the algorithm. Details on the constraint |
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algorithms are given in section \ref{sec:rattle}. |
378 |
|
379 |
\subsubsection{\label{sec:NPTi}Constant-pressure integration (isotropic box)} |
380 |
|
381 |
|
382 |
\subsection{\label{Sec:zcons}Z-Constraint Method} |
383 |
|
384 |
Based on fluctuatin-dissipation theorem,\bigskip\ force auto-correlation |
385 |
method was developed to investigate the dynamics of ions inside the ion |
386 |
channels.\cite{Roux91} Time-dependent friction coefficient can be calculated |
387 |
from the deviation of the instaneous force from its mean force. |
388 |
|
389 |
% |
390 |
|
391 |
\begin{equation} |
392 |
\xi(z,t)=\langle\delta F(z,t)\delta F(z,0)\rangle/k_{B}T |
393 |
\end{equation} |
394 |
|
395 |
|
396 |
where% |
397 |
\begin{equation} |
398 |
\delta F(z,t)=F(z,t)-\langle F(z,t)\rangle |
399 |
\end{equation} |
400 |
|
401 |
|
402 |
If the time-dependent friction decay rapidly, static friction coefficient can |
403 |
be approximated by% |
404 |
|
405 |
\begin{equation} |
406 |
\xi^{static}(z)=\int_{0}^{\infty}\langle\delta F(z,t)\delta F(z,0)\rangle dt |
407 |
\end{equation} |
408 |
|
409 |
|
410 |
Hence, diffusion constant can be estimated by |
411 |
\begin{equation} |
412 |
D(z)=\frac{k_{B}T}{\xi^{static}(z)}=\frac{(k_{B}T)^{2}}{\int_{0}^{\infty |
413 |
}\langle\delta F(z,t)\delta F(z,0)\rangle dt}% |
414 |
\end{equation} |
415 |
|
416 |
|
417 |
\bigskip Z-Constraint method, which fixed the z coordinates of the molecules |
418 |
with respect to the center of the mass of the system, was proposed to obtain |
419 |
the forces required in force auto-correlation method.\cite{Marrink94} However, |
420 |
simply resetting the coordinate will move the center of the mass of the whole |
421 |
system. To avoid this problem, a new method was used at {\sc oopse}. Instead of |
422 |
resetting the coordinate, we reset the forces of z-constraint molecules as |
423 |
well as subtract the total constraint forces from the rest of the system after |
424 |
force calculation at each time step. |
425 |
\begin{verbatim} |
426 |
$F_{\alpha i}=0$ |
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$V_{\alpha i}=V_{\alpha i}-\frac{\sum\limits_{i}M_{_{\alpha i}}V_{\alpha i}}{\sum\limits_{i}M_{_{\alpha i}}}$ |
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$F_{\alpha i}=F_{\alpha i}-\frac{M_{_{\alpha i}}}{\sum\limits_{\alpha}\sum\limits_{i}M_{_{\alpha i}}}\sum\limits_{\beta}F_{\beta}$ |
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$V_{\alpha i}=V_{\alpha i}-\frac{\sum\limits_{\alpha}\sum\limits_{i}M_{_{\alpha i}}V_{\alpha i}}{\sum\limits_{\alpha}\sum\limits_{i}M_{_{\alpha i}}}$ |
430 |
\end{verbatim} |
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|
432 |
At the very beginning of the simulation, the molecules may not be at its |
433 |
constraint position. To move the z-constraint molecule to the specified |
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position, a simple harmonic potential is used% |
435 |
|
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\begin{equation} |
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U(t)=\frac{1}{2}k_{Harmonic}(z(t)-z_{cons})^{2}% |
438 |
\end{equation} |
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where $k_{Harmonic}$\bigskip\ is the harmonic force constant, $z(t)$ is |
440 |
current z coordinate of the center of mass of the z-constraint molecule, and |
441 |
$z_{cons}$ is the restraint position. Therefore, the harmonic force operated |
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on the z-constraint molecule at time $t$ can be calculated by% |
443 |
\begin{equation} |
444 |
F_{z_{Harmonic}}(t)=-\frac{\partial U(t)}{\partial z(t)}=-k_{Harmonic}% |
445 |
(z(t)-z_{cons}) |
446 |
\end{equation} |
447 |
Worthy of mention, other kinds of potential functions can also be used to |
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drive the z-constraint molecule. |