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1 xsun 3336 \chapter{\label{chap:intro}INTRODUCTION AND BACKGROUND}
2 xsun 3347
3     \section{Background on the Problem\label{In:sec:pro}}
4 xsun 3365 Phospholipid molecules are the primary topic of this dissertation
5     because of their critical role as the foundation of biological
6 xsun 3375 membranes. The chemical structure of phospholipids includes a head
7     group with a large dipole moment which is due to the large charge
8     separation between phosphate and amino alcohol, and a nonpolar tail
9     that contains fatty acid chains. Depending on the specific alcohol
10     which the phosphate and fatty acid chains are esterified to, the
11     phospholipids are divided into glycerophospholipids and
12     sphingophospholipids.~\cite{Cevc80} The chemical structures are shown
13     in figure~\ref{Infig:lipid}.
14 xsun 3374 \begin{figure}
15     \centering
16     \includegraphics[width=\linewidth]{./figures/inLipid.pdf}
17 xsun 3383 \caption[The chemical structure of lipids]{The chemical structure of
18     glycerophospholipids (left) and sphingophospholipids
19     (right).\cite{Cevc80}}
20 xsun 3374 \label{Infig:lipid}
21     \end{figure}
22 xsun 3375 Glycerophospholipids are the dominant phospholipids in biological
23     membranes. The type of glycerophospholipid depends on the identity of
24     the X group, and the chains. For example, if X is choline
25     [(CH$_3$)$_3$N$^+$CH$_2$CH$_2$OH], the lipids are known as
26     phosphatidylcholine (PC), or if X is ethanolamine
27     [H$_3$N$^+$CH$_2$CH$_2$OH], the lipids are known as
28     phosphatidyethanolamine (PE). Table~\ref{Intab:pc} listed a number
29     types of phosphatidycholine with different fatty acids as the lipid
30     chains.
31 xsun 3374 \begin{table*}
32     \begin{minipage}{\linewidth}
33     \begin{center}
34 xsun 3383 \caption{A NUMBER TYPES OF PHOSPHATIDYCHOLINE}
35 xsun 3374 \begin{tabular}{lll}
36     \hline
37     & Fatty acid & Generic Name \\
38     \hline
39     \textcolor{red}{DMPC} & Myristic: CH$_3$(CH$_2$)$_{12}$COOH &
40     \textcolor{red}{D}i\textcolor{red}{M}yristoyl\textcolor{red}{P}hosphatidyl\textcolor{red}{C}holine \\
41     \textcolor{red}{DPPC} & Palmitic: CH$_3$(CH$_2$)$_{14}$COOH & \textcolor{red}{D}i\textcolor{red}{P}almtoyl\textcolor{red}{P}hosphatidyl\textcolor{red}{C}holine
42     \\
43     \textcolor{red}{DSPC} & Stearic: CH$_3$(CH$_2$)$_{16}$COOH & \textcolor{red}{D}i\textcolor{red}{S}tearoyl\textcolor{red}{P}hosphatidyl\textcolor{red}{C}holine \\
44     \end{tabular}
45     \label{Intab:pc}
46     \end{center}
47     \end{minipage}
48     \end{table*}
49 xsun 3377 When dispersed in water, lipids self assemble into a number of
50 xsun 3374 topologically distinct bilayer structures. The phase behavior of lipid
51     bilayers has been explored experimentally~\cite{Cevc80}, however, a
52     complete understanding of the mechanism and driving forces behind the
53     various phases has not been achieved.
54 xsun 3347
55 xsun 3375 \subsection{The Ripple Phase\label{In:ssec:ripple}}
56 xsun 3365 The $P_{\beta'}$ {\it ripple phase} of lipid bilayers, named from the
57 xsun 3347 periodic buckling of the membrane, is an intermediate phase which is
58     developed either from heating the gel phase $L_{\beta'}$ or cooling
59 xsun 3375 the fluid phase $L_\alpha$. A sketch of the phases is shown in
60 xsun 3374 figure~\ref{Infig:phaseDiagram}.~\cite{Cevc80}
61 xsun 3372 \begin{figure}
62     \centering
63     \includegraphics[width=\linewidth]{./figures/inPhaseDiagram.pdf}
64 xsun 3383 \caption[Phases of PC lipid bilayers]{Phases of PC lipid
65     bilayers. With increasing temperature, phosphotidylcholine (PC)
66     bilayers can go through $L_{\beta'} \rightarrow P_{\beta'}$ (gel
67     $\rightarrow$ ripple) and $P_{\beta'} \rightarrow L_\alpha$ (ripple
68     $\rightarrow$ fluid) phase transitions.~\cite{Cevc80}}
69 xsun 3372 \label{Infig:phaseDiagram}
70     \end{figure}
71 xsun 3375 Most structural information about the ripple phase has been obtained
72     by X-ray diffraction~\cite{Sun96,Katsaras00} and freeze-fracture
73 xsun 3372 electron microscopy (FFEM).~\cite{Copeland80,Meyer96} The X-ray
74     diffraction work by Katsaras {\it et al.} showed that a rich phase
75     diagram exhibiting both {\it asymmetric} and {\it symmetric} ripples
76     is possible for lecithin bilayers.\cite{Katsaras00} Recently,
77     Kaasgaard {\it et al.} used atomic force microscopy (AFM) to observe
78     ripple phase morphology in bilayers supported on
79     mica.~\cite{Kaasgaard03}
80     \begin{figure}
81     \centering
82     \includegraphics[width=\linewidth]{./figures/inRipple.pdf}
83 xsun 3383 \caption[Experimental observations of the riple phase]{Experimental
84     observations of the riple phase. The top image is an electrostatic
85     density map obtained by Sun {\it et al.} using X-ray
86     diffraction~\cite{Sun96}. The lower figures are the surface topology
87     of various ripple domains in bilayers supported in mica. The AFM
88     images were observed by Kaasgaard {\it et al.}.~\cite{Kaasgaard03}}
89 xsun 3372 \label{Infig:ripple}
90     \end{figure}
91 xsun 3375 Figure~\ref{Infig:ripple} shows the ripple phase oberved by both X-ray
92 xsun 3372 diffraction and AFM. The experimental results provide strong support
93     for a 2-dimensional triangular packing lattice of the lipid molecules
94     within the ripple phase. This is a notable change from the observed
95 xsun 3374 lipid packing within the gel phase,~\cite{Cevc80} although Tenchov
96 xsun 3375 {\it et al.} have recently observed near-triangular packing in some
97 xsun 3372 phosphatidylcholine (PC) gel phases.~\cite{Tenchov2001} However, the
98     physical mechanism for the formation of the ripple phase has never
99     been explained and the microscopic structure of the ripple phase has
100     never been elucidated by experiments. Computational simulation is a
101 xsun 3383 very good tool to study the microscopic properties for a
102 xsun 3375 system. However, the large length scale of the ripple structures and
103     the long time required for the formation of the ripples are crucial
104     obstacles to performing the actual work. The principal ideas explored
105     in this dissertation are attempts to break the computational task up
106     by
107 xsun 3347 \begin{itemize}
108 xsun 3365 \item Simplifying the lipid model.
109 xsun 3375 \item Improving the algorithm for integrating the equations of motion.
110 xsun 3347 \end{itemize}
111 xsun 3365 In chapters~\ref{chap:mc} and~\ref{chap:md}, we use a simple point
112 xsun 3375 dipole spin model and a coarse-grained molecular scale model to
113 xsun 3372 perform the Monte Carlo and Molecular Dynamics simulations
114     respectively, and in chapter~\ref{chap:ld}, we develop a Langevin
115     Dynamics algorithm which excludes the explicit solvent to improve the
116     efficiency of the simulations.
117 xsun 3347
118 xsun 3375 \subsection{Lattice Models\label{In:ssec:model}}
119     The gel-like characteristic (laterally immobile molecules) exhibited
120 xsun 3372 by the ripple phase makes it feasible to apply a lattice model to
121     study the system. The popular $2$ dimensional lattice models, {\it
122     i.e.}, the Ising, $X-Y$, and Heisenberg models, show {\it frustration}
123     on triangular lattices. The Hamiltonians of these systems are given by
124 xsun 3365 \begin{equation}
125     H =
126     \begin{cases}
127     -J \sum_n \sum_{n'} s_n s_n' & \text{Ising}, \\
128     -J \sum_n \sum_{n'} \vec s_n \cdot \vec s_{n'} & \text{$X-Y$ and
129     Heisenberg},
130     \end{cases}
131     \end{equation}
132     where $J$ has non zero value only when spins $s_n$ ($\vec s_n$) and
133 xsun 3372 $s_{n'}$ ($\vec s_{n'}$) are nearest neighbors. When $J > 0$, spins
134     prefer an aligned structure, and if $J < 0$, spins prefer an
135     anti-aligned structure.
136 xsun 3371
137 xsun 3347 \begin{figure}
138     \centering
139 xsun 3371 \includegraphics[width=3in]{./figures/inFrustration.pdf}
140 xsun 3383 \caption[Frustration on triangular lattice]{Frustration on triangular
141     lattice, the spins and dipoles are represented by arrows. The multiple
142     local minima of energy states induce frustration for spins and dipoles
143     resulting in disordered low-temperature phases.}
144 xsun 3354 \label{Infig:frustration}
145 xsun 3347 \end{figure}
146 xsun 3375 The spins in figure~\ref{Infig:frustration} illustrate frustration for
147     $J < 0$ on a triangular lattice. There are multiple local minima
148     energy states which are independent of the direction of the spin on
149     top of the triangle, therefore infinite possibilities for orienting
150     large numbers spins. This induces what is known as ``complete regular
151     frustration'' which leads to disordered low temperature phases. This
152     behavior extends to dipoles on a triangular lattices, which are shown
153     in the lower portion of figure~\ref{Infig:frustration}. In this case,
154     dipole-aligned structures are energetically favorable, however, at low
155     temperature, vortices are easily formed, and, this results in multiple
156     local minima of energy states for a central dipole. The dipole on the
157     center of the hexagonal lattice is therefore frustrated.
158 xsun 3347
159 xsun 3372 The lack of translational degrees of freedom in lattice models
160     prevents their utilization in models for surface buckling. In
161     chapter~\ref{chap:mc}, a modified lattice model is introduced to
162     tackle this specific situation.
163 xsun 3347
164     \section{Overview of Classical Statistical Mechanics\label{In:sec:SM}}
165     Statistical mechanics provides a way to calculate the macroscopic
166     properties of a system from the molecular interactions used in
167     computational simulations. This section serves as a brief introduction
168     to key concepts of classical statistical mechanics that we used in
169     this dissertation. Tolman gives an excellent introduction to the
170 xsun 3372 principles of statistical mechanics.~\cite{Tolman1979} A large part of
171 xsun 3375 section~\ref{In:sec:SM} follows Tolman's notation.
172 xsun 3347
173     \subsection{Ensembles\label{In:ssec:ensemble}}
174     In classical mechanics, the state of the system is completely
175     described by the positions and momenta of all particles. If we have an
176 xsun 3372 $N$ particle system, there are $6N$ coordinates ($3N$ positions $(q_1,
177 xsun 3347 q_2, \ldots, q_{3N})$ and $3N$ momenta $(p_1, p_2, \ldots, p_{3N})$)
178     to define the instantaneous state of the system. Each single set of
179     the $6N$ coordinates can be considered as a unique point in a $6N$
180     dimensional space where each perpendicular axis is one of
181     $q_{i\alpha}$ or $p_{i\alpha}$ ($i$ is the particle and $\alpha$ is
182     the spatial axis). This $6N$ dimensional space is known as phase
183     space. The instantaneous state of the system is a single point in
184     phase space. A trajectory is a connected path of points in phase
185     space. An ensemble is a collection of systems described by the same
186     macroscopic observables but which have microscopic state
187     distributions. In phase space an ensemble is a collection of a set of
188     representive points. A density distribution $\rho(q^N, p^N)$ of the
189     representive points in phase space describes the condition of an
190     ensemble of identical systems. Since this density may change with
191     time, it is also a function of time. $\rho(q^N, p^N, t)$ describes the
192     ensemble at a time $t$, and $\rho(q^N, p^N, t')$ describes the
193     ensemble at a later time $t'$. For convenience, we will use $\rho$
194     instead of $\rho(q^N, p^N, t)$ in the following disccusion. If we
195     normalize $\rho$ to unity,
196     \begin{equation}
197     1 = \int d \vec q~^N \int d \vec p~^N \rho,
198 xsun 3354 \label{Ineq:normalized}
199 xsun 3347 \end{equation}
200     then the value of $\rho$ gives the probability of finding the system
201 xsun 3372 in a unit volume in phase space.
202 xsun 3347
203     Liouville's theorem describes the change in density $\rho$ with
204 xsun 3372 time. The number of representative points at a given volume in phase
205 xsun 3347 space at any instant can be written as:
206     \begin{equation}
207 xsun 3354 \label{Ineq:deltaN}
208 xsun 3347 \delta N = \rho~\delta q_1 \delta q_2 \ldots \delta q_N \delta p_1 \delta p_2 \ldots \delta p_N.
209     \end{equation}
210 xsun 3372 To calculate the change in the number of representative points in this
211 xsun 3347 volume, let us consider a simple condition: the change in the number
212 xsun 3372 of representative points along the $q_1$ axis. The rate of the number
213     of the representative points entering the volume at $q_1$ per unit time
214     is:
215 xsun 3347 \begin{equation}
216 xsun 3354 \label{Ineq:deltaNatq1}
217 xsun 3347 \rho~\dot q_1 \delta q_2 \ldots \delta q_N \delta p_1 \delta p_2 \ldots \delta p_N,
218     \end{equation}
219 xsun 3372 and the rate of the number of representative points leaving the volume
220 xsun 3347 at another position $q_1 + \delta q_1$ is:
221     \begin{equation}
222 xsun 3354 \label{Ineq:deltaNatq1plusdeltaq1}
223 xsun 3347 \left( \rho + \frac{\partial \rho}{\partial q_1} \delta q_1 \right)\left(\dot q_1 +
224     \frac{\partial \dot q_1}{\partial q_1} \delta q_1 \right)\delta q_2 \ldots \delta q_N \delta p_1 \delta p_2 \ldots \delta p_N.
225     \end{equation}
226 xsun 3372 Here the higher order differentials are neglected. So the change in
227     the number of representative points is the difference between
228     eq.~\ref{Ineq:deltaNatq1} and eq.~\ref{Ineq:deltaNatq1plusdeltaq1},
229     which gives us:
230 xsun 3347 \begin{equation}
231 xsun 3354 \label{Ineq:deltaNatq1axis}
232 xsun 3347 -\left(\rho \frac{\partial {\dot q_1}}{\partial q_1} + \frac{\partial {\rho}}{\partial q_1} \dot q_1 \right)\delta q_1 \delta q_2 \ldots \delta q_N \delta p_1 \delta p_2 \ldots \delta p_N,
233     \end{equation}
234     where, higher order differetials are neglected. If we sum over all the
235 xsun 3372 axes in the phase space, we can get the change in the number of
236     representative points in a given volume with time:
237 xsun 3347 \begin{equation}
238 xsun 3354 \label{Ineq:deltaNatGivenVolume}
239 xsun 3347 \frac{d(\delta N)}{dt} = -\sum_{i=1}^N \left[\rho \left(\frac{\partial
240     {\dot q_i}}{\partial q_i} + \frac{\partial
241     {\dot p_i}}{\partial p_i}\right) + \left( \frac{\partial {\rho}}{\partial
242     q_i} \dot q_i + \frac{\partial {\rho}}{\partial p_i} \dot p_i\right)\right]\delta q_1 \delta q_2 \ldots \delta q_N \delta p_1 \delta p_2 \ldots \delta p_N.
243     \end{equation}
244 xsun 3372 From Hamilton's equations of motion,
245 xsun 3347 \begin{equation}
246     \frac{\partial {\dot q_i}}{\partial q_i} = - \frac{\partial
247     {\dot p_i}}{\partial p_i},
248 xsun 3354 \label{Ineq:canonicalFormOfEquationOfMotion}
249 xsun 3347 \end{equation}
250     this cancels out the first term on the right side of
251 xsun 3354 eq.~\ref{Ineq:deltaNatGivenVolume}. If both sides of
252     eq.~\ref{Ineq:deltaNatGivenVolume} are divided by $\delta q_1 \delta q_2
253 xsun 3347 \ldots \delta q_N \delta p_1 \delta p_2 \ldots \delta p_N$, then we
254 xsun 3372 arrive at Liouville's theorem:
255 xsun 3347 \begin{equation}
256     \left( \frac{\partial \rho}{\partial t} \right)_{q, p} = -\sum_{i} \left(
257     \frac{\partial {\rho}}{\partial
258     q_i} \dot q_i + \frac{\partial {\rho}}{\partial p_i} \dot p_i \right).
259 xsun 3354 \label{Ineq:simpleFormofLiouville}
260 xsun 3347 \end{equation}
261     This is the basis of statistical mechanics. If we move the right
262 xsun 3354 side of equation~\ref{Ineq:simpleFormofLiouville} to the left, we
263 xsun 3347 will obtain
264     \begin{equation}
265     \left( \frac{\partial \rho}{\partial t} \right)_{q, p} + \sum_{i} \left(
266     \frac{\partial {\rho}}{\partial
267     q_i} \dot q_i + \frac{\partial {\rho}}{\partial p_i} \dot p_i \right)
268     = 0.
269 xsun 3354 \label{Ineq:anotherFormofLiouville}
270 xsun 3347 \end{equation}
271     It is easy to note that the left side of
272 xsun 3354 equation~\ref{Ineq:anotherFormofLiouville} is the total derivative of
273 xsun 3372 $\rho$ with respect to $t$, which means
274 xsun 3347 \begin{equation}
275     \frac{d \rho}{dt} = 0,
276 xsun 3354 \label{Ineq:conservationofRho}
277 xsun 3347 \end{equation}
278     and the rate of density change is zero in the neighborhood of any
279 xsun 3372 selected moving representative points in the phase space.
280 xsun 3347
281 xsun 3375 The type of thermodynamic ensemble is determined by the density
282 xsun 3347 distribution. If we consider the density distribution as only a
283     function of $q$ and $p$, which means the rate of change of the phase
284 xsun 3372 space density in the neighborhood of all representative points in the
285 xsun 3347 phase space is zero,
286     \begin{equation}
287     \left( \frac{\partial \rho}{\partial t} \right)_{q, p} = 0.
288 xsun 3354 \label{Ineq:statEquilibrium}
289 xsun 3347 \end{equation}
290     We may conclude the ensemble is in {\it statistical equilibrium}. An
291 xsun 3372 ensemble in statistical equilibrium means the system is also in
292 xsun 3347 macroscopic equilibrium. If $\left( \frac{\partial \rho}{\partial t}
293     \right)_{q, p} = 0$, then
294     \begin{equation}
295     \sum_{i} \left(
296     \frac{\partial {\rho}}{\partial
297     q_i} \dot q_i + \frac{\partial {\rho}}{\partial p_i} \dot p_i \right)
298     = 0.
299 xsun 3354 \label{Ineq:constantofMotion}
300 xsun 3347 \end{equation}
301     If $\rho$ is a function only of some constant of the motion, $\rho$ is
302     independent of time. For a conservative system, the energy of the
303 xsun 3372 system is one of the constants of the motion. There are many
304     thermodynamically relevant ensembles: when the density distribution is
305     constant everywhere in the phase space,
306 xsun 3347 \begin{equation}
307     \rho = \mathrm{const.}
308 xsun 3354 \label{Ineq:uniformEnsemble}
309 xsun 3347 \end{equation}
310 xsun 3375 the ensemble is called {\it uniform ensemble}, but this ensemble has
311     little relevance for physical chemistry. It is an ensemble with
312     essentially infinite temperature.
313 xsun 3372
314     \subsubsection{The Microcanonical Ensemble\label{In:sssec:microcanonical}}
315 xsun 3375 The most useful ensemble for Molecular Dynamics is the {\it
316     microcanonical ensemble}, for which:
317 xsun 3347 \begin{equation}
318     \rho = \delta \left( H(q^N, p^N) - E \right) \frac{1}{\Sigma (N, V, E)}
319 xsun 3354 \label{Ineq:microcanonicalEnsemble}
320 xsun 3347 \end{equation}
321     where $\Sigma(N, V, E)$ is a normalization constant parameterized by
322     $N$, the total number of particles, $V$, the total physical volume and
323     $E$, the total energy. The physical meaning of $\Sigma(N, V, E)$ is
324     the phase space volume accessible to a microcanonical system with
325     energy $E$ evolving under Hamilton's equations. $H(q^N, p^N)$ is the
326     Hamiltonian of the system. The Gibbs entropy is defined as
327     \begin{equation}
328     S = - k_B \int d \vec q~^N \int d \vec p~^N \rho \ln [C^N \rho],
329 xsun 3354 \label{Ineq:gibbsEntropy}
330 xsun 3347 \end{equation}
331     where $k_B$ is the Boltzmann constant and $C^N$ is a number which
332 xsun 3372 makes the argument of $\ln$ dimensionless. In this case, $C^N$ is the
333 xsun 3375 total phase space volume of one state which has the same units as
334     $\Sigma(N, V, E)$. The entropy of a microcanonical ensemble is given
335     by
336 xsun 3347 \begin{equation}
337     S = k_B \ln \left(\frac{\Sigma(N, V, E)}{C^N}\right).
338 xsun 3354 \label{Ineq:entropy}
339 xsun 3347 \end{equation}
340 xsun 3372
341     \subsubsection{The Canonical Ensemble\label{In:sssec:canonical}}
342 xsun 3347 If the density distribution $\rho$ is given by
343     \begin{equation}
344     \rho = \frac{1}{Z_N}e^{-H(q^N, p^N) / k_B T},
345 xsun 3354 \label{Ineq:canonicalEnsemble}
346 xsun 3347 \end{equation}
347     the ensemble is known as the {\it canonical ensemble}. Here,
348     \begin{equation}
349     Z_N = \int d \vec q~^N \int_\Gamma d \vec p~^N e^{-H(q^N, p^N) / k_B T},
350 xsun 3354 \label{Ineq:partitionFunction}
351 xsun 3347 \end{equation}
352 xsun 3375 which is also known as the canonical {\it partition
353     function}. $\Gamma$ indicates that the integral is over all phase
354     space. In the canonical ensemble, $N$, the total number of particles,
355     $V$, total volume, and $T$, the temperature, are constants. The
356     systems with the lowest energies hold the largest
357     population. Thermodynamics maximizes the entropy, $S$, implying that
358 xsun 3347 \begin{equation}
359     \begin{array}{ccc}
360     \delta S = 0 & \mathrm{and} & \delta^2 S < 0.
361     \end{array}
362 xsun 3354 \label{Ineq:maximumPrinciple}
363 xsun 3347 \end{equation}
364 xsun 3372 From Eq.~\ref{Ineq:maximumPrinciple} and two constrains on the
365     canonical ensemble, {\it i.e.}, total probability and average energy
366     must be conserved, the partition function can be shown to be
367     equivalent to
368 xsun 3347 \begin{equation}
369     Z_N = e^{-A/k_B T},
370 xsun 3354 \label{Ineq:partitionFunctionWithFreeEnergy}
371 xsun 3347 \end{equation}
372     where $A$ is the Helmholtz free energy. The significance of
373 xsun 3354 Eq.~\ref{Ineq:entropy} and~\ref{Ineq:partitionFunctionWithFreeEnergy} is
374 xsun 3347 that they serve as a connection between macroscopic properties of the
375 xsun 3372 system and the distribution of microscopic states.
376 xsun 3347
377     There is an implicit assumption that our arguments are based on so
378 xsun 3375 far. Tow representative points in phase space are equally likely to be
379     found if they have the same energy. In other words, all energetically
380     accessible states are represented , and the probabilities to find the
381     system in any of the accessible states is equal to that states
382     Boltzmann weight. This is called the principle of equal a {\it priori}
383 xsun 3372 probabilities.
384 xsun 3347
385 xsun 3372 \subsection{Statistical Averages\label{In:ssec:average}}
386     Given a density distribution $\rho$ in phase space, the average
387 xsun 3347 of any quantity ($F(q^N, p^N$)) which depends on the coordinates
388     ($q^N$) and the momenta ($p^N$) for all the systems in the ensemble
389     can be calculated based on the definition shown by
390 xsun 3354 Eq.~\ref{Ineq:statAverage1}
391 xsun 3347 \begin{equation}
392 xsun 3372 \langle F(q^N, p^N) \rangle = \frac{\int d \vec q~^N \int d \vec p~^N
393     F(q^N, p^N) \rho}{\int d \vec q~^N \int d \vec p~^N \rho}.
394 xsun 3354 \label{Ineq:statAverage1}
395 xsun 3347 \end{equation}
396     Since the density distribution $\rho$ is normalized to unity, the mean
397     value of $F(q^N, p^N)$ is simplified to
398     \begin{equation}
399 xsun 3372 \langle F(q^N, p^N) \rangle = \int d \vec q~^N \int d \vec p~^N F(q^N,
400     p^N) \rho,
401 xsun 3354 \label{Ineq:statAverage2}
402 xsun 3347 \end{equation}
403 xsun 3372 called the {\it ensemble average}. However, the quantity is often
404     averaged for a finite time in real experiments,
405 xsun 3347 \begin{equation}
406     \langle F(q^N, p^N) \rangle_t = \lim_{T \rightarrow \infty}
407 xsun 3372 \frac{1}{T} \int_{t_0}^{t_0+T} F[q^N(t), p^N(t)] dt.
408 xsun 3354 \label{Ineq:timeAverage1}
409 xsun 3347 \end{equation}
410     Usually this time average is independent of $t_0$ in statistical
411 xsun 3354 mechanics, so Eq.~\ref{Ineq:timeAverage1} becomes
412 xsun 3347 \begin{equation}
413     \langle F(q^N, p^N) \rangle_t = \lim_{T \rightarrow \infty}
414 xsun 3372 \frac{1}{T} \int_{0}^{T} F[q^N(t), p^N(t)] dt
415 xsun 3354 \label{Ineq:timeAverage2}
416 xsun 3347 \end{equation}
417 xsun 3375 for an finite time interval, $T$.
418 xsun 3347
419 xsun 3372 \subsubsection{Ergodicity\label{In:sssec:ergodicity}}
420     The {\it ergodic hypothesis}, an important hypothesis governing modern
421     computer simulations states that the system will eventually pass
422 xsun 3347 arbitrarily close to any point that is energetically accessible in
423     phase space. Mathematically, this leads to
424     \begin{equation}
425 xsun 3372 \langle F(q^N, p^N) \rangle = \langle F(q^N, p^N) \rangle_t.
426 xsun 3354 \label{Ineq:ergodicity}
427 xsun 3347 \end{equation}
428 xsun 3372 Eq.~\ref{Ineq:ergodicity} validates Molecular Dynamics as a form of
429     averaging for sufficiently ergodic systems. Also Monte Carlo may be
430     used to obtain ensemble averages of a quantity which are related to
431     time averages measured in experiments.
432 xsun 3347
433 xsun 3372 \subsection{Correlation Functions\label{In:ssec:corr}}
434     Thermodynamic properties can be computed by equilibrium statistical
435     mechanics. On the other hand, {\it Time correlation functions} are a
436     powerful tool to understand the evolution of a dynamical
437     systems. Imagine that property $A(q^N, p^N, t)$ as a function of
438     coordinates $q^N$ and momenta $p^N$ has an intial value at $t_0$, and
439     at a later time $t_0 + \tau$ this value has changed. If $\tau$ is very
440     small, the change of the value is minor, and the later value of
441     $A(q^N, p^N, t_0 + \tau)$ is correlated to its initial value. However,
442     when $\tau$ is large, this correlation is lost. A time correlation
443     function measures this relationship and is defined
444     by~\cite{Berne90}
445 xsun 3347 \begin{equation}
446 xsun 3372 C_{AA}(\tau) = \langle A(0)A(\tau) \rangle = \lim_{T \rightarrow
447     \infty}
448 xsun 3347 \frac{1}{T} \int_{0}^{T} dt A(t) A(t + \tau).
449 xsun 3354 \label{Ineq:autocorrelationFunction}
450 xsun 3347 \end{equation}
451 xsun 3372 Eq.~\ref{Ineq:autocorrelationFunction} is the correlation function of
452     a single variable, called an {\it autocorrelation function}. The
453     definition of the correlation function for two different variables is
454     similar to that of autocorrelation function, which is
455 xsun 3347 \begin{equation}
456 xsun 3372 C_{AB}(\tau) = \langle A(0)B(\tau) \rangle = \lim_{T \rightarrow \infty}
457 xsun 3347 \frac{1}{T} \int_{0}^{T} dt A(t) B(t + \tau),
458 xsun 3354 \label{Ineq:crosscorrelationFunction}
459 xsun 3347 \end{equation}
460 xsun 3375 and is called a {\it cross correlation function}.
461 xsun 3347
462 xsun 3372 We know from the ergodic hypothesis that there is a relationship
463     between time average and ensemble average. We can put the correlation
464 xsun 3375 function in a classical mechanical form,
465 xsun 3347 \begin{equation}
466 xsun 3375 C_{AA}(\tau) = \int d \vec q~^N \int d \vec p~^N A[(q^N, p^N]
467     A[q^N(\tau), p^N(\tau)] \rho(q^N, p^N)
468 xsun 3354 \label{Ineq:autocorrelationFunctionCM}
469 xsun 3347 \end{equation}
470 xsun 3375 where $q^N(\tau)$, $p^N(\tau)$ is the phase space point that follows
471     classical evolution of the point $q^N$, $p^N$ after a tme $\tau$ has
472     elapsed, and
473 xsun 3347 \begin{equation}
474 xsun 3375 C_{AB}(\tau) = \int d \vec q~^N \int d \vec p~^N A[(q^N, p^N]
475     B[q^N(\tau), p^N(\tau)] \rho(q^N, p^N)
476 xsun 3354 \label{Ineq:crosscorrelationFunctionCM}
477 xsun 3347 \end{equation}
478 xsun 3374 as the autocorrelation function and cross correlation functions
479 xsun 3347 respectively. $\rho(q, p)$ is the density distribution at equillibrium
480 xsun 3374 in phase space. In many cases, correlation functions decay as a
481     single exponential in time
482 xsun 3347 \begin{equation}
483     C(t) \sim e^{-t / \tau_r},
484 xsun 3354 \label{Ineq:relaxation}
485 xsun 3347 \end{equation}
486 xsun 3374 where $\tau_r$ is known as relaxation time which describes the rate of
487 xsun 3347 the decay.
488    
489 xsun 3374 \section{Methodology\label{In:sec:method}}
490     The simulations performed in this dissertation branch into two main
491     categories, Monte Carlo and Molecular Dynamics. There are two main
492     differences between Monte Carlo and Molecular Dynamics
493     simulations. One is that the Monte Carlo simulations are time
494     independent methods of sampling structural features of an ensemble,
495     while Molecular Dynamics simulations provide dynamic
496 xsun 3375 information. Additionally, Monte Carlo methods are stochastic
497     processes; the future configurations of the system are not determined
498 xsun 3374 by its past. However, in Molecular Dynamics, the system is propagated
499 xsun 3375 by Hamilton's equations of motion, and the trajectory of the system
500 xsun 3374 evolving in phase space is deterministic. Brief introductions of the
501     two algorithms are given in section~\ref{In:ssec:mc}
502     and~\ref{In:ssec:md}. Langevin Dynamics, an extension of the Molecular
503     Dynamics that includes implicit solvent effects, is introduced by
504 xsun 3347 section~\ref{In:ssec:ld}.
505    
506     \subsection{Monte Carlo\label{In:ssec:mc}}
507 xsun 3374 A Monte Carlo integration algorithm was first introduced by Metropolis
508     {\it et al.}~\cite{Metropolis53} The basic Metropolis Monte Carlo
509     algorithm is usually applied to the canonical ensemble, a
510 xsun 3375 Boltzmann-weighted ensemble, in which $N$, the total number of
511     particles, $V$, the total volume, and $T$, the temperature are
512     constants. An average in this ensemble is given
513 xsun 3347 \begin{equation}
514 xsun 3374 \langle A \rangle = \frac{1}{Z_N} \int d \vec q~^N \int d \vec p~^N
515     A(q^N, p^N) e^{-H(q^N, p^N) / k_B T}.
516 xsun 3354 \label{Ineq:energyofCanonicalEnsemble}
517 xsun 3347 \end{equation}
518 xsun 3374 The Hamiltonian is the sum of the kinetic energy, $K(p^N)$, a function
519     of momenta and the potential energy, $U(q^N)$, a function of
520     positions,
521 xsun 3347 \begin{equation}
522     H(q^N, p^N) = K(p^N) + U(q^N).
523 xsun 3354 \label{Ineq:hamiltonian}
524 xsun 3347 \end{equation}
525 xsun 3374 If the property $A$ is a function only of position ($ A = A(q^N)$),
526     the mean value of $A$ can be reduced to
527 xsun 3347 \begin{equation}
528 xsun 3374 \langle A \rangle = \frac{\int d \vec q~^N A e^{-U(q^N) / k_B T}}{\int d \vec q~^N e^{-U(q^N) / k_B T}},
529 xsun 3354 \label{Ineq:configurationIntegral}
530 xsun 3347 \end{equation}
531     The kinetic energy $K(p^N)$ is factored out in
532 xsun 3354 Eq.~\ref{Ineq:configurationIntegral}. $\langle A
533 xsun 3374 \rangle$ is now a configuration integral, and
534 xsun 3354 Eq.~\ref{Ineq:configurationIntegral} is equivalent to
535 xsun 3347 \begin{equation}
536 xsun 3375 \langle A \rangle = \int d \vec q~^N A \rho(q^N),
537 xsun 3354 \label{Ineq:configurationAve}
538 xsun 3347 \end{equation}
539 xsun 3375 where $\rho(q^N)$ is a configurational probability
540     \begin{equation}
541     \rho(q^N) = \frac{e^{-U(q^N) / k_B T}}{\int d \vec q~^N e^{-U(q^N) / k_B T}}.
542     \label{Ineq:configurationProb}
543     \end{equation}
544 xsun 3347
545 xsun 3374 In a Monte Carlo simulation of a system in the canonical ensemble, the
546     probability of the system being in a state $s$ is $\rho_s$, the change
547     of this probability with time is given by
548 xsun 3347 \begin{equation}
549     \frac{d \rho_s}{dt} = \sum_{s'} [ -w_{ss'}\rho_s + w_{s's}\rho_{s'} ],
550 xsun 3354 \label{Ineq:timeChangeofProb}
551 xsun 3347 \end{equation}
552     where $w_{ss'}$ is the tansition probability of going from state $s$
553     to state $s'$. Since $\rho_s$ is independent of time at equilibrium,
554     \begin{equation}
555     \frac{d \rho_{s}^{equilibrium}}{dt} = 0,
556 xsun 3354 \label{Ineq:equiProb}
557 xsun 3347 \end{equation}
558 xsun 3375 the sum of transition probabilities $\sum_{s'} [ -w_{ss'}\rho_s +
559     w_{s's}\rho_{s'} ]$ is $0$ for all $s'$. So
560 xsun 3347 \begin{equation}
561     \frac{\rho_s^{equilibrium}}{\rho_{s'}^{equilibrium}} = \frac{w_{s's}}{w_{ss'}}.
562 xsun 3354 \label{Ineq:relationshipofRhoandW}
563 xsun 3347 \end{equation}
564 xsun 3374 If the ratio of state populations
565 xsun 3347 \begin{equation}
566 xsun 3374 \frac{\rho_s^{equilibrium}}{\rho_{s'}^{equilibrium}} = e^{-(U_s - U_{s'}) / k_B T}.
567     \label{Ineq:satisfyofBoltzmannStatistics}
568     \end{equation}
569     then the ratio of transition probabilities,
570     \begin{equation}
571 xsun 3347 \frac{w_{s's}}{w_{ss'}} = e^{-(U_s - U_{s'}) / k_B T},
572 xsun 3354 \label{Ineq:conditionforBoltzmannStatistics}
573 xsun 3347 \end{equation}
574 xsun 3375 An algorithm that indicates how a Monte Carlo simulation generates a
575 xsun 3374 transition probability governed by
576     \ref{Ineq:conditionforBoltzmannStatistics}, is given schematically as,
577 xsun 3347 \begin{enumerate}
578 xsun 3374 \item\label{Initm:oldEnergy} Choose a particle randomly, and calculate
579 xsun 3375 the energy of the rest of the system due to the current location of
580     the particle.
581 xsun 3374 \item\label{Initm:newEnergy} Make a random displacement of the particle,
582     calculate the new energy taking the movement of the particle into account.
583 xsun 3347 \begin{itemize}
584 xsun 3375 \item If the energy goes down, keep the new configuration.
585 xsun 3374 \item If the energy goes up, pick a random number between $[0,1]$.
586 xsun 3347 \begin{itemize}
587 xsun 3374 \item If the random number smaller than
588 xsun 3375 $e^{-(U_{new} - U_{old})} / k_B T$, keep the new configuration.
589 xsun 3374 \item If the random number is larger than
590 xsun 3375 $e^{-(U_{new} - U_{old})} / k_B T$, keep the old configuration.
591 xsun 3347 \end{itemize}
592     \end{itemize}
593 xsun 3374 \item\label{Initm:accumulateAvg} Accumulate the averages based on the
594 xsun 3375 current configuration.
595 xsun 3374 \item Go to step~\ref{Initm:oldEnergy}.
596 xsun 3347 \end{enumerate}
597 xsun 3375 It is important for sampling accuracy that the old configuration is
598 xsun 3374 sampled again if it is kept.
599 xsun 3347
600     \subsection{Molecular Dynamics\label{In:ssec:md}}
601     Although some of properites of the system can be calculated from the
602 xsun 3374 ensemble average in Monte Carlo simulations, due to the absence of the
603     time dependence, it is impossible to gain information on dynamic
604     properties from Monte Carlo simulations. Molecular Dynamics evolves
605     the positions and momenta of the particles in the system. The
606     evolution of the system obeys the laws of classical mechanics, and in
607     most situations, there is no need to account for quantum effects. In a
608     real experiment, the instantaneous positions and momenta of the
609 xsun 3375 particles in the system are ofter neither important nor measurable,
610     the observable quantities are usually an average value for a finite
611     time interval. These quantities are expressed as a function of
612     positions and momenta in Molecular Dynamics simulations. For example,
613 xsun 3374 temperature of the system is defined by
614 xsun 3347 \begin{equation}
615 xsun 3374 \frac{3}{2} N k_B T = \langle \sum_{i=1}^N \frac{1}{2} m_i v_i \rangle,
616 xsun 3354 \label{Ineq:temperature}
617 xsun 3347 \end{equation}
618 xsun 3374 here $m_i$ is the mass of particle $i$ and $v_i$ is the velocity of
619     particle $i$. The right side of Eq.~\ref{Ineq:temperature} is the
620     average kinetic energy of the system.
621 xsun 3347
622 xsun 3374 The initial positions of the particles are chosen so that there is no
623     overlap of the particles. The initial velocities at first are
624     distributed randomly to the particles using a Maxwell-Boltzmann
625 xsun 3375 distribution, and then shifted to make the total linear momentum of
626     the system $0$.
627 xsun 3374
628     The core of Molecular Dynamics simulations is the calculation of
629     forces and the integration algorithm. Calculation of the forces often
630     involves enormous effort. This is the most time consuming step in the
631     Molecular Dynamics scheme. Evaluation of the forces is mathematically
632     simple,
633 xsun 3347 \begin{equation}
634     f(q) = - \frac{\partial U(q)}{\partial q},
635 xsun 3354 \label{Ineq:force}
636 xsun 3347 \end{equation}
637 xsun 3374 where $U(q)$ is the potential of the system. However, the numerical
638     details of this computation are often quite complex. Once the forces
639     computed, the positions and velocities are updated by integrating
640     Hamilton's equations of motion,
641     \begin{eqnarray}
642     \dot p_i & = & -\frac{\partial H}{\partial q_i} = -\frac{\partial
643     U(q_i)}{\partial q_i} = f(q_i) \\
644     \dot q_i & = & p_i
645 xsun 3354 \label{Ineq:newton}
646 xsun 3374 \end{eqnarray}
647     The classic example of an integrating algorithm is the Verlet
648     algorithm, which is one of the simplest algorithms for integrating the
649     equations of motion. The Taylor expansion of the position at time $t$
650     is
651 xsun 3347 \begin{equation}
652 xsun 3375 q(t+\Delta t)= q(t) + \frac{p(t)}{m} \Delta t + \frac{f(t)}{2m}\Delta t^2 +
653 xsun 3347 \frac{\Delta t^3}{3!}\frac{\partial^3 q(t)}{\partial t^3} +
654     \mathcal{O}(\Delta t^4)
655 xsun 3354 \label{Ineq:verletFuture}
656 xsun 3347 \end{equation}
657     for a later time $t+\Delta t$, and
658     \begin{equation}
659 xsun 3375 q(t-\Delta t)= q(t) - \frac{p(t)}{m} \Delta t + \frac{f(t)}{2m}\Delta t^2 -
660 xsun 3347 \frac{\Delta t^3}{3!}\frac{\partial^3 q(t)}{\partial t^3} +
661     \mathcal{O}(\Delta t^4) ,
662 xsun 3354 \label{Ineq:verletPrevious}
663 xsun 3347 \end{equation}
664 xsun 3374 for a previous time $t-\Delta t$. Adding Eq.~\ref{Ineq:verletFuture}
665     and~\ref{Ineq:verletPrevious} gives
666 xsun 3347 \begin{equation}
667     q(t+\Delta t)+q(t-\Delta t) =
668     2q(t) + \frac{f(t)}{m}\Delta t^2 + \mathcal{O}(\Delta t^4),
669 xsun 3354 \label{Ineq:verletSum}
670 xsun 3347 \end{equation}
671     so, the new position can be expressed as
672     \begin{equation}
673     q(t+\Delta t) \approx
674     2q(t) - q(t-\Delta t) + \frac{f(t)}{m}\Delta t^2.
675 xsun 3354 \label{Ineq:newPosition}
676 xsun 3347 \end{equation}
677 xsun 3374 The higher order terms in $\Delta t$ are omitted.
678 xsun 3347
679 xsun 3374 Numerous techniques and tricks have been applied to Molecular Dynamics
680     simulations to gain greater efficiency or accuracy. The engine used in
681     this dissertation for the Molecular Dynamics simulations is {\sc
682     oopse}. More details of the algorithms and techniques used in this
683     code can be found in Ref.~\cite{Meineke2005}.
684 xsun 3347
685     \subsection{Langevin Dynamics\label{In:ssec:ld}}
686 xsun 3375 In many cases, the properites of the solvent (like the water in the
687     lipid-water system studied in this dissertation) are less interesting
688     to the researchers than the behavior of the solute. However, the major
689     computational expense is ofter the solvent-solvent interactions, this
690     is due to the large number of the solvent molecules when compared to
691     the number of solute molecules. The ratio of the number of lipid
692     molecules to the number of water molecules is $1:25$ in our
693     lipid-water system. The efficiency of the Molecular Dynamics
694     simulations is greatly reduced, with up to 85\% of CPU time spent
695     calculating only water-water interactions.
696 xsun 3347
697 xsun 3374 As an extension of the Molecular Dynamics methodologies, Langevin
698     Dynamics seeks a way to avoid integrating the equations of motion for
699     solvent particles without losing the solvent effects on the solute
700     particles. One common approximation is to express the coupling of the
701     solute and solvent as a set of harmonic oscillators. The Hamiltonian
702     of such a system is written as
703 xsun 3347 \begin{equation}
704     H = \frac{p^2}{2m} + U(q) + H_B + \Delta U(q),
705 xsun 3354 \label{Ineq:hamiltonianofCoupling}
706 xsun 3347 \end{equation}
707 xsun 3374 where $H_B$ is the Hamiltonian of the bath which is a set of N
708     harmonic oscillators
709 xsun 3347 \begin{equation}
710     H_B = \sum_{\alpha = 1}^{N} \left\{ \frac{p_\alpha^2}{2m_\alpha} +
711     \frac{1}{2} m_\alpha \omega_\alpha^2 q_\alpha^2\right\},
712 xsun 3354 \label{Ineq:hamiltonianofBath}
713 xsun 3347 \end{equation}
714 xsun 3374 $\alpha$ runs over all the degree of freedoms of the bath,
715     $\omega_\alpha$ is the bath frequency of oscillator $\alpha$, and
716     $\Delta U(q)$ is the bilinear coupling given by
717 xsun 3347 \begin{equation}
718     \Delta U = -\sum_{\alpha = 1}^{N} g_\alpha q_\alpha q,
719 xsun 3354 \label{Ineq:systemBathCoupling}
720 xsun 3347 \end{equation}
721 xsun 3374 where $g_\alpha$ is the coupling constant for oscillator $\alpha$. By
722     solving the Hamilton's equations of motion, the {\it Generalized
723     Langevin Equation} for this system is derived as
724 xsun 3347 \begin{equation}
725     m \ddot q = -\frac{\partial W(q)}{\partial q} - \int_0^t \xi(t) \dot q(t-t')dt' + R(t),
726 xsun 3354 \label{Ineq:gle}
727 xsun 3347 \end{equation}
728     with mean force,
729     \begin{equation}
730     W(q) = U(q) - \sum_{\alpha = 1}^N \frac{g_\alpha^2}{2m_\alpha
731 xsun 3374 \omega_\alpha^2}q^2.
732 xsun 3354 \label{Ineq:meanForce}
733 xsun 3347 \end{equation}
734 xsun 3374 The {\it friction kernel}, $\xi(t)$, depends only on the coordinates
735     of the solute particles,
736 xsun 3347 \begin{equation}
737     \xi(t) = \sum_{\alpha = 1}^N \frac{-g_\alpha}{m_\alpha
738     \omega_\alpha} \cos(\omega_\alpha t),
739 xsun 3354 \label{Ineq:xiforGLE}
740 xsun 3347 \end{equation}
741 xsun 3374 and a ``random'' force,
742 xsun 3347 \begin{equation}
743     R(t) = \sum_{\alpha = 1}^N \left( g_\alpha q_\alpha(0)-\frac{g_\alpha}{m_\alpha
744     \omega_\alpha^2}q(0)\right) \cos(\omega_\alpha t) + \frac{\dot
745     q_\alpha(0)}{\omega_\alpha} \sin(\omega_\alpha t),
746 xsun 3354 \label{Ineq:randomForceforGLE}
747 xsun 3347 \end{equation}
748 xsun 3375 that depends only on the initial conditions. The relationship of
749     friction kernel $\xi(t)$ and random force $R(t)$ is given by the
750     second fluctuation dissipation theorem,
751 xsun 3347 \begin{equation}
752 xsun 3374 \xi(t) = \frac{1}{k_B T} \langle R(t)R(0) \rangle.
753 xsun 3354 \label{Ineq:relationshipofXiandR}
754 xsun 3347 \end{equation}
755 xsun 3374 In the harmonic bath this relation is exact and provable from the
756     definitions of these quantities. In the limit of static friction,
757 xsun 3347 \begin{equation}
758     \xi(t) = 2 \xi_0 \delta(t).
759 xsun 3354 \label{Ineq:xiofStaticFriction}
760 xsun 3347 \end{equation}
761 xsun 3374 After substituting $\xi(t)$ into Eq.~\ref{Ineq:gle} with
762     Eq.~\ref{Ineq:xiofStaticFriction}, the {\it Langevin Equation} is
763     extracted,
764 xsun 3347 \begin{equation}
765     m \ddot q = -\frac{\partial U(q)}{\partial q} - \xi \dot q(t) + R(t).
766 xsun 3354 \label{Ineq:langevinEquation}
767 xsun 3347 \end{equation}
768 xsun 3374 Application of the Langevin Equation to dynamic simulations is
769     discussed in Ch.~\ref{chap:ld}.