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6  
7   \section{\label{introSec:theory}Theoretical Background}
8  
9 < The techniques used in the course of this research fall under the two main classes of
10 < molecular simulation: Molecular Dynamics and Monte Carlo. Molecular Dynamic simulations
11 < integrate the equations of motion for a given system of particles, allowing the researher
12 < to gain insight into the time dependent evolution of a system. Diffusion phenomena are
13 < readily studied with this simulation technique, making Molecular Dynamics the main simulation
14 < technique used in this research. Other aspects of the research fall under the Monte Carlo
15 < class of simulations. In Monte Carlo, the configuration space available to the collection
16 < of particles is sampled stochastichally, or randomly. Each configuration is chosen with
17 < a given probability based on the Maxwell Boltzman distribution. These types of simulations
18 < are best used to probe properties of a system that are only dependent only on the state of
19 < the system. Structural information about a system is most readily obtained through
20 < these types of methods.
9 > The techniques used in the course of this research fall under the two
10 > main classes of molecular simulation: Molecular Dynamics and Monte
11 > Carlo. Molecular Dynamic simulations integrate the equations of motion
12 > for a given system of particles, allowing the researher to gain
13 > insight into the time dependent evolution of a system. Diffusion
14 > phenomena are readily studied with this simulation technique, making
15 > Molecular Dynamics the main simulation technique used in this
16 > research. Other aspects of the research fall under the Monte Carlo
17 > class of simulations. In Monte Carlo, the configuration space
18 > available to the collection of particles is sampled stochastichally,
19 > or randomly. Each configuration is chosen with a given probability
20 > based on the Maxwell Boltzman distribution. These types of simulations
21 > are best used to probe properties of a system that are only dependent
22 > only on the state of the system. Structural information about a system
23 > is most readily obtained through these types of methods.
24  
25 < Although the two techniques employed seem dissimilar, they are both linked by the overarching
26 < principles of Statistical Thermodynamics. Statistical Thermodynamics governs the behavior of
27 < both classes of simulations and dictates what each method can and cannot do. When investigating
28 < a system, one most first analyze what thermodynamic properties of the system are being probed,
29 < then chose which method best suits that objective.
25 > Although the two techniques employed seem dissimilar, they are both
26 > linked by the overarching principles of Statistical
27 > Thermodynamics. Statistical Thermodynamics governs the behavior of
28 > both classes of simulations and dictates what each method can and
29 > cannot do. When investigating a system, one most first analyze what
30 > thermodynamic properties of the system are being probed, then chose
31 > which method best suits that objective.
32  
33   \subsection{\label{introSec:statThermo}Statistical Thermodynamics}
34  
# Line 33 | Line 38 | enesemble averages
38  
39   \subsection{\label{introSec:monteCarlo}Monte Carlo Simulations}
40  
41 < Stochastic sampling
41 > The Monte Carlo method was developed by Metropolis and Ulam for their
42 > work in fissionable material.\cite{metropolis:1949} The method is so
43 > named, because it heavily uses random numbers in its
44 > solution.\cite{allen87:csl} The Monte Carlo method allows for the
45 > solution of integrals through the stochastic sampling of the values
46 > within the integral. In the simplest case, the evaluation of an
47 > integral would follow a brute force method of
48 > sampling.\cite{Frenkel1996} Consider the following single dimensional
49 > integral:
50 > \begin{equation}
51 > I = f(x)dx
52 > \label{eq:MCex1}
53 > \end{equation}
54 > The equation can be recast as:
55 > \begin{equation}
56 > I = (b-a)<f(x)>
57 > \label{eq:MCex2}
58 > \end{equation}
59 > Where $<f(x)>$ is the unweighted average over the interval
60 > $[a,b]$. The calculation of the integral could then be solved by
61 > randomly choosing points along the interval $[a,b]$ and calculating
62 > the value of $f(x)$ at each point. The accumulated average would then
63 > approach $I$ in the limit where the number of trials is infintely
64 > large.
65  
66 < detatiled balance
66 > However, in Statistical Mechanics, one is typically interested in
67 > integrals of the form:
68 > \begin{equation}
69 > <A> = \frac{A}{exp^{-\beta}}
70 > \label{eq:mcEnsAvg}
71 > \end{equation}
72 > Where $r^N$ stands for the coordinates of all $N$ particles and $A$ is
73 > some observable that is only dependent on position. $<A>$ is the
74 > ensemble average of $A$ as presented in
75 > Sec.~\ref{introSec:statThermo}. Because $A$ is independent of
76 > momentum, the momenta contribution of the integral can be factored
77 > out, leaving the configurational integral. Application of the brute
78 > force method to this system would yield highly inefficient
79 > results. Due to the Boltzman weighting of this integral, most random
80 > configurations will have a near zero contribution to the ensemble
81 > average. This is where a importance sampling comes into
82 > play.\cite{allen87:csl}
83  
84 < metropilis monte carlo
84 > Importance Sampling is a method where one selects a distribution from
85 > which the random configurations are chosen in order to more
86 > efficiently calculate the integral.\cite{Frenkel1996} Consider again
87 > Eq.~\ref{eq:MCex1} rewritten to be:
88  
89 +
90 +
91   \subsection{\label{introSec:md}Molecular Dynamics Simulations}
92  
93   time averages

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