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%!TEX root = /Users/charles/Documents/chuckDissertation/dissertation.tex |
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\chapter{\label{chap:bulkmod}BREATHING MODE DYNAMICS AND ELASTIC PROPERTIES OF GOLD NANOPARTICLES} |
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|
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In metallic nanoparticles, the relatively large surface area to volume ratio |
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induces a number of well-known size-dependent phenomena. Notable |
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among these are the depression of the bulk melting |
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temperature,\cite{Buffat:1976yq,el-sayed00,el-sayed01} surface melting |
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transitions, increased room-temperature alloying |
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rates,\cite{ShibataT._ja026764r} changes in the breathing mode |
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frequencies,\cite{delfatti99,henglein99,hartland02a,hartland02c} and |
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rapid heat transfer to the surrounding |
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medium.\cite{HuM._jp020581+,hartland02d} |
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|
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In this chapter, atomic-level simulations of the transient |
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response of metallic nanoparticles to the nearly instantaneous heating |
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undergone when photons are absorbed during ultrafast laser excitation |
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experiments are discussed. The time scale for heating (determined by the {\it e-ph} |
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coupling constant) is faster than a single period of the breathing |
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mode for spherical nanoparticles.\cite{Simon2001,HartlandG.V._jp0276092} |
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Hot-electron pressure and direct lattice heating contribute to the |
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thermal excitation of the atomic degrees of freedom, and both |
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mechanisms are rapid enough to coherently excite the breathing mode of |
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the spherical particles.\cite{Hartland00} |
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|
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There are questions posed by the experiments that may be easiest to |
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answer via computer simulation. For example, the dephasing seen |
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following coherent excitation of the breathing mode may be due to |
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inhomogeneous size distributions in the sample, but it may also be due |
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to softening of the breathing mode vibrational frequency following a |
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melting transition. Additionally, there are properties (such as the |
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bulk modulus) that may be nearly impossible to obtain experimentally, |
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but which are relatively easily obtained via simulation techniques. |
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|
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We outline our simulation techniques in section \ref{bulkmod:sec:details}. |
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Results are presented in section \ref{bulkmod:sec:results}. We discuss our |
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results in terms of Lamb's classical theory of elastic spheres \cite{Lamb1882} in |
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section \ref{bulkmod:sec:discussion}. |
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|
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\section{Computational Details} |
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\label{bulkmod:sec:details} |
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|
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Spherical Au nanoparticles were created in a standard FCC lattice at |
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four different radii [20{\AA} (1926 atoms), 25{\AA} (3884 atoms), |
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30{\AA} (6602 atoms), and 35{\AA} (10606 atoms)]. To create spherical |
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nanoparticles, a large FCC lattice was built at the normal Au lattice |
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spacing (4.08 \AA) and any atoms outside the target radius were |
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excluded from the simulation. |
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|
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\subsection{Simulation Methodology} |
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|
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Potentials were calculated using the Voter-Chen |
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parameterization~\cite{Voter:87} of the Embedded Atom Method ({\sc |
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eam}) as described in Section \ref{introSec:eam} of this dissertation. |
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Before starting the molecular dynamics runs, a relatively short |
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steepest-descent minimization was performed to relax the lattice in |
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the initial configuration. To facilitate the study of the larger |
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particles, simulations were run in parallel over 16 processors using |
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Plimpton's force-decomposition method.\cite{plimpton93} |
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|
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To mimic the events following the absorption of light in the ultrafast |
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laser heating experiments, we have used a simple two-step process to |
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prepare the simulations. Instantaneous heating of the lattice was |
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performed by sampling atomic velocities from a Maxwell-Boltzmann |
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distribution set to twice the target temperature for the simulation. |
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By equipartition, approximately half of the initial kinetic energy of |
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the system winds up in the potential energy of the system. The system |
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was a allowed a very short (10 fs) evolution period with the new |
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velocities. |
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|
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Following this excitation step, the particles evolved under |
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Nos\'{e}-Hoover NVT dynamics~\cite{hoover85} for 40 ps. Given the |
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mass of the constituent metal atoms, time steps of 5 fs give excellent |
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energy conservation in standard NVE integrators, so the same time step |
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was used in the NVT simulations. Target temperatures for these |
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particles spanned the range from 300 K to 1350 K in 50 K intervals. |
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Five independent samples were run for each particle and temperature. |
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The results presented below are averaged properties for each of the |
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five independent samples. |
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|
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\subsection{\label{bulkmod:sec:analysis}Analysis} |
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|
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Of primary interest when comparing our simulations to experiments is |
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the dynamics of the low-frequency breathing mode of the particles. To |
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study this motion, access is needed to accurate measures of both the |
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volume and surface area as a function of time. Throughout the |
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simulations, both quantities were monitored using Barber {\it et al.}'s |
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very fast quickhull algorithm to obtain the convex hull for the |
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collection of 3-d coordinates of all of atoms at each point in |
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time.~\cite{barber96quickhull,qhull} The convex hull is the smallest convex |
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polyhedron which includes all of the atoms, so the volume of this |
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polyhedron is an excellent estimate of the volume of the nanoparticle. |
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The convex hull estimate of the volume will be problematic if the |
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nanoparticle breaks into pieces (i.e. if the bounding surface becomes |
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concave), but for the relatively short trajectories of this study, it |
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provides an excellent measure of particle volume as a function of |
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time. |
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|
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The bulk modulus, which is the inverse of the compressibility, |
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\begin{equation} |
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K = \frac{1}{\kappa} = - V \left(\frac{\partial P}{\partial |
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V}\right)_{T} |
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\label{eq:Kdef} |
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\end{equation} |
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can be related to quantities that are relatively easily accessible |
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from our molecular dynamics simulations. Four |
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different approaches are presented here for estimating the bulk modulus directly from |
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basic or derived quantities: |
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|
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\begin{itemize} |
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\item The traditional ``Energetic'' approach |
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|
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Using basic thermodynamics and one of the Maxwell relations, it can be written that |
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\begin{equation} |
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P = T\left(\frac{\partial S}{\partial V}\right)_{T} - |
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\left(\frac{\partial U}{\partial V}\right)_{T}. |
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\label{eq:Pdef} |
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\end{equation} |
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It follows that |
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\begin{equation} |
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K = V \left(T \left(\frac{\partial^{2} S}{\partial V^{2}}\right)_{T} - |
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\left(\frac{\partial^{2} U}{\partial V^{2}}\right)_{T} \right). |
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\label{eq:Ksub} |
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\end{equation} |
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The standard practice in solid state physics is to assume the low |
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temperature limit ({\it i.e.} to neglect the entropic term), which |
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means the bulk modulus is usually expressed |
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\begin{equation} |
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K \approx V \left(\frac{\partial^{2} U }{\partial V^{2}}\right)_{T}. |
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\label{eq:Kuse} |
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\end{equation} |
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When the relationship between the total energy $U$ and volume $V$ of |
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the system are available at a fixed temperature (as it is in these |
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simulations), it is a simple matter to compute the bulk modulus from |
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the response of the system to the perturbation of the instantaneous |
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heating. Although this information would, in theory, be available |
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from longer constant temperature simulations, the ranges of volumes |
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and energies explored by a nanoparticle under equilibrium conditions |
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are actually quite small. Instantaneous heating, since it excites |
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coherent oscillations in the breathing mode, allows us to sample a |
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much wider range of volumes (and energies) for the particles. The |
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problem with this method is that it neglects the entropic term near |
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the melting transition, which gives spurious results (negative bulk |
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moduli) at higher temperatures. |
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|
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\item The Linear Response Approach |
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|
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Linear response theory gives us another approach to calculating the |
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bulk modulus. This method relates the low-wavelength fluctuations in |
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the density to the isothermal compressibility,\cite{BernePecora} |
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\begin{equation} |
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\underset{k \rightarrow 0}{\lim} \langle | \delta \rho(\vec{k}) |^2 |
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\rangle = \frac{k_B T \rho^2 \kappa}{V} |
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\end{equation} |
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where the frequency dependent density fluctuations are the Fourier |
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transform of the spatial fluctuations, |
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\begin{equation} |
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\delta \rho(\vec{k}) = \underset{V}{\int} e^{i \vec{k}\cdot\vec{r}} \left( \rho(\vec{r}, t) - \langle \rho \rangle \right) dV |
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\end{equation} |
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This approach is essentially equivalent to using the volume |
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fluctuations directly to estimate the bulk modulus, |
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\begin{equation} |
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K = \frac{V k_B T}{\langle \delta V^2 \rangle} = k_B T \frac{\langle V \rangle}{\langle V^2 \rangle - \langle V \rangle^2} |
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\end{equation} |
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It should be noted that in these experiments, the particles are {\it |
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far from equilibrium}, and so a linear response approach will not be |
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the most suitable way to obtain estimates of the bulk modulus. |
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|
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\item The Extended System Approach |
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|
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Since these simulations are being performed in the NVT ensemble using |
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Nos\'e-Hoover thermostatting, the quantity conserved by our integrator |
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($H_{NVT}$) can be expressed as: |
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\begin{equation} |
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H_{NVT} = U + f k_B T_{ext} \left( \frac{\tau_T^2 \chi(t)^2}{2} + |
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\int_0^t \chi(s) ds \right). |
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\end{equation} |
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Here $f$ is the number of degrees of freedom in the (real) system, |
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$T_{ext}$ is the temperature of the thermostat, $\tau_T$ is the time |
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constant for the thermostat, and $\chi(t)$ is the instantaneous value |
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of the extended system thermostat variable. The extended Hamiltonian |
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for the system, $H_{NVT}$ is, to within a constant, the Helmholtz free |
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energy.\cite{melchionna93} Since the pressure is a simple derivative |
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of the Helmholtz free energy, |
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\begin{equation} |
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P = -\left( \frac{\partial A}{\partial V} \right)_T , |
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\end{equation} |
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the bulk modulus can be obtained (theoretically) by a quadratic fit of |
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the fluctuations in $H_{NVT}$ against fluctuations in the volume, |
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\begin{equation} |
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K = -V \left( \frac{\partial^2 H_{NVT}}{\partial V^2} \right)_T. |
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\end{equation} |
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However, $H_{NVT}$ is essentially conserved during these simulations, |
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so fitting fluctuations of this quantity to obtain meaningful physical |
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quantities is somewhat suspect. It should also noted that this method would |
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fail in periodic systems because the volume itself is fixed in |
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periodic NVT simulations. |
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|
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\item The Direct Pressure Approach |
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|
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Our preferred method for estimating the bulk modulus is to compute it |
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{\it directly} from the internal pressure in the nanoparticle. The |
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pressure is obtained via the trace of the pressure tensor, |
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\begin{equation} |
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P = \frac{1}{3} |
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\mathrm{Tr}\left[\overleftrightarrow{\mathsf{P}}\right], |
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\end{equation} |
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which has a kinetic contribution as well as a contribution from the |
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stress tensor ($\overleftrightarrow{\mathsf{W}}$): |
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\begin{equation} |
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\overleftrightarrow{\mathsf{P}} = \frac{1}{V} \left( |
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\sum_{i=1}^{N} m_i \vec{v}_i \otimes \vec{v}_i \right) + |
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\overleftrightarrow{\mathsf{W}}. |
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\end{equation} |
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Here the $\otimes$ symbol represents the {\it outer} product of the |
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velocity vector for atom $i$ to yield a $3 \times 3$ matrix. The |
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virial is computed during the simulation using forces between pairs of |
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particles, |
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\begin{equation} |
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\overleftrightarrow{\mathsf{W}} = \sum_{i} \sum_{j>i} \vec{r}_{ij} \otimes \vec{f}_{ij} |
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\end{equation} |
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During the simulation, the internal pressure, $P$, is recorded as well as |
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the total energy, $U$, the extended system's hamiltonian, $H_{NVT}$, |
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and the particle coordinates. Once the time |
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dependent volume of the nanoparticle has been calculated using the convex hull, |
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any of these four methods can be used to estimate the bulk modulus. |
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\end{itemize} |
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|
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It is found, however, that only the fourth method (the direct pressure |
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approach) gives meaningful results. Bulk moduli for the 35 \AA\ |
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particle were computed with the traditional (Energy vs. Volume) |
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approach as well as the direct pressure approach. A comparison of the |
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Bulk Modulus obtained via both methods and are shown in |
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Fig. \ref{fig:Methods} Note that the second derivative fits in the |
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traditional approach can give (in the liquid droplet region) negative |
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curvature, and this results in negative values for the bulk modulus. |
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|
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\begin{figure}[htbp] |
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\centering |
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\includegraphics[height=3in]{images/Methods.pdf} |
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\caption{Comparison of two of the methods for estimating the bulk |
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modulus as a function of temperature for the 35\AA\ particle.} |
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\label{fig:Methods} |
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\end{figure} |
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|
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The Bulk moduli reported in the rest of this paper were computed using |
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the direct pressure method. |
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|
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To study the frequency of the breathing mode, the |
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power spectrum for volume ($V$) fluctuations have been calculated according to, |
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\begin{equation} |
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\rho_{\Delta V}(\omega) = \int_{-\infty}^{\infty} \langle \Delta V(t) |
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\Delta V(0) \rangle e^{-i \omega t} dt |
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\label{eq:volspect} |
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\end{equation} |
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where $\Delta V(t) = V(t) - \langle V \rangle$. Because the |
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instantaneous heating excites all of the vibrational modes of the |
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particle, the power spectrum will contain contributions from all modes |
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that perturb the total volume of the particle. The lowest frequency |
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peak in the power spectrum should give the frequency (and period) for |
260 |
the breathing mode, and these quantities are most readily compared |
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with the Hartland group experiments.\cite{HartlandG.V._jp0276092} Further |
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analysis of the breathing dynamics follows in section |
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\ref{bulkmod:sec:discussion}. |
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|
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The heat capacity for our simulations has also been computed to verify |
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the location of the melting transition. Calculations of the heat |
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capacity were performed on the non-equilibrium, instantaneous heating |
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simulations, as well as on simulations of nanoparticles that were at |
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equilibrium at the target temperature. |
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|
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\section{Results} |
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\label{bulkmod:sec:results} |
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|
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\subsection{The Bulk Modulus and Heat Capacity} |
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|
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The upper panel in Fig. \ref{fig:BmCp} shows the temperature |
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dependence of the Bulk Modulus ($K$). In all samples, there is a |
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dramatic (size-dependent) drop in $K$ at temperatures well below the |
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melting temperature of bulk polycrystalline gold. This drop in $K$ |
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coincides with the actual melting transition of the nanoparticles. |
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Surface melting has been confirmed at even lower temperatures using |
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the radial-dependent density, $\rho(r) / \rho$, which shows a merging |
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of the crystalline peaks in the outer layer of the nanoparticle. |
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However, the bulk modulus only has an appreciable drop when the |
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particle melts fully. |
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|
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\begin{figure}[htbp] |
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\centering |
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\includegraphics[height=3in]{images/Stacked_Bulk_modulus_and_Cp.pdf} |
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\caption{The temperature dependence of the bulk modulus (upper panel) |
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and heat capacity (lower panel) for nanoparticles of four different |
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radii. Note that the peak in the heat capacity coincides with the {\em |
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start} of the peak in the bulk modulus.} |
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\label{fig:BmCp} |
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\end{figure} |
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|
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|
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Another feature of these transient (non-equilibrium) calculations is |
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the width of the peak in the heat capacity. Calculation of $C_{p}$ |
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from longer equilibrium trajectories should indicate {\it sharper} |
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features in $C_{p}$ for the larger particles. Since the melting process itself is being initiated and observed in these calculations, the |
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smaller particles melt more rapidly, and thus exhibit sharper features |
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in $C_{p}$. Indeed, longer trajectories do show that $T_{m}$ occurs |
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at lower temperatures and with sharper transitions in larger particles |
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than can be observed from transient response calculations. |
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Fig. \ref{fig:Cp2} shows the results of 300 ps simulations which give |
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much sharper and lower temperature melting transitions than those |
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observed in the 40 ps simulations. |
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|
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\begin{figure}[htbp] |
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\centering |
312 |
\includegraphics[height=3in]{images/Cp_vs_T.pdf} |
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\caption{The dependence of the spike in the heat capacity on the |
314 |
length of the simulation. Longer heating-response calculations result |
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in melting transitions that are sharper and lower in temperature than |
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the short-time transient response simulations. Shorter runs don't |
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allow the particles to melt completely.} |
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\label{fig:Cp2} |
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\end{figure} |
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|
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|
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|
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\subsection{Breathing Mode Dynamics} |
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|
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Fig.\ref{fig:VolTime} shows representative samples of the volume |
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vs. time traces for the 20 \AA\ and 35 \AA\ particles at a number of |
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different temperatures. It can clearly be seen that the period of the |
328 |
breathing mode is dependent on temperature, and that the coherent |
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oscillations of the particles' volume are destroyed after only a few |
330 |
ps in the smaller particles, while they live on for 10-20 ps in the |
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larger particles. The de-coherence is also strongly temperature |
332 |
dependent, with the high temperature samples decohering much more |
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rapidly than lower temperatures. |
334 |
|
335 |
\begin{figure}[htbp] |
336 |
\centering |
337 |
\includegraphics[height=3in]{images/Vol_vs_time.pdf} |
338 |
\caption{Sample Volume traces for the 20 \AA\ and 35 \AA\ particles at a |
339 |
range of temperatures. Note the relatively rapid ($<$ 10 ps) |
340 |
decoherence due to melting in the 20 \AA\ particle as well as the |
341 |
difference between the 1100 K and 1200 K traces in the 35 \AA\ |
342 |
particle.} |
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\label{fig:VolTime} |
344 |
\end{figure} |
345 |
|
346 |
|
347 |
Although $V$ vs. $t$ traces can say a great deal, it is more |
348 |
instructive to compute the autocorrelation function for volume |
349 |
fluctuations to give more accurate short-time information. Fig |
350 |
\ref{fig:volcorr} shows representative autocorrelation functions for |
351 |
volume fluctuations. Although many traces exhibit a single frequency |
352 |
with decaying amplitude, a number of the samples show distinct beat |
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patterns indicating the presence of multiple frequency components in |
354 |
the breathing motion of the nanoparticles. In particular, the 20 \AA\ |
355 |
particle shows a distinct beat in the volume fluctuations in the 800 K |
356 |
trace. |
357 |
|
358 |
|
359 |
|
360 |
\begin{figure}[htbp] |
361 |
\centering |
362 |
\includegraphics[height=3in]{images/volcorr.pdf} |
363 |
\caption{Volume fluctuation autocorrelation functions for the 20 \AA\ (lower panel) |
364 |
and 35 \AA\ (upper panel) particles at a range of temperatures. Successive |
365 |
temperatures have been translated upwards by one unit. Note the beat |
366 |
pattern in the 20 \AA\ particle at 800K.} |
367 |
\label{fig:volcorr} |
368 |
\end{figure} |
369 |
|
370 |
|
371 |
When the power spectrum of the volume autocorrelation functions are |
372 |
analyzed (Eq. (\ref{eq:volspect})), the samples which exhibit beat |
373 |
patterns do indeed show multiple peaks in the power spectrum. The period corresponding to the two lowest frequency peaks is plotted in |
374 |
Fig. \ref{fig:Period}. Smaller particles have the most evident |
375 |
splitting, particularly as the temperature rises above the melting |
376 |
points for these particles. |
377 |
|
378 |
\begin{figure}[htbp] |
379 |
\centering |
380 |
\includegraphics[height=3in]{images/Period_vs_T.pdf} |
381 |
\caption{The temperature dependence of the period of the breathing |
382 |
mode for the four different nanoparticles studied in this |
383 |
work.} |
384 |
\label{fig:Period} |
385 |
\end{figure} |
386 |
|
387 |
|
388 |
\section{Discussion} |
389 |
\label{bulkmod:sec:discussion} |
390 |
|
391 |
Lamb's classical theory of elastic spheres~\cite{Lamb1882} provides |
392 |
two possible explanations for the split peak in the vibrational |
393 |
spectrum. The periods of the longitudinal and transverse vibrations |
394 |
in an elastic sphere of radius $R$ are given by: |
395 |
\begin{equation} |
396 |
\tau_{t} = \frac{2 \pi R}{\theta c_{t}} |
397 |
\end{equation} |
398 |
and |
399 |
\begin{equation} |
400 |
\tau_{l} = \frac{2 \pi R}{\eta c_{l}} |
401 |
\end{equation} |
402 |
where $\theta$ and $n$ are obtained from the solutions to the |
403 |
transcendental equations |
404 |
\begin{equation} |
405 |
\tan \theta = \frac{3 \theta}{3 - \theta^{2}} |
406 |
\end{equation} |
407 |
\begin{equation} |
408 |
\tan \eta = \frac{4 \eta}{4 - \eta^{2}\frac{c_{l}^{2}}{c_{t}^{2}}} |
409 |
\end{equation}. |
410 |
|
411 |
$c_{l}$ and $c_{t}$ are the longitudinal and transverse speeds |
412 |
of sound in the material. In an isotropic material, these speeds are |
413 |
simply related to the elastic constants and the density ($\rho$), |
414 |
\begin{equation} |
415 |
c_{l} = \sqrt{c_{11}/\rho} |
416 |
\end{equation} |
417 |
\begin{equation} |
418 |
c_{t} = \sqrt{c_{44}/\rho}. |
419 |
\end{equation} |
420 |
|
421 |
In crystalline materials, the speeds depend on the direction of |
422 |
propagation of the wave relative to the crystal plane.\cite{Kittel:1996fk} |
423 |
For the remainder of our analysis, it is assumed that the nanoparticles are |
424 |
isotropic (which should be valid only above the melting transition). |
425 |
A more detailed analysis of the lower temperature particles would take |
426 |
the crystal lattice into account. |
427 |
|
428 |
Using the experimental values for the elastic constants for 30 |
429 |
\AA\ Au particles at 300K, the low-frequency longitudinal (breathing) |
430 |
mode should have a period of 2.19 ps while the low-frequency |
431 |
transverse (toroidal) mode should have a period of 2.11 ps. Although |
432 |
the actual calculated frequencies in the simulations are off of these |
433 |
values, the difference in the periods (0.08 ps) is approximately half |
434 |
of the splitting observed room-temperature simulations. This, |
435 |
therefore, may be an explanation for the low-temperature splitting in |
436 |
Fig. \ref{fig:Period}. |
437 |
|
438 |
We note that Cerullo {\it et al.} used a similar treatment to obtain |
439 |
the low frequency longitudinal frequencies for crystalline |
440 |
semiconductor nanoparticles,\cite{Cerullo1999} and Simon and Geller |
441 |
have investigated the effects of ensembles of particle size on the |
442 |
Lamb mode using the classical Lamb theory results for isotropic |
443 |
elastic spheres.\cite{Simon2001} |
444 |
|
445 |
\subsection{Melted and Partially-Melted Particles} |
446 |
|
447 |
Hartland {\it et al.} have extended the Lamb analysis to include |
448 |
surface stress ($\gamma$).\cite{HartlandG.V._jp0276092} In this case, the |
449 |
transcendental equation that must be solved to obtain the |
450 |
low-frequency longitudinal mode is |
451 |
\begin{equation} |
452 |
\eta \cot \eta = 1 - \frac{\eta^{2} c_{l}^{2}}{4 c_{l}^{2} - |
453 |
2 \gamma / (\rho R)}. |
454 |
\end{equation} |
455 |
In ideal liquids, inclusion of the surface stress is vital since the |
456 |
transverse speed of sound ($c_{t}$) vanishes. Interested readers |
457 |
should consult Hartland {\it et al.}'s paper for more details on the |
458 |
extension to liquid-like particles, but the primary result is that the |
459 |
vibrational period of the breathing mode for liquid droplets may be |
460 |
written |
461 |
\begin{equation} |
462 |
\tau = \frac{2 R}{c_{l}(l)} |
463 |
\end{equation} |
464 |
where $c_{l}(l)$ is the longitudinal speed of sound in the liquid. |
465 |
Iida and Guthrie list the speed of sound in liquid Au metal as |
466 |
\begin{equation} |
467 |
c_{l}(l) = 2560 - 0.55 (T - T_{m}) (\mbox{m s}^{-1}) |
468 |
\end{equation} |
469 |
where $T_{m}$ is the melting temperature.\cite{Iida1988} A molten 35 |
470 |
\AA\ particle just above $T_{m}$ would therefore have a vibrational |
471 |
period of 2.73 ps, and this would be markedly different from the |
472 |
vibrational period just below $T_{m}$ if the melting transition were |
473 |
sharp. |
474 |
|
475 |
We know from our calculations of $C_{p}$ that the complete melting of |
476 |
the particles is {\it not} sharp, and should take longer than the 40 |
477 |
ps observation time. There are therefore two explanations which are |
478 |
commensurate with our observations. |
479 |
\begin{enumerate} |
480 |
\item The melting may occur at some time partway through observation |
481 |
of the response to instantaneous heating. The early part |
482 |
of the simulation would then show a higher-frequency breathing mode |
483 |
than would be evident during the latter parts of the simulation. |
484 |
\item The melting may take place by softening the outer layers of the |
485 |
particle first, followed by a melting of the core at higher |
486 |
temperatures. The liquid-like outer layer would then contribute a |
487 |
lower frequency component than the interior of the particle. |
488 |
\end{enumerate} |
489 |
|
490 |
The second of these explanations is consistent with the core-shell |
491 |
melting hypothesis advanced by Hartland {\it et al.} to explain their |
492 |
laser heating experiments.\cite{HartlandG.V._jp0276092} At this stage, our |
493 |
simulations cannot distinguish between the two hypotheses. One |
494 |
possible avenue for future work would be the computation of a |
495 |
radial-dependent order parameter to help evaluate whether the |
496 |
solid-core/liquid-shell structure exists in our simulation. |