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root/group/trunk/COonPt/COonPtAu.tex
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Table 4, diffusion constants updated

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# User Rev Content
1 gezelter 3808 \documentclass[11pt]{article}
2     \usepackage{amsmath}
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4 jmichalk 3802 \usepackage{setspace}
5 gezelter 3808 \usepackage{endfloat}
6     \usepackage{caption}
7     %\usepackage{tabularx}
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10     %\usepackage{booktabs}
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18     9.0in \textwidth 6.5in \brokenpenalty=10000
19 jmichalk 3802
20 gezelter 3808 % double space list of tables and figures
21     \AtBeginDelayedFloats{\renewcommand{\baselinestretch}{1.66}}
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26     \bibpunct{[}{]}{,}{n}{}{;}
27     \bibliographystyle{achemso}
28    
29     \begin{document}
30    
31    
32 jmichalk 3802 %%
33     %Introduction
34     % Experimental observations
35     % Previous work on Pt, CO, etc.
36     %
37     %Simulation Methodology
38     % FF (fits and parameters)
39     % MD (setup, equilibration, collection)
40     %
41     % Analysis of trajectories!!!
42     %Discussion
43     % CO preferences for specific locales
44     % CO-CO interactions
45     % Differences between Au & Pt
46     % Causes of 2_layer reordering in Pt
47     %Summary
48     %%
49    
50     %Title
51 gezelter 3808 \title{Investigation of the Pt and Au 557 Surface Reconstructions
52     under a CO Atmosphere}
53     \author{Joseph R. Michalka, Patrick W. MacIntyre and J. Daniel
54     Gezelter\footnote{Corresponding author. \ Electronic mail: gezelter@nd.edu} \\
55     Department of Chemistry and Biochemistry,\\
56     University of Notre Dame\\
57     Notre Dame, Indiana 46556}
58 jmichalk 3802 %Date
59     \date{Dec 15, 2012}
60     %authors
61 gezelter 3808
62 jmichalk 3802 % make the title
63     \maketitle
64    
65 gezelter 3808 \begin{doublespace}
66 jmichalk 3802
67 gezelter 3808 \begin{abstract}
68 jmichalk 3802
69 gezelter 3808 \end{abstract}
70 jmichalk 3802
71 gezelter 3808 \newpage
72    
73    
74 jmichalk 3802 \section{Introduction}
75     % Importance: catalytically active metals are important
76     % Sub: Knowledge of how their surface structure affects their ability to catalytically facilitate certain reactions is growing, but is more reactionary than predictive
77     % Sub: Designing catalysis is the future, and will play an important role in numerous processes (ones that are currently seen to be impractical, or at least inefficient)
78     % Theory can explore temperatures and pressures which are difficult to work with in experiments
79     % Sub: Also, easier to observe what is going on and provide reasons and explanations
80     %
81    
82 gezelter 3808 Industrial catalysts usually consist of small particles exposing
83     different atomic terminations that exhibit a high concentration of
84     step, kink sites, and vacancies at the edges of the facets. These
85 jmichalk 3810 sites are thought to be the locations of catalytic
86 gezelter 3808 activity.\cite{ISI:000083038000001,ISI:000083924800001} There is now
87     significant evidence to demonstrate that solid surfaces are often
88     structurally, compositionally, and chemically {\it modified} by
89     reactants under operating conditions.\cite{Tao2008,Tao:2010,Tao2011}
90     The coupling between surface oxidation state and catalytic activity
91     for CO oxidation on Pt, for instance, is widely
92     documented.\cite{Ertl08,Hendriksen:2002} Despite the well-documented
93     role of these effects on reactivity, the ability to capture or predict
94     them in atomistic models is currently somewhat limited. While these
95     effects are perhaps unsurprising on the highly disperse, multi-faceted
96     nanoscale particles that characterize industrial catalysts, they are
97     manifest even on ordered, well-defined surfaces. The Pt(557) surface,
98     for example, exhibits substantial and reversible restructuring under
99     exposure to moderate pressures of carbon monoxide.\cite{Tao:2010}
100 jmichalk 3802
101 gezelter 3808 This work is part of an ongoing effort to understand the causes,
102     mechanisms and timescales for surface restructuring using molecular
103     simulation methods. Since the dynamics of the process is of
104     particular interest, we utilize classical molecular dynamic methods
105     with force fields that represent a compromise between chemical
106     accuracy and the computational efficiency necessary to observe the
107     process of interest.
108    
109 jmichalk 3811 Since restructuring occurs as a result of specific interactions of the catalyst
110     with adsorbates, two metals systems exposed to the same adsorbate, CO,
111     were examined in this work. The Pt(557) surface has already been shown to
112 jmichalk 3812 reconstruct under certain conditions. The Au(557) surface, because of gold's
113     weaker interaction with CO, is less likely to undergo such a large reconstruction.
114 jmichalk 3811 %Platinum molecular dynamics
115     %gold molecular dynamics
116 jmichalk 3802
117    
118    
119    
120 jmichalk 3811
121    
122 jmichalk 3802 \section{Simulation Methods}
123 gezelter 3808 The challenge in modeling any solid/gas interface problem is the
124     development of a sufficiently general yet computationally tractable
125     model of the chemical interactions between the surface atoms and
126     adsorbates. Since the interfaces involved are quite large (10$^3$ -
127     10$^6$ atoms) and respond slowly to perturbations, {\it ab initio}
128     molecular dynamics
129     (AIMD),\cite{KRESSE:1993ve,KRESSE:1993qf,KRESSE:1994ul} Car-Parrinello
130     methods,\cite{CAR:1985bh,Izvekov:2000fv,Guidelli:2000fy} and quantum
131     mechanical potential energy surfaces remain out of reach.
132     Additionally, the ``bonds'' between metal atoms at a surface are
133     typically not well represented in terms of classical pairwise
134     interactions in the same way that bonds in a molecular material are,
135     nor are they captured by simple non-directional interactions like the
136     Coulomb potential. For this work, we have been using classical
137     molecular dynamics with potential energy surfaces that are
138     specifically tuned for transition metals. In particular, we use the
139     EAM potential for Au-Au and Pt-Pt interactions, while modeling the CO
140     using a model developed by Straub and Karplus for studying
141     photodissociation of CO from myoglobin.\cite{Straub} The Au-CO and Pt-CO
142     cross interactions were parameterized as part of this work.
143    
144     \subsection{Metal-metal interactions}
145     Many of the potentials used for classical simulation of transition
146     metals are based on a non-pairwise additive functional of the local
147     electron density. The embedded atom method (EAM) is perhaps the best
148     known of these
149     methods,\cite{Daw84,Foiles86,Johnson89,Daw89,Plimpton93,Voter95a,Lu97,Alemany98}
150     but other models like the Finnis-Sinclair\cite{Finnis84,Chen90} and
151     the quantum-corrected Sutton-Chen method\cite{QSC,Qi99} have simpler
152     parameter sets. The glue model of Ercolessi {\it et al.} is among the
153     fastest of these density functional approaches.\cite{Ercolessi88} In
154     all of these models, atoms are conceptualized as a positively charged
155     core with a radially-decaying valence electron distribution. To
156     calculate the energy for embedding the core at a particular location,
157     the electron density due to the valence electrons at all of the other
158     atomic sites is computed at atom $i$'s location,
159     \begin{equation*}
160     \bar{\rho}_i = \sum_{j\neq i} \rho_j(r_{ij})
161     \end{equation*}
162     Here, $\rho_j(r_{ij})$ is the function that describes the distance
163     dependence of the valence electron distribution of atom $j$. The
164     contribution to the potential that comes from placing atom $i$ at that
165     location is then
166     \begin{equation*}
167     V_i = F[ \bar{\rho}_i ] + \sum_{j \neq i} \phi_{ij}(r_{ij})
168     \end{equation*}
169     where $F[ \bar{\rho}_i ]$ is an energy embedding functional, and
170     $\phi_{ij}(r_{ij})$ is an pairwise term that is meant to represent the
171     overlap of the two positively charged cores.
172 jmichalk 3807
173 gezelter 3808 The {\it modified} embedded atom method (MEAM) adds angular terms to
174     the electron density functions and an angular screening factor to the
175     pairwise interaction between two
176     atoms.\cite{BASKES:1994fk,Lee:2000vn,Thijsse:2002ly,Timonova:2011ve}
177     MEAM has become widely used to simulate systems in which angular
178     interactions are important (e.g. silicon,\cite{Timonova:2011ve} bcc
179     metals,\cite{Lee:2001qf} and also interfaces.\cite{Beurden:2002ys})
180     MEAM presents significant additional computational costs, however.
181 jmichalk 3807
182 gezelter 3808 The EAM, Finnis-Sinclair, MEAM, and the Quantum Sutton-Chen potentials
183     have all been widely used by the materials simulation community for
184     simulations of bulk and nanoparticle
185     properties,\cite{Chui:2003fk,Wang:2005qy,Medasani:2007uq}
186     melting,\cite{Belonoshko00,sankaranarayanan:155441,Sankaranarayanan:2005lr}
187     fracture,\cite{Shastry:1996qg,Shastry:1998dx} crack
188     propagation,\cite{BECQUART:1993rg} and alloying
189     dynamics.\cite{Shibata:2002hh} All of these potentials have their
190     strengths and weaknesses. One of the strengths common to all of the
191     methods is the relatively large library of metals for which these
192     potentials have been
193     parameterized.\cite{Foiles86,PhysRevB.37.3924,Rifkin1992,mishin99:_inter,mishin01:cu,mishin02:b2nial,zope03:tial_ap,mishin05:phase_fe_ni}
194    
195 jmichalk 3802 \subsection{CO}
196 gezelter 3808 Since one explanation for the strong surface CO repulsion on metals is
197     the large linear quadrupole moment of carbon monoxide, the model
198     chosen for this molecule exhibits this property in an efficient
199     manner. We used a model first proposed by Karplus and Straub to study
200     the photodissociation of CO from myoglobin.\cite{Straub} The Straub and
201     Karplus model is a rigid three site model which places a massless M
202 jmichalk 3812 site at the center of mass along the CO bond. The geometry used along
203     with the interaction parameters are reproduced in Table 1. The effective
204     dipole moment, calculated from the assigned charges, is still
205 jmichalk 3810 small (0.35 D) while the linear quadrupole (-2.40 D~\AA) is close
206 jmichalk 3812 to the experimental (-2.63 D~\AA)\cite{QuadrupoleCO} and quantum
207     mechanical predictions (-2.46 D~\AA)\cite{QuadrupoleCOCalc}.
208 jmichalk 3802 %CO Table
209     \begin{table}[H]
210 jmichalk 3811 \caption{Positions, $\sigma$, $\epsilon$ and charges for CO geometry and self-interactions\cite{Straub}. Distances are in \AA~, energies are in kcal/mol, and charges are in $e$.}
211 jmichalk 3802 \centering
212 jmichalk 3810 \begin{tabular}{| c | c | ccc |}
213 jmichalk 3802 \hline
214 jmichalk 3810 \multicolumn{5}{|c|}{\textbf{Self-Interactions}}\\
215 jmichalk 3802 \hline
216 jmichalk 3814 & {\it z} & $\sigma$ & $\epsilon$ & q\\
217 jmichalk 3802 \hline
218 jmichalk 3814 \textbf{C} & -0.6457 & 0.0262 & 3.83 & -0.75 \\
219     \textbf{O} & 0.4843 & 0.1591 & 3.12 & -0.85 \\
220     \textbf{M} & 0.0 & - & - & 1.6 \\
221 jmichalk 3802 \hline
222     \end{tabular}
223     \end{table}
224 gezelter 3808
225 jmichalk 3802 \subsection{Cross-Interactions}
226    
227 jmichalk 3811 One hurdle that must be overcome in classical molecular simulations
228 jmichalk 3812 is the proper parameterization of the potential interactions present
229     in the system. Since the adsorption of CO onto a platinum surface has been
230     the focus of many experimental \cite{Yeo, Hopster:1978, Ertl:1977, Kelemen:1979}
231     and theoretical studies \cite{Beurden:2002ys,Pons:1986,Deshlahra:2009,Feibelman:2001,Mason:2004}
232     there is a large amount of data in the literature to fit too. We started with parameters
233     reported by Korzeniewski et al. \cite{Pons:1986} and then
234 jmichalk 3811 modified them to ensure that the Pt-CO interaction favored
235 jmichalk 3812 an atop binding position for the CO upon the Pt surface. This
236     constraint led to the binding energies being on the higher side
237     of reported values. Following the method laid out by Korzeniewski,
238     the Pt-C interaction was fit to a strong Lennard-Jones 12-6
239     interaction to mimic binding, while the Pt-O interaction
240     was parameterized to a Morse potential with a large $r_o$
241     to contribute a weak repulsion. The resultant potential-energy
242     surface suitably recovers the calculated Pt-C bond length ( 1.6\AA)\cite{Beurden:2002ys} and affinity
243 jmichalk 3811 for the atop binding position.\cite{Deshlahra:2012, Hopster:1978}
244    
245 jmichalk 3812 %where did you actually get the functionals for citation?
246     %scf calculations, so initial relaxation was of the four layers, but two layers weren't kept fixed, I don't think
247     %same cutoff for slab and slab + CO ? seems low, although feibelmen had values around there...
248     The Au-C and Au-O interaction parameters were also fit to a Lennard-Jones
249     and Morse potential respectively, to reproduce Au-CO binding energies.
250     These energies were obtained from quantum calculations carried out using
251     the PBE GGA exchange-correlation functionals\cite{Perdew_GGA} for gold, carbon, and oxygen
252     constructed by Rappe, Rabe, Kaxiras, and Joannopoulos. \cite{RRKJ_PP}.
253     All calculations were run using the {\sc Quantum ESPRESSO} package. \cite{QE-2009}
254     First, a four layer slab of gold comprised of 32 atoms displaying a (111) surface was
255     converged using a 4X4X4 grid of Monkhorst-Pack \emph{k}-points.\cite{Monkhorst:1976}
256     The kinetic energy of the wavefunctions were truncated at 20 Ry while the
257     cutoff for the charge density and potential was set at 80 Ry. This relaxed
258     gold slab was then used in numerous single point calculations with CO at various heights
259     to create a potential energy surface for the Au-CO interaction.
260 jmichalk 3811
261 jmichalk 3812 %Hint at future work
262     The fit parameter sets employed in this work are shown in Table 2 and their
263     reproduction of the binding energies are displayed in Table 3. Currently,
264     charge transfer is not being treated in this system, however, that is a goal
265     for future work as the effect has been seen to affect binding energies and
266     binding site preferences. \cite{Deshlahra:2012}
267 jmichalk 3811
268    
269    
270 jmichalk 3812
271 gezelter 3808 \subsection{Construction and Equilibration of 557 Metal interfaces}
272 jmichalk 3802
273 jmichalk 3813 Our model systems are composed of approximately 4000 metal atoms
274     cut along the 557 plane so that they are periodic in the {\it x} and {\it y}
275     directions exposing the 557 plane in the {\it z} direction. Runs at various
276     temperatures ranging from 300~K to 1200~K were started with the intent
277     of viewing relative stability of the surface when CO was not present in the
278     system. Owing to the different melting points (1337~K for Au and 2045~K for Pt),
279     the bare crystal systems were initially run in the Canonical ensemble at
280     800~K and 1000~K respectively for 100 ps. Various amounts of CO were
281     placed in the vacuum region, which upon full adsorption to the surface
282     corresponded to 5\%, 25\%, 33\%, and 50\% coverages. These systems
283     were again allowed to reach thermal equilibrium before being run in the
284     microcanonical ensemble. All of the systems examined in this work were
285     run for at least 40 ns. A subset that were undergoing interesting effects
286     have been allowed to continue running with one system approaching 200 ns.
287     All simulations were run using the open source molecular dynamics package, OpenMD. \cite{Ewald, OOPSE}
288 jmichalk 3802
289    
290 gezelter 3808
291    
292    
293    
294 jmichalk 3802 %\subsection{System}
295     %Once equilibration was reached, the systems were exposed to various sub-monolayer coverage of CO: $0, \frac{1}{10}, \frac{1}{4}, \frac{1}{3},\frac{1}{2}$. The CO was started many \AA~above the surface with random velocity and rotational velocity vectors sampling from a Gaussian distribution centered on the temperature of the equilibrated metal block. Full adsorption occurred over the period of approximately 10 ps for Pt, while the binding energy between Au and CO is smaller and led to an incomplete adsorption. The metal-metal interactions were treated using the Embedded Atom Method while the Pt-CO and Au-CO interactions were fit to experimental data and quantum calculations. The raised temperature helped shorten the length of the simulations by allowing the activation barrier of reconstruction to be more easily overcome. A few runs at lower temperatures showed the very beginnings of reconstructions, but their simulation lengths limited their usefulness.
296    
297    
298     %Table of Parameters
299     %Pt Parameter Set 9
300     %Au Parameter Set 35
301     \begin{table}[H]
302     \caption{Best fit parameters for metal-adsorbate interactions. Distances are in \AA~and energies are in kcal/mol}
303     \centering
304     \begin{tabular}{| c | cc | c | ccc |}
305     \hline
306     \multicolumn{7}{| c |}{\textbf{Cross-Interactions} }\\
307     \hline
308     & $\sigma$ & $\epsilon$ & & $r$ & $D$ & $\gamma$ \\
309     \hline
310     \textbf{Pt-C} & 1.3 & 15 & \textbf{Pt-O} & 3.8 & 3.0 & 1 \\
311     \textbf{Au-C} & 1.9 & 6.5 & \textbf{Au-O} & 3.8 & 0.37 & 0.9\\
312    
313     \hline
314     \end{tabular}
315     \end{table}
316    
317     %Table of energies
318     \begin{table}[H]
319 jmichalk 3805 \caption{Adsorption energies in eV}
320 jmichalk 3802 \centering
321     \begin{tabular}{| c | cc |}
322     \hline
323     & Calc. & Exp. \\
324     \hline
325 jmichalk 3811 \textbf{Pt-CO} & -1.9 & -1.4~\cite{Kelemen:1979}-- -1.9~\cite{Yeo} \\
326 jmichalk 3802 \textbf{Au-CO} & -0.39 & -0.44~\cite{TPD_Gold_CO} \\
327     \hline
328     \end{tabular}
329     \end{table}
330    
331    
332    
333    
334    
335    
336     % Just results, leave discussion for discussion section
337     \section{Results}
338     \subsection{Diffusion}
339 jmichalk 3806 While an ideal metallic surface is unlikely to experience much surface diffusion, high-index surfaces have large numbers of low-coordinated atoms which have a much easier time overcoming the energetic barriers limiting diffusion, leading to easier surface reconstructions. Surface movement was divided between the parallel ($\parallel$) and perpendicular ($\perp$) directions relative to the step edge. We were then able to calculate diffusion constants as a function of CO coverage. As can be seen in Table 4, the presence and amount of CO directly affects the diffusion constants of surface platinum atoms. The presence of two 50\% coverage systems is to show how the diffusion process is affected by time. The majority of the systems were run for approximately 50 ns while the half monolayer system been running continuously. The lowered diffusion constant at longer run times will be examined in-depth in the discussion section.
340 jmichalk 3802
341     %Table of Diffusion Constants
342     %Add gold?M
343     \begin{table}[H]
344 jmichalk 3814 \caption{Platinum and gold diffusion constants parallel and perpendicular to the 557 step edge. As the coverage increases, the diffusion constants parallel and perpendicular to the step edge both initially increase and then decrease slightly. Units are \AA\textsuperscript{2}/ns}
345 jmichalk 3802 \centering
346 jmichalk 3814 \begin{tabular}{| c | cc | cc | c |}
347 jmichalk 3802 \hline
348 jmichalk 3814 \textbf{System Coverage} & $\mathbf{D}_{\parallel}$ & $\mathbf{D}_{\perp}$ & $\mathbf{D}_{\parallel}$ & $\mathbf{D}_{\perp}$ & \textbf{Time (ns)}\\
349 jmichalk 3802 \hline
350 jmichalk 3814 &\multicolumn{2}{c|}{\textbf{Platinum}}&\multicolumn{2}{c|}{\textbf{Gold}} & \\
351 jmichalk 3802 \hline
352 jmichalk 3814 50\% & 4.32 $\pm$ 0.02 & 1.185 $\pm$ 0.008 & 1.72 $\pm$ 0.02 & 0.455 $\pm$ 0.006 & 40 \\
353     33\% & 5.18 $\pm$ 0.03 & 1.999 $\pm$ 0.005 & 1.95 $\pm$ 0.02 & 0.337 $\pm$ 0.004 & 40 \\
354     25\% & 5.01 $\pm$ 0.02 & 1.574 $\pm$ 0.004 & 1.26 $\pm$ 0.03 & 0.377 $\pm$ 0.006 & 40 \\
355     5\% & 3.61 $\pm$ 0.02 & 0.355 $\pm$ 0.002 & 1.84 $\pm$ 0.03 & 0.169 $\pm$ 0.004 & 40 \\
356     0\% & 3.27 $\pm$ 0.02 & 0.147 $\pm$ 0.004 & 1.50 $\pm$ 0.02 & 0.194 $\pm$ 0.002 & 40 \\
357 jmichalk 3802 \hline
358     \end{tabular}
359     \end{table}
360    
361    
362    
363     %Discussion
364     \section{Discussion}
365 jmichalk 3806 Comparing the results from simulation to those reported previously by Tao et al. the similarities in the platinum and CO system are quite strong. As shown in figure 1, the simulated platinum system under a CO atmosphere will restructure slightly by doubling the terrace heights. The restructuring appears to occur slowly, one to two platinum atoms at a time. Looking at individual snapshots, these adatoms tend to either rise on top of the plateau or break away from the step edge and then diffuse perpendicularly to the step direction until reaching another step edge. This combination of growth and decay of the step edges appears to be in somewhat of a state of dynamic equilibrium. However, once two previously separated edges meet as shown in figure 1.B, this point tends to act as a focus or growth point for the rest of the edge to meet up, akin to that of a zipper. From the handful of cases where a double layer was formed during the simulation. Measuring from the initial appearance of a growth point, the double layer tends to be fully formed within $\sim$~35 ns.
366 jmichalk 3802
367     \subsection{Diffusion}
368     As shown in the results section, the diffusion parallel to the step edge tends to be much faster than that perpendicular to the step edge. Additionally, the coverage of CO appears to play a slight role in relative rates of diffusion, as shown in Table 4. Thus, the bottleneck of the double layer formation appears to be the initial formation of this growth point, which seems to be somewhat of a stochastic event. Once it appears, parallel diffusion, along the now slightly angled step edge, will allow for a faster formation of the double layer than if the entire process were dependent on only perpendicular diffusion across the plateaus. Thus, the larger $D_{\perp}$, the more likely a growth point is to be formed. One driving force behind this reconstruction appears to be the lowering of surface energy that occurs by doubling the terrace widths. (I'm not really proving this... I have the surface flatness to show it, but surface energy?)
369     \\
370     \\
371     %Evolution of surface
372     \begin{figure}[H]
373     \includegraphics[scale=0.5]{ProgressionOfDoubleLayerFormation_yellowCircle.png}
374     \caption{Four snapshots at various times a) 258 ps b) 19 ns c) 31.2 ns d) 86.1 ns. Slight disruption of the surface occurs fairly quickly. However, the doubling of the layers seems to be very dependent on the initial linking of two separate step edges. The focal point in b, appears to be a growth spot for the rest of the double layer.}
375     \end{figure}
376    
377    
378    
379    
380     %Peaks!
381     \includegraphics[scale=0.25]{doublePeaks_noCO.png}
382     \section{Conclusion}
383    
384    
385 gezelter 3808 \section{Acknowledgments}
386     Support for this project was provided by the National Science
387     Foundation under grant CHE-0848243 and by the Center for Sustainable
388     Energy at Notre Dame (cSEND). Computational time was provided by the
389     Center for Research Computing (CRC) at the University of Notre Dame.
390 jmichalk 3802
391 gezelter 3808 \newpage
392     \bibliography{firstTryBibliography}
393     \end{doublespace}
394     \end{document}