From: hackbard Date: Wed, 28 Apr 2004 10:07:59 +0000 (+0000) Subject: first fixes! X-Git-Url: https://hackdaworld.org/gitweb/?a=commitdiff_plain;h=cd7fd3bd9cd10d673ff2d7ab6da4df13435dd5fa;p=lectures%2Flatex.git first fixes! --- diff --git a/nlsop/nlsop_emrs_2004.tex b/nlsop/nlsop_emrs_2004.tex index b36710b..3a8d6d2 100644 --- a/nlsop/nlsop_emrs_2004.tex +++ b/nlsop/nlsop_emrs_2004.tex @@ -52,17 +52,17 @@ Abstract } -We developed a Monte-Carlo-Simulation code based on a simple model that tries to explain the selforganization process leading to periodic arrays of nanometric amorphous precipitates by ion irradiation. In the present work we focus on high-dose carbon implantation into silicon. Due to the compressive stress caused by amorphous $SiC_x$ on the $Si$ host lattice, which is relaxing in vertical direction as this process occurs near the target surface, preferential amorphization of the stressed regions between amorphous inclusions during continued implantation is taking place. This, together with the diffusion of carbon into the amorphous volumes, to reduce the carbon supersaturation in the crystalline volumes leads to a uniform configuration of amorphous, lamellar preciptates with high carbon concentration. The simulation is able to reproduce results gained by cross-sectional TEM measurements of high-dose carbon implanted silicon. Adjusting the simulation parameters we found a configuration matching the depth distribution and the average length of these amorphous arrays. Furthermore conditions can be specified as a necessity for the selforganization process and information about the configuration in the layers of the target, which is not easily measurable is obtained. +Ion irradiation of materials which undergo a drastic density change upon amorphization have been shown to exhibit selforganized nanometric structures of the amorphous phase in the crystalline host lattice. In order to better understand that process, a Monte-Carlo-Simulation code based on a simple model is developed. In the present work we focus on high-dose carbon implantation into silicon. The simulation is able to reproduce results gained by cross-sectional TEM measurements of high-dose carbon implanted silicon. Conditions can be specified as a necessity for the selforganization process and compositional and structural information is obtained about the state during the ordering process which is difficult to be measured. \newpage \section{Introduction} -Formation of nanometric selforganized ordered amorphous, lamellar precipitates is observed at certain conditions at high-dose implantation of impurity atoms. The present work focuses on high-dose carbon implantation into silicon. Typical doses are $1-10 \times 10^{17} cm^{-2}$ with an ion energy of $180 keV$. Temperatures below $400 \, ^{\circ} \mathrm{C}$ are needed. A model describing the selforganization process will be introduced, followed by a review of the implementation of the simulation code. Results of the Monte-Carlo-Simulation will be compared to cross-sectional TEM measurements. Necessary conditions for observing lamellar precipitates are named and some additional, difficult to measure information like the carbon distribution and amorphous/crystalline structure in the layers of the target were obtained. +Formation of nanometric, selforganized, amorphous, lamellar precipitates, as a result of high-dose implantation of impurity ions is observed at certain conditions for various ion/target combinations \cite{1}\cite{2}\cite{3}. The present work focuses on high-dose carbon implantation into silicon. This is surprising, since high-dose implantation, commonly used to create burried compound layers for semiconductor devices, usually result in the formation of unordered ensembles of precipitates with a brought size distribution \cite{4}. Typical doses are $1-10 \times 10^{17} cm^{-2}$ with an ion energy of $180 \, keV$ and substrate temperatures below $400 \, ^{\circ} \mathrm{C}$. An example of such a lamellar structure is given in the cross sectional transmission electron microscopy (XTEM) in Figure \ref{xtem}. A model describing the selforganization process is introduced in this article. This model is used to implement a Monte-Carlo-Simulation code which reproduces the amorphization and precipitation process. Simulation results will be compared with XTEM measurements. Necessary conditions for creating lamellar precipitates are identified and some additional, difficult to measure information, like the carbon distribution and amorphous/crystalline structure in the layers of the target are obtained. \newpage \section{Model} -A model describing the formation of nanometric selforganized ordered amorphous $SiC_x$ inclusions was introduced in \cite{1}\cite{2}. Figure \ref{1} shows the evolution into ordered lamellae with increasing dose. +A model describing the formation of nanometric, selforganized, regularly arranged, amorphous $SiC_x$ inclusions was introduced in \cite{5}. Figure \ref{model} shows the evolution into ordered lamellae with increasing dose. %\begin{figure}[!h] %\begin{center} @@ -71,18 +71,24 @@ A model describing the formation of nanometric selforganized ordered amorphous $ %\end{center} %\end{figure} -As a result of the supersaturation of carbon atoms in silicon there is a nucleation of spherical $SiC_x$-precipitates. The almost $20\%$ lattice misfit of the diamond lattice of crystalline silicon ($c-Si$, $a=0.543 \, nm$) to the cubic polytype of $SiC$ ($3C-SiC$, $a=0.436 \, nm$) causes a large interfacial energy, which could be reduced if one of the participants exists in the amorphous phase. It has been shown \cite{1} that $SiC$ turns into the amorphous phase. In fact, amorphous silicon ($a-Si$) would recrystallize under the granted conditions due to ion beam induced recrystallization. Stoichiometric $SiC$ has a smaller atomic density than $c-Si$. The same is assumed for substoichiometric $a-SiC_x$. Hence the amorphous $SiC_x$ tends to expand, and as a result compressive stress is applied on the $Si$ host lattice. As the process occurs near the targets surface, the stress is relaxing in vertical direction and there is just lateral stress remaining. Thus volumes between amorphous inclusions will more likely turn into amorphous phase, as the stress hampers the reassembly of the atoms on their lattice site, while amorphous volumes located in a crystalline neighbourhood will recrystallize in all probability. In addition carbon diffuses to the amorphous volumes in order to reduce the supersaturation of carbon in the crystalline volumes. As a consequence the amorphous volumes hold plenty of carbon. +As a result of supersaturation of carbon atoms in silicon at high concentrations there is a nucleation of spherical $SiC_x$ precipitates. Carbon implantations at much higher implantation temperatures usually lead to the precipitation of cubic $SiC$ ($3C-SiC$, $a=0.436 \, nm$). The lattice misfit of almost $20\%$ of $3C-SiC$ causes a large interfacial energy with the crystalline $Si$ matrix \cite{6}. This energy could be reduced if one of the phases exists in the amorphous state. Energy filtered XTEM studies in \cite{4} have revealed that the amorphous phase is more carbon-rich than the crystalline surrounding. In addition, annealing experiments have shown that the amorphous phase is stable against crystallization at temperatures far above the recrystallization temperatures of amorphous $Si$. Prolonged annealing at $900 \, ^{\circ} \mathrm{C}$ turns the lamellae into ordered chains of amrphous and crystalline ($3C-SiC$) nanoprecipitates \cite{5}, demonstrating again the carbon-rich nature of amorphous inclusions. Since at the implantation conditions chosen, pure $a-Si$ would recrystallize by ion beam induced crystallization \cite{7}, it is understandable that it is the carbon-rich side of the two phases which occurs in the amorphous state in the present phase separation process. + +Stoichiometric $SiC$ has a smaller atomic density than $c-Si$. A reduced density is also assumed for substoichiometric $a-SiC_x$. Hence the amorphous $SiC_x$ tends to expand, and as a result compressive stress is applied on the $Si$ host lattice. As the process occurs near the target surface, stress is relaxing in vertical direction and there is mainly lateral stress remaining. Thus volumes between amorphous inclusions will more likely turn into an amorphous phase, as the stress hampers the rearrangement of atoms on regular lattice sites. In contrast $a-Si$ volumes located in a crystalline neighbourhood will recrystallize in all probability. Carbon is assumed to diffuse from the crystalline to the amorphous volumes in order to reduce the supersaturation of carbon in the crystalline interstices. As a consequence the amorphous volumes accumulate carbon. \newpage \section{Simulation} -Before discussing the implementation some assumptions and approximations have to be made. Figure \ref{2} shows the stopping powers and carbon concentration profile calculated by TRIM. The depth region we are interested in is between $0-300 \, nm$, the region between the surface of the target and the beginning of the continuous amorphous $SiC_x$ layer (from now on called simulation window), where the nuclear stopping power and the implantation profile can be approximated by a linear function of depth. Furthermore the probability of amorphization is assumed to be proportional to the nuclear stopping power. A local probability of amorphization somewhere in the target is composed of three parts, the ballistic, carbon-induced and stress-induced amorphization. The ballistic amorphization is proportional to the nuclear stopping power, as mentioned before. The carbon-induced amorphization is a linear function of the local carbon concentration. The stress-induced amorphization is proportional to the compressive stress applied by the amorphous neighbours. Thus the probability of a crystalline volume getting amorphous can be calculated as follows, +Before discussing the implementation some assumptions and approximations have to be made. Figure \ref{trim} shows the stopping powers and carbon concentration profile calculated by TRIM \cite{8}. The depth region we are interested in is between $0-300 \, nm$ (furtheron called simulation window), the region between the target surface and the beginning of the continuous amorphous $SiC_x$ layer at the implantation conditions of Figure \ref{xtem}. The nuclear stopping power and the implantation profile can be approximated by a linear function of depth within the simulation window. + +The target is devided into $64 \times 64 \times 100$ cells with a side length of $3 \, nmm$. Ech of it has a state (crystalline/amorphous) and keeps the local carbon concentration. The cell is addressed by a position vector $r^{\to}=(x,y,z)$, where $x$, $y$, $z$ are integers. + +The probability of amorphization is assumed to be proportional to the nuclear stopping power. A local probability of amorphization at any point in the target is composed of three contributions, the ballistic amorphization, a carbon-induced and a stress-induced amorphization. The ballistic amorphization is proportional to the nuclear stopping power, as mentioned before. The carbon-induced amorphization is a linear function of the local carbon concentration. The stress-induced amorphization is proportional to the compressive stress originating from the amorphous volumes in the vicinity, the stress amplitude decreasing with the square of distance $d=|r^{\to}-r^{\to}|$. Thus the probability of a crystalline volume getting amorphous can be calculated as \[ - p_{c \rightarrow a} = b_{ap} + a_{cp} \times c^{local}_{carbon} + \sum_{amorphous \, neighbours} \frac{a_{ap} \times c_{carbon}}{distance^2} + p_{c \rightarrow a}(r^{\to}) = p_{b} + p_{c} \times c_{carbon}(r^{\to}) + \sum_{amorphous \, neighbours} \frac{p_{s} \times c_{carbon}(r^{\to})}{d^2} \] -with $b_{ap}$, $a_{cp}$ and $a_{ap}$ being parameters of the simulation to weight the three different ways of amorphization. The probability of an amorphous volume turning crystalline should behave contrary to $p_{c \rightarrow a}$ and thus is assumed to $p_{a \rightarrow c} = 1 - p_{c \rightarrow a}$. +with $p_{b}$, $p_{c}$ and $p_{s}$ being simulation parameters to weight the three different mechanisms of amorphization. The probability $p_{a \rightarrow c}$ of an amorphous volume to turn crystalline should behave contrary to $p_{c \rightarrow a}$ and is thus assumed as $p_{a \rightarrow c} = 1 - p_{c \rightarrow a}$. -Figure \ref{3} shows the target devided into $64 \times 64 \times 100$ volumes with a side length of $3 \, nm$. Each of it has a state (crystalline/amorphous) and keeps the local carbon concentration. The simulation algorithm consists of three parts, the amorphization/recrystallization process, the carbon-incorporation process and finally the diffusion process. +The simulation algorithm consists of three parts, the amorphization/recrystallization process, the carbon-incorporation and finally the carbon diffusion. For the amorphization/recrystallization process, random coordinates are computed to specify the volume which is hit by an implanted carbon ion. The two random numbers corresponding to the $x$ and $y$ coordinates are generated with a uniform probability distribution, $p(x)dx=dx \textrm{, } p(y)dy=dy$. The random number corresponding to the $z$ coordinate is distributed according to the linear approximated nuclear stopping power, $p(z)dz=(a_{el} \times z+b_{el})dz$, where $a_{el}$ and $b_{el}$ are simulation parameters describing the nuclear energy loss. After calculating the local probability of amorphization $p_{c \rightarrow a}$ of that volume, another random number decides, depending on the current state, whether the volume gets amorphous or recrystallized. This step is looped for the average hit per ion in the simulation window, counted by TRIM collision data. @@ -111,8 +117,15 @@ A simple model explaining the selforganization process of lamellar, amorphous pr \newpage \begin{thebibliography}{20} - \bibitem{1} J.K.N. Lindner, Appl. Phys. A 77 (2003) 27-38. - \bibitem{2} M. Häberlen, J.K.N. Lindner, B. Stritzker, Nucl. Instr. and Meth. B 216 (2004) 36-40. + \bibitem{1} L.L. Snead, S.J. Zinkle, J.C. Hay, M.C. Osborne, Nucl. Instr. and Meth. B 141 (1998) 123 + \bibitem{2} A.H. van Ommen, Nucl. Instr. and Meth. B 39 (1989) 194 + \bibitem{3} M. Ishimaru, R.M. Dickerson, K.E. Sickafus, Nucl. Instr. and Meth. B 166-167 (2000) 390 + \bibitem{4} J.K.N. Lindner, Appl. Phys. A 77 (2003) 27-38. + \bibitem{5} J.K.N. Lindner, M. Häberlen, M. Schmidt, W. Attenberger, B. Stritzker, Nucl. Instr. and Meth. B 186 (2000) 206-211 + \bibitem{6} W.J. Taylor, T.Y. Tan, U.Gösele, Appl. Phys. Lett. 62 (1993) 3336 + \bibitem{7} J. Linnross, R.G. Elliman, W.L. Brown, J. Mater, Res. 3 (1988) 1208 + \bibitem{8} SRIM2000 Version of the TRIM program described by J.F. Ziegler, J.P. Biersack, U. Littmark in: The Stopping and Range of Ions in Matter, vol. 1, Pergamon Press, New York, 1985 + \bibitem{9} M. Häberlen, J.K.N. Lindner, B. Stritzker, Nucl. Instr. and Meth. B 216 (2004) 36-40. \end{thebibliography} \newpage @@ -123,29 +136,29 @@ A simple model explaining the selforganization process of lamellar, amorphous pr \begin{figure}[!h] \begin{center} -\includegraphics[width=17cm]{model1_e.eps} -\caption[Rough model explaining the selforganization of amorphous $SiC_x$ precipitates and the evolution into ordered lamellae with increasing dose]{} \label{1} +\includegraphics[width=17cm]{k393abild1_e.eps} +\caption[Cross-sectional TEM image of $180 \, keV C^+$ in $Si$ with a dose of $4.3 \times 10^{17} \, cm^{-2}$ and substrate temperature of $150 \,^{\circ} \mathrm{C}$. and substrate temperature of $150 \,^{\circ} \mathrm{C}$ Lamellar and spharical amorphous inclusions are marked by $L$ and $S$.]{} \label{xtem} \end{center} \end{figure} \begin{figure}[!h] \begin{center} -\includegraphics[width=14cm]{2pTRIM180C.eps} -\caption[Stopping powers and concentration profile calculated by TRIM]{} \label{2} +\includegraphics[width=17cm]{model1_e.eps} +\caption[Rough model explaining the selforganization of amorphous $SiC_x$ precipitates and the evolution into ordered lamellae with increasing dose.]{} \label{model} \end{center} \end{figure} \begin{figure}[!h] \begin{center} -\includegraphics[width=15cm]{gitter_e.eps} -\caption[Target devided into $64 \times 64 \times 100$ volumes with a side length of $3 \, nm$ holding state and carbon concentration]{} \label{3} +\includegraphics[width=14cm]{2pTRIM180C.eps} +\caption[Stopping powers and concentration profile calculated by TRIM.]{} \label{trim} \end{center} \end{figure} \begin{figure}[!h] \begin{center} \includegraphics[width=15cm]{if_cmp2_e.eps} -\caption[Comparison of a simulation result and a cross-sectional TEM snapshot of $180 \, keV$ implanted carbon in silicon at $150 \,^{\circ} \mathrm{C}$ with $4.3 \times 10^{17} cm^{-2}$]{} \label{4} +\caption[Comparison of a simulation result and a cross-sectional TEM snapshot of $180 \, keV$ implanted carbon in silicon at $150 \,^{\circ} \mathrm{C}$ with $4.3 \times 10^{17} cm^{-2}$.]{} \label{4} \end{center} \end{figure}