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Extracting the differential inverse inelastic mean free path and differential surface excitation probability of Tungsten from X-ray photoelectron spectra and electron energy loss spectra

机译:从X射线光电子谱和电子能损光谱中提取钨的差分逆非弹性平均自由路径和差异表面激发概率

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Precise knowledge of the differential inverse inelastic mean free path (DIIMFP) and differential surface excitation probability (DSEP) of Tungsten is essential for many fields of material science. In this paper, a fitting algorithm is applied for extracting DIIMFP and DSEP from X-ray photoelectron spectra and electron energy loss spectra. The algorithm uses the partial intensity approach as a forward model, in which a spectrum is given as a weighted sum of cross-convolved DIIMFPs and DSEPs. The weights are obtained as solutions of the Riccati and Lyapunov equations derived from the invariant imbedding principle. The inversion algorithm utilizes the parametrization of DIIMFPs and DSEPs on the base of a classical Lorentz oscillator. Unknown parameters of the model are found by using the fitting procedure, which minimizes the residual between measured spectra and forward simulations. It is found that the surface layer of Tungsten contains several sublayers with corresponding Langmuir resonances. The thicknesses of these sublayers are proportional to the periods of corresponding Langmuir oscillations, as predicted by the theory of R.H. Ritchie.
机译:对钨的差异逆非弹性均值的自由路径(DIIMFP)和差异表面励磁概率(DSEP)的精确知识对于许多材料科学领域至关重要。本文施加了一种拟合算法从X射线光电子谱和电子能损光谱中提取DIIMFP和DSEP。该算法使用部分强度方法作为前向模型,其中将频谱作为交叉卷积DIIMFPS和DSEPS的加权和。获得重量作为Riccati和Lyapunov方程的溶液从不变嵌入原理中获得的。反转算法利用DIIMFPS和DSEPS的参数化在古典洛伦兹振荡器的基础上。通过使用拟合程序发现模型的未知参数,这使得测量光谱与正向模拟之间的残差最小化。结果发现钨的表面层含有几个具有相应朗马尔共振的子层。这些子层的厚度与相应的Langmuir振荡的时段成比例,如R.H. Ritchie理论所预说的那样。

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