1,729 research outputs found
Strengthening gold-gold bonds by complexing gold clusters with noble gases
We report an unexpectedly strong and complex chemical bonding of rare-gas
atoms to neutral gold clusters. The bonding features are consistently
reproduced at different levels of approximation within density-functional
theory and beyond: from GGA, through hybrid and double-hybrid functionals, up
to renormalized second-order perturbation theory. The main finding is that the
adsorption of Ar, Kr, and Xe reduces electron-electron repulsion within gold
dimer, causing strengthening of the Au-Au bond. Differently from the dimer, the
rare-gas adsorption effects on the gold trimer's geometry and vibrational
frequencies are mainly due to electron occupation of the trimer's lowest
unoccupied molecular orbital. For the trimer, the theoretical results are also
consistent with far-infrared multiple photon dissociation experiments.Comment: To be published in Inorganic Chemistry Communication
Compact representation of one-particle wavefunctions and scalar fields obtained from electronic-structure calculations
We present a code-independent compact representation of one-electron
wavefunctions and other volumetric data (electron density, electrostatic
potential, etc.) produced by electronic-structure calculations. The compactness
of the representation insures minimization of digital storage requirements for
the computational data, while the code-independence makes the data ready for
"big data" analytics. Our approach allows to minimize differences between
original and the new representation, and is in principle information-lossless.
The procedure for obtaining the wavefunction representation is closely related
to construction of natural atomic orbitals, and benefits from the localization
of Wannier functions. Thus, our approach fits perfectly any infrastructure
providing a code-independent tool set for electronic-structure data analysis
Big Data of Materials Science - Critical Role of the Descriptor
Statistical learning of materials properties or functions so far starts with
a largely silent, non-challenged step: the choice of the set of descriptive
parameters (termed descriptor). However, when the scientific connection between
the descriptor and the actuating mechanisms is unclear, causality of the
learned descriptor-property relation is uncertain. Thus, trustful prediction of
new promising materials, identification of anomalies, and scientific
advancement are doubtful. We analyse this issue and define requirements for a
suited descriptor. For a classical example, the energy difference of
zincblende/wurtzite and rocksalt semiconductors, we demonstrate how a
meaningful descriptor can be found systematically.Comment: Accepted to Phys. Rev. Let
Theoretical evidence for unexpected O-rich phases at corners of MgO surfaces
Realistic oxide materials are often semiconductors, in particular at elevated
temperatures, and their surfaces contain undercoordiated atoms at structural
defects such as steps and corners. Using hybrid density-functional theory and
ab initio atomistic thermodynamics, we investigate the interplay of
bond-making, bond-breaking, and charge-carrier trapping at the corner defects
at the (100) surface of a p-doped MgO in thermodynamic equilibrium with an O2
atmosphere. We show that by manipulating the coordination of surface atoms one
can drastically change and even reverse the order of stability of reduced
versus oxidized surface sites.Comment: 5 papges, 4 figure
Concentration of Vacancies at Metal Oxide Surfaces: Case Study of MgO (100)
We investigate effects of doping on formation energy and concentration of
oxygen vacancies at a metal oxide surface, using MgO (100) as an example. Our
approach employs density-functional theory, where the performance of the
exchange-correlation functional is carefully analyzed, and the functional is
chosen according to a fundamental condition on DFT ionization energies. The
approach is further validated by CCSD(T) calculations for embedded clusters. We
demonstrate that the concentration of oxygen vacancies at a doped oxide surface
is largely determined by formation of a macroscopically extended space charge
region
Modulation of the Work Function by the Atomic Structure of Strong Organic Electron Acceptors on H-Si(111)
Advances in hybrid organic/inorganic architectures for optoelectronics can be
achieved by understanding how the atomic and electronic degrees of freedom
cooperate or compete to yield the desired functional properties. Here we show
how work-function changes are modulated by the structure of the organic
components in model hybrid systems. We consider two cyano-quinodimethane
derivatives (F4-TCNQ and F6-TCNNQ), which are strong electron-acceptor
molecules, adsorbed on H-Si(111). From systematic structure searches employing
range-separated hybrid HSE06 functional including many body van der Waals
contributions, we predict that despite their similar composition, these
molecules adsorb with significantly different densely-packed geometries in the
first layer, due to strong intermolecular interaction. F6-TCNNQ shows a much
stronger intralayer interaction (primarily due to van der Waals contributions)
than F4-TCNQ in multilayered structures. The densely-packed geometries induce a
large interface-charge rearrangement that result in a work-function increase of
1.11 and 1.76 eV for F4-TCNQ and F6-TCNNQ, respectively. Nuclear fluctuations
at room temperature produce a wide distribution of work-function values, well
modeled by a normal distribution with {\sigma}=0.17 eV. We corroborate our
findings with experimental evidence of pronounced island formation for F6-TCNNQ
on H-Si(111) and with the agreement of trends between predicted and measured
work-function changes
Structure and electronic properties of transition-metal/Mg bimetallic clusters at realistic temperatures and oxygen partial pressures
Composition, atomic structure, and electronic properties of TMMgO
clusters (TM = Cr, Ni, Fe, Co, ) at realistic temperature and
partial oxygen pressure conditions are explored using the
{\em ab initio} atomistic thermodynamics approach. The low-energy isomers of
the different clusters are identified using a massively parallel cascade
genetic algorithm at the hybrid density-functional level of theory. On
analyzing a large set of data, we find that the fundamental gap E
of the thermodynamically stable clusters are strongly affected by the presence
of Mg-coordinated O moieties. In contrast, the nature of the transition
metal does not play a significant role in determining E. Using
E of a cluster as a descriptor of its redox properties, our
finding is against the conventional belief that the transition metal plays the
key role in determining the electronic and therefore chemical properties of the
clusters. High reactivity may be correlated more strongly with oxygen content
in the cluster than with any specific TM type.Comment: 7 pages, 5 figure
Learning physical descriptors for materials science by compressed sensing
The availability of big data in materials science offers new routes for
analyzing materials properties and functions and achieving scientific
understanding. Finding structure in these data that is not directly visible by
standard tools and exploitation of the scientific information requires new and
dedicated methodology based on approaches from statistical learning, compressed
sensing, and other recent methods from applied mathematics, computer science,
statistics, signal processing, and information science. In this paper, we
explain and demonstrate a compressed-sensing based methodology for feature
selection, specifically for discovering physical descriptors, i.e., physical
parameters that describe the material and its properties of interest, and
associated equations that explicitly and quantitatively describe those relevant
properties. As showcase application and proof of concept, we describe how to
build a physical model for the quantitative prediction of the crystal structure
of binary compound semiconductors
Stability and metastability of clusters in a reactive atmosphere: theoretical evidence for unexpected stoichiometries of MgMOx
By applying a genetic algorithm in a cascade approach of increasing accuracy,
we calculate the composition and structure of MgMOx clusters at realistic
temperatures and oxygen pressures. The stable and metastable systems are
identified by ab initio atomistic thermodynamics. We find that small clusters
(M M. The non-stoichiometric
clusters exhibit peculiar magnetic behavior, suggesting the possibility of
tuning magnetic properties by changing environmental pressure and temperature
conditions. Furthermore, we show that density-functional theory (DFT) with a
hybrid exchange-correlation (xc) functional is needed for predicting accurate
phase diagrams of metal-oxide clusters. Neither a (sophisticated) force field
nor DFT with (semi)local xc functionals are sufficient for even a qualitative
prediction.Comment: 5 pages, 3 Figures, Supporting Informatio
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