158 research outputs found
Investigation of the Effect of Functional Group Substitutions on the Gas-Phase Electron Affinities and Ionization Energies of Room-Temperature Ionic Liquids Ions using Density Functional Theory
The cathodic and anodic stabilities of room-temperature ionic liquids (ILs) are important factors in their applications in electrochemical devices. In this work, we investigated the electron affinities of cations and ionization energies of anions for ionic liquids by density functional theory (DFT) calculations at the B3LYP/6-311+G(2d,p)//B3LYP/6-31+G(d) level. Over 200 unique cations and anions, formed from a set of six base cation structures, three base anion structures, and seven functional groups, were investigated. We find the trends in calculated EAs of alkylated cations and IEs of alkylated anions to be in good agreement with observed experimental trends in relative cathodic and anodic stabilities of various ILs. In addition, we also investigated the effect that functional group substitution at distinct positions in the ions have on the EA of the 1,2,3-trimethylimidazolium cation and the IE of the PF5CF3 anion. The overall impact on the EA or IE can be explained by the known electron-donating and electron-withdrawing inductive and resonance effects of the attached functional group, and the relative strength of the effect depends on the substitution position.DuPont MIT AllianceNational Science Foundation (U.S.) (TeraGrid resouces
Graph Networks as a Universal Machine Learning Framework for Molecules and Crystals
Graph networks are a new machine learning (ML) paradigm that supports both
relational reasoning and combinatorial generalization. Here, we develop
universal MatErials Graph Network (MEGNet) models for accurate property
prediction in both molecules and crystals. We demonstrate that the MEGNet
models outperform prior ML models such as the SchNet in 11 out of 13 properties
of the QM9 molecule data set. Similarly, we show that MEGNet models trained on
crystals in the Materials Project substantially outperform prior
ML models in the prediction of the formation energies, band gaps and elastic
moduli of crystals, achieving better than DFT accuracy over a much larger data
set. We present two new strategies to address data limitations common in
materials science and chemistry. First, we demonstrate a physically-intuitive
approach to unify four separate molecular MEGNet models for the internal energy
at 0 K and room temperature, enthalpy and Gibbs free energy into a single free
energy MEGNet model by incorporating the temperature, pressure and entropy as
global state inputs. Second, we show that the learned element embeddings in
MEGNet models encode periodic chemical trends and can be transfer-learned from
a property model trained on a larger data set (formation energies) to improve
property models with smaller amounts of data (band gaps and elastic moduli)
From the computer to the laboratory: materials discovery and design using first-principles calculations
The development of new technological materials has historically been a difficult and time-consuming task. The traditional role of computation in materials design has been to better understand existing materials. However, an emerging paradigm for accelerated materials discovery is to design new compounds in silico using first-principles calculations, and then perform experiments on the computationally designed candidates. In this paper, we provide a review of ab initio computational materials design, focusing on instances in which a computational approach has been successfully applied to propose new materials of technological interest in the laboratory. Our examples include applications in renewable energy, electronic, magnetic and multiferroic materials, and catalysis, demonstrating that computationally guided materials design is a broadly applicable technique. We then discuss some of the common features and limitations of successful theoretical predictions across fields, examining the different ways in which first-principles calculations can guide the final experimental result. Finally, we present a future outlook in which we expect that new models of computational search, such as high-throughput studies, will play a greater role in guiding materials advancements
Predicting the Volumes of Crystals
New crystal structures are frequently derived by performing ionic
substitutions on known crystal structures. These derived structures are then
used in further experimental analysis, or as the initial guess for structural
optimization in electronic structure calculations, both of which usually
require a reasonable guess of the lattice parameters. In this work, we propose
two lattice prediction schemes to improve the initial guess of a candidate
crystal structure. The first scheme relies on a one-to-one mapping of species
in the candidate crystal structure to a known crystal structure, while the
second scheme relies on data-mined minimum atom pair distances to predict the
crystal volume of the candidate crystal structure and does not require a
reference structure. We demonstrate that the two schemes can effectively
predict the volumes within mean absolute errors (MAE) as low as 3.8% and 8.2%.
We also discuss the various factors that may impact the performance of the
schemes. Implementations for both schemes are available in the open-source
pymatgen software.Comment: 8 figures, 2 table
Accurate Force Field for Molybdenum by Machine Learning Large Materials Data
In this work, we present a highly accurate spectral neighbor analysis
potential (SNAP) model for molybdenum (Mo) developed through the rigorous
application of machine learning techniques on large materials data sets.
Despite Mo's importance as a structural metal, existing force fields for Mo
based on the embedded atom and modified embedded atom methods still do not
provide satisfactory accuracy on many properties. We will show that by fitting
to the energies, forces and stress tensors of a large density functional theory
(DFT)-computed dataset on a diverse set of Mo structures, a Mo SNAP model can
be developed that achieves close to DFT accuracy in the prediction of a broad
range of properties, including energies, forces, stresses, elastic constants,
melting point, phonon spectra, surface energies, grain boundary energies, etc.
We will outline a systematic model development process, which includes a
rigorous approach to structural selection based on principal component
analysis, as well as a differential evolution algorithm for optimizing the
hyperparameters in the model fitting so that both the model error and the
property prediction error can be simultaneously lowered. We expect that this
newly developed Mo SNAP model will find broad applications in large-scale,
long-time scale simulations.Comment: 25 pages, 9 figure
Electronic Structure Descriptor for Discovery of Narrow-Band Red-Emitting Phosphors
Narrow-band red-emitting phosphors are a critical component in
phosphor-converted light-emitting diodes for highly efficient
illumination-grade lighting. In this work, we report the discovery of a
quantitative descriptor for narrow-band Eu2+-activated emission identified
through a comparison of the electronic structure of known narrow-band and
broad-band phosphors. We find that a narrow emission bandwidth is characterized
by a large splitting of more than 0.1 eV between the two highest Eu2+ 4f7
bands. By incorporating this descriptor in a high throughput first principles
screening of 2,259 nitride compounds, we identify five promising new nitride
hosts for Eu2+-activated red-emitting phosphors that are predicted to exhibit
good chemical stability, thermal quenching resistance and quantum efficiency,
as well as narrow-band emission. Our findings provide important insights into
the emission characteristics of rare-earth activators in phosphor hosts, and a
general strategy to the discovery of phosphors with a desired emission peak and
bandwidth.Comment: 3 figures, 2 table
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