318 research outputs found
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From Waste-Heat Recovery to Refrigeration: Compositional Tuning of Magnetocaloric Mn 1+ x Sb
A method to computationally screen for tunable properties of crystalline alloys
Conventionally, high-throughput computational materials searches start from
an input set of bulk compounds extracted from material databases, and this set
is screened for candidate materials for specific applications. In contrast,
many functional materials, and especially semiconductors, are heavily
engineered alloys or solid solutions of multiple compounds rather than a single
bulk compound. To improve our ability to design functional materials, in this
work we propose a framework and open-source code to automatically construct
possible "alloy pairs" and "alloy systems" and detect "alloy members" from a
set of existing, experimental or calculated ordered compounds, without
requiring any additional metadata beyond their crystal structure. We provide
analysis tools to estimate stability across each alloy. As a demonstration, we
apply this framework to all inorganic materials in the Materials Project
database to create a new database of over 600,000 unique alloy pair entries
that can then be used in materials discovery studies to search for materials
with tunable properties. This new database has been incorporated into the
Materials Project website and linked with corresponding material identifiers
for any user to query and explore. Using an example of screening for p-type
transparent conducting materials, we demonstrate how using this methodology
reveals candidate material systems that might otherwise have been excluded by a
traditional screening. This work lays a foundation from which materials
databases can go beyond stoichiometric compounds, and approach a more realistic
description of compositionally tunable materials
High-throughput optical absorption spectra for inorganic semiconductors
An optical absorption spectrum constitutes one of the most fundamental
material characteristics, with relevant applications ranging from material
identification to energy harvesting and optoelectronics. However, the database
of both experimental and computational spectra is currently lacking. In this
study, we designed a computational workflow for the optical absorption spectrum
and integrated the simulated spectra into the Materials Project. Using
density-functional theory, we computed the frequency-dependent dielectric
function and the corresponding absorption coefficient for more than 1000 solid
compounds of varying crystal structure and chemistry. The computed spectra show
excellent agreement, as quantified by a high value of the Pearson correlation,
with experimental results when applying the band gap correction from the HSE
functional. The demonstrated calculated accuracy in the spectra suggests that
the workflow can be applied in screening studies for materials with specific
optical properties
COVID and Coraje: Negotiating Latinx Immigrant Experiences of the Pandemic
11 pagesIn this paper, we compare observations from engaged ethnography and participant observation with Latinx immigrants in Colorado and Oregon during the COVID-19 pandemic. In particular, we focus on lived experiences of structural vulnerability, as well as the ways in which COVID-related disparities have become internalized as stigma and have amplified immigrants’ experiences of stress, anxiety, and “aislamiento,” or isolation. Indeed, Latinx immigrants in the US—especially those without legal status and those in mixed-status families—face a range of exclusions, discourses of blame and (un)deservingness, and forms of precarity that have contributed to disproportionate risk, suffering, and fear as the pandemic has unfolded. At the same time, by laying bare blatant injustices and racist exclusions, the pandemic has prompted some Latinx immigrants in our research and advocacy sites to enact new forms of resistance and contestation. We detail the range of ways which, in efforts to stay healthy and to challenge discriminatory portrayals of themselves as either disease carriers unlikely to heed public health warnings or as “public charges,” they insist upon their own rights, worth, belonging, and dignity. Finally, we conclude by discussing some of the ways in which these two U.S. states—and the health and social service organizations working with Latinx communities within them—have attempted to address coronavirus disparities among Latinx communities, showing how particular approaches can assuage short-term suffering and improve access to healthcare and other social supports, while others may create a new set of barriers to access for already marginalized communitiesNational Science Foundatio
A universal equivariant graph neural network for the elasticity tensors of any crystal system
The elasticity tensor that describes the elastic response of a material to
external forces is among the most fundamental properties of materials. The
availability of full elasticity tensors for inorganic crystalline compounds,
however, is limited due to experimental and computational challenges. Here, we
report the materials tensor (MatTen) model for rapid and accurate estimation of
the full fourth-rank elasticity tensors of crystals. Based on equivariant graph
neural networks, MatTen satisfies the two essential requirements for elasticity
tensors: independence of the frame of reference and preservation of material
symmetry. Consequently, it provides a universal treatment of elasticity tensors
for all crystal systems across diverse chemical spaces. MatTen was trained on a
dataset of first-principles elasticity tensors garnered by the Materials
Project over the past several years (we are releasing the data herein) and has
broad applications in predicting the isotropic elastic properties of
polycrystalline materials, examining the anisotropic behavior of single
crystals, and discovering new materials with exceptional mechanical properties.
Using MatTen, we have discovered a hundred new crystals with extremely large
maximum directional Young's modulus and eleven polymorphs of elemental cubic
metals with unconventional spatial orientation of Young's modulus
Mitochondria-Penetrating Peptides
SummaryMitochondria are important targets for cancer chemotherapy and other disease treatments. Gaining access to this organelle can be difficult, as the inner membrane is a barrier limiting diffusive transport. A mitochondrial molecular carrier would be a boon to the development of organelle-specific therapeutics. Here, we report a significant advance in the development of mitochondrial transporters—synthetic cell-permeable peptides that are able to enter mitochondria. Efficient uptake of these mitochondria-penetrating peptides (MPPs) is observed in a variety of cell types, and organellar specificity is attained with sequences that possess specific chemical properties. The MPPs identified are cationic, but also lipophilic; this combination of characteristics facilitates permeation of the hydrophobic mitochondrial membrane. The examination of a panel of MPPs illustrates that mitochondrial localization can be rationally controlled and finely tuned by altering lipophilicity and charge
A representation-independent electronic charge density database for crystalline materials
In addition to being the core quantity in density functional theory, the
charge density can be used in many tertiary analyses in materials sciences from
bonding to assigning charge to specific atoms. The charge density is data-rich
since it contains information about all the electrons in the system. With
increasing utilization of machine-learning tools in materials sciences, a
data-rich object like the charge density can be utilized in a wide range of
applications. The database presented here provides a modern and user-friendly
interface for a large and continuously updated collection of charge densities
as part of the Materials Project. In addition to the charge density data, we
provide the theory and code for changing the representation of the charge
density which should enable more advanced machine-learning studies for the
broader community
High-throughput determination of Hubbard U and Hund J values for transition metal oxides via linear response formalism
DFT+U provides a convenient, cost-effective correction for the
self-interaction error (SIE) that arises when describing correlated electronic
states using conventional approximate density functional theory (DFT). The
success of a DFT+U(+J) calculation hinges on the accurate determination of its
Hubbard U and Hund's J parameters, and the linear response (LR) methodology has
proven to be computationally effective and accurate for calculating these
parameters. This study provides a high-throughput computational analysis of the
U and J values for transition metal d-electron states in a representative set
of over 2000 magnetic transition metal oxides (TMOs), providing a frame of
reference for researchers who use DFT+U to study transition metal oxides. In
order to perform this high-throughput study, an atomate workflow is developed
for calculating U and J values automatically on massively parallel
supercomputing architectures. To demonstrate an application of this workflow,
the spin-canting magnetic structure and unit cell parameters of the
multiferroic olivine LiNiPO4 are calculated using the computed Hubbard U and
Hund J values for Ni-d and O-p states, and are compared with experiment. Both
the Ni-d U and J corrections have a strong effect on the Ni-moment canting
angle. Additionally, including a O-p U value results in a significantly
improved agreement between the computed lattice parameters and experiment.Comment: 18 pages, 6 figure
Magnetism and magnetocaloric properties of CoMnCrO
CoMnCrO crystallizes as a normal spinel in the cubic space group, and the end members have been reported to display a
region of collinear ferrimagnetism as well as a low-temperature spin-spiral
state with variable coherence lengths from 3 nm to 10 nm in polycrystalline
samples. Here, we present the synthesis of the entire solid solution, and data
showing that the ferrimagnetic ordering temperature as well as the spin-spiral
lock-in temperature are tunable with the Co/Mn ratio. The peak magnetocaloric
entropy change was determined to be = -5.63 J kg K
in an applied magnetic field change of = 0 T to 5 T for the Mn
end-member at the ferrimagnetic ordering temperature. Using density functional
theory (DFT), we explore the shortcomings of the magnetic deformation proxy to
identify trends in across composition in this spinel system, and
explore future extensions of theory to address these discrepancies
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