36 research outputs found
Machine learning spectral indicators of topology
Topological materials discovery has emerged as an important frontier in
condensed matter physics. Recent theoretical approaches based on symmetry
indicators and topological quantum chemistry have been used to identify
thousands of candidate topological materials, yet experimental determination of
materials' topology often poses significant technical challenges. X-ray
absorption spectroscopy (XAS) is a widely-used materials characterization
technique sensitive to atoms' local symmetry and chemical environment; thus, it
may encode signatures of materials' topology, though indirectly. In this work,
we show that XAS can potentially uncover materials' topology when augmented by
machine learning. By labelling computed X-ray absorption near-edge structure
(XANES) spectra of over 16,000 inorganic materials with their topological
class, we establish a machine learning-based classifier of topology with XANES
spectral inputs. Our classifier correctly predicts 81% of topological and 80%
of trivial cases, and can achieve 90% and higher accuracy for materials
containing certain elements. Given the simplicity of the XAS setup and its
compatibility with multimodal sample environments, the proposed machine
learning-empowered XAS topological indicator has the potential to discover
broader categories of topological materials, such as non-cleavable compounds
and amorphous materials. It can also inform a variety of field-driven phenomena
in situ, such as magnetic field-driven topological phase transitions.Comment: 14 pages, 3 main figures and 5 supplementary figures. Feedback most
welcom
Data-driven discovery of dynamics from time-resolved coherent scattering
Coherent X-ray scattering (CXS) techniques are capable of interrogating
dynamics of nano- to mesoscale materials systems at time scales spanning
several orders of magnitude. However, obtaining accurate theoretical
descriptions of complex dynamics is often limited by one or more factors -- the
ability to visualize dynamics in real space, computational cost of
high-fidelity simulations, and effectiveness of approximate or phenomenological
models. In this work, we develop a data-driven framework to uncover mechanistic
models of dynamics directly from time-resolved CXS measurements without solving
the phase reconstruction problem for the entire time series of diffraction
patterns. Our approach uses neural differential equations to parameterize
unknown real-space dynamics and implements a computational scattering forward
model to relate real-space predictions to reciprocal-space observations. This
method is shown to recover the dynamics of several computational model systems
under various simulated conditions of measurement resolution and noise.
Moreover, the trained model enables estimation of long-term dynamics well
beyond the maximum observation time, which can be used to inform and refine
experimental parameters in practice. Finally, we demonstrate an experimental
proof-of-concept by applying our framework to recover the probe trajectory from
a ptychographic scan. Our proposed framework bridges the wide existing gap
between approximate models and complex data
Quantized Thermoelectric Hall Effect Induces Giant Power Factor in a Topological Semimetal
Thermoelectrics are promising by directly generating electricity from waste
heat. However, (sub-)room-temperature thermoelectrics have been a long-standing
challenge due to vanishing electronic entropy at low temperatures. Topological
materials offer a new avenue for energy harvesting applications. Recent
theories predicted that topological semimetals at the quantum limit can lead to
a large, non-saturating thermopower and a quantized thermoelectric Hall
conductivity approaching a universal value. Here, we experimentally demonstrate
the non-saturating thermopower and quantized thermoelectric Hall effect in the
topological Weyl semimetal (WSM) tantalum phosphide (TaP). An ultrahigh
longitudinal thermopower Sxx= 1.1x10^3 muV/K and giant power factor ~525
muW/cm/K^2 are observed at ~40K, which is largely attributed to the quantized
thermoelectric Hall effect. Our work highlights the unique quantized
thermoelectric Hall effect realized in a WSM toward low-temperature energy
harvesting applications.Comment: 54 pages total, 5 main figures + 22 supplementary figures. To appear
in Nature Communications (2020
Direct prediction of phonon density of states with Euclidean neural networks
Machine learning has demonstrated great power in materials design, discovery,
and property prediction. However, despite the success of machine learning in
predicting discrete properties, challenges remain for continuous property
prediction. The challenge is aggravated in crystalline solids due to
crystallographic symmetry considerations and data scarcity. Here we demonstrate
the direct prediction of phonon density of states using only atomic species and
positions as input. We apply Euclidean neural networks, which by construction
are equivariant to 3D rotations, translations, and inversion and thereby
capture full crystal symmetry, and achieve high-quality prediction using a
small training set of examples with over 64 atom types. Our
predictive model reproduces key features of experimental data and even
generalizes to materials with unseen elements,and is naturally suited to
efficiently predict alloy systems without additional computational cost. We
demonstrate the potential of our network by predicting a broad number of high
phononic specific heat capacity materials. Our work indicates an efficient
approach to explore materials' phonon structure, and can further enable rapid
screening for high-performance thermal storage materials and phonon-mediated
superconductors.Comment: 21 pages total, 5 main figures + 16 supplementary figures. To appear
in Advanced Science (2021
Machine Learning on Neutron and X-Ray Scattering
Neutron and X-ray scattering represent two state-of-the-art materials
characterization techniques that measure materials' structural and dynamical
properties with high precision. These techniques play critical roles in
understanding a wide variety of materials systems, from catalysis to polymers,
nanomaterials to macromolecules, and energy materials to quantum materials. In
recent years, neutron and X-ray scattering have received a significant boost
due to the development and increased application of machine learning to
materials problems. This article reviews the recent progress in applying
machine learning techniques to augment various neutron and X-ray scattering
techniques. We highlight the integration of machine learning methods into the
typical workflow of scattering experiments. We focus on scattering problems
that faced challenge with traditional methods but addressable using machine
learning, such as leveraging the knowledge of simple materials to model more
complicated systems, learning with limited data or incomplete labels,
identifying meaningful spectra and materials' representations for learning
tasks, mitigating spectral noise, and many others. We present an outlook on a
few emerging roles machine learning may play in broad types of scattering and
spectroscopic problems in the foreseeable future.Comment: 56 pages, 12 figures. Feedback most welcom
Topological Singularity Induced Chiral Kohn Anomaly in a Weyl Semimetal
The electron-phonon interaction (EPI) is instrumental in a wide variety of
phenomena in solid-state physics, such as electrical resistivity in metals,
carrier mobility, optical transition and polaron effects in semiconductors,
lifetime of hot carriers, transition temperature in BCS superconductors, and
even spin relaxation in diamond nitrogen-vacancy centers for quantum
information processing. However, due to the weak EPI strength, most phenomena
have focused on electronic properties rather than on phonon properties. One
prominent exception is the Kohn anomaly, where phonon softening can emerge when
the phonon wavevector nests the Fermi surface of metals. Here we report a new
class of Kohn anomaly in a topological Weyl semimetal (WSM), predicted by
field-theoretical calculations, and experimentally observed through inelastic
x-ray and neutron scattering on WSM tantalum phosphide (TaP). Compared to the
conventional Kohn anomaly, the Fermi surface in a WSM exhibits multiple
topological singularities of Weyl nodes, leading to a distinct nesting
condition with chiral selection, a power-law divergence, and non-negligible
dynamical effects. Our work brings the concept of Kohn anomaly into WSMs and
sheds light on elucidating the EPI mechanism in emergent topological materials.Comment: 30 pages, 4 main figures, 11 supplementary figures and 1 theoretical
derivation. Feedback most welcom