23 research outputs found
Structures and transitions in bcc tungsten grain boundaries and their role in the absorption of point defects
We use atomistic simulations to investigate grain boundary (GB) phase
transitions in el- emental body-centered cubic (bcc) metal tungsten. Motivated
by recent modeling study of grain boundary phase transitions in [100] symmetric
tilt boundaries in face-centered cu- bic (fcc) copper, we perform a systematic
investigation of [100] and [110] symmetric tilt high-angle and low-angle
boundaries in bcc tungsten. The structures of these boundaries have been
investigated previously by atomistic simulations in several different bcc
metals including tungsten using the the {\gamma}-surface method, which has
limitations. In this work we use a recently developed computational tool based
on the USPEX structure prediction code to perform an evolutionary grand
canonical search of GB structure at 0 K. For high-angle [100] tilt boundaries
the ground states generated by the evolutionary algorithm agree with the
predictions of the {\gamma}-surface method. For the [110] tilt boundaries, the
search predicts novel high-density low-energy grain boundary structures and
multiple grain boundary phases within the entire misorientation range.
Molecular dynamics simulation demonstrate that the new structures are more
stable at high temperature. We observe first-order grain boundary phase
transitions and investigate how the structural multiplicity affects the
mechanisms of the point defect absorption. Specifically, we demonstrate a
two-step nucleation process, when initially the point defects are absorbed
through a formation of a metastable GB structure with higher density, followed
by a transformation of this structure into a GB interstitial loop or a
different GB phase.Comment: 40 pages, 19 figure
A First-Passage Kinetic Monte Carlo Algorithm for Complex Diffusion-Reaction Systems
We develop an asynchronous event-driven First-Passage Kinetic Monte Carlo
(FPKMC) algorithm for continuous time and space systems involving multiple
diffusing and reacting species of spherical particles in two and three
dimensions. The FPKMC algorithm presented here is based on the method
introduced in [Phys. Rev. Lett., 97:230602, 2006] and is implemented in a
robust and flexible framework. Unlike standard KMC algorithms such as the
n-fold algorithm, FPKMC is most efficient at low densities where it replaces
the many small hops needed for reactants to find each other with large
first-passage hops sampled from exact time-dependent Green's functions, without
sacrificing accuracy. We describe in detail the key components of the
algorithm, including the event-loop and the sampling of first-passage
probability distributions, and demonstrate the accuracy of the new method. We
apply the FPKMC algorithm to the challenging problem of simulation of long-term
irradiation of metals, relevant to the performance and aging of nuclear
materials in current and future nuclear power plants. The problem of radiation
damage spans many decades of time-scales, from picosecond spikes caused by
primary cascades, to years of slow damage annealing and microstructure
evolution. Our implementation of the FPKMC algorithm has been able to simulate
the irradiation of a metal sample for durations that are orders of magnitude
longer than any previous simulations using the standard Object KMC or more
recent asynchronous algorithms.Comment: See also arXiv:0905.357
Dynamic Density Functional Theory of Multicomponent Cellular Membranes
We present a continuum model trained on molecular dynamics (MD) simulations
for cellular membranes composed of an arbitrary number of lipid types. The
model is constructed within the formalism of dynamic density functional theory
and can be extended to include features such as the presence of proteins and
membrane deformations. This framework represents a paradigm shift by enabling
simulations that can access cellular length-scales (m) and time-scales on
the order of seconds, all while maintaining near-fidelity to the underlying MD
models. Membrane interactions with RAS, a potentially oncogenic protein, are
considered as an application. Simulation results are presented and verified
with MD simulations, and implications of this new capability are discussed
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Enabling Strain Hardening Simulations with Dislocation Dynamics
Numerical algorithms for discrete dislocation dynamics simulations are investigated for the purpose of enabling strain hardening simulations of single crystals on massively parallel computers. The algorithms investigated include the /(N) calculation of forces, the equations of motion, time integration, adaptive mesh refinement, the treatment of dislocation core reactions, and the dynamic distribution of work on parallel computers. A simulation integrating all of these algorithmic elements using the Parallel Dislocation Simulator (ParaDiS) code is performed to understand their behavior in concert, and evaluate the overall numerical performance of dislocation dynamics simulations and their ability to accumulate percents of plastic strain
Machine Learning-Driven Multiscale Modeling: Bridging the Scales with a Next-Generation Simulation Infrastructure
Interdependence across time and length scales is common in biology, where atomic interactions can impact larger-scale phenomenon. Such dependence is especially true for a well-known cancer signaling pathway, where the membrane-bound RAS protein binds an effector protein called RAF. To capture the driving forces that bring RAS and RAF (represented as two domains, RBD and CRD) together on the plasma membrane, simulations with the ability to calculate atomic detail while having long time and large length- scales are needed. The Multiscale Machine-Learned Modeling Infrastructure (MuMMI) is able to resolve RAS/RAF protein-membrane interactions that identify specific lipid-protein fingerprints that enhance protein orientations viable for effector binding. MuMMI is a fully automated, ensemble-based multiscale approach connecting three resolution scales: (1) the coarsest scale is a continuum model able to simulate milliseconds of time for a 1 渭m2 membrane, (2) the middle scale is a coarse-grained (CG) Martini bead model to explore protein-lipid interactions, and (3) the finest scale is an all-atom (AA) model capturing specific interactions between lipids and proteins. MuMMI dynamically couples adjacent scales in a pairwise manner using machine learning (ML). The dynamic coupling allows for better sampling of the refined scale from the adjacent coarse scale (forward) and on-the-fly feedback to improve the fidelity of the coarser scale from the adjacent refined scale (backward). MuMMI operates efficiently at any scale, from a few compute nodes to the largest supercomputers in the world, and is generalizable to simulate different systems. As computing resources continue to increase and multiscale methods continue to advance, fully automated multiscale simulations (like MuMMI) will be commonly used to address complex science questions
Machine learning鈥揹riven multiscale modeling reveals lipid-dependent dynamics of RAS signaling proteins
RAS is a signaling protein associated with the cell membrane that is mutated in up to 30% of human cancers. RAS signaling has been proposed to be regulated by dynamic heterogeneity of the cell membrane. Investigating such a mechanism requires near-atomistic detail at macroscopic temporal and spatial scales, which is not possible with conventional computational or experimental techniques. We demonstrate here a multiscale simulation infrastructure that uses machine learning to create a scale-bridging ensemble of over 100,000 simulations of active wild-type KRAS on a complex, asymmetric membrane. Initialized and validated with experimental data (including a new structure of active wild-type KRAS), these simulations represent a substantial advance in the ability to characterize RAS-membrane biology. We report distinctive patterns of local lipid composition that correlate with interfacially promiscuous RAS multimerization. These lipid fingerprints are coupled to RAS dynamics, predicted to influence effector binding, and therefore may be a mechanism for regulating cell signaling cascades