35 research outputs found
Extended Ensemble Molecular Dynamics for Thermodynamics of Phases
The first-order phase transitions and related thermodynamics properties are
primary concerns of materials sciences and engineering. In traditional
atomistic simulations, the phase transitions and the estimation of their
thermodynamic properties are challenging tasks because the trajectories get
trapped in local minima close to the initial states. In this study, we
investigate various extended ensemble molecular dynamics (MD) methods based on
the multicanonical ensemble method using the Wang-Landau (WL) approach. We
performed multibaric-multithermal (MBMT) method to fluid phase, gas-liquid
transition, and liquid-solid transition of the Lennard-Jones (LJ) system. The
derived thermodynamic properties of the fluid phase and the gas-liquid
transition from the MBMT agree well with the previously reported equation of
states (EOSs). However, the MBMT cannot correctly predict the liquid-solid
transition. The multiorder-multithermal (MOMT) ensemble shows significantly
enhanced sampling between liquid and solid states with an accurate estimation
of transition temperatures. We further investigated the dynamics of each system
based on their free energy shapes, providing fundamental insights for their
sampling behaviors. This study guides the prediction of broader crystalline
materials, e.g., alloys, for their phases and thermodynamic properties from
atomistic modeling
Mechanics of mineralized collagen fibrils upon transient loads
Collagen is a key structural protein in the human body, which undergoes
mineralization during the formation of hard tissues. Earlier studies have
described the mechanical behavior of bone at different scales highlighting
material features across hierarchical structures. Here we present a study that
aims to understand the mechanical properties of mineralized collagen fibrils
upon tensile/compressive transient loads, investigating how the kinetic energy
propagates and it is dissipated at the molecular scale, thus filling a gap of
knowledge in this area. These specific features are the mechanisms that Nature
has developed to passively dissipate stress and prevent structural failures. In
addition to the mechanical properties of the mineralized fibrils, we observe
distinct nanomechanical behaviors for the two regions (i.e., overlap and gap)
of the D-period to highlight the effect of the mineralization. We notice
decreasing trends for both wave speeds and Young s moduli over input velocity
with a marked strengthening effect in the gap region due to the accumulation of
the hydroxyapatite. In contrast, the dissipative behavior is not affected by
either loading conditions or the mineral percentage, showing a stronger
dampening effect upon faster inputs compatible to the bone behavior at the
macroscale. Our results improve the understanding of mineralized collagen
composites unveiling the energy dissipative behavior of such materials. This
impacts, besides the physiology, the design and characterization of new
bioinspired composites for replacement devices (e.g., prostheses for sound
transmission or conduction) and for optimized structures able to bear transient
loads, e.g., impact, fatigue, in structural applications
The mechanics and design of a lightweight three-dimensional graphene assembly
Recent advances in three-dimensional (3D) graphene assembly have shown how we can make solid porous materials that are lighter than air. It is plausible that these solid materials can be mechanically strong enough for applications under extreme conditions, such as being a substitute for helium in filling up an unpowered flight balloon. However, knowledge of the elastic modulus and strength of the porous graphene assembly as functions of its structure has not been available, preventing evaluation of its feasibility. We combine bottom-up computational modeling with experiments based on 3D-printed models to investigate the mechanics of porous 3D graphene materials, resulting in new designs of carbon materials. Our study reveals that although the 3D graphene assembly has an exceptionally high strength at relatively high density (given the fact that it has a density of 4.6% that of mild steel and is 10 times as strong as mild steel), its mechanical properties decrease with density much faster than those of polymer foams. Our results provide critical densities below which the 3D graphene assembly starts to lose its mechanical advantage over most polymeric cellular materials.United States. Office of Naval Research (Grant No. N00014-16-1-233)United States. Air Force. Office of Scientific Research (Multidisciplinary University Research Initiative Grant No. FA9550-15-1-0514)ASF-NOR
Molecular origin of viscoelasticity in mineralized collagen fibrils
Bone is mineralized tissue constituting the skeletal system, supporting and
protecting body organs and tissues. At the molecular level, mineralized
collagen fibril is the basic building block of bone tissue, and hence,
understanding bone properties down to fundamental tissue structures enables to
better identify the mechanisms of structural failures and damages. While
efforts have focused on the study of the micro- and macro-scale viscoelasticity
related to bone damage and healing based on creep, mineralized collagen has not
been explored on a molecular level. We report a study that aims at
systematically exploring the viscoelasticity of collagenous fibrils with
different mineralization levels. We investigate the dynamic mechanical response
upon cyclic and impulsive loads to observe the viscoelastic phenomena from
either shear or extensional strains via molecular dynamics. We perform a
sensitivity analysis with several key benchmarks: intrafibrillar mineralization
percentage, hydration state, and external load amplitude. Our results show a
growth of the dynamic moduli with an increase of mineral percentage, pronounced
at low strains. When intrafibrillar water is present, the material softens the
elastic component but considerably increases its viscosity, especially at high
frequencies. This behaviour is confirmed from the material response upon
impulsive loads, in which water drastically reduces the relaxation times
throughout the input velocity range by one order of magnitude, with respect to
the dehydrated counterparts. We find that upon transient loads, water has a
major impact on the mechanics of mineralized fibrillar collagen, being able to
improve the capability of the tissue to passively and effectively dissipate
energy, especially after fast and high-amplitude external loads
Sub-Nanometer Channels Embedded in Two-Dimensional Materials
Two-dimensional (2D) materials are among the most promising candidates for
next-generation electronics due to their atomic thinness, allowing for flexible
transparent electronics and ultimate length scaling. Thus far, atomically-thin
p-n junctions, metal-semiconductor contacts, and metal-insulator barriers have
been demonstrated. While 2D materials achieve the thinnest possible devices,
precise nanoscale control over the lateral dimensions is also necessary. Here,
we report the direct synthesis of sub-nanometer-wide 1D MoS2 channels embedded
within WSe2 monolayers, using a dislocation-catalyzed approach. The 1D channels
have edges free of misfit dislocations and dangling bonds, forming a coherent
interface with the embedding 2D matrix. Periodic dislocation arrays produce 2D
superlattices of coherent MoS2 1D channels in WSe2. Using molecular dynamics
simulations, we have identified other combinations of 2D materials where 1D
channels can also be formed. The electronic band structure of these 1D channels
offer the promise of carrier confinement in a direct-gap material and charge
separation needed to access the ultimate length scales necessary for future
electronic applications.Comment: 22 pages main manuscript and methods, 4 main figures, 30 pages
supplementary materials, 16 extended figure
Phenotyping of rice in salt stress environment using high-throughput infrared imaging
Phenotyping of rice (Oryza sativa L. cv. Donggin) in salt stress environment using infrared imaging was conducted. Results were correlated with the most frequently used physiological parameters such as stomatal conductance, relative water content and photosynthetic parameters. It was observed that stomatal conductance (R2 = –0.618) and relative water content (R2 = –0.852) were significantly negatively correlated with average plant temperature (thermal images), while dark-adapted quantum yield (Fv/Fm, R2 = –0.325) and performance index (R2 = –0.315) were not consistent with plant temperature. Advantages of infrared thermography and utilization of this technology for the selection of stress tolerance physiotypes are discussed in detail
Multiscale modeling of two-dimensional materials : structures, properties, and designs
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Civil and Environmental Engineering, 2019Cataloged from PDF version of thesis.Includes bibliographical references (pages 257-274).Multiscale modeling undertakes to describe a system with multiple models at different scales. In principle, quantum mechanics provides sufficient information. However, the development of a scaled-up model, e.g., molecular dynamics, from quantum mechanics, should be validated against the experiments. Two-dimensional (2D) materials provide excellent platforms to verify theoretical models by directly comparing atomic structures and properties with advanced transmission electron microscopy (TEM) techniques due to their high crystallinity and thin nature. In this thesis, molecular dynamics (MD) models have been developed for the 2D transition metal dichalcogenides (TMDs) such as MoSâ‚‚, WSâ‚‚, MoSeâ‚‚, and WSeâ‚‚ from density functional theory (DFT) by focusing on their nonlinearity and failure strains. The structures, crack-tip behaviors, and fracture patterns from the models are directly compared with atomic level in-situ TEM images.The models have revealed atomic scale mechanisms on the crack-tip behaviors in the single crystals such as roles of sulfur vacancies, geometric interlocking frictions, and the directions of crack propagation. The models have been further validated with more complicated structures from grain boundaries in the WSâ‚‚ bilayer and lateral heterostructures, e.g., MoSâ‚‚-WSeâ‚‚ by the images from ADF-STEM. Also, a method for generation of grain boundary has been proposed for well-stitched grain boundaries based on experimentally observed dislocations and defects. The models and methods have been utilized to understand the chemical reactions for MoSâ‚‚ channel growth in WSeâ‚‚ and fracture toughness of polycrystalline graphene. Finally, the validated models and methods are utilized to predict the atomic structures of 2D materials with three-dimensional (3D) surfaces, e.g., triply periodic minimal surfaces (TPMS) and corrugated surfaces with non-zero Gaussian curvatures.The mechanics, failure behaviors, and thermal properties of TPMS graphene are systematically studied from the predicted structures. A recent experiment shows the predicted scaling laws of Young's modulus and strengths agree well with the measurements."Funded by the MIT Presidential Fellowship (Edward H. Linde), AFOSR (DOD-MURI, Grant No. FA9550-15-1-0514), ONR (Grant No. N00014- 16-1-233), NSF (Grant No. CMMI-1300649), and NIH (Grant No. U01EB014976; 5U01EB016422)"--Page 8by Gang Seob Jung.Ph. D.Ph.D. Massachusetts Institute of Technology, Department of Civil and Environmental Engineerin
Enhancing High-Fidelity Neural Network Potentials through Low-Fidelity Sampling
The efficacy of neural network potentials (NNPs) critically depends on the quality of the configurational datasets used for training. Prior research using empirical potentials has shown that well-selected liquid-solid transitional configurations of a metallic system can be translated to other metallic systems. This study demonstrates that such validated configurations can be relabeled using density functional theory (DFT) calculations, thereby enhancing the development of high-fidelity NNPs. Training strategies and sampling approaches are efficiently assessed using empirical potentials and subsequently relabeled via DFT in a highly parallelized fashion for high-fidelity NNP training. Our results reveal that relying solely on energy and force for NNP training is inadequate to prevent overfitting, highlighting the necessity of incorporating stress terms into the loss functions. To optimize training involving force and stress terms, we propose employing transfer learning to fine-tune the weights, ensuring the potential surface is smooth for these quantities composed of energy derivatives. This approach markedly improves the accuracy of elastic constants derived from simulations in both empirical potential-based NNP and relabeled DFT-based NNP. Overall, this study offers significant insights into leveraging empirical potentials to expedite the development of reliable and robust NNPs at the DFT level