12 research outputs found
The atomic simulation environment — a python library for working with atoms
The Atomic Simulation Environment (ASE) is a software package written in the Python programming language with the aim of setting up, steering, and analyzing atomistic simula- tions. In ASE, tasks are fully scripted in Python. The powerful syntax of Python combined with the NumPy array library make it possible to perform very complex simulation tasks. For example, a sequence of calculations may be performed with the use of a simple "for-loop" construction. Calculations of energy, forces, stresses and other quantities are performed through interfaces to many external electronic structure codes or force fields using a uniform interface. On top of this calculator interface, ASE provides modules for performing many standard simulation tasks such as structure optimization, molecular dynamics, handling of constraints and performing nudged elastic band calculations
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Odd Transport Phenomena in Active Matter
The familiar macroscopic properties of matter emerge out of complex dynamics occurring at the molecular scale. Establishing this connection between microscopic and macroscopic behaviors is the principal task of statistical mechanics. But collective phenomena can emerge out of individual motion and interactions in a much broader class of systems than those with which statistical mechanics has traditionally been concerned, including systems composed of particles that move under their own power by consuming energy from their environment. Known as active matter, such systems can exhibit novel phase and transport behavior with both surprising similarities and striking differences compared to ordinary matter. In this dissertation, I present contributions to the development of a revised statistical mechanical framework describing the emergence of linear transport phenomena in active matter. In particular, odd transport phenomena, in which fluxes arise in the direction perpendicular to thermodynamic driving forces, are shown to be a consequence of chirality in the microscopic fluctuations, characterized by the breaking of time-reversal and parity symmetries. The main results presented in this dissertation consist of the derivations of Green-Kubo relations connecting microscopic symmetries to macroscopic odd transport, together with numerical validation of these relations through molecular dynamics simulations of active model systems. Through this lens, odd diffusion and odd viscosity are introduced and developed. I conclude by presenting a general framework for deriving Green-Kubo relations for odd transport coefficients in active matter. Taken as a whole, these results provide a fruitful extension of existing statistical mechanics concepts, facilitating an understanding of the microscopic origins of odd transport phenomena and indicating the physical contexts in which new types of odd transport can be expected
Odd Diffusivity of Chiral Random Motion
Diffusive transport is characterized by a diffusivity tensor which may, in
general, contain both a symmetric and an antisymmetric component. Although the
latter is often neglected, we derive Green-Kubo relations showing it to be a
general characteristic of random motion breaking time-reversal and parity
symmetries, as encountered in chiral active matter. In analogy with the
so-called odd viscosity appearing in chiral active fluids, we term this
component the odd diffusivity. We show how odd diffusivity emerges in a chiral
random walk model, and demonstrate the applicability of the Green-Kubo
relations through molecular dynamics simulations of a passive tracer particle
diffusing in a chiral active bath
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Odd Diffusivity of Chiral Random Motion.
Diffusive transport is characterized by a diffusivity tensor which may, in general, contain both a symmetric and an antisymmetric component. Although the latter is often neglected, we derive Green-Kubo relations showing it to be a general characteristic of random motion breaking time-reversal and parity symmetries, as encountered in chiral active matter. In analogy with the odd viscosity appearing in chiral active fluids, we term this component the odd diffusivity. We show how odd diffusivity emerges in a chiral random walk model, and demonstrate the applicability of the Green-Kubo relations through molecular dynamics simulations of a passive tracer particle diffusing in a chiral active bath
Time reversal symmetry breaking and odd viscosity in active fluids: Green-Kubo and NEMD results.
Active fluids, which are driven at the microscale by non-conservative forces, are known to exhibit novel transport phenomena due to the breaking of time reversal symmetry. Recently, Epstein and Mandadapu [arXiv:1907.10041 (2019)] obtained Green-Kubo relations for the full set of viscous coefficients governing isotropic chiral active fluids, including the so-called odd viscosity, invoking Onsager's regression hypothesis for the decay of fluctuations in active non-equilibrium steady states. In this Communication, we test these Green-Kubo relations using molecular dynamics simulations of a canonical model system consisting of actively torqued dumbbells. We find the resulting odd and shear viscosity values from the Green-Kubo relations to be in good agreement with values measured independently through non-equilibrium molecular dynamics flow simulations. This provides a test of the Green-Kubo relations and lends support to the application of the Onsager regression hypothesis in relation to viscous behaviors of active matter systems
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Time reversal symmetry breaking and odd viscosity in active fluids: Green-Kubo and NEMD results.
Active fluids, which are driven at the microscale by non-conservative forces, are known to exhibit novel transport phenomena due to the breaking of time reversal symmetry. Recently, Epstein and Mandadapu [arXiv:1907.10041 (2019)] obtained Green-Kubo relations for the full set of viscous coefficients governing isotropic chiral active fluids, including the so-called odd viscosity, invoking Onsager's regression hypothesis for the decay of fluctuations in active non-equilibrium steady states. In this Communication, we test these Green-Kubo relations using molecular dynamics simulations of a canonical model system consisting of actively torqued dumbbells. We find the resulting odd and shear viscosity values from the Green-Kubo relations to be in good agreement with values measured independently through non-equilibrium molecular dynamics flow simulations. This provides a test of the Green-Kubo relations and lends support to the application of the Onsager regression hypothesis in relation to viscous behaviors of active matter systems
Anomalous Nanoparticle Surface Diffusion in Liquid Cell TEM is Revealed by Deep Learning-Assisted Analysis
The motion of nanoparticles near surfaces is of fundamental importance in physics, biology, and chemistry. Liquid cell transmission electron microscopy (LCTEM) is a promising technique for studying motion of nanoparticles with high spatial resolution. Yet, the lack of understanding of how the electron beam of the microscope affects the particle motion has held back advancement in using LCTEM for in situ single nanoparticle and macromolecule tracking at interfaces. Here, we experimentally studied the motion of a model system of gold nanoparticles dispersed in water and moving adjacent to the silicon nitride membrane of a commercial liquid cell in a broad range of electron beam dose rates. We find that the nanoparticles exhibit anomalous diffusive behavior modulated by the electron beam dose rate. We characterized the anomalous diffusion of nanoparticles in LCTEM using a convolutional deep neural network model and canonical statistical tests. The results demonstrate that the nanoparticle motion is governed by fractional Brownian motion at low dose rates, resembling diffusion in a viscoelastic medium, and continuous time random walk at high dose rates, resembling diffusion on an energy landscape with pinning sites. Both behaviors can be explained by the presence of silanol molecular species on the surface of the silicon nitride membrane and the ionic species in solution formed by radiolysis of water in presence of the electron beam
Anomalous nanoparticle surface diffusion in LCTEM is revealed by deep learning-assisted analysis
The motion of nanoparticles near surfaces is of fundamental importance in physics, biology, and chemistry. Liquid cell transmission electron microscopy (LCTEM) is a promising technique for studying motion of nanoparticles with high spatial resolution. Yet, the lack of understanding of how the electron beam of the microscope affects the particle motion has held back advancement in using LCTEM for in situ single nanoparticle and macromolecule tracking at interfaces. Here, we experimentally studied the motion of a model system of gold nanoparticles dispersed in water and moving adjacent to the silicon nitride membrane of a commercial LC in a broad range of electron beam dose rates. We find that the nanoparticles exhibit anomalous diffusive behavior modulated by the electron beam dose rate. We characterized the anomalous diffusion of nanoparticles in LCTEM using a convolutional deep neural-network model and canonical statistical tests. The results demonstrate that the nanoparticle motion is governed by fractional Brownian motion at low dose rates, resembling diffusion in a viscoelastic medium, and continuous-time random walk at high dose rates, resembling diffusion on an energy landscape with pinning sites. Both behaviors can be explained by the presence of silanol molecular species on the surface of the silicon nitride membrane and the ionic species in solution formed by radiolysis of water in presence of the electron beam