Title: ?a???s?as? t?? PowerPoint
1Simulations of Soft Matter under Equilibrium and
Non-equilibrium Conditions
VAGELIS HARMANDARIS International Conference on
Applied Mathematics Heraklion, 16/09/2013
2Outline
- Introduction Motivation, Length-Time Scales,
Simulation Methods.
- Multi-scale Particle Approaches Atomistic and
systematic coarse-grained simulations of
polymers.
- Application Equilibrium polymeric systems.
- Application Non-equilibrium (flowing) polymer
melts.
- Conclusions Open Questions.
3- COMPLEX SYSTEMS TIME - LENGTH SCALES
- A wide spread of characteristic times (15 20
orders of magnitude!) - -- bond vibrations 10-15 sec
- -- dihedral rotations 10-12 sec
- -- segmental relaxation 10-9 - 10-12 sec
- -- maximum relaxation time, t1 1 sec (for ? lt
?m)?
4Modeling of Complex Systems Molecular Dynamics
- Classical mechanics solve classical equations of
motion in phase space, GG(r, p). - In microcanonical (NVE) ensemble
The evolution of system from time t0 to time t
is given by
Liouville operator
5Modeling of Complex Systems Molecular Dynamics
- Various methods for dynamical simulations in
different ensembles. - In canonical (NVT) ensemble
- -- Langevin (stochastic) Thermostat
- -- Nose-Hoover thermostat Nosé 1984 Hoover,
1985 add one more degree of freedom ?.
6Molecular Interaction Potential (Force Field)
Molecular model Information for the functions
describing the molecular interactions between
atoms.
-- Potential parameters are obtained from more
detailed simulations or fitting to experimental
data.
7MULTI-SCALE DYNAMIC MODELING OF COMPLEX SYSTEMS
Atomistic MD Simulations Quantitative
predictions of the dynamics in soft matter.
Limits of Atomistic MD Simulations (with usual
computer power) -- Length scale few Å O(10
nm)? -- Time scale few fs - O(1 µs) (10-15
10-6 sec) 107 109 time steps -- Molecular
Length scale (concerning the global
dynamics) up to a few Me for simple
polymers like PE, PB much below Me for more
complicated polymers (like PS)?
Need - Simulations in larger length time
scales. - Application in molecular weights
relevant to polymer processing. - Quantitative
predictions. Proposed method - Coarse-grained
particle models obtained directly from the
chemistry.
8Systematic Coarse-Graining Overall Procedure
1. Choice of the proper CG description.
-- Microscopic (N particles)
-- Mesoscopic (M super particles)
-- Usually T is a linear operator (number of
particles that correspond to a super-particle
9Systematic Coarse-Graining Overall Procedure
2. Perform microscopic (atomistic) simulations
of short chains (oligomers) (in vacuum) for short
times.
3. Develop the effective CG force field using the
atomistic data-configurations.
4. CG simulations (MD or MC) with the new
coarse-grained model.
Re-introduction (back-mapping) of the atomistic
detail if needed.
10Effective (Mesoscopic) CG Interaction Potential
(Force Field)
CG Potential In principle UCG is a function of
all CG degrees of freedom in the system and of
temperature (free energy)
- CG Hamiltonian Renormalization Group Map
11Bonded CG Interaction Potential
- Bonded Potential
- Degrees of freedom bond lengths (r), bond
angles (?), dihedral angles (?)
- Procedure
- From the microscopic simulations we calculate
the distribution functions of the degrees of
freedom in the mesoscopic representation,
PCG(r,?,?). - PCG(r,?, ?) follow a Boltzmann distribution
12Non-bonded CG Interaction Potential Reversible
Work
- Assumption 3 Pair-wise additivity
- Reversible work method McCoy and Curro,
Macromolecules, 31, 9362 (1998) - By calculating the reversible work (potential of
mean force) between the centers of mass of two
isolated molecules as a function of distance
- Average lt gt over all degrees of freedom G that
are integrated out (here orientational ) keeping
the two center-of-masses fixed at distance r.
13CG MD DEVELOPMENT OF CG MODELS DIRECTLY FROM THE
CHEMISTRY APPLICATION POLYSTYRENE
(PS)? Harmandaris, et al. Macromolecules, 39,
6708 (2006) Macromol. Chem. Phys. 208, 2109
(2007) Macromolecules 40, 7026 (2007) Fritz et
al. Macromolecules 42, 7579 (2009)
1) CHOICE OF THE PROPER COARSE-GRAINED MODEL
- 21 model Each chemical repeat unit replaced by
two CG spherical beads (PS 16 atoms or 8 united
atoms replaced by 2 beads).
- CG operator T from CHx to A and B
description. - Each CG bead corresponds to O(10) atoms.
s? 4.25 Å sB 4.80 Å
- Chain tacticity is described through the
effective bonded potentials. - Relatively easy to re-introduce atomistic detail
if needed.
2) ATOMISTIC SIMULATIONS OF ISOLATED PS RANDOM
WALKS
14CG MD Simulations Structure in the Atomistic
Level after Re-introducing the Atomistic Detail
in CG Configurations.
- Simulation data atomistic configurations of
polystyrene obtained by reinserting atomistic
detail in the CG ones. - Wide-angle X-Ray diffraction measurements
Londono et al., J. Polym. Sc. B, 1996.
grem total g(r) excluding correlations between
first and second neighbors.
15CG Polymer Dynamics is Faster than the Real
Dynamics
PS, 1kDa, T463K
Free Energy Landscape
- -- CG effective interactions are softer than the
real-atomistic ones due to lost degrees of
freedom (lost forces). - This results into a smoother energy landscape.
- CG MD We do not include friction forces.
16CG Polymer Dynamics Quantitative Predictions
CG dynamics is faster than the real dynamics.
Time Mapping (semi-empirical) method
- Find the proper time in the CG description by
moving the raw data in time. Choose a reference
system. Scaling parameter, tx, corresponds to the
ratio between the two friction coefficients.
Time Mapping using the mean-square displacement
of the chain center of mass
- Check transferability of tx for different
systems, conditions (?, T, P, ).
17Polymer Melts through CG MD Simulations Self
Diffusion Coefficient
- Correct raw CG diffusion data using a time
mapping approach. - V. Harmandaris and K. Kremer, Soft Matter, 5,
3920 (2009) - Crossover regime from Rouse to reptation
dynamics. Include the chain end (free volume)
effect.
-- Rouse D M-1 -- Reptation D M-2
Crossover region -- CG MD Me 28.000-33.000
gr/mol -- Exp. Me 30.0000-35.000 gr/mol
-- Exp. Data NMR Sillescu et al. Makromol.
Chem., 188, 2317 (1987)
18CG Simulations Application Non-Equilibrium
Polymer Melts
- Non-equilibrium molecular dynamics (NEMD)
modeling of systems out of equilibrium - flowing
conditions.
- NEMD Equations of motion (pSLLOD)
simple shear flow
- In canonical ensemble (Nose-Hoover) C. Baig et
al., J. Chem. Phys., 122, 11403, 2005
19CG Simulations Application Non-Equilibrium
Polymer Melts
- NEMD equations of motion are not enough we
need the proper periodic boundary conditions. - Steady shear flow
Lees-Edwards Boundary Conditions
simple shear flow
20CG Polymer Simulations Non-Equilibrium Systems
- CG NEMD - Remember CG interaction potentials
are calculated as potential of mean force (they
include entropy). In principle UCG(x,T) should be
obtained at each state point, at each flow field.
Important question How well polymer systems
under non-equilibrium (flowing) conditions can be
described by CG models developed at equilibrium?
Method C. Baig and V. Harmandaris,
Macromolecules, 43, 3156 (2010)
Use of existing equilibrium CG polystyrene (PS)
model.
- Direct comparison between atomistic and CG NEMD
simulations for various flow fields. Strength of
flow (Weissenberg number, Wi 0.3 - 200)
- Study short atactic PS melts (M2kDa, 20
monomers) by both atomistic and CG NEMD
simulations.
21CG Non-Equilibrium Polymers Conformations
- Properties as a function of strength of flow
(Weissenberg number)
R
- Atomistic cxx asymptotic behavior at high Wi
because of (a) finite chain extensibility, (b)
chain rotation during shear flow. - CG cxx allows for larger maximum chain
extension at high Wi because of the softer
interaction potentials.
22CG Non-Equilibrium Polymers Conformation Tensor
- cyy, czz excellent agreement between atomistic
and CG configurations.
23CG Non-Equilibrium Polymers Dynamics
- Is the time mapping factor similar for different
flow fields? - C. Baig and V. Harmandaris, Macromolecules, 43,
3156 (2010)
Translational motion
- Purely convective contributions from the applied
strain rate are excluded.
- Very good qualitative agreement between
atomistic and CG (raw) data at low and
intermediate flow fields.
24CG Non-Equilibrium Polymers Dynamics
Orientational motion
- Rotational relaxation time small variations at
low strain rates, large decrease at high flow
fields. - Good agreement between atomistic and CG at low
and intermediate flow fields.
25CG Non-Equilibrium Polymers Dynamics
- Time mapping parameter as a function of the
strength of flow.
- Strong flow fields smaller time mapping
parameter ? effective CG bead friction decreases
less than the atomistic one. - Reason CG chains become more deformed than the
atomistic ones.
26Conclusions
- Hierarchical systematic CG models, developed
from isolated atomistic chains, correctly predict
polymer structure and dimensions.
- Time mapping using dynamical information from
atomistic description allow for quantitative
dynamical predictions from the CG simulations,
for many cases.
- Overall speed up of the CG MD simulations,
compared with the atomistic MD, is 3-5 orders
of magnitude.
- System at non-equilibrium conditions can be
accurately studied by CG NEMD simulations at low
and medium flow fields.
- Deviations between atomistic and CG NEMD data at
high flow fields due to softer CG interaction
potentials.
27Challenges Current Work
- Estimation of CG interaction potential (free
energies) Check improve all assumptions - Ongoing work with M. Katsoulakis, D.
Tsagarogiannis, A. Tsourtis
- Quantitative prediction of dynamics based on
statistical mechanics - e.g. Mori-Zwanzig formalism (Talk by Rafael
Delgado-Buscalioni)
- Parameterizing CG models under non-equilibrium
conditions - e.g. Information-theoretic tools (Talk by Petr
Plechac)
- Application of the whole procedure in more
complex systems - e.g. Multi-component biomolecular systems,
hybrid polymer based nanocomposites - Ongoing work with A. Rissanou
28ACKNOWLEDGMENTS
Prof. C. Baig School of Nano-Bioscience and
Chemical Engineering, UNIST University, Korea
Funding ACMAC UOC Regional Potential Grant
FP7 DFG SPP 1369 Interphases and Interfaces
, Germany Graphene Research
Center, FORTH Greece
29EXTRA SLIDES
30APPLICATION PRIMITIVE PATHS OF LONG POLYSTYRENE
MELTS
- Describe the systems in the levels of primitive
paths - V. Harmandaris and K. Kremer, Macromolecules,
42, 791, (2009)
- Entanglement Analysis using the Primitive Path
Analysis (PPA) method - Evereaers et al., Science 2004, 303, 823.
PP PS configuration (50kDa)
CG PS configuration (50kDa)
- Calculate directly PP contour length Lpp,, tube
diameter
-- PP CG PS Ne 180 20 monomers
31CALCULATION OF Me in PS Comparison Between
Different Methods
- Several methods to calculate Me broad spread
of different estimates - V. Harmandaris and K. Kremer, Macromolecules,
42, 791 (2009)
Method T(K) Ne (mers) Reference
Rheology 423 140 15 Liu et al., Polymer, 47, 4461 (2006)
Self-diffusion coefficient 458 280-320 Antonieti et al., Makrom. Chem., 188, 2317 (1984)
Self-diffusion coefficient 463 240-300 This work
Segmental dynamics 463 110 30 This work
Entanglement analysis 463 180 20 This work
Entanglement analysis 413 124 Spyriouni et al., Macromolecules, 40, 3876 (2007)
32MESOSCOPIC BOND ANGLE POTENTIAL OF PS
Distribution function PCG(?,T)?
CG Bending potential UCG(?,T)?
33CG Simulations Applications Equilibrium
Polymer Melts
- Systems Studied Atactic PS melts with molecular
weight from 1kDa (10 monomers) up to 50kDa (1kDa
1000 gr/mol).
- NVT Ensemble.
- Langevin thermostat (T463K).
- Periodic boundary conditions.
34STATIC PROPERTIES Radius of Gyration
RG
35SMOOTHENING OF THE ENERGY LANDSCAPE
Qualitative prediction due to lost degrees of
freedom (lost forces) in the local level ?
Local friction coefficient in CG mesoscopic
description is smaller than in the
microscopic-atomistic one
Rouse
Reptation
CG diffusion coefficient is larger than the
atomistic one
36Time Mapping Parameter Translational vs
Orientational Dynamics