Title: From Colliding Atoms to Colliding Galaxies
1From Colliding Atoms to Colliding Galaxies The
Complex Dynamics of Interacting Systems
- T. P. Devereaux
- Students C. M. Palmer, M. Gallamore G.
McCormack
2Many-Body Physics at Many Length Scales
1026 - 1015 m
102 10-4 m
Universe evolve? Galaxy formation? Cosmic
strings?
Phases of matter? Neural networks?
10-4 10-8 m
1015 - 108 m
Cell dynamics? Protein folding? Magnetic vortices
in superconductors?
Black holes? Star formation? Are orbits stable?
108 - 102 m
10-8 10-16 m
Global warming? Predict weather? Population
biology?
Electron transport? Ultra-cold atoms? Forces
inside the nucleus?
3The Many-Body Problem
- What cannot be explained in terms of
non-interacting particles - Collective behavior of many particles (galaxies,
proteins, metals, etc.). - Phase transitions (e.g. solid-liquid,
ferromagnet-paramagnet). - Structures and conformations (crystals, polymers,
biopolymers, etc.). - Instabilities of particles or fields (1D
Luttinger liquid, black holes, cosmic strings).
Solving for a particles path
- Start out with 1 particle
- Fma or
- -ih??/?t H ?
- - determines particles path.
- Add another particle
- add V(r1-r2)
- - path of particle 1 depends on path of
particle 2.
- Add one more particle
- NOT EXACTLY SOLVABLE! (except in special cases)
PROBLEM How can we approach real systems?
4What is Computational Physics?Computation v.
Experiment v. Theory in Physics
- The goal of computational physics is not to
replace theory or experiment, but to enhance our
understanding of physical processes. - Create experiments.
- Visualize physics in action.
- Multi-disciplinary.
- Cost effective research.
- Very accessible.
5Different Computational Approaches
- Enumeration (e.g. Monte Carlo).
- Simulation (molecular dynamics).
- Algebraic manipulations (Maple, Mathematica).
- Solution of approximate equations (dynamical mean
field theory).
6Enumeration Monte Carlo methods
- Enumerate all the states of a system and
determine their energy. - Evolve towards a ground state.
- Used widely in chemistry, materials physics, and
biophysics - Example Simulated Annealing, Lattice Melting
Low Temperature
High Temperature
7Simulation N-Body Tree Codes
- Fma for all coupled particles (106).
Widely used in astronomy and condensed matter
Example Galaxy merger
C. Mihos, CWRU
8Approach to Modeling Real Systems
- Work on either exact problems or toy models.
- Do experiments with basic fundamental ideas.
- Determine dynamics macroscopic behavior
reproduced? - Determine essential physics ingredient.
9Lets Look at a Specific Problem
1026 - 1015 m
102 10-4 m
Universe evolve? Galaxy formation? Cosmic
strings?
Phases of matter? Neural networks?
10-4 10-8 m
1015 - 108 m
Cell dynamics? Protein folding? Magnetic vortices
in superconductors?
Are orbits stable? Star formation? Black holes?
- How do structures order?
- How are they affected by defects?
- How do they respond to external forces?
What are magnetic vortices in superconductors?
Dynamics of Extended Floppy Objects
108 - 102 m
10-8 10-16 m
- Lipids, proteins
- DNA
- Magnetic vortices
Predict weather? Global warming? Population
biology?
Electron transport? Ultra-cold atoms? Forces
inside the nucleus?
10Real applications of superconductors
Mag-lev
Transmission lines
Biomedical applications
- Further applications?
- peta-flop supercomputer?
- nanoscale devices?
- quantum computation?
11Vortices in Superconductors
- Electrons pair to lower their energy when cooled
to superconducting state. - Electrons carry current without resistance and
expel magnetic fields. - Electrons swirl in magnetic field gt KE kills
superconductivity.
- SOLUTION Rather than kill superconductivity
altogether, let magnetic field penetrate in
isolated places -gt VORTICES (tubes of swirling
electrons).
EXTENDED FLOPPY OBJECT (you can choose another if
you like)!
12Visualization of Increasing Applied Magnetic
Field B
B
Now if an external current J is applied
More and more vortices appear as the magnetic
field increases
and the vortices begin to order into a lattice.
J
F
Lorentz force causes vortices to move -gt EMF
produced and we get resistance! NO LONGER A
SUPERCONDUCTOR!
13Solution Create defects to pin vortices
- Krusin-Elbaum et al (1996).
Vortices lower their energy by sitting on defects.
- Critical current enhanced over virgin
material. - Splayed defects better than straight ones.
- Optimal splaying angle 4 degrees.
14Molecular Dynamics Simulations of Vortices
- Vortices elastic strings under tension.
- Vortices repel each other.
- Temperature treated as Langevin noise.
- Solve equations of motion for each vortex.
- Calculate current versus applied Lorentz force,
determine critical current.
15Animation Pinning of Vortices
- Different types of pinning
- straight
- stretched
- collective
would be missed if vortices were treated
individually.
16Pinning Principles (fixed field)
At low T, a few pins can stop the whole lattice.
At larger T, pieces of lattice shear away.
Columnar defects
17Pinning principles (fixed temperature)
For small fields, pinned vortices may trap others.
But channels of vortex flow appear at larger
fields.
18Depinning lt-gt vortex avalanches
- STRATEGY
- Use defects to pin, block channel flow.
- Take advantage of repulsion.
- So we must pin all vortices.
- Identified main ingredient blocking channel
flow.
19A Wall of Defects?
A wall of defects can stop channel flow
but causes too much damage to sample.
20Splaying (tilting) Defects
Vortices stuck on tilted defects.
But vortices have difficulty accommodating to
defects for large angles of splay.
- Stuck vortices block interstitials.
- Channels of flow eliminated.
21Reproducing Experiments
- Two-stage depinning for columnar defects
(squares) channel flow and onset of bulk flow.
Splayed defects (circles) eliminate channels of
flow. - Used our simulations to identify main physical
ingredient (blocking channel flow) to reproduce
experimental behavior.
22Ending the story
Computational many body physics is diverse and
applicable to many important problems across many
fields.
23Summary
- Many-body problem touches all length scales, many
areas of physics. - Computational physics is a powerful and
cost-effective tool to complement
theory/experiment. - Many roads to follow
- Use N-body tree codes to simulate galaxies and
larger scale systems. - Unzipping transitions in DNA Pathways of protein
folding -gt Raman (light) scattering. - Onset of avalanches.
- Behavior as a qubit (quantum computing).