Anomalous Lévy diffusion: From the flight of an albatross to optical lattices. Eric Lutz Abteilung für Quantenphysik, Universität Ulm

Size: px
Start display at page:

Download "Anomalous Lévy diffusion: From the flight of an albatross to optical lattices. Eric Lutz Abteilung für Quantenphysik, Universität Ulm"

Transcription

1 Anomalous Lévy diffusion: From the flight of an albatross to optical lattices Eric Lutz Abteilung für Quantenphysik, Universität Ulm

2 Outline 1 Lévy distributions Broad distributions Central limit theorem Physical examples 2 Lévy diffusion Normal diffusion Anomalous diffusion (fractional derivative) Experimental observations 3 Statistical mechanics Anomalous Lévy diffusion in an optical lattice Fluctuations: how large is large? Ergodicity

3 Broad distributions Physical point of view Many phenomena: well-defined average behavior with fluctuations around average value fluctuations described by narrow distributions ex: Gauss distribution Other phenomena: properties dominated by fluctuations (average not important, may not even exist) fluctuations described by broad distributions ex: Lévy distributions "broad"=power-law tail

4 Broad distributions Mathematical point of view: Central limit theorem S N = X 1 + X X N Sum of N independent random variables X i Case 1: finite second moment X 2 i < S N Gauss distribution N Case 2: divergent second moment X 2 i S N Lévy distribution N Stable probability distributions

5 Lévy distribution Definition and main properties: Lévy 1937 Characteristic function ϕ(k) = dx P(x) e ikx = e c k α 0 < α 2 Asymptotic power law decay P(x) 1 x 1+α, x α < 2 Second moment diverges x 2 = dx x 2 P(x) α < 2 Scale-free distributions

6 Physical examples α = 2 Gauss e x2 /2 2π (Errors in astronomical observations) 1809 α = 1 Breit-Wigner 1 π 1 1+x 2 (Cross-section of resonant scattering) 1936 α = 1 2 Schrödinger e 1/2x 2πx 3 α = 3 2 Holtzmark (First-passage time distribution) 1915 (Random gravitational force on a star) 1919

7 Outline 1 Lévy distributions Broad distributions Central limit theorem Physical examples 2 Lévy diffusion Normal diffusion Anomalous diffusion (fractional derivative) Experimental observations 3 Statistical mechanics Anomalous Lévy diffusion in an optical lattice Fluctuations: how large is large? Ergodicity

8 Normal diffusion Example: small particles in a glass of water Perrin 1909 Gaussian dynamics: Diffusion equation: Solution: P t P(x, t) = = D 2 P x 2 1 4πDt e x 2 /(4Dt) Mean-square displacement: Irregular, random motion Brownian motion Brown 1827 x 2 = 2Dt linear in time

9 Transport equations: Gauss System S in contact with bath B (temperature T) Langevin 1908 mẍ + U (x) + ηẋ = F (t) η = friction F (t) = Gaussian random force (central-limit theorem) F(t) = 0 F(t)F(t ) = 2D δ(t t ) D = ηkt

10 Lévy diffusion Definition: mẍ + U (x) + ηẋ = F(t) F(t) = Lévy random force (central-limit theorem) Properties: algebraic tail of force distribution large fluctuations long jumps (Lévy flights) Enhanced diffusion ( x 2 )

11 Flight of an albatross Flight-time measurement of 30 albatrosses at Bird Island Typical trajectories: Stanley et al., Nature 1996 Distribution of flight-time intervals: P(t i ) 1 (t i + 1) µ µ = 1+α 2 Power-law distribution

12 Experiment 1: Diffusion in micelles Micelles = polymer-like molecules that break and recombine rapidly Ott et al., PRL 1991 α = 1.5 Measurement: intensity of light emitted by fluorescent atoms after photobleaching characteristic function Diffusion equation: Gauss P t = D 2 P x 2 e P t = Dk 2 P P(k, t) = e Dt k 2 Lévy P t = D α P x α e P t = D k α P P(k, t) = e Dt k α

13 Fractional derivative Letter from Leibniz to L Hospital: d 1/2 dx 1/2 x =? d m dx m x n = n! (n m)! x n m = m = 1/2, n = 1 d 1/2 dx 1/2 x = 2 π x 1/2 Riemann-Liouville operator: Γ(n + 1) Γ(n m + 1) x n m d α dx α F(x) d (ik)α F(k) α Ex: Riesz operator: d α d x α F(x) d k α F(k) α Ex: d α d x α F(x) = 1 d 2 κ α dx 2 dy dx α eax = a α e ax d x α cos ax = a α cos ax F (y) x y α 1 non-local

14 Experiment 2: 2D rotating flow Rotating tank (water + glycerol) 1.5 Hz Weeks et al., PRL 1993 Typical trajectory: Regime of chaotic advection chain of vortices Pdf of duration of flight: α = 1.3

15 Experiment 3: Surface diffusion Senft et al., PRL 1995 Palladium atoms on a tungsten lattice T = 133K α = 1.251, s = 7.4 Measurement: displacement of single atom on a 1D lattice (field microscopy) Low diffusion barrier longs jumps (2, 3 or more lattice sites) ϕ(k) = e sk α Realization of 1D discrete random walk

16 Experiment 4: Saccadic eye movements Brockmann and Geisel 2004 Magnitude of visual angle: 0.1 < x < 100 P exp (x > 75 ) = Pdf of saccadic magnitude larger than x: P > (x) = x dx x (1+α) x α (α = µ)

17 Outline 1 Lévy distributions Broad distributions Central limit theorem Physical examples 2 Lévy diffusion Normal diffusion Anomalous diffusion (fractional derivative) Experimental observations 3 Statistical mechanics Anomalous Lévy diffusion in an optical lattice Fluctuations: how large is large? Ergodicity

18 Optical lattice Spatially periodic optical potential: obtained, for instance, by superposition of two counterpropagating laser beams "optical crystal" (band structure, Bragg scattering,...) Advantages: potential is exactly known (no defects) can be tuned in a precise way (spacing, amplitude) Atomic transport?

19 Atomic transport in optical lattice Transport equation for the semiclassical Wigner function: Dalibard and Cohen-Tannoudji 1989 W (p, t) t = [K (p)w ] + p p [D(p) W p ] Drift : K (p) = [Friction force] ᾱ p 1+(p/p c) 2 Diffusion : D(p) = D 0 + (Sisyphus effect) D 1 1+(p/p c) 2 [Momentum fluctuations] Cooling Heating Range of validity: large momentum, p k defines semiclassical limit small saturation, s 1 low laser intensity large kinetic energy, p 2 /2m U 0 allows spatial averaging

20 Power-law tail distribution in momentum Stationary momentum distribution: W s (p) = 1 Z Power-law tail: W s (p) p (ᾱp2 c )/D 0 Exponent can be rewritten as: [ 1 + D 0 p 2 ] (ᾱp 2 c )/(2D 0 ) D 0 + D 1 pc 2 (ᾱp 2 c)/d 0 = U 0 /(22E R ) (U 0 = potential depth, E R = recoil energy) Statistical properties of W s (p) can be changed: from normal statistics for U 0 > 66E R to Lévy statistics for U 0 < 66E R In fact, W s (p) = Tsallis distribution Lutz PRA (R) 2003

21 Lévy statistics and diverging moments Second moment: diverges if U 0 < 66E R. p 2 = dp p 2 W s (p) mean kinetic energy, E K = p 2 /2m, infinite. Fourth moment: diverges if U 0 < 110E R. p 4 = dp p 4 W s (p) mean square kinetic energy, E 2 K = p4 /4m 2, infinite.

22 Experiment Single 24 Mg + ions in a one dimensional optical lattice: Katori et al., PRL 1997 Experimental observation of the divergence of the atomic kinetic energy

23 Fluctuations: how large is large? Statistical properties of rare but extreme events: How tall should one design an embankment so that the river reaches this level only once in 50 years? How large will be the largest earthquake in Los Angeles in the next 20 years? How large is the largest atomic momentum in 1000 observations? Extreme Value Theory Gumbel 1958

24 Fluctuations: how large is large? For independent events: Value x max = λ of the maximum among N realizations that will not be exceeded with probability p satisfies: for exponential P(x) = e x λ dx P(x) ln(1/p) N [ λ ln N ln(1/p) for power-law P(x) = x (1+α) λ [ N ln(1/p) ] ] 1/α Example: P(x) = C (1 + x 2 ) (1+α)/2 N = 1000 p = 99% U 0 /E R α λ ( p 4 diverges) ( p 2 diverges) ( p diverges)

25 Ergodicity Motivation: Two recent experiments "Experimental Investigation of Nonergodic Effects in Subrecoil Laser Cooling" Saubamea et al., PRL 1999 "Statistical Aging and Nonergodicity in the Fluorescence of Single Nanocrystals" Stockmann et al., PRL 2003 Lévy statistics induces ergodicity breaking Question: connection between nonergodicity and diverging moments? Advantage of optical lattice: Ordinary linear Fokker-Planck equation

26 Ergodicity Definition: "Ensemble average and time average of observables are equal in the infinite-time limit." A = A as t Ensemble average: A = dp A(p) W (p, t) in the long time limit: A s = dp A(p) W s (p) Time average : A = 1 t t 0 dτ A(p(τ)) Ergodicity in the mean-square sense: σ 2 A (t) = (A A ) 2 0 when t

27 Ergodicity Ergodicity breaking: Lutz PRL 2004 Ergodicity depends in general on the observable A(p) for A(p) = p n σ 2 A (t) t µ with µ = 1 (2n + 1)D 2D σ 2 A (t) 0 as t only if D < D n = 1/(2n + 1) Existence of a noise threshold D n above which ergodicity is broken (rescaled variables ᾱ = p c = 1, D 1 = 0, D 0 = D = 22E R /U 0 )

28 Ergodicity Moments of stationary momentum distribution: p m = dp p m W s (p) are finite for D < D m = 1/(m + 1) Direct relationship between the loss of ergodicity for A(p) = p n and the divergence of the 2nth moment of the stationary momentum distribution In particular: for n = 1 p p when p 2 diverges (D = 1/3, U 0 = 66E R )

29 Calculation of σ 2 A (t) σa(t) 2 = 1 t t t 2 dt ] dt 2 [[ A(p(t 1 ))A(p(t 2 )) A(p(t 1 )) A(p(t 2 )) Two-time correlation function: A(p(t 1 ))A(p(t 2 )) = dp 1 dp 2 A(p 1 )A(p 2 ) W 2 (p 1, t 1 ; p 2, t 2 ) Two-point joint probability density function: ( W 2 (p 1, t 1 ; p 2, t 2 ) = ψ 0 (p 1 )ψ 0 (p 2 ) ψ 0 (p 1 )ψ 0 (p 2 ) + 0 dk ψ k (p 1 )ψ k (p 2 ) e E k t 1 t 2 ) Finally σ 2 A (t) = 2 t 2 t 0 dτ (t τ) C A(τ) With C A (τ) = 0 dk [ dp A(p) ψ0 (p)ψ k (p) ] 2 e E k τ

30 Power-law tail distribution in time First passage time distribution: Divide momentum space in two regions: low momentum region p < 1, K 1 (p) p high momentum region p > 1, K 2 (p) 1/p First passage time = time at which the momentum of the system first exits a certain momentum interval, given that it was originally in that interval In the high momentum region: g 2 (t) t γ with γ = (3D + 1)/(2D) Power-law distribution in time

31 Power-law tail distribution in time Moments of the first passage time distribution: t n = dt t n g 2 (t) converge for D < D n = 1/(2n 1) Ergodicity is broken for A(p) = p n when the (n + 1)th moment of the first passage time distribution in the high momentum region becomes infinite In particular: for n = 1 p p when t 2 diverges (D = 1/3, U 0 = 66E R )

32 Summary Lévy distributions = power-law tail describe large fluctuations Strange properties (diverging moments) but observed in nature! Direct link between diverging moments and nonergodicity New statistical physics is needed!

Theory of fractional Lévy diffusion of cold atoms in optical lattices

Theory of fractional Lévy diffusion of cold atoms in optical lattices Theory of fractional Lévy diffusion of cold atoms in optical lattices, Erez Aghion, David Kessler Bar-Ilan Univ. PRL, 108 230602 (2012) PRX, 4 011022 (2014) Fractional Calculus, Leibniz (1695) L Hospital:

More information

Diffusion in a Logarithmic Potential Anomalies, Aging & Ergodicity Breaking

Diffusion in a Logarithmic Potential Anomalies, Aging & Ergodicity Breaking Diffusion in a Logarithmic Potential Anomalies, Aging & Ergodicity Breaking David Kessler Bar-Ilan Univ. E. Barkai (Bar-Ilan) A. Dechant (Augsburg) E. Lutz (Augsburg) PRL, 105 120602 (2010) arxiv:1105.5496

More information

Anomalous Transport and Fluctuation Relations: From Theory to Biology

Anomalous Transport and Fluctuation Relations: From Theory to Biology Anomalous Transport and Fluctuation Relations: From Theory to Biology Aleksei V. Chechkin 1, Peter Dieterich 2, Rainer Klages 3 1 Institute for Theoretical Physics, Kharkov, Ukraine 2 Institute for Physiology,

More information

Non-equilibrium phase transitions

Non-equilibrium phase transitions Non-equilibrium phase transitions An Introduction Lecture III Haye Hinrichsen University of Würzburg, Germany March 2006 Third Lecture: Outline 1 Directed Percolation Scaling Theory Langevin Equation 2

More information

Anomalous diffusion in biology: fractional Brownian motion, Lévy flights

Anomalous diffusion in biology: fractional Brownian motion, Lévy flights Anomalous diffusion in biology: fractional Brownian motion, Lévy flights Jan Korbel Faculty of Nuclear Sciences and Physical Engineering, CTU, Prague Minisymposium on fundamental aspects behind cell systems

More information

Lecture 25: Large Steps and Long Waiting Times

Lecture 25: Large Steps and Long Waiting Times Lecture 25: Large Steps and Long Waiting Times Scribe: Geraint Jones (and Martin Z. Bazant) Department of Economics, MIT Proofreader: Sahand Jamal Rahi Department of Physics, MIT scribed: May 10, 2005,

More information

Brownian motion 18.S995 - L03 & 04

Brownian motion 18.S995 - L03 & 04 Brownian motion 18.S995 - L03 & 04 Typical length scales http://www2.estrellamountain.edu/faculty/farabee/biobk/biobookcell2.html dunkel@math.mit.edu Brownian motion Brownian motion Jan Ingen-Housz (1730-1799)

More information

Brownian motion and the Central Limit Theorem

Brownian motion and the Central Limit Theorem Brownian motion and the Central Limit Theorem Amir Bar January 4, 3 Based on Shang-Keng Ma, Statistical Mechanics, sections.,.7 and the course s notes section 6. Introduction In this tutorial we shall

More information

Lecture notes for /12.586, Modeling Environmental Complexity. D. H. Rothman, MIT September 24, Anomalous diffusion

Lecture notes for /12.586, Modeling Environmental Complexity. D. H. Rothman, MIT September 24, Anomalous diffusion Lecture notes for 12.086/12.586, Modeling Environmental Complexity D. H. Rothman, MIT September 24, 2014 Contents 1 Anomalous diffusion 1 1.1 Beyond the central limit theorem................ 2 1.2 Large

More information

The Kramers problem and first passage times.

The Kramers problem and first passage times. Chapter 8 The Kramers problem and first passage times. The Kramers problem is to find the rate at which a Brownian particle escapes from a potential well over a potential barrier. One method of attack

More information

Weak Ergodicity Breaking. Manchester 2016

Weak Ergodicity Breaking. Manchester 2016 Weak Ergodicity Breaking Eli Barkai Bar-Ilan University Burov, Froemberg, Garini, Metzler PCCP 16 (44), 24128 (2014) Akimoto, Saito Manchester 2016 Outline Experiments: anomalous diffusion of single molecules

More information

Cover times of random searches

Cover times of random searches Cover times of random searches by Chupeau et al. NATURE PHYSICS www.nature.com/naturephysics 1 I. DEFINITIONS AND DERIVATION OF THE COVER TIME DISTRIBUTION We consider a random walker moving on a network

More information

Langevin Methods. Burkhard Dünweg Max Planck Institute for Polymer Research Ackermannweg 10 D Mainz Germany

Langevin Methods. Burkhard Dünweg Max Planck Institute for Polymer Research Ackermannweg 10 D Mainz Germany Langevin Methods Burkhard Dünweg Max Planck Institute for Polymer Research Ackermannweg 1 D 55128 Mainz Germany Motivation Original idea: Fast and slow degrees of freedom Example: Brownian motion Replace

More information

Chapter 3. Random Process & Partial Differential Equations

Chapter 3. Random Process & Partial Differential Equations Chapter 3 Random Process & Partial Differential Equations 3.0 Introduction Deterministic model ( repeatable results ) Consider particles with coordinates rr 1, rr, rr the interactions between particles

More information

Weak Ergodicity Breaking WCHAOS 2011

Weak Ergodicity Breaking WCHAOS 2011 Weak Ergodicity Breaking Eli Barkai Bar-Ilan University Bel, Burov, Korabel, Margolin, Rebenshtok WCHAOS 211 Outline Single molecule experiments exhibit weak ergodicity breaking. Blinking quantum dots,

More information

Quantum structures of photons and atoms

Quantum structures of photons and atoms Quantum structures of photons and atoms Giovanna Morigi Universität des Saarlandes Why quantum structures The goal: creation of mesoscopic quantum structures robust against noise and dissipation Why quantum

More information

Local vs. Nonlocal Diffusions A Tale of Two Laplacians

Local vs. Nonlocal Diffusions A Tale of Two Laplacians Local vs. Nonlocal Diffusions A Tale of Two Laplacians Jinqiao Duan Dept of Applied Mathematics Illinois Institute of Technology Chicago duan@iit.edu Outline 1 Einstein & Wiener: The Local diffusion 2

More information

Local time path integrals and their application to Lévy random walks

Local time path integrals and their application to Lévy random walks Local time path integrals and their application to Lévy random walks Václav Zatloukal (www.zatlovac.eu) Faculty of Nuclear Sciences and Physical Engineering Czech Technical University in Prague talk given

More information

Diffusion in the cell

Diffusion in the cell Diffusion in the cell Single particle (random walk) Microscopic view Macroscopic view Measuring diffusion Diffusion occurs via Brownian motion (passive) Ex.: D = 100 μm 2 /s for typical protein in water

More information

How does a diffusion coefficient depend on size and position of a hole?

How does a diffusion coefficient depend on size and position of a hole? How does a diffusion coefficient depend on size and position of a hole? G. Knight O. Georgiou 2 C.P. Dettmann 3 R. Klages Queen Mary University of London, School of Mathematical Sciences 2 Max-Planck-Institut

More information

CHAPTER V. Brownian motion. V.1 Langevin dynamics

CHAPTER V. Brownian motion. V.1 Langevin dynamics CHAPTER V Brownian motion In this chapter, we study the very general paradigm provided by Brownian motion. Originally, this motion is that a heavy particle, called Brownian particle, immersed in a fluid

More information

16. Working with the Langevin and Fokker-Planck equations

16. Working with the Langevin and Fokker-Planck equations 16. Working with the Langevin and Fokker-Planck equations In the preceding Lecture, we have shown that given a Langevin equation (LE), it is possible to write down an equivalent Fokker-Planck equation

More information

Eli Barkai. Wrocklaw (2015)

Eli Barkai. Wrocklaw (2015) 1/f Noise and the Low-Frequency Cutoff Paradox Eli Barkai Bar-Ilan University Niemann, Kantz, EB PRL (213) Theory Sadegh, EB, Krapf NJP (214) Experiment Stefani, Hoogenboom, EB Physics Today (29) Wrocklaw

More information

Laser cooling and trapping

Laser cooling and trapping Laser cooling and trapping William D. Phillips wdp@umd.edu Physics 623 14 April 2016 Why Cool and Trap Atoms? Original motivation and most practical current application: ATOMIC CLOCKS Current scientific

More information

5 Applying the Fokker-Planck equation

5 Applying the Fokker-Planck equation 5 Applying the Fokker-Planck equation We begin with one-dimensional examples, keeping g = constant. Recall: the FPE for the Langevin equation with η(t 1 )η(t ) = κδ(t 1 t ) is = f(x) + g(x)η(t) t = x [f(x)p

More information

This is a Gaussian probability centered around m = 0 (the most probable and mean position is the origin) and the mean square displacement m 2 = n,or

This is a Gaussian probability centered around m = 0 (the most probable and mean position is the origin) and the mean square displacement m 2 = n,or Physics 7b: Statistical Mechanics Brownian Motion Brownian motion is the motion of a particle due to the buffeting by the molecules in a gas or liquid. The particle must be small enough that the effects

More information

Lecture 1: Random walk

Lecture 1: Random walk Lecture : Random walk Paul C Bressloff (Spring 209). D random walk q p r- r r+ Figure 2: A random walk on a D lattice. Consider a particle that hops at discrete times between neighboring sites on a one

More information

Weak Ergodicity Breaking

Weak Ergodicity Breaking Weak Ergodicity Breaking Eli Barkai Bar-Ilan University 215 Ergodicity Ergodicity: time averages = ensemble averages. x = lim t t x(τ)dτ t. x = xp eq (x)dx. Ergodicity out of equilibrium δ 2 (, t) = t

More information

Lecture 3: From Random Walks to Continuum Diffusion

Lecture 3: From Random Walks to Continuum Diffusion Lecture 3: From Random Walks to Continuum Diffusion Martin Z. Bazant Department of Mathematics, MIT February 3, 6 Overview In the previous lecture (by Prof. Yip), we discussed how individual particles

More information

Weak chaos, infinite ergodic theory, and anomalous diffusion

Weak chaos, infinite ergodic theory, and anomalous diffusion Weak chaos, infinite ergodic theory, and anomalous diffusion Rainer Klages Queen Mary University of London, School of Mathematical Sciences Marseille, CCT11, 24 May 2011 Weak chaos, infinite ergodic theory,

More information

First-Passage Statistics of Extreme Values

First-Passage Statistics of Extreme Values First-Passage Statistics of Extreme Values Eli Ben-Naim Los Alamos National Laboratory with: Paul Krapivsky (Boston University) Nathan Lemons (Los Alamos) Pearson Miller (Yale, MIT) Talk, publications

More information

Dynamical Localization and Delocalization in a Quasiperiodic Driven System

Dynamical Localization and Delocalization in a Quasiperiodic Driven System Dynamical Localization and Delocalization in a Quasiperiodic Driven System Hans Lignier, Jean Claude Garreau, Pascal Szriftgiser Laboratoire de Physique des Lasers, Atomes et Molécules, PHLAM, Lille, France

More information

The dynamics of small particles whose size is roughly 1 µmt or. smaller, in a fluid at room temperature, is extremely erratic, and is

The dynamics of small particles whose size is roughly 1 µmt or. smaller, in a fluid at room temperature, is extremely erratic, and is 1 I. BROWNIAN MOTION The dynamics of small particles whose size is roughly 1 µmt or smaller, in a fluid at room temperature, is extremely erratic, and is called Brownian motion. The velocity of such particles

More information

Fractional Derivatives and Fractional Calculus in Rheology, Meeting #3

Fractional Derivatives and Fractional Calculus in Rheology, Meeting #3 Fractional Derivatives and Fractional Calculus in Rheology, Meeting #3 Metzler and Klafter. (22). From stretched exponential to inverse power-law: fractional dynamics, Cole Cole relaxation processes, and

More information

From normal to anomalous deterministic diffusion Part 3: Anomalous diffusion

From normal to anomalous deterministic diffusion Part 3: Anomalous diffusion From normal to anomalous deterministic diffusion Part 3: Anomalous diffusion Rainer Klages Queen Mary University of London, School of Mathematical Sciences Sperlonga, 20-24 September 2010 From normal to

More information

Continuous quantum measurement process in stochastic phase-methods of quantum dynamics: Classicality from quantum measurement

Continuous quantum measurement process in stochastic phase-methods of quantum dynamics: Classicality from quantum measurement Continuous quantum measurement process in stochastic phase-methods of quantum dynamics: Classicality from quantum measurement Janne Ruostekoski University of Southampton Juha Javanainen University of Connecticut

More information

Anomalous diffusion in cells: experimental data and modelling

Anomalous diffusion in cells: experimental data and modelling Anomalous diffusion in cells: experimental data and modelling Hugues BERRY INRIA Lyon, France http://www.inrialpes.fr/berry/ CIMPA School Mathematical models in biology and medicine H. BERRY - Anomalous

More information

LFFs in Vertical Cavity Lasers

LFFs in Vertical Cavity Lasers LFFs in Vertical Cavity Lasers A. Torcini, G. Giacomelli, F. Marin torcini@inoa.it, S. Barland ISC - CNR - Firenze (I) Physics Dept - Firenze (I) INLN - Nice (F) FNOES - Nice, 14.9.5 p.1/21 Plan of the

More information

arxiv: v1 [cond-mat.stat-mech] 15 Sep 2007

arxiv: v1 [cond-mat.stat-mech] 15 Sep 2007 Current in a three-dimensional periodic tube with unbiased forces Bao-quan Ai a and Liang-gang Liu b a School of Physics and Telecommunication Engineering, South China Normal University, 56 GuangZhou,

More information

Renormalization Group: non perturbative aspects and applications in statistical and solid state physics.

Renormalization Group: non perturbative aspects and applications in statistical and solid state physics. Renormalization Group: non perturbative aspects and applications in statistical and solid state physics. Bertrand Delamotte Saclay, march 3, 2009 Introduction Field theory: - infinitely many degrees of

More information

Anomalous diffusion of a tagged monomer with absorbing boundaries

Anomalous diffusion of a tagged monomer with absorbing boundaries Anomalous diffusion of a tagged monomer with absorbing boundaries Thesis submitted as part of the requirements for the degree of Master of Science (M.Sc.) in Physics at Tel Aviv University School of Physics

More information

CHAPTER 6 Quantum Mechanics II

CHAPTER 6 Quantum Mechanics II CHAPTER 6 Quantum Mechanics II 6.1 The Schrödinger Wave Equation 6.2 Expectation Values 6.3 Infinite Square-Well Potential 6.4 Finite Square-Well Potential 6.5 Three-Dimensional Infinite-Potential Well

More information

High-Resolution. Transmission. Electron Microscopy

High-Resolution. Transmission. Electron Microscopy Part 4 High-Resolution Transmission Electron Microscopy 186 Significance high-resolution transmission electron microscopy (HRTEM): resolve object details smaller than 1nm (10 9 m) image the interior of

More information

INTRODUCTION TO THE THEORY OF LÉVY FLIGHTS

INTRODUCTION TO THE THEORY OF LÉVY FLIGHTS INTRODUCTION TO THE THEORY OF LÉVY FLIGHTS A.V. Chechkin (1), R. Metzler (), J. Klafter (3), and V.Yu. Gonchar (1) (1) Institute for Theoretical Physics NSC KIPT, Akademicheskaya st.1, 61108 Kharkov, Ukraine

More information

CHAPTER 6 Quantum Mechanics II

CHAPTER 6 Quantum Mechanics II CHAPTER 6 Quantum Mechanics II 6.1 6.2 6.3 6.4 6.5 6.6 6.7 The Schrödinger Wave Equation Expectation Values Infinite Square-Well Potential Finite Square-Well Potential Three-Dimensional Infinite-Potential

More information

Christophe De Beule. Graphical interpretation of the Schrödinger equation

Christophe De Beule. Graphical interpretation of the Schrödinger equation Christophe De Beule Graphical interpretation of the Schrödinger equation Outline Schrödinger equation Relation between the kinetic energy and wave function curvature. Classically allowed and forbidden

More information

Matrix-valued stochastic processes

Matrix-valued stochastic processes Matrix-valued stochastic processes and applications Małgorzata Snarska (Cracow University of Economics) Grodek, February 2017 M. Snarska (UEK) Matrix Diffusion Grodek, February 2017 1 / 18 Outline 1 Introduction

More information

Topics covered so far:

Topics covered so far: Topics covered so far: Chap 1: The kinetic theory of gases P, T, and the Ideal Gas Law Chap 2: The principles of statistical mechanics 2.1, The Boltzmann law (spatial distribution) 2.2, The distribution

More information

Modeling point processes by the stochastic differential equation

Modeling point processes by the stochastic differential equation Modeling point processes by the stochastic differential equation Vygintas Gontis, Bronislovas Kaulakys, Miglius Alaburda and Julius Ruseckas Institute of Theoretical Physics and Astronomy of Vilnius University,

More information

Order of Magnitude Astrophysics - a.k.a. Astronomy 111. Photon Opacities in Matter

Order of Magnitude Astrophysics - a.k.a. Astronomy 111. Photon Opacities in Matter 1 Order of Magnitude Astrophysics - a.k.a. Astronomy 111 Photon Opacities in Matter If the cross section for the relevant process that scatters or absorbs radiation given by σ and the number density of

More information

Statistical Mechanics of Active Matter

Statistical Mechanics of Active Matter Statistical Mechanics of Active Matter Umberto Marini Bettolo Marconi University of Camerino, Italy Naples, 24 May,2017 Umberto Marini Bettolo Marconi (2017) Statistical Mechanics of Active Matter 2017

More information

PHYSICS 653 HOMEWORK 1 P.1. Problems 1: Random walks (additional problems)

PHYSICS 653 HOMEWORK 1 P.1. Problems 1: Random walks (additional problems) PHYSICS 653 HOMEWORK 1 P.1 Problems 1: Random walks (additional problems) 1-2. Generating function (Lec. 1.1/1.2, random walks) Not assigned 27. Note: any corrections noted in 23 have not been made. This

More information

EQUATION LANGEVIN. Physics, Chemistry and Electrical Engineering. World Scientific. With Applications to Stochastic Problems in. William T.

EQUATION LANGEVIN. Physics, Chemistry and Electrical Engineering. World Scientific. With Applications to Stochastic Problems in. William T. SHANGHAI HONG WorlrfScientific Series krtonttimfjorary Chemical Physics-Vol. 27 THE LANGEVIN EQUATION With Applications to Stochastic Problems in Physics, Chemistry and Electrical Engineering Third Edition

More information

Search for Food of Birds, Fish and Insects

Search for Food of Birds, Fish and Insects Search for Food of Birds, Fish and Insects Rainer Klages Max Planck Institute for the Physics of Complex Systems, Dresden Queen Mary University of London, School of Mathematical Sciences Diffusion Fundamentals

More information

LANGEVIN THEORY OF BROWNIAN MOTION. Contents. 1 Langevin theory. 1 Langevin theory 1. 2 The Ornstein-Uhlenbeck process 8

LANGEVIN THEORY OF BROWNIAN MOTION. Contents. 1 Langevin theory. 1 Langevin theory 1. 2 The Ornstein-Uhlenbeck process 8 Contents LANGEVIN THEORY OF BROWNIAN MOTION 1 Langevin theory 1 2 The Ornstein-Uhlenbeck process 8 1 Langevin theory Einstein (as well as Smoluchowski) was well aware that the theory of Brownian motion

More information

Exponentially Accurate Semiclassical Tunneling Wave Functions in One Dimension

Exponentially Accurate Semiclassical Tunneling Wave Functions in One Dimension Exponentially Accurate Semiclassical Tunneling Wave Functions in One Dimension Vasile Gradinaru Seminar for Applied Mathematics ETH Zürich CH 8092 Zürich, Switzerland, George A. Hagedorn Department of

More information

THE problem of phase noise and its influence on oscillators

THE problem of phase noise and its influence on oscillators IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS II: EXPRESS BRIEFS, VOL. 54, NO. 5, MAY 2007 435 Phase Diffusion Coefficient for Oscillators Perturbed by Colored Noise Fergal O Doherty and James P. Gleeson Abstract

More information

Inverse Langevin approach to time-series data analysis

Inverse Langevin approach to time-series data analysis Inverse Langevin approach to time-series data analysis Fábio Macêdo Mendes Anníbal Dias Figueiredo Neto Universidade de Brasília Saratoga Springs, MaxEnt 2007 Outline 1 Motivation 2 Outline 1 Motivation

More information

Single Emitter Detection with Fluorescence and Extinction Spectroscopy

Single Emitter Detection with Fluorescence and Extinction Spectroscopy Single Emitter Detection with Fluorescence and Extinction Spectroscopy Michael Krall Elements of Nanophotonics Associated Seminar Recent Progress in Nanooptics & Photonics May 07, 2009 Outline Single molecule

More information

Handbook of Stochastic Methods

Handbook of Stochastic Methods C. W. Gardiner Handbook of Stochastic Methods for Physics, Chemistry and the Natural Sciences Third Edition With 30 Figures Springer Contents 1. A Historical Introduction 1 1.1 Motivation I 1.2 Some Historical

More information

3 Biopolymers Uncorrelated chains - Freely jointed chain model

3 Biopolymers Uncorrelated chains - Freely jointed chain model 3.4 Entropy When we talk about biopolymers, it is important to realize that the free energy of a biopolymer in thermal equilibrium is not constant. Unlike solids, biopolymers are characterized through

More information

Least action principle and stochastic motion : a generic derivation of path probability

Least action principle and stochastic motion : a generic derivation of path probability Journal of Physics: Conference Series PAPER OPEN ACCESS Least action principle and stochastic motion : a generic derivation of path probability To cite this article: Aziz El Kaabouchi and Qiuping A Wang

More information

Quantum resonances and rectification of driven cold atoms in optical lattices

Quantum resonances and rectification of driven cold atoms in optical lattices Europhysics Letters PREPRINT Quantum resonances and rectification of driven cold atoms in optical lattices S. Denisov 1,2, L. Morales-Molina 2 and S. Flach 2 1 Institut für Physik, Universität Augsburg,

More information

Quantum optics. Marian O. Scully Texas A&M University and Max-Planck-Institut für Quantenoptik. M. Suhail Zubairy Quaid-i-Azam University

Quantum optics. Marian O. Scully Texas A&M University and Max-Planck-Institut für Quantenoptik. M. Suhail Zubairy Quaid-i-Azam University Quantum optics Marian O. Scully Texas A&M University and Max-Planck-Institut für Quantenoptik M. Suhail Zubairy Quaid-i-Azam University 1 CAMBRIDGE UNIVERSITY PRESS Preface xix 1 Quantum theory of radiation

More information

Smoluchowski Diffusion Equation

Smoluchowski Diffusion Equation Chapter 4 Smoluchowski Diffusion Equation Contents 4. Derivation of the Smoluchoswki Diffusion Equation for Potential Fields 64 4.2 One-DimensionalDiffusoninaLinearPotential... 67 4.2. Diffusion in an

More information

Cold Metastable Neon Atoms Towards Degenerated Ne*- Ensembles

Cold Metastable Neon Atoms Towards Degenerated Ne*- Ensembles Cold Metastable Neon Atoms Towards Degenerated Ne*- Ensembles Supported by the DFG Schwerpunktprogramm SPP 1116 and the European Research Training Network Cold Quantum Gases Peter Spoden, Martin Zinner,

More information

The Polymers Tug Back

The Polymers Tug Back Tugging at Polymers in Turbulent Flow The Polymers Tug Back Jean-Luc Thiffeault http://plasma.ap.columbia.edu/ jeanluc Department of Applied Physics and Applied Mathematics Columbia University Tugging

More information

Hong-Ou-Mandel effect with matter waves

Hong-Ou-Mandel effect with matter waves Hong-Ou-Mandel effect with matter waves R. Lopes, A. Imanaliev, A. Aspect, M. Cheneau, DB, C. I. Westbrook Laboratoire Charles Fabry, Institut d Optique, CNRS, Univ Paris-Sud Progresses in quantum information

More information

Major Concepts Kramers Turnover

Major Concepts Kramers Turnover Major Concepts Kramers Turnover Low/Weak -Friction Limit (Energy Diffusion) Intermediate Regime bounded by TST High/Strong -Friction Limit Smoluchovski (Spatial Diffusion) Fokker-Planck Equation Probability

More information

macroscopic view (phenomenological) microscopic view (atomistic) computing reaction rate rate of reactions experiments thermodynamics

macroscopic view (phenomenological) microscopic view (atomistic) computing reaction rate rate of reactions experiments thermodynamics Rate Theory (overview) macroscopic view (phenomenological) rate of reactions experiments thermodynamics Van t Hoff & Arrhenius equation microscopic view (atomistic) statistical mechanics transition state

More information

1/f Fluctuations from the Microscopic Herding Model

1/f Fluctuations from the Microscopic Herding Model 1/f Fluctuations from the Microscopic Herding Model Bronislovas Kaulakys with Vygintas Gontis and Julius Ruseckas Institute of Theoretical Physics and Astronomy Vilnius University, Lithuania www.itpa.lt/kaulakys

More information

Fluctuation theorem in systems in contact with different heath baths: theory and experiments.

Fluctuation theorem in systems in contact with different heath baths: theory and experiments. Fluctuation theorem in systems in contact with different heath baths: theory and experiments. Alberto Imparato Institut for Fysik og Astronomi Aarhus Universitet Denmark Workshop Advances in Nonequilibrium

More information

Solution. For one question the mean grade is ḡ 1 = 10p = 8 and the standard deviation is 1 = g

Solution. For one question the mean grade is ḡ 1 = 10p = 8 and the standard deviation is 1 = g Exam 23 -. To see how much of the exam grade spread is pure luck, consider the exam with ten identically difficult problems of ten points each. The exam is multiple-choice that is the correct choice of

More information

Building Blocks for Quantum Computing Part IV. Design and Construction of the Trapped Ion Quantum Computer (TIQC)

Building Blocks for Quantum Computing Part IV. Design and Construction of the Trapped Ion Quantum Computer (TIQC) Building Blocks for Quantum Computing Part IV Design and Construction of the Trapped Ion Quantum Computer (TIQC) CSC801 Seminar on Quantum Computing Spring 2018 1 Goal Is To Understand The Principles And

More information

Active microrheology: Brownian motion, strong forces and viscoelastic media

Active microrheology: Brownian motion, strong forces and viscoelastic media OR1394 DFG Research Unit Nonlinear Response to Probe Vitrification Active microrheology: Brownian motion, strong forces and viscoelastic media Matthias Fuchs Fachbereich Physik, Universität Konstanz New

More information

Brownian Motion and Langevin Equations

Brownian Motion and Langevin Equations 1 Brownian Motion and Langevin Equations 1.1 Langevin Equation and the Fluctuation- Dissipation Theorem The theory of Brownian motion is perhaps the simplest approximate way to treat the dynamics of nonequilibrium

More information

Generalised Fractional-Black-Scholes Equation: pricing and hedging

Generalised Fractional-Black-Scholes Equation: pricing and hedging Generalised Fractional-Black-Scholes Equation: pricing and hedging Álvaro Cartea Birkbeck College, University of London April 2004 Outline Lévy processes Fractional calculus Fractional-Black-Scholes 1

More information

Statistical Methods in Particle Physics

Statistical Methods in Particle Physics Statistical Methods in Particle Physics Lecture 3 October 29, 2012 Silvia Masciocchi, GSI Darmstadt s.masciocchi@gsi.de Winter Semester 2012 / 13 Outline Reminder: Probability density function Cumulative

More information

NPTEL

NPTEL NPTEL Syllabus Nonequilibrium Statistical Mechanics - Video course COURSE OUTLINE Thermal fluctuations, Langevin dynamics, Brownian motion and diffusion, Fokker-Planck equations, linear response theory,

More information

Lecture 6: Markov Chain Monte Carlo

Lecture 6: Markov Chain Monte Carlo Lecture 6: Markov Chain Monte Carlo D. Jason Koskinen koskinen@nbi.ku.dk Photo by Howard Jackman University of Copenhagen Advanced Methods in Applied Statistics Feb - Apr 2016 Niels Bohr Institute 2 Outline

More information

Microscopic chaos, fractals and diffusion: From simple models towards experiments

Microscopic chaos, fractals and diffusion: From simple models towards experiments Microscopic chaos, fractals and diffusion: From simple models towards experiments Rainer Klages 1,2 1 Max Planck Institute for the Physics of Complex Systems, Dresden 2 Queen Mary University of London,

More information

Deterministic chaos, fractals and diffusion: From simple models towards experiments

Deterministic chaos, fractals and diffusion: From simple models towards experiments Deterministic chaos, fractals and diffusion: From simple models towards experiments Rainer Klages Queen Mary University of London, School of Mathematical Sciences Université Pierre et Marie Curie Paris,

More information

Non-equilibrium phenomena and fluctuation relations

Non-equilibrium phenomena and fluctuation relations Non-equilibrium phenomena and fluctuation relations Lamberto Rondoni Politecnico di Torino Beijing 16 March 2012 http://www.rarenoise.lnl.infn.it/ Outline 1 Background: Local Thermodyamic Equilibrium 2

More information

Gravitational-like interactions in a cloud of cold atoms?

Gravitational-like interactions in a cloud of cold atoms? Gravitational-like interactions in a cloud of cold atoms? J. Barré (1), B. Marcos (1), A. Olivetti (1), D. Wilkowski (2), M. Chalony (2) (+ R. Kaiser (2) ) 1 Laboratoire JA Dieudonné, U. de Nice-Sophia

More information

VIII.B Equilibrium Dynamics of a Field

VIII.B Equilibrium Dynamics of a Field VIII.B Equilibrium Dynamics of a Field The next step is to generalize the Langevin formalism to a collection of degrees of freedom, most conveniently described by a continuous field. Let us consider the

More information

Random walks. Marc R. Roussel Department of Chemistry and Biochemistry University of Lethbridge. March 18, 2009

Random walks. Marc R. Roussel Department of Chemistry and Biochemistry University of Lethbridge. March 18, 2009 Random walks Marc R. Roussel Department of Chemistry and Biochemistry University of Lethbridge March 18, 009 1 Why study random walks? Random walks have a huge number of applications in statistical mechanics.

More information

DETERMINATION OF MODEL VALID PREDICTION PERIOD USING THE BACKWARD FOKKER-PLANCK EQUATION

DETERMINATION OF MODEL VALID PREDICTION PERIOD USING THE BACKWARD FOKKER-PLANCK EQUATION .4 DETERMINATION OF MODEL VALID PREDICTION PERIOD USING THE BACKWARD FOKKER-PLANCK EQUATION Peter C. Chu, Leonid M. Ivanov, and C.W. Fan Department of Oceanography Naval Postgraduate School Monterey, California.

More information

Title. Statistical behaviour of optical vortex fields. F. Stef Roux. CSIR National Laser Centre, South Africa

Title. Statistical behaviour of optical vortex fields. F. Stef Roux. CSIR National Laser Centre, South Africa . p.1/37 Title Statistical behaviour of optical vortex fields F. Stef Roux CSIR National Laser Centre, South Africa Colloquium presented at School of Physics National University of Ireland Galway, Ireland

More information

Irreversibility and the arrow of time in a quenched quantum system. Eric Lutz Department of Physics University of Erlangen-Nuremberg

Irreversibility and the arrow of time in a quenched quantum system. Eric Lutz Department of Physics University of Erlangen-Nuremberg Irreversibility and the arrow of time in a quenched quantum system Eric Lutz Department of Physics University of Erlangen-Nuremberg Outline 1 Physics far from equilibrium Entropy production Fluctuation

More information

Chapter 6 - Random Processes

Chapter 6 - Random Processes EE385 Class Notes //04 John Stensby Chapter 6 - Random Processes Recall that a random variable X is a mapping between the sample space S and the extended real line R +. That is, X : S R +. A random process

More information

4. Eye-tracking: Continuous-Time Random Walks

4. Eye-tracking: Continuous-Time Random Walks Applied stochastic processes: practical cases 1. Radiactive decay: The Poisson process 2. Chemical kinetics: Stochastic simulation 3. Econophysics: The Random-Walk Hypothesis 4. Eye-tracking: Continuous-Time

More information

Lecture 4: Numerical Solution of SDEs, Itô Taylor Series, Gaussian Approximations

Lecture 4: Numerical Solution of SDEs, Itô Taylor Series, Gaussian Approximations Lecture 4: Numerical Solution of SDEs, Itô Taylor Series, Gaussian Approximations Simo Särkkä Aalto University, Finland November 18, 2014 Simo Särkkä (Aalto) Lecture 4: Numerical Solution of SDEs November

More information

Large deviation functions and fluctuation theorems in heat transport

Large deviation functions and fluctuation theorems in heat transport Large deviation functions and fluctuation theorems in heat transport Abhishek Dhar Anupam Kundu (CEA, Grenoble) Sanjib Sabhapandit (RRI) Keiji Saito (Tokyo University) Raman Research Institute Statphys

More information

Table of Contents [ntc]

Table of Contents [ntc] Table of Contents [ntc] 1. Introduction: Contents and Maps Table of contents [ntc] Equilibrium thermodynamics overview [nln6] Thermal equilibrium and nonequilibrium [nln1] Levels of description in statistical

More information

Turbulent Mixing of Passive Tracers on Small Scales in a Channel Flow

Turbulent Mixing of Passive Tracers on Small Scales in a Channel Flow Turbulent Mixing of Passive Tracers on Small Scales in a Channel Flow Victor Steinberg Department of Physics of Complex Systems, The Weizmann Institute of Science, Israel In collaboration with Y. Jun,

More information

Introduction to Modern Quantum Optics

Introduction to Modern Quantum Optics Introduction to Modern Quantum Optics Jin-Sheng Peng Gao-Xiang Li Huazhong Normal University, China Vfe World Scientific» Singapore* * NewJerseyL Jersey* London* Hong Kong IX CONTENTS Preface PART I. Theory

More information

Introduction to Relaxation Theory James Keeler

Introduction to Relaxation Theory James Keeler EUROMAR Zürich, 24 Introduction to Relaxation Theory James Keeler University of Cambridge Department of Chemistry What is relaxation? Why might it be interesting? relaxation is the process which drives

More information

Quantum Corrections for Monte Carlo Simulation

Quantum Corrections for Monte Carlo Simulation Quantum Corrections for Monte Carlo Simulation Brian Winstead and Umberto Ravaioli Beckman Institute University of Illinois at Urbana-Champaign Outline Quantum corrections for quantization effects Effective

More information

ELEMENTS OF PROBABILITY THEORY

ELEMENTS OF PROBABILITY THEORY ELEMENTS OF PROBABILITY THEORY Elements of Probability Theory A collection of subsets of a set Ω is called a σ algebra if it contains Ω and is closed under the operations of taking complements and countable

More information

Stochastic model of mrna production

Stochastic model of mrna production Stochastic model of mrna production We assume that the number of mrna (m) of a gene can change either due to the production of a mrna by transcription of DNA (which occurs at a rate α) or due to degradation

More information