Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute...

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Ergodic theory of the stochastic Burgers equation Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia

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Page 1: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Ergodic theoryof the stochastic Burgers equation

Yuri Bakhtin

Courant Institute of Mathematical SciencesNew York University

March 05 2020University of Virginia

Page 2: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Plan of the talk

Generalities on ergodic theoryOne Force – One Solution Principle (1F1S)Burgers equationBurgers equation with random forcing

Page 3: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Main theme: stationary regimes

Long-term statistics of trajectories:

Xt ∈ X, the state of the system at time t ∈ R

f : X→ R, measurement, observable

f(X1) + f(X2) + . . .+ f(Xn)

n→ ???

Does the limit exist?What does it depend on?What is remembered about the initial condition in the longrun?

Invariant measures ≈ stationary regimes

Exist? Unique? Describe all.

Page 4: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

A very simple example

A random dynamical system in R

fn,ω(x) = ax+ ξn,ω n ∈ Z

|a| < 1 constant

(ξn)n∈Z i.i.d. N (0, σ2).

Evolution between times m and n (m < n)

Φm,nω (x) = fn,ω fn−1,ω . . . fm+2,ω fm+1,ω(x)

= an−mx+ an−m−1ξm+1 + . . .+ a2ξn−2 + aξn−1 + ξn

Long-time asymptotics: n−m→∞

n→ +∞ or m→ −∞?

Page 5: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Pullback limit: m→ −∞

The pullback limit exists a.s. and does not depend on x

Φm,nω (x)→ Φ−∞,nω (x) = . . .+ a2ξn−2 + aξn−1 + ξn := Xn,ω.

Properties of (Xn)n∈Z: “One Force – One Solution” principlex

n

X

global solution: Xn,ω = aXn−1,ω + ξn,ω, n ∈ ZXn = Φ(. . . , ξn−2, ξn−1, ξn)

stationary processa unique global solution that is a stationary process

Law(Xn) = N(

0, σ2

1−a2

)is a unique invariant measure

Page 6: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Invariant measures for Markov processes generatedby random dynamical systems

Ledrappier–Young (1980’s):

In general, any invariant measure of a Markov processgenerated by a random dynamical system can be representedvia sample measures

µ(·) =

∫ΩP(dω)µω(·),

where µω depends only on ω∣∣(−∞,0]

1F1Sµω are Dirac δ-measures for almost every ω.

Page 7: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Burgers equation

ut + uux = νuxx + f, (x, t) ∈ R× R, u(t, x) ∈ R

ν ≥ 0 : viscosity

Fluid dynamicsHamilton–Jacobi (HJ) equations, variational problems.Hamiltonian dynamics. Aubry–Mather theory. Weak KAM.First or last passage percolationGrowth models, lattice particle systems, KPZ scalings,KPZ universality class, KPZ equationPolymers. Stochastic control.Other modeling: from traffic to the large scale structure ofthe Universe

Page 8: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Burgers equation: fluid dynamics interpretation

Evolution of velocity field u in R1

ut + uux = νuxx + f, (t, x) ∈ R× R

l.h.s.= acceleration of particle at (t, x):

x(t) = u(t, x(t))

x(t) = (chain rule) = ut + uxx = ut + uux

ν = 0: particles do not interact until they bump into eachother creating shock waves.ν > 0: smooth velocity field

Page 9: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Burgers equation

ut + uux = νuxx + f, (t, x) ∈ R× R, u(t, x) ∈ R

ν ≥ 0 : viscosity

Energy: pumped in by f , dissipated through friction

In this talk: random f averaging to 0

Invariant distributionsGlobal stationary solutionsOne Force — One Solution Principle (1F1S)Infinite-volume limits for associated directed polymers(ν > 0) and action minimizers (ν = 0)ν ↓ 0

Compact/periodic case (1990’s–2000’s )Noncompact case (2010’s)

Page 10: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Burgers equation: via HJ equation

ut + uux = νuxx + f

u = Ux, f = Fx

HJ with quadratic Hamiltonian

Ut +(Ux)2

2= νUxx + F, (t, x) ∈ R× R

F : external potential.

If F is space-time white noise,then this is the (famous) Kardar–Parisi–Zhang equation

Page 11: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Cauchy problem for ν > 0

Hopf–Cole substitution (1950-1951), also Florin (1948)

u = Ux = −2ν(log v)x =⇒ vt = νvxx −F

2νv

Feynman–Kac formula

v(t, x) = E

[e− 1

∫ t

0F (t− s, x+

√2νWs)ds

v(0, x+√

2νWt)

]

0

(t,x)

x

Page 12: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

HJBHLO variational principle for ν = 0

U(t, x) = infγ:[0,t]→Rγ(t)=x

U0(γ(0)) +

1

2

∫ t

0γ2(s)ds+

∫ t

0F (s, γ(s))ds

.

(t,x)

γ

γ(0)

u(t, x) =

Ux(t, x)

γ(t).

Euler–Lagrange equation

γ(t) = f(t, γ(t))

Page 13: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Ergodic theory for random forcing, inviscid case

E,Khanin,Mazel,Sinai (Ann.Math. 2000)

Potential forcing on the circle T1:

F (t, x) =∑

Fj(x)Wj(t)

TheoremErgodic components:

u :

∫T1

u = v

, v ∈ R

One Force – One Solution Principle (1F1S) on eachcomponent.

Page 14: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

One Force – One Solution (1F1S)time

−T

(t,x)

Initial conditions at time −T :identical 0 or other. Take −T to −∞.

Slope stabilizes to some u(t, x),global attracting solution

u(t, x) = Φ(forcing in the past)Law(u(t, x)) = stationary disribution

Hyperbolicity: exponential closeness ofminimizers in reversed time.

Solutions of HJ: Busemann functions

Bounds on velocity of minimizers

Page 15: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Other results in compact setting

Compact setting

Gomes, Iturriaga, Khanin, Padilla (2000’s): On Td

Bakhtin (2007): On [0, 1] with random boundary conditionsBoritchev, Khanin (2013): Simplified proof of hyperbolicityKhanin, Zhang (2017): Hyperbolicity in Td

Mixing rates based on hyperbolicity: Boritchev (2018) onT1; Iturriaga, Khanin, Zhang (recent) on Td:Dirr, Souganidis (2005), Debussche and Vovelle (2015):

extensions by “PDE methods”Chueshov, Scheutzow, Flandoli, Gess (2004,. . . )Synchronization by noise in monotone systems

Page 16: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Noncompact Setting

Quasi-compact setting:

Hoang, Khanin (2003), Suidan (2005), Bakhtin (2013)(forcing decays at space infinity)

Bakhtin, LeFloch (2018) (random boundary forcing, with gravity)

Truly noncompact setting:Two models where the ergodic program goes through.

Bakhtin, Cator, Khanin (JAMS 2014): space-timehomogeneous Poissonian forcingBakhtin (EJP, 2016): space-homogeneous i.i.d. kick forcing

Page 17: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Space-continuous kick forcing

Forcing applies only at times n ∈ Z

F (t, x) =∑n∈Z

Fn,ω(x)δ(t− n),

(Fn)n∈Z: i.i.d., stationary, decorrelation, tails

Action(γ) = U(γ(0)) +1

2

n−1∑k=m

(γk+1 − γk)2 +

n−1∑k=m

Fk,ω(γk)

Page 18: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Minimizers (geodesics) for FPP, LPP-type models;Busemann functions

C.D.Howard, C.M.Newman (late 1990’s)M.Wüthrich (2002)E.Cator, L.Pimentel (2010–2012)

Page 19: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Summary of results

TheoremFor each v ∈ R there is a unique global solution uv(t, x)with average velocity v.

uv(t, ·) is determined by the history of the forcing up to t(1F1S)

uv is a one-point pullback attractor for initial conditions withaverage velocity v.

Page 20: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Results in terms of one-sided minimizers

TheoremLet v ∈ R. Then, with probability one:

For most (x, t) there is a uniqueone-sided minimizer with slope v. Finiteminimizers converge to infinite ones.

lim infm→−∞

|γ1m − γ2

m||m|−1

= 0.

Busemann functions and globalsolutions are uniquely defined by partiallimits

Page 21: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

The conjectural picture for Burgers minimizers andgeneralizations (with K.Khanin)

Minimizers started L apart get close by time T ∼ L3/2, thenconverge exponentially.

Page 22: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Shape function for point-to-point minimizers

Best p2p action: Am,n(x, y) = inf Am,n(γ) : γm = x, γn = y

Subadditivity:

A0,n(0, vn) ≤ A0,m(0, vm)+Am,n(vm, vn)

so

limt→∞

A0,n(0, vn)

n= α(v)

0

x=vn

Shape function α(effective Lagrangian)

α(v) = α(0) +v2

2

(due to shear invariance)

x=vn

Page 23: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Deviations from linear growth, straightness, existence

Theorem

For u ∈ (c3n1/2 ln2 n, c4n

3/2 lnn],

P|A0,n(0, vn)− α(v)n| > u

≤ c1 exp

−c2

un1/2 lnn

,

t

t

2

0

1−δtt

1−δ

Prob < c1 exp(−c2t

1/2−2δ)

Page 24: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Positive viscosity

ut + uux = νuxx + f, ν > 0

Compact caseSinai (1991),Gomes, Iturriaga, Khanin, Padilla (2000’s)Hairer, Mattingly(2018) Strong Feller property for KPZRosati (recent) synchronization for KPZ

Non-compact case: Kifer (1997)

Rd, d ≥ 3, small forcing,perturbation theory series

(weak disorder)

Page 25: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Randomly kicked Burgers equation, ν > 0

ut + uux = νuxx +∑n∈Z

fn(x)δn(t)

Hopf–Cole: u = −2ν(ln v)x; v solves kicked heat equation

Feynman–Kac evolution operator

Ψ0,nω v(y) =

∫RZ0,nω (x, y)v(x)dx, y ∈ R

Point-to-point partition function:

Z0,nω (x0, xn) =

∫· · ·∫

R×...×R

n−1∏k=0

[e− (xk+1−xk)2

√4πν

e−Fk,ω(xk)

]dx1 . . . dxn−1

[Similar to product of positive matrices]

Page 26: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Burgers Polymers. Thermodynamic limit?

µ0,nx0,xn,ω(dx1 . . . dxn−1) =

n−1∏k=0

[e−

(xk+1−xk)2

4ν√4πν

e−Fk,ω(xk)

]Z0,nω (x0, xn)

dx1 . . . dxn−1

n(n,x )

(0,0)

v

Page 27: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Burgers Polymers. Thermodynamic limit

(n,x)

v

Theorem (Bakhtin, Li: CPAM, 2019)Fix any v ∈ R. With probability 1,

If limm→−∞xmm = v, then

limm→−∞

µm,nxn,x,ω = µω

µω is a unique infinite volumepolymer measure (DLR condition)with endpoint (n, x) and slope v:

µω

γ : lim

m→−∞

γmm

= v

= 1

Asymptotic overlap

Page 28: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

A straightness estimate for polymers

LemmaLet δ ∈ (0, 1/4). There are α, β > 0: for large n,

P

ω : µ0,n

0,0,ω

γ : max

0≤k≤n|γk| > n1−δ

≥ e−nα

≤ e−nβ .

0

n n1−δ 1−δ

0

n

First result on transversal exponent ξ ≤ 3/4: Mejane (2004)

Page 29: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Stationary solutions for viscous Burgers

(n,x)

v

n−1uv(n, x) :=

∫R

(x− y)S(dy)

S(dy) := distribution of the polymerlocation at time n− 1

Theoremuv is a unique global solution with slope v.1F1S: LU-convergence for u. In terms of the heat equation:the role of Busemann function is played by convergentratios of partition functions.

Page 30: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Zero viscosity (zero-temperature) limit

Theorem (Bakhtin, Li: JSP, 2018)As ν → 0,

one-sided polymers converge to one-sided minimizersGlobal solutions of Burgers equation converge to inviscidglobal solutions [convergence at every continuity point ofthe monotone function x 7→ x− u(x)]

Page 31: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Related recent results

In discrete settings, Busemann functions and stationarysolutions for positive and zero temperature polymers arestudied in a series of papers by Rassoul-Agha, Georgiou,Seppäläinen, Yilmaz, JanjigianThermodynamic limit for O’Connell–Yor polymers isstudied by Alberts, Rassoul-Agha, Simper (recent)Gubinelli, Perkowski (recent, private communication)ergodicity of space-white-noise invariant distribution forspace-time-white-noise KPZDunlap, Graham, Ryzhik (recent) use PDE methods forergodicity for white-in-time noise

(not 1F1S)

Page 32: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Open problems

More general HJB equations and Lax–Oleinik semigroups.General HJB equations with positive viscosity: generalizeddirected polymers via stochastic controlContinuous non-white forcing, no shear invarianceHigher dimensions: which form of hyperbolicity?Quantitative resultsKPZ equation, KPZ universality. CLT for solutions ofBurgers HJStatistics of shocks and concentration of minimizers,coalescence timesSelf-similar monotone flowsStochastic Navier–Stokes in noncompact setting

(survey [Bakhtin, Khanin: Nonlinearity, 2018])

Page 33: Ergodic theory of the stochastic Burgers equationbakhtin/uva.pdf · Yuri Bakhtin Courant Institute of Mathematical Sciences New York University March 05 2020 University of Virginia.

Minimizers for A0,t(γ) = 12

∫ t

0

γ2(s)ds−#Poisson points visited by γ

Graphics credit: Gautam Goel