Transcript
Page 1: AMS 691 Special Topics in Applied Mathematics Lecture 7

AMS 691Special Topics in Applied

MathematicsLecture 7

James Glimm

Department of Applied Mathematics and Statistics,

Stony Brook University

Brookhaven National Laboratory

Page 2: AMS 691 Special Topics in Applied Mathematics Lecture 7

Turbulence Theories

• Many theories, many papers

• Last major unsolved problem of classical physics

• New development– Large scale computing– Computing in general allows solutions for

nonlinear problems– Generally fails for multiscale problems

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Multiscale Science

• Problems which involve a span of interacting length scales– Easy case: fine scale theory defines

coefficients and parameters used by coarse scale theory

• Example: viscosity in Navier-Stokes equation, comes from Boltzmann equation, theory of interacting particles, or molecular dynamics, with Newton’s equation for particles and forces between particles

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Multiscale

• Hard case– Fine scale and coarse scales are coupled– Solution of each affects the other– Generally intractable for computation

• Example: – Suppose a grid of 10003 is used for coarse scale part of the

problem.

– Suppose fine scales are 10 or 100 times smaller

– Computational effort increases by factor of 104 or 108

– Cost not feasible

– Turbulence is classical example of multiscale science

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Origin of Multiscale Science as a Concept

• @Article{GliSha97,• author = "J. Glimm and D. H. Sharp",• title = "Multiscale Science",• journal = "SIAM News",• year = "1997",• month = oct,• }

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Four Useful Theories forTurbulence

• Large Eddy Simulation (LES) and Subgrid Scale Models (SGS)

• Kolmogorov 41• PDF convergence in the LES regime• Renormalization group

}

Page 7: AMS 691 Special Topics in Applied Mathematics Lecture 7

LES and SGS

• Based on the idea that effect of small scales on the large ones can be estimated and compensated for.

K413 2 2 3

2/3 5/3

[ ( )] [ ][ ] [ ][ ] [ ][ ][ ]

3 2; 2 / 3

2 3; 5 / 3

( )

a b a a bE k l t k l t l

a a

a b b

E k k

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Conceptual framework for convergence studies in turbulence

Stochastic convergence to a Young measure (stochastic PDE)

RNG expansion for unclosed SGS terms

Nonuniqueness of high Re limit and its dependence on numerical

algorithms

Existence proofs assuming K41

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PDF Convergence

• @Article{CheGli10,• author = "G.-Q. Chen and J. Glimm",• title = "{K}olmogorov's Theory of Turbulence

and Inviscid Limit of the• {N}avier-{S}tokes equations in ${R}^3$",• year = "2010",• journal = "Commun. Math. Phys.",• note = "Submitted for Publication",

Page 10: AMS 691 Special Topics in Applied Mathematics Lecture 7

Idea of PDF Convergence

• “In 100 years the mean sea surface temperature will rise by xx degrees C”

• “The number of major hurricanes for this season will lie between nnn and NNN”

• “The probability of rain tomorrow is xx%”

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Convergence of PDFs

• Distribution function = indefinite integral of PDF

• PDF tends to be very noisy, distribution is regularized

• Apply conventional function space norms to convergence of distribution functions– L1, Loo, etc.

• PDF is a microscale observable

Page 12: AMS 691 Special Topics in Applied Mathematics Lecture 7

Convergence

• Strict (mathematical) convergence– Limit as Delta x -> 0– This involves arbitrarily fine grids– And DNS simulations– Limit is (presumably) a smooth solution, and

convergence proceeds to this limit in the usual manner

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Young Measure of a Single Simulation

• Coarse grain and sample– Coarse grid = block of n4 elementary space

time grid blocks. (coarse graining with a factor of n)

– All state values within one coarse grid block define an ensemble, i.e., a pdf

– Pdf depends on the location of the coarse grid block, thus is space time dependent, i.e. a numerically defined Young measure

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Page 14: AMS 691 Special Topics in Applied Mathematics Lecture 7

W* convergence

X = Banach spaceX* = dual Banach spaceW* topology for X* is defined by all linear functional in XClosed bounded subsets of X* are w* compact

Example: Lp and Lq are dual, 1/p + 1/q = 1Thus Lp* = Lq

Exception:

Example: Dual of space of continuous functions is space ofRadon measures

*1

*1

L L

L L

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Young Measures

Consider R4 x Rm = physical space x state space

The space of Young measures is

Closed bounded subsets are w* compact.

41( ( ) * ( )m mL R C R L M R

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LES convergence

• LES convergence describes the nature of the solution while the simulation is still in the LES regime

• This means that dissipative forces play essentially no role – As in the K41 theory– As when using SGS models because

turbulent SGS transport terms are much larger than the molecular ones

• Accordingly the molecular ones can be ignored

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• LES convergence is a theory of convergence for solutions of the Euler, not the Navier Stokes equations

• Mathematically Euler equation convegence is highly intractable, since even with viscosity (DNS convergence, for the Navier Stokes equation), this is one of the famous Millenium problems (worth $1M).

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Compare Pdfs:As mesh is refined; as Re

changes

• w* convergence: multiply by a test function and integrate– Test function depends on x, t and on (random) state

variables

• L1 norm convergence– Integrate once, the indefinite integral (CDF) is the

cumulative distribution function, L1 convergent

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Page 19: AMS 691 Special Topics in Applied Mathematics Lecture 7

Variation of Re and mesh: About 10% effect for

L1 norm comparison of joint CDFs for concentration and temperature.

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Re 3.5x104-6x106 (left); mesh refinement (right)

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Two equations, Two TheoriesOne Hypothesis

• Hypothesis: assume K41, and an inequality, an upper bound, for the kinetic energy

• First equation– Incompressible Navier Stokes equation– Above with passive scalars

• Main result– Convergence in Lp, some p to a weak solution (1st

case)– Convergence (weak*) as Young’s measures (PDFs)

(2nd case)

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Incompressible Navier-Stokes Equation (3D)

( )

0

( )

mass fraction of species

is a passive scalar because its

equation decouples from the

velocity (Navier Stokes) equation

t

ii i i

i

i

v v v P v

v

vt

i

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Definitions

• Weak solution– Multiply Navier Stokes equation by test function, integrate by

parts, identity must hold.

• Lp convergence: in Lp norm • w* convergence for passive scalars chi_i

– Chi_i = mass fraction, thus in L_\infty.– Multiply by an element of dual space of L_\infty– Resulting inner product should converge after passing to a

subsequence– Theorem: Limit is a PDF depending on space and time, ie a

measure valued function of space and time.– Theorem: Limit PDF is a solution of NS + passive scalars

equation.

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RNG Fixed Point for LES (with B. Plohr and D. Sharp)

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Unclosed terms from mesh level n (Reynolds stress, etc.) can be written as mesh level quantities at level n+1, plus an unclosed remainder. This can be repeated at level n+2, etc. and defines the basic RNG map.

Fixed point is the full (level n) unclosed term, written as a series, each term (j) of which is closed at mesh level n+j

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RNG expansion at leading order

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Leading order term is Leonard stress, used in the derivation of dynamic SGS.

Coeff x Model = Leonard stress

Coefficient is defined by theoretical analysis from equation and from model.

Choice of the SGS model is only allowed variation.

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Nonuniqueness of limit

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Deviation of RT alpha for ILES simulations from experimental values

(100% effect)

Dependence of RT alpha on different ILES algorithms (50%

effect)

Experimental variation in RT alpha (20%

effect)

Dependence of RT alpha on experimental initial conditions (5-

30% effect)

Dependence of RT alpha on transport coefficients (5%

effect)

Quote from Honein-Moin (2005):

“results from MILES approach to LES are found to depend strongly on

scheme parameters and mesh size”

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Numerical truncation error as an SGS term

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Unclosed terms = O( )2

Model = X strain matrix = Smagorinsky applied locally in space time.Numerical truncation error = O( )[Assume first order algorithm near steep gradients.]For large , O( ) = O( )2

So formally, truncation error contributes as a closure term.This is the conceptual basis of ILES algorithms. Large Re limit is sensitive to closure, hence to algorithm.FT/LES/SGS minimizes numerical diffusion, minimizes influence of algorithm on large Re limit.

U

UU UU

U2| / |U U x x


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