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Master Course „Environmental Physics“ (MKEP4) http://www.iup.uni-heidelberg.de/institut/studium/lehre/MKEP4/ 8. Turbulence Summer Term 2011 Werner Aeschbach-Hertig Institut für Umweltphysik Lecture Program of MKEP4 Part 1: Introduction and Fundamentals (4 sessions) 1. 2. 3. 4. Introduction to Environmental Physics and the Earth System Global energy balance and structure of the atmosphere Stratification and convection in air and water Transport p p processes Part 2: Geophysical Fluid Dynamics (7 sessions) 5. 6. 7. 8. 9. 10. 11. Introduction to Geophysical Fluid Dynamics Navier-Stokes equation and geostrophic approximation Geostrophic Flow and Vorticity Turbulence Turbulent transport and flow near boundaries Global circulation of the atmosphere Global circulation of the ocean Part 3: Other Compartments and Fields (4 sessions) 12. 13. 14. 15. Gas and heat transfer between air and water Freshwater systems Soil and Groundwater The cryosphere 2 1 Contents of Today's Lecture Turbulence • The phenomenon of turbulence • Reynolds number • Reynolds decomposition • Turbulent kinetic energy and the turbulence spectrum • Kolmogorov theory • Autocorrelation • Taylor's theorem and turbulent diffusion Literature on Turbulence: 1) Roedel, W., 2000. Physik unserer Umwelt, Die Atmosphäre. Springer Verlag, Heidelberg, 3rd Edition. (IUP 1780). (Kap. 6) 2) Pedlosky, J., 1987. Geophysical Fluid Dynamics. Springer Verlag, Heidelberg, 2nd Edition. (IUP 720) 3 Turbulence: Eddies in the Gulf Stream 4 2 Laminar and turbulent flow Both types of flow are solutions of a deterministic differential equation (Navier-Stokes) 5 Unstable Solutions of Differential Equations Stable Solutions: Unstable Solutions: Similar initial conditions lead to similar solutions Infinitesimal differences in the initial conditions lead to very different solutions "Butterfly effect", chaos Roedel, W., 2000. Physik unserer Umwelt. Die Atmosphäre. Springer 6 3 Deterministic Chaos - Edward Lorenz Lorenz-attractor in 3D phase space Edward Lorenz 1917 - 2008 7 Turbulence: An Unsolved Problem of Physics A full description of turbulent flow maybe the last unsolved problem in classical physics. Famous physicist are reported to have been doubtful, whether it can be solved: Heisenberg was asked what he would like to know from God, given the opportunity. His reply was: "When I meet God, I am going to ask him two questions: Why relativity? And why turbulence? I really believe he will have an answer for the first." A similar saying is attributed to Horace Lamb (author of a famous t tb k in textbook i h hydrodynamics): d d i ) "When I die and go to heaven there are two matters on which I hope for enlightenment. One is quantum electrodynamics, and the other is the turbulent motion of fluids. And about the former I am rather optimistic." 8 4 Criterion for Turbulence: Reynolds Number Reynolds number: Ratio of turbulence producing non-linear term to turbulence destroying friction term v v U2 L UL Re v U L2 Re > Rec ≈ several 1000: Turbulent flow Atmosphere, ocean, lakes are usually turbulent: air Osborne Reynolds 1842-1912 Critical length scale: Re c Lc v viscosity 10-5 velocity U 10 m/s m2/s length scale L 1000 m water 10-6 m2/s 0.1 m/s 1000 m Re 109 108 Lc 10-3 m 10-2 m Laminar flow only on scales < cm/mm 9 Turbulence and Reynolds Number Experiment to determine Rec Flow pattern for various Re From Stewart, 2003 10 5 Examples for Turbulent Flow Top: A mixing layer at high Reynolds number. The upper stream is moving at 100 m/s and the lower at 38 m/s, both from left to right in the image. Two observations: (1) the transition to turbulence is evident on the left side of the image, where the initially smooth roller structures suddenly develop small-scale detail, and (2) the large-scale organization of the flow is evident as the flow moves downstream, even though the flow has a lot of small-scale activity. Bottom: The same flow arrangement as above, but at twice the Reynolds number. There appears to be more small-scale activity, but the large-scale organization is not greatly affected. (Images from van Dyke, An Album of Fluid Motion.) 11 Velocities in a Turbulent Flow y v velocity of mean flow r x Eulerian measurement of transverse velocity vy T 2r 4r T 2 v v t x v 12 6 Velocity Fluctuations due to Eddies Deviation of velocity from mean in a wind channel big eddy intermed. eddy small eddy from: Frisch 1995, Turbulence 13 Turbulent Fluctuations Laminar flow (stationary): At each point the velocity of flow is constant in time. Turbulent flow (stationary): Statistical variations of the flow velocity due to eddies. Description by fluctuations in flow velocity, i.e. deviations from the average velocity: v '(t) v(t) Typical wind speed fluctuations (10 m height, Lake Ontario) Time 14 7 Reynolds Decomposition Method to analyse turbulence and to parameterise the nonlinear terms in the Navier-Stokes equation Basic idea: Separate velocity components into a mean value and (statistical) fluctuations around this mean v(t) v(t) v '(t) with T 1 v(t) v(t)dt T0 v : Mean velocity v ' : Turbulent velocity fluctuations, fluctuations "turbulent turbulent velocities" velocities From the definition follows: v ' 0 Description of turbulence by statistical properties of v '(t) In the following, v denotes one component of the velocity 15 Frequency Spectrum of Turbulence Eddies and hence velocity fluctuations exist on various time and length scales. Separation of contributions of different frequency or wave number k (mathematical: Spectral analysis analysis, Fourier analysis) 1 2 ,k T L T, L: Period and size of eddies Frequency spectrum of velocity fluctuations: Fourier transform F (t) e v '(t) 2 i t dt Inverse transform: v '(t) F e 2 i t d 16 8 Turbulent Kinetic Energy (TKE) From the separation of the flow field in a mean flow and statistical fluctuations follows: Kinetic energy density of the mean flow: [J/m3] Emean 1 kin v 2 V 2 turb Ekin 1 v 2 Kinetic energy density of the turbulent flow: V 2 [J/m3] TKE Def.: Turbulent kinetic energy (TKE): [J/kg = m2/s2] 1 2 v 2 TKE = half of the variance of the velocity fluctuations Dimension: L2/T2 1 T 2 v '(t) T 0 v '(t) v '(t)dt (Note: Frequently factor ½ is omitted) 17 Power Spectrum of Turbulence Average turbulent energy density: dE 1 dE d v ' 2 f( )d with f( ) d E d 0 0 E v '2 f()d quantifies the fraction of the total energy density present in the frequency interval [, +d]: dE v ' 2 f( )d One can show ( Roedel) that the power spectrum is connected t d tto the th spectrum t off the th velocity l it fluctuations fl t ti via: i f F 2 T v'² and dE F d T 2 T is the averaging time. 18 9 Turbulent Energy Cascade (Richardson) Turbulent energy generation at large scales Transport of turbulent energy down the eddy scales Dissipation of turbulent energy at small scales due to viscosity Lewis Fry Richardson (1881 - 1953) Frisch 1995, Turbulence, Cambridge Univ. Press Richardson 1922: Big whirls have little whirls that feed on their velocity, and little whirls have lesser whirls and so on to viscosity. 19 Kolmogorov’s Theory of Turbulence Kolmogorov's postulates (1941): 1) For very high Reynolds number, the small scale turbulent motions are statistically isotropic. The anisotropy from the geometry of the system at large scales ((LS) is lost in Richardson's energy gy cascade. 2) The statistics of the small scales has a universal character, determined only by the viscosity () and the rate of energy dissipation (). By dimensional analysis, and uniquely define a dissipation length scale LK. 3) In the "inertial range", i.e. the intermediate range of scales LS >> LI >> LK between the system scale and the dissipative p scale,, kinetic energy gy is essentially y not dissipated but merely transferred to smaller scales. Thus viscosity does not play a role and the statistics in the inertial range is uniquely determined by the length scale (LI) and the rate of energy dissipation (). Andrey Kolmogorov (1903 – 1987) Kolmogorov A.N. (1941), The local structure of turbulence in incompressible viscous fluid for very large Reynolds numbers". Proc. USSR Academy of Sciences 30: 299–303. (Russian), translated into English by Kolmogorov, The local structure of turbulence in incompressible viscous fluid for very large Reynolds numbers, Proc Roy. Soc. London, Series A: Mathematical and Physical Sciences 434 (1980), 9–13. 20 10 Kolmogorov Scales of Turbulence Turbulence at high Re and small scales is determined by 1) Kinematic viscosity of the fluid 2) The rate of energy dissipation in the turbulent flow Idea: Derive by dimensional analysis the universal, smallest scales off turbulent t b l t motion ti from f and d . Note: Dimension of follows from Dimensional analysis: 2 L T 2 L T3 TKE LK 3 length scale LK: tK time scale tK: 1 2 v 2 d TKE dt 1 1 4 L2 3 L2 1 L6 T 3 4 3 3 2 L4 T L T T 1 2 L2 T 1 2 L L T 3 2 T2 T L T 1 2 2 3 21 Kolmogorov Scales: Example Kinematic viscosity = 1.510-5 The rate of energy dissipation = 1 W/kg (= m2/s3) 1 4 1.5 10 5 3 LK 1 1 3 4 2.5 10 4 m 0.25 mm 1 1 5 2 1.5 10 2 3 tK 4 10 s 1 1 v K LK tK 4 1.5 10 5 1 1 4 0.06 m s 22 11 Kolmogorov's Energy Spectrum In the inertial subrange, the energy density spectrum should depend only on the length scale (LI) and the rate of energy dissipation (). The wavenumber k is related to the length scale by k = 2/LI. Dimensional analysis yields the shape of the power spectrum E(k): L2 T3 k E k c a k b It follows: 1 L E k d TKE dk L3 L2a 1 T 2 T 3a Lb L3 E k T 2 2 5 a ,b 3 3 E k c 2 3 k 5 3 23 Turbulence Spectrum E(k) Energy input Inertial subrange Dissipation 24 12 Autocorrelation of v'(t) v t v x v t v t 1 v t 2 t, x Sh t times Short ti : v t v t Long times : v t has no similarity with v t 25 Autocorrelation Functions Lagrange's Autocorrelation Function: Observer moves with fluid parcel and determines velocity fluctuations. The autocorrelation is determined by spatially averaging over many parcels: R L ( ) v '(t) v '(t ) v ' 2 (t) Euler's Autocorrelation Function: Velocity fluctuations are measured at a fixed location. The autocorrelation is determined by temporally averaging over many observations: R E ( ) v '(t) v '(t ) v ' 2 (t) Euler's Autocorrelation Function can be directly determined from (temporally highly resolved) measurements of the velocity. 26 13 Eulerian Autocorrelation Examples for the Eulerian autocorrelation function (atmosphere, neutral or weakly labile conditions) u = 5m/s Averaging time: 1 hour x = direction of flow y = horizontal direction perpendicular to flow z = vertical Roedel, W., 2000. Physik unserer Umwelt. Die Atmosphäre. Springer 27 Autocorrelation and Power Spectrum Autocorrelation and turbulent energy density are closely linked. It can be shown ( Roedel) that Euler's autocorrelation function is the fourier transform of the power spectrum: RE f()e 2 i d Thus the relative spectral energy density can be determined from the Eulerian autocorrelation (i.e., from highly resolved time series of velocity measurements): f( ) R e E 2 i d 28 14 The Theorem of Taylor How far do fluid parcels move due to turbulence? Over which distance does turbulence mix constituents (e.g., dissolved conc.) of the fluid? 1-D: We use a (moving) coordinate system where v x v x 0 i.e. dx/dt = v = vv',, and x(t x(t=0) 0) = 0 Since fluctuations v' are statistical, the mean displacement is 0: x t 0 But not the variance: 2x x 2 t 0 Turbulence produces displacement x x 2 analogous to diffusion! The theorem of Taylor connects the variance of the displacement of a fluid parcel with the Lagrangian Autocorrelation Function: We have: d 2x d 2 d 2 d x (t) x (t) 2x(t) x(t) 2 x(t) v ' x (t) dt dt dt dt with x t v ' x t ' dt ' t 0 29 The Theorem of Taylor Thus we have: d 2x 2 dt t v ' x (t) t v ' x (t ') dt ' 2 v ' 2x (t) 0 0 2 v ' 2x (t) 0 v ' x (t) v ' x (t ) t v ' x (t) v ' x (t ) 0 v ' 2x (t) v ' x (t) v ' x (t ') v ' 2x (t) dt ' t' t d v ' 2x (t) t 2 v ' 2x (t) dt ' d t d 2 v ' 2x (t) R L,x ( ) d 0 Integration yields the Theorem of Taylor: t t' 2x (t) 2 v ' 2x (t) R L,x ( ) d dt ' 0 0 30 15 The Theorem of Taylor - Discussion Taylor theorem: t t' 2x ((t)) 2 v ' 2x R L,x L x ( ) d dt ' 0 0 Since RL → 0 for large , we have for large t': t' 0 R L,x d L const. const L: Lagrangian time scale t t L R L 1 1 ddt ' t ' dt ' 0 1 2 t x (t) v ' 2 t 2 t t L R L 0 R L,x ddt ' L dt ' L t x (t) 2 v ' 2 L t 0 31 Turbulent „Diffusion“ Molecular diffusion (see lecture 4): 2 (t) 2Dt t D 2Dt, 1 1 v G v 2 3 3 mixing length l' = v' λL. Turbulent diffusion: t L 1 d2 K 2 dt t L Analogy: K x ( t ) v ' 2x t K x ( t ) v ' 2x molecular v m2 o lec. Molecular velocity Collision interval Mean free path G v Molecular diffusivity D D from variance 1 v G 3 2 D 2t L v 'x l'x turbulent v '2 Turbulent velocity L l v L Lagrangian time scale K v ' l ' Turbulent diffusivity K 1 d 2 2 dt Mixing length K from variance 32 16 Molecular versus Turbulent Diffusion Molecular Diffusion Turbulent Diffusion t = x/<vx> Molecular diffusion: σ2 = 2/3 v t with v: thermal velocity; : mean free path Turbulent diffusion: 2 2 for t L v ' t 2 2 2 v ' L t for t L In analogy to molecular diffusion, define mixing length l' = v' λL. For large t, this yields: 2 2 v ' 2 L t 2 v ' 2 L t 2 v ' v ' L t 2 v 'l' t Typical values for Lagrangian scale time in case of exhaust from a chimney: λL ≈ 15-30 min. 33 Summary • Turbulence is a result of the instability of fluid flow brought about by the non-linearity of the Navier-Stokes equation • Turbulence leads to chaotic, unpredictable behaviour (determin. chaos) • Turbulence occurs for large Reynolds numbers • Turbulent energy is passed from larger to smaller eddies, until molecular friction dominates and energy is dissipated (turbulent energy cascade) • Reynolds decomposition: Mean and fluctuations of velocity • Important concepts for a statistical description of turbulent fluctuations: – Power spectrum (energy density of turbulence) – Autocorrelation of velocity fluctuations • Turbulence produces statistical displacements and hence transport: turbulent diffusion • For sufficiently large diffusion times, turbulent diffusion is analogous to molecular diffusion (but with different diffusion coefficients) 34 17