1 / 31

Dr. R. Nagarajan Professor Dept of Chemical Engineering IIT Madras

Advanced Transport Phenomena Module 7 Lecture 30. Similitude Analysis: Dimensional Analysis. Dr. R. Nagarajan Professor Dept of Chemical Engineering IIT Madras. SIMILITUDE ANALYSIS. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY.

fuchsr
Download Presentation

Dr. R. Nagarajan Professor Dept of Chemical Engineering IIT Madras

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Advanced Transport Phenomena Module 7 Lecture 30 Similitude Analysis: Dimensional Analysis Dr. R. Nagarajan Professor Dept of Chemical Engineering IIT Madras

  2. SIMILITUDE ANALYSIS

  3. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY • Cost of running full-scale, long-duration experiments is very high • Incentive to obtain required info using small-scale models and/ or short-duration (“accelerated”) tests • LH Baeckeland (chemist): “Commit your blunders on a small scale, make your profits on a large scale”

  4. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY • Under what conditions can one quantitatively predict full-scale (“prototype”) behavior from small-scale (“model”) experiments? • Dynamic, thermal, chemical, geometrical similarity: Can all be obtained simultaneously?

  5. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY • How will (p) and (m) performance variables be quantitatively interrelated? • If possible, avoid complex relations • Proper choice of test conditions can ensure simple relations • When is blend of small-scale testing & mathematical modeling necessary?

  6. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY • Single large-scale device is usually more attractive than stringing together many smaller-scale units • Desired capacity at reduced cost • However, reliability, serviceability & availability may be hard to achieve • Redundant arrays can ensure this

  7. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY

  8. SCALE-MODEL TESTING & EXPLOITATION OF SYMMETRY • Usually, geometrical scale factor Lp/Lm >> 1 • To minimize cost of model tests • Sometimes, converse is true • e.g., modeling of nano-devices by micro-devices • Results to be reported in relevant “dimensionless ratios” • Use internal reference quantities (e.g., relevant L, T, t, etc.) • “Eigen measures”  “eigen ratios”

  9. TYPES OF SIMILARITY • Geometrical: corresponding distances in prototype & model must be in same ratio, Lp/Lm • Dynamical: force or momentum flux ratios must be same for (p) and (m) • Thermal: corresponding ratios of temperature differences between any two points in (p) and (m) must be equal • Compositional: corresponding ratios of key species composition differences between any two points in (p) and (m) must be equal

  10. TYPES OF SIMILARITY • All types of similarity can be simultaneously attained in nonreactive flows over wide non-unity range of Lp/Lm • By making compensatory changes in other system parameters • More difficult to achieve in systems with chemical change, especially under homogeneous/ heterogeneous non-equilibrium conditions

  11. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • Law of “Corresponding States” • EOS thermodynamic data for rare gases (He, Ar, Ne, Kr, Xe) different => p, V, T data for each gas would plot differently • But, if critical quantities (pc, Vc, Tc) are used as reference values, i.e.:

  12. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • All have same EOS in terms of reduced quantities: • Works well for other vapors as well (chemically unlike noble gases)

  13. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING Law of “Corresponding States” “Corresponding states” correlation for the compressibility pV/(RT) of ten vapors (after G.-J. Su(1946))

  14. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • Newtonian Viscosity of a Vapor: • For a pure vapor, viscosity m can be shown to depend on: product of Boltzmann constant and local temperature Mass/molecule Size parameter defined by Energy-well parameter (average volume/molecule) as

  15. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING Newtonian Viscosity of a Vapor: 1 Two-parameter ( ) spherically symmetric intermolecular potential: (a) Dimen- sional; (b) non- dimensional (scaled)

  16. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • Newtonian Viscosity of a Vapor: • Since this relation must be dimensionally homogeneous, it can be rewritten as: • Viscosity coefficient of all such vapors should correlate as above. • Data for any particular vapor can be used to obtain indicated function for all.

  17. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • Newtonian Viscosity of a Vapor: • In the perfect-gas limit (s3/v  0), we obtain well-known Chapman-Enskog viscosity law: • This is of earlier “similitude” form • m independent of p • n varies as p-1

  18. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • Similitude in Biology: Mammal Invariants (Stahl, 1962) • Each mammal, depending on type & size, may have a different:

  19. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • Similitude in Biology: Mammal Invariants (Stahl, 1962) • Some dimensionless ratios are same for all mammals– mammal invariants or allometric ratios: • Corresponding biological events (e.g., puberty, menopause) occur at appr. corresponding times • All mammals are “models” of one another

  20. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • “Universal” Drag Law: • Steady drag, D, on smooth sphere of diameter dw in uniform, laminar stream of velocity, U depends on fluid density, r, and Newtonian viscosity, m: • Nondimensional form: • where

  21. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • “Universal” Drag Law: • All spheres are geometrically similar • If we set: then

  22. NONDIMENSIONAL PRESENTATIONS IN SCIENCE AND ENGINEERING • “Universal” Drag Law: • i.e., dynamic similarity is also achieved, and: • Quantitative relationship between Dp and Dm • When Re << 1: If both Rep and Rem satisfy this condition, testing need not be done at same Re value ~

  23. DIMENSIONAL ANALYSIS • Vaschy (1892), Buckingham (1914): (Pi Theorem) • Any dimensional interrelation involving Nv variables can be rewritten in terms of a smaller number, Np, of independent dimensionless variables • Nv - Np = number of fundamental dimensions (e.g., 5 in a problem involving length, mass, time, heat, temperature) • e.g., drag relation: Nv = 5, Np = 2

  24. DIMENSIONAL ANALYSIS • Buckingham Pi Theorem: • Can be used in any branch of science/ technology • Relevant variables must be listed in their entirety • Provides relevant similarity criteria for problems beyond geometrical & dynamical similarity • Relevant dimensionless groups (p’s) are the quantities to be kept invariant in model testing

  25. DIMENSIONAL ANALYSIS • Steady heat flow from isothermal sphere in steady uniform (forced) fluid flow • Interrelation between 8 dimensional quantities can be restated in terms of 3 dimensionless groups:

  26. DIMENSIONAL ANALYSIS • Steady heat flow from isothermal sphere in steady uniform (forced) fluid flow • Re establishes dynamic similarity • Prandtl number, Pr, represents thermal similarity • Prototype heat fluxes may be determined from model heat fluxes, provided: and

  27. DIMENSIONAL ANALYSIS • Geometric similarity for bodies of complex shape requires similarity w.r.t.: • Shape, and • Orientation (relative to oncoming stream, gravity, etc.) • For fluid convection in a constant-property, low-Mach number Newtonian fluid flow:

  28. DIMENSIONAL ANALYSIS • In the presence of variable thermophysical properties, forced convection, natural convection, free-stream turbulence:

  29. DIMENSIONAL ANALYSIS • For high-speed (compressible) gas flows, add: etc.

  30. DIMENSIONAL ANALYSIS • Greatest advantage: • No need to know/ solve underlying equations, subject to ic’s, bc’s, etc. • Weaknesses: • Uncertainty regarding completeness of initial variable list • Inability to exploit info contained in field equations & conditions, which can further reduce # of dimensionless parameters

  31. DIMENSIONAL ANALYSIS • Physical significance of dimensionless groups obscured • No insight regarding analogs (other phenomena obeying same laws)

More Related