1 / 37

Chemical Reactor Analysis and Design

Chemical Reactor Analysis and Design. 3th Edition. G.F. Froment, K.B. Bischoff † , J. De Wilde. Chapter 3. Transport Processes with Reactions Catalyzed by Solids. Part two Intraparticle Gradient Effects. Introduction.

jean
Download Presentation

Chemical Reactor Analysis and Design

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. Chemical Reactor Analysis and Design 3th Edition G.F. Froment, K.B. Bischoff†, J. De Wilde Chapter 3 Transport Processes with Reactions Catalyzed by Solids Part two Intraparticle Gradient Effects

  2. Introduction • Transport of reactants A, B, ... from the main stream to the catalyst pellet surface. • Transport of reactants in the catalyst pores. • Adsorption of reactants on the catalytic site. • Chemical reaction between adsorbed atoms or molecules. • Desorption of products R, S, .... • Transport of the products in the catalyst pores back to the particle surface. • Transport of products from the particle surface back to the main fluid stream. Steps 1, 3, 4, 5, and 7: strictly consecutive processes Steps 2 and 6: cannot be entirely separated ! Chapter 2: considers steps 3, 4, and 5 Chapter 3: other steps

  3. Molecular-, Knudsen- and surface diffusion in pores (mainly encountered in zeolite catalysts) [Adapted from Weisz, 1973]

  4. Molecular-, Knudsen- and surface diffusion in pores Molecular diffusion: • Driven by composition gradient • Mixture n components: Stefan-Maxwell: • Molecular diffusivities (binary): • independent of the composition • inversely proportional to the total pressure (gas) • proportional to T3/2 • Momentum transfer: by collisions between atoms • or molecules • Fluxes: expressed per unit external surface of the • catalyst particle with εs: void fraction of the catalyst particle (m3f / m3cat) = fraction particle surface taken by pore mouths (Dupuit)

  5. Molecular-, Knudsen- and surface diffusion in pores Knudsen diffusion: • Mean free path of the components >>> pore dimensions • Momentum transfer: mainly collisions with the pore walls • Encountered • at pressures below 5 bar • with pore sizes between 3 and 200 nm • Knudsen diffusion flux of i : independent of the fluxes of • the other components: • Knudsen diffusivity: and: • function of the pore radius • independent of the total pressure • varies with T1/2 (Graham’s law)

  6. Molecular-, Knudsen- and surface diffusion in pores Simultaneous Molecular and Knudsen diffusion and flux from viscous or laminar flow: Darcy’s permeability constant Dusty gas model equation (kinetic gas theory) Example: Binary mixture of A and B: Viscous flow term: • generally negligible • except when • > 10 – 20 • (micron-size pores) For equimolar counterdiffusion: Additive resistance relation (Bosanquet formula)

  7. Molecular-, Knudsen- and surface diffusion in pores Simultaneous Molecular and Knudsen diffusion and flux from viscous or laminar flow: Diffusion in a multicomponent mixture: Sometimes Stefan-Maxwell replaced by less complicated equivalent binary mixture equation:

  8. Molecular-, Knudsen- and surface diffusion in pores Surface diffusion: • Hopping of molecules from one adsorption site to another • Random walk model • where: • : the jump length • : the correlation time for the motion • k : a numerical proportionality factor Vary with temperature according to the van ‘t Hoff exponential law • pre-exponential factor: • energy factor: ~ 1/number of available sites known for structured surfaces like zeolites, but much less for amorphous surfaces • Depends on the surface coverage • More important in micro- than in macroporous material • Driving force: not fluid phase concentration gradient • (Fickian law can not be applied)

  9. Diffusion in a catalyst particle A pseudo-continuum model: Effective diffusivities: Catalyst particles: very complicated (3D) pore structure • Model: • Pseudo-continuum • 1D • « Effective » diffusivity Fick type law: Pellet surface: Sphere:

  10. Diffusion in a catalyst particle A pseudo-continuum model: in: « Tortuosity » factor: • Tortuous nature of the pores • Eventual pore constrictions • Typical value: 2 - 3

  11. Experimental determination of effective diffusivities of a component and of the tortuosity • Pulse response technique: • column packed with catalyst (fixed bed) • ideal plug flow pattern ( dt/dp) • tracer pulse injected in carrier gas flow • pulse response measured (reactor outlet) In Fixed bed Out Tracer pulse Pulse response • Pulse widens: • Dispersion in the bed: • Adsorption on the catalyst surface • Effective diffusion inside the catalyst particle • Three parameters to be estimated: method of moments

  12. Experimental determination of effective diffusivities of a component and of the tortuosity • Wicke-Kallenbach cell: • Steady state or transient operation • Single catalyst particle used as membrane • Above membrane: steady flow of carrier gas • Tracer pulse injected into the carrier gas: • Diffuses through the catalyst membrane • Swept in the compartment underneath by a carrier gas • => to detector • Two parameters to be estimated • Determination tortuosity: • Specific catalyst characterization equipment • (mercury porosimetry & nitrogen–sorption and –desorption)

  13. Experimental determination of effective diffusivities of a component and of the tortuosity EXAMPLE 3.5.1.2.A Experimental determination of the effective diffusivity of a component and of the catalyst tortuosity by means of the packed column technique • Pt-Sn-y-alumina catalyst (catalytic reforming of naphtha) • Column internal diameter: 10-2 m • Column length: 0.805 m • Particle radius: 0.975 × 10-3 m • Void fraction of the packing: 0.429 m3f / m3r • Catalyst density, ρcat: 1080 kg cat/m3cat Hg-porosimetry, N2-adsorption and -desorption • Hg porosimetry: • Pore volume as a function of the amount of intruded mercury • Pore radius: calculated from Washburn eq. (cylindrical pores) • At 2000 bar: all pores > 3.3 nm filled with Hg • Nitrogen sorption: • Steep increase of the amount adsorbed at pressure where the macropores • are filled by nitrogen through capillary condensation • From Washburn eq.: total volume of adsorbed N2 • The volume of N2 adsorbed until the sharp rise is the meso pore volume

  14. Experimental determination of effective diffusivities of a component and of the tortuosity From Van Melkebeke and Froment [1995]

  15. Experimental determination of effective diffusivities of a component and of the tortuosity • Cumulative pore volume distribution: • Derived from N2 adsorption curve: Broekhoff-De Boer eq. (cylindrical pores) • Inflection point • => differential pore volume distribution by a peak at mean pore radius • Tracer pulse injected into packed column: • Fitting data: Kubin and Kucera-model • => De, KA, and Dax • => • Remarks: • Performing experiments at various total pressures • => possible to distinguish between and • Measurements possible in the absence or presence • of reactions

  16. Diffusion in a catalyst particle Structure and Network models: (in contrast to Pseudo-continuum model) • More realistic representation • More accurate • Structure models: • The random pore model • The parallel cross-linked pore model • Network models: • A Bethe tree model • Network models for disordered pore media • Monte Carlo simulation • Effective Medium Approximation (EMA)

  17. Diffusion in a catalyst particle Structure models: The random pore model: • Macro- micro pore model [Wakao and Smith, 1962 & 1964] • Application: pellets manufactured by compression small particles • Void fraction- and pore radius distributions: each replaced by two • averaged values, for the macro for the micro distribution (often a • pore radius of ~100 Å is used as the dividing point between macro • and micro) • Micro-pores particles: randomly positioned in pellet space • Macro-pores of the pellet: interstices • Diffusion flux: three parallel contributions: • Through the macro-pores • Through the micro-pores • Through interconnected macro-micro pores with:

  18. Diffusion in a catalyst particle Structure models: The random pore model: Diffusion areas in random pore model. Adapted from Smith [1970].

  19. Diffusion in a catalyst particle Structure models: The parallel cross-linked pore model • Pore size and orientation distribution function: • Pellet flux: integrating flux in single pore with orientation l • and accounting for the distribution function: with: : unit vector or direction cosine between l direction and coordinate axes Example: mean binary diffusivity: with: with: the tortuosity tensor

  20. Diffusion in a catalyst particle Structure models: The parallel cross-linked pore model Limiting cases: 1) Perfectly communicating pores Cj(z; r, Ω) = Cj(z) (closest to usual types of catalyst particles) with: κ(r) : a reciprocal tortuosity (results from the integration over Ω) Proper diffusivity: weighted with respect to the measured pore size distribution 2) Noncommunicating pores: Pure diffusion at steady state, dNj/dz = 0 or Nj = constant + no assumption on communication of pores

  21. Diffusion in a catalyst particle Structure models: The parallel cross-linked pore model Limiting cases: 3) Pore size and orientation effects are uncorrelated • with: • f(r) : the pore size distribution Completely random pore orientations => tortuosity depends only on the vector component cos = 3

  22. Diffusion in a catalyst particle Network models: A Bethe tree model: • Higher coordination numbers possible • Pores can have a variable diameter • Main advantage: can yield analytical • solutions for the fluxes • Disadvantage: absence of closed • loops not entirely realistic • branching network of pores: • coordination number of 3 • no closed loops

  23. Diffusion in a catalyst particle Network models: Disordered pore media: • Amorphous catalysts: no regular or structured morphology • Sometimes structure modified during its application (pore blockage) • Pore medium description: • Network of channels (preferably 3D) • Size distribution • Disorder to be included: certain • fraction of pores blocked Random number generator (Monte Carlo simulation) Calculations repeated for same over-all blockage probability & average pore size => calculated set of values of De is averaged • Effective Medium Approximation (EMA): construct small size network • => relation between diffusivity & blockage without considering • complete network

  24. Diffusion and reaction in a catalyst particle. A continuum model First-Order Reactions. The Concept of Effectiveness Factor: • Reaction and diffusion occur simultaneous: • Process not strictly consecutive • Both phenomena must be considered together Example: first-order reaction, equimolar counterdiffusion, isothermal conditions, and steady-state: slab of thickness L: Species continuity equation A: with boundary conditions: at the surface at the center line Solution:

  25. Diffusion and reaction in a catalyst particle. A continuum model First-Order Reactions. The Concept of Effectiveness Factor: with: for a slab of thickness L

  26. Diffusion and reaction in a catalyst particle. A continuum model First-Order Reactions. The Concept of Effectiveness Factor: Effectiveness factor: Observed reaction rate: First-order reaction Extension to more practical pellet geometries: cylinders or spheres: e.g., sphere: Aris [1957]:

  27. Diffusion and reaction in a catalyst particle. A continuum model First-Order Reactions. The Concept of Effectiveness Factor: Effectiveness factors for slab (P), cylinder (C), and sphere (S) as functions of the Thiele modulus. Dots represent calculations by Amundson and Luss [1967] and Gunn [1965]. From Aris [1965].

  28. Diffusion and reaction in a catalyst particle. A continuum model More General Rate Equations. Single rate equation: Analytical solution not possible • Generalized modulus (10 – 15% error) • Numerical solution Depends on Cs ! Coupled multiple reactions: • Numerical solution: • finite difference • orthogonal collocation Catalytic reforming of naphtha on Pt.Sn/alumina. Dimensionless partial pressure profile inside the particle for the reactant nonane. Total pressure: 7 bar, T = 510 °C, molar ratio H2/Hydrocarbons = 5. From Sotelo-Boyas and Froment [2008].

  29. Falsification of rate coefficients and activation energy by diffusion limitations Consider nth order reaction: ~ Introduce generalized modulus: observed rate: order (n+1)/2 only correct for 1st order reaction Also: effective diffusion (strong pore diffusion limitations)

  30. Falsification of rate coefficients and activation energy by diffusion limitations Weisz and Prater [1954]: or: Languasco, Cunningham, and Calvelo [1972]: EXAMPLE 3.7.A EFFECTIVENESS FACTORS FOR SUCROSE INVERSION IN ION EXCHANGE RESINS First-order reaction: Studied in particles with different size [Gilliland, Bixler, and O’Connell, 1971]

  31. Falsification of rate coefficients and activation energy by diffusion limitations EXAMPLE 3.7.A EFFECTIVENESS FACTORS FOR SUCROSE INVERSION IN ION EXCHANGE RESINS a Calculated on the basis of approximate normality of acid resin = 3N. Separately measured: DeA = 2.69 × 10-7 cm2/s. From data at 60 and 70°C. ED = 34 kJ/mol theor.

  32. Influence of diffusion limitations on the selectivities of coupled reactions Parallel, independent reactions: [Wheeler, 1951] Absence of diffusion limitations: • Compare: • Diffusional resistance decreases selectivity ! With pore diffusion limitations: First-order reactions & Strong pore diffusion limitations:

  33. Influence of diffusion limitations on the selectivities of coupled reactions Consecutive first-order reactions: [Wheeler, 1951] Absence of diffusion limitations: With pore diffusion limitations: Species continuity equations A and R, for slab geometry: Selectivity

  34. Influence of diffusion limitations on the selectivities of coupled reactions Consecutive first-order reactions: [Wheeler, 1951] With pore diffusion limitations: Selectivity: • Compare: • Diffusional resistance decreases selectivity ! with: with i = 1, 2 Strong pore diffusion limitation and for DeA = DeR: ~

  35. Criteria for the importance of intraparticle diffusion limitations • Determining kinetic parameters from experimental data: • kρs not available yet • Criteria importance pore diffusion not explicitly containing kρs also needed ! 1) Experiments with two different sizes of catalyst: Assume kρs and DeA same for both sizes with: and: = 1 No intraparticle diffusion limitations: Strong intraparticle diffusion limitations: : 2) Weisz-Prater criterion [1954]: First-order reaction: Extendable via generalized modulus

  36. Combination of external and internal diffusion limitations Nonisothermal particles • Practical situations: • Internal temperature gradients unlikely • Internal gradients unlikely to cause particle instability

More Related