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Reaction Engineering for Environmentally Benign Processes
Reactor Selection Strategy
M.P. Dudukovic
Module 6Homogeneous systemsHeterogeneous systemsSystems (multi-scale) approach
S1
Approach to Reactor Selection1. Identify number of phases present at reaction
conditions (thermodynamics)– Single – Homogeneous system– Multiple – Heterogeneous systems
2. Identify stoichiometry, number of reactions, energy requirements (e.g. adiabiatic temperature rise/fall)
3. Identify mechanism (if possible) and plausible reaction pathways and active intermediates
4. Decide on the purpose of reactor selectionEvaluation of kinetic dataData for scale-upCommercial design
S2
Chemical Reaction Engineering BasicsMolecular Level– Mechanisms and kinetic rates
Eddy (Particle) Level– Micromixing & kinetics– Intra phase diffusional effects (Thiele modulus,
effectiveness factor)– Inter phase transport effects
Reactor Level– Ideal flow patterns (CSTR, PFR)– Non-ideal flow patterns between phases– Contacting patterns– Mixing
S3
For Homogeneous Systems:Identify the magnitude of heat transfer requirementAssess the effect of ideal flow patterns on volumetric productivity and selectivitySelect the best ideal flow pattern (batch, semi-batch, continuous flow stirred tank reactor – CSTR, plug flow reactor – PFR)Optimize your objective function (related to profit) using as manipulative variables:- Feed reactant concentrations and their ratio- Feed temperature- Reactor temperature or temperature profile
Keep things simple whenever possible!
Approach the ideal by practical design as much as possible.
S4
HOMOGENEOUS SYSTEMS(Optimizing Volumetric Productivity)
Batch Reactor
Plug Flow Reactor (PFR)
Continuous Flow Stirred Tank Reactor (CSTR)
FA0
CA0
FA = FA0(1-XA)
T = const.
FA0
CA0 FA = FA0(1-XA)
( )
( )∫ =−
==
+=⎟⎟
⎠
⎞⎜⎜⎝
⎛−==
==
0
imereaction t down timeshut
unit timeper reactedA of Moles
1,,0 0
0
0
A
A
C
C A
As
s
AA
AAA
AA
RdC
tt
ttVXC
XCCttCCt
( )VRXF AAA −==⎟⎟⎠
⎞⎜⎜⎝
⎛0unit timeper reacted
A of Moles
( )
∫ −=
−==⎟⎟⎠
⎞⎜⎜⎝
⎛
AX
A
A
A
AAA
RdX
X
VRXF
0
0
1unit timeper reacted
A of Moles
S5
where is the ratio of stoichiometric coefficients
Volumetric Productivity for Product P then is
( )( )lumereactor vo
unit timeper produced of moles PVFp
( )ACSTR
p Rap
VF
−⎟⎠⎞
⎜⎝⎛=⎟⎟
⎠
⎞⎜⎜⎝
⎛For CSTR
( ) ( )
∫ −
=−⎟⎠⎞
⎜⎝⎛=⎟⎟
⎠
⎞⎜⎜⎝
⎛AX
A
A
A
APFR
p
RdX
X
apRap
VF
0
1For PFR
( )ap
The ratio of volumetric productivities in the two systems
( )( )
( )( )A
A
CSTRp
PFRp
RR
VFVF
−−
=
Is the ratio of average reaction rate in a PFR and the reaction rate at exit conditions of the CSTR
S6
Homogeneous Systems (optimizing selectivity)Homogeneous Systems (optimizing selectivity)
A + B P desired product2nd Order
A + A S undesired product2nd Order
• Which is the optimal flow pattern ?• What is the optimal selectivity ?
(at fixed feed concentrations, feed ratio of FA0/FB0 and conversion of B)
BPFR
A P+S
A P+SPFR
B
B P+SPFR
A
B
A P+S
initially only B
A
initially only A
B
S7
In multiple reactions it is useful to consider the point yield behavior
( )( )reactantkey of ncedisappeara of rate
product desired offormation of rate=
−=
A
R
RR
φ
( )exitAAoexitR CCC −= φThen in CSTR
∫=Ao
exitA
C
CAR dCC φWhile in PFR
Production rate of R is maximized:In a CSTR for systems with dφ/dCA<0 (undesired reactions of higher order than the desired one)
φ
CA
φ
CA
φ
CA
In a reactor combination for nonmonotonic yield curve
In a PFR for systems with df/dCA>0 (undesired reactions of lower order than the desired one)
S8
Other Simple Rules Worth RememberingIn consecutive reactions production of intermediate is always more favored in a PFR than in a CSTRFor exothermic reactions maximum volumetric productivity is reached at an optimal temperature which is a function of conversionWhen desired reaction has the highest activation energy select the highest temperature for best selectivityWhen desired reaction has the lowest activation energy lowest practical temperature optimizes selectivityFor intermediate activation energy of desired reaction an optimal temperature or temperature profile can be found
For lumping complex reaction schemes into patterns to analyze see Levenspiel, O., Chem. React. Eng.
S9
( )
( ) ( )
Avoid!Bad!model seriesin or tanks dispersionby Model
1
10
101
stagnancy indicate uesLesser val
2
2
o
22
2
o
>
<<
⎩⎨⎧
=−=
==
∫
∫∞
∞
σ
σ
σCSTRPFR
dttEttt
QVdttEtt
Recognize that selected ideal flow patterns may only be approached in practice.
Determine the deviation from ideal flow patterns by examining the residence time distribution (RTD) of the system either derived from the solution of the flow field or experimentally determined on a reactor prototype (cold flow model), pilot plant or on the actual unit.
( ) ( )tdttE around timeresidence of outflow offraction =
( ) ( )tdttE about timeresidence of outflow offraction =
E
t
E
t
E
tt
PFR CSTR BetweenPFR & CSTR
exponential decay
tt
S10
( )oA
AoR R
C−
=τCharacteristic reaction time
system dominated mixing-effect microscale Strong5
slimitation transportmicroscale No3.0
>•
<•
R
D
R
D
ττττ
massunit per disspatedenergy viscositykinematic413
==
⎟⎟⎠
⎞⎜⎜⎝
⎛=
εν
ενλ
&&K
In between micromixing models needed!
2
== DDK
Dλ
τCharacteristic diffusion time
In scale-up of systems with broad RTD we need to assess whether transport limitations can develop on a micro-scale (i.e. in bringing reactants in contact or in supplying them to the soluble catalyst, enzyme or cell). This is particularly important for non-premixed feeds.
We need to assess the scale of the smallest turbulent eddies in the system which is determined by the amount of energy dissipated per unit mass of the system. For example
( )2.02 >σ
molecular diffusivity
S11
All reactions with τR > O(1 second ) will not cause transport limitations.
Reactors with large can be considered in maximum mixedness condition2σ
( ) ( )sDk
D1
5
232
101010 −
−
−
===λτ
( )mOk μλ 10:SolutionWater ≈
Only reactions with τR > 105(s) will not cause transport limitations.
For most systems mixing and reaction occur simultaneously and proper micromixingmodel is needed.
Proper treatment of this topic is not available in most standard reaction engineering text. References and related notes can be obtained upon request.
( ) ( )sDK
D4
8
222
101010
=== −
−λτ
Example:
( )mOk μλ 100:Solution ViscousHighly ≈
S12
( ) ( )
( )o
batch
batchFS
AAAA
oAA
CCtRdt
dC
dttEtCC
==−−=
= ∫∞
0where
..
1. Segregated Flow – All fluid elements remain segregated by age on their sojourn through the system and elements of different ages mix only at the exit.
Two extreme micromixing models are:
( )
( )( )
( )
0
solvingby obtained0..
→∞⇒
−−−=
==
∫∞
λλ
λ
λ
ddC
CCdttE
ERd
dC
CC
A
AA
t
AA
AA
o
MM
2. Maximum Mixedness – All fluid elements of same life expectancy are together at all times.
S13
Micromixing EffectMicromixing EffectA P 1st order
k1
2A S 2nd orderk2
k2CA0/k1 = 0.5Reactions:
System: CSTR, = 48 min; Exponential RTD
Laboratory System: 1 L vessel, 1500 rpm
Large System: 5000 gallon vessel; 300 rpm
Selectivity in the Lab.: CP/CS = 98 at XA= 0.98
Selectivity in the Large Unit: CP/CS = 15 at XA= 0.98+
Model Predictions:
Maximum Mixedness Flow: CP/CS = 100
Segregated Flow: CP/Cs = 4.5
tr
S14
Key issues associated with selection and scale-up of reactors for homogeneous reactions
Developing sufficient knowledge of molecular level events to propose mechanism and establish reaction pathways, key reactions and their parameters.
Determining optimal ideal flow pattern and maintaining the same flow pattern (same and with scale-up).
Avoiding bypassing and stagnancy with scale-up.
Maintaining same level of micromixing with scale-up is needed but hard as power dissipated per unit volume decays with scale and affects micromixing adversely.
Maintaining adequate heat transfer rate with scale-up is difficult as heat evolved by reaction ∝ volume and heat removed ∝ surface. With scale-up in general S/V is reduced which may lead to problems unless corrective steps are taken.
Control of temperature, pressure, pH etc. becomes more difficult with increased scale.
Homogenous catalyst or soluble enzyme recovery, a cinch in the lab, becomes a major chore in large units.
Solvent separation is a problem.
t 2σ
∴ Heterogenize the system whenever possible, do not use solvents unless absolutely necessary! S15
The objective in multiphase reactor selection and design is to minimize the manufacturing costs in producing the desired marketable product.
For conversion cost-intensive processes one must achieve both high volumetric productivity and high product concentration.
( )( )( )
( ) lumereactor vo -
weightmolecular -
rate productionmolar - typroductivi c volumetri-
3
3
mV
kmolkg
hkmolFhmkgm
p
p
v
μ
&
For recovery cost intensive processes (e.g. often encountered inbiotechnology) one must achieve high product concentration cp(kg/m3).
( ) ionconcentratmolar 3 =
=
mkmolc
Cc
p
ppp μ
In either case proper reactor selection is required since reactor type and performance affects significantly the whole process.
VFm ppv μ=&
S16
)T,C(R)C(L bbb η=
∑ Δ−=j
bbjjRbh )T,C(R)H()C(Lj
η
( )transport;kineticsf=η00 P,C,T
P,C,T
feed, Q
product, Q
Reactor performance determines the number of separation units and their load and hence profoundly affects process economics and profitability.
⎟⎟⎠
⎞⎜⎜⎝
⎛=
PatternMixing
; Rates;Variables OperatingandInput
ePerformancReactor
f
-Conversion - Flow Rates - Kinetics - Macro-Selectivity - Inlet Conc. & Temp. - Transport - Micro-Production Rate - Heat Removal
LHS RHS
⎟⎟⎠
⎞⎜⎜⎝
⎛×⎟⎟
⎠
⎞⎜⎜⎝
⎛=⎟⎟
⎠
⎞⎜⎜⎝
⎛VolumeReactor
RateReaction Averaged Volume
RateProduction
S17
In heterogeneous systems the volume averaged reaction rate (volumetric productivity) is a function of:
Molecular scale – kinetics and rate forms
Single particle (single eddy) scale effects on diffusion and reaction in the particle, specific phase interfacial area effect on inter-phase mass and heat transfer
Reactor scale effect via contacting pattern and phase RTD influence on the average rate and via flow regime effect on phase holdups and inter-phase transport coefficients.
S18
As a reminder consider the diffusional effects on the rate in a porous particle with uniformly deposited active catalyst in pores
( ) ( )sApparticleA RR −=− η
p
pp
h∧
∧=
tanη
⎟⎟⎟
⎠
⎞
⎜⎜⎜
⎝
⎛
⎟⎟⎠
⎞⎜⎜⎝
⎛=
⎟⎟⎟
⎠
⎞
⎜⎜⎜
⎝
⎛
Conditions SurfaceOutside Particle
at Evaluated Rate
FactoressEffectiven Particle
Particle ofVolumePer Unit
Rate Average
Where typically
p∧With Thiele modulus
p
pp
R
Dp
SV
∝∧
=∧ττ2
True kinetics, activation energy is observed. Doubling catalyst activity doubles the rate. Rate independent of Sp/Vp
1 -
0.1 -
0.01 -
0.001 -
10-4 -
0.01 0.1 1.0 10 100 1000| | | |
p∧
pη
( ) ( )SAparticleAp RR −=−→∧ 0
( ) 211 +
⎟⎟⎠
⎞⎜⎜⎝
⎛=
∧=−∞→∧
n
Ap
peA
pparticleAp SS
CVS
DkCR
Approximately ½ E observed. Reduced order
( ) ( ) ( ) 2121
1
. loadingcatalst ,activitycatalyst ;−
⎟⎟⎠
⎞⎜⎜⎝
⎛∝−
p
ppartA S
VR
S19
Now one must also consider inter-phase transport( ) ( ) ppsAAAps VRCCSk
sbη−=−
( ) ( )
ppvps
AbulkApartobsA
VkSk
CRR b
η
η110
+=−=−
And for first order reaction one gets
The denominator contains the sum of external resistance and internal + kinetic resistance.Of course we need the rate per unit reactor volume so
Clearly how much catalyst we packed in (bed voidage εB) affect also volumetric productivity.Finally flow pattern will affect how (-RA)bulk is averaged and flow pattern affects transport coefficient ks.
( ) 211 +
⎟⎟⎠
⎞⎜⎜⎝
⎛=
∧=−∞→∧
n
Ap
peA
pparticleAp SS
CVS
DkCR
Approximately ½ E observed. Reduced order
( ) ( ) ( ) 2121
1
. loadingcatalst ,activitycatalyst ;−
⎟⎟⎠
⎞⎜⎜⎝
⎛∝−
p
ppartA S
VR
( ) ( ) ( )bulkAoBreactobsA RR −−=− ηε1
S20
( ) ( ) ( )1 :REACTION PlBgA =+
Gas Limiting Reactant (Completely Wetted Catalyst)
( )( )
( ) ( )( )
( )( )
( )( )
( )
( ) pvBpsBl
A
g
Hg
BvoA
slp
a
gB
sBpv
Av
kakaK
HA
AkR
sreactmmol
AAa
AHA
a
sreactmmol
sreactmmolAk
scatmmolAk
A
ηε
εη
εη
−++
=−=
−
⎟⎟⎠
⎞⎜⎜⎝
⎛−
−
Ω=
1111
1
:. RATE (APPARENT) OVERALL
k:solid-Liquid -
K:liquid-Gas -
lumereactor vounit per . RATE TRANSPORT
lumereactor vounit per
.1 : CATALYST IN RATEolumecatalyst vunit per
.: RATE KINETIC
3
s
11
3
3
3
S21
A System Approach to Multiphase Reactor Selection
Process Requirements• Maximum selectivity• Maximum conversion• Maximum productivity• Stable• Easy scale-up• Operability
Environmental Constraints• Minimum pollution
Why System Approach?• Number of configurations extremely large• Limits to intuitive decision making• Innovations are possible
Reactor Type&
Contacting Pattern?
Economics
Reactants Products
S22
Multiphase Reactor Selection MethodologyI. Volume / Interfacial Area for the Phases
~ dp for gas-solid systems~ β for gas-liquid systems~dp and β for G-L-S systems
II. Contacting & Flow Patterna) RTD for each phase (PF, backmixed)b) Co – Counter – Cross current?c) • Split addition
• Product removal in situ, etc.III. Flow Regime
• Homogeneous• Churn turbulent• Dense phase riser (air lift)• Dilute phase riser (spray) S23
Example: Recovery of Oil From Oil Shale
Process Requirements (Wish List)• Maximize “oil” recovery (99%+)• Scale-up to mega-size units (≈ 500 kg/s feed)• Minimize reactor volume• Handle fines well
>200 G-S Reactor Configurations possible!After Krishna (1989) S24
S25
Shell’s SPHER 3 Bed Concept
Chevron’s STB(staged turbulent bed)
S26
Decisions to be made:I. Particle Size
II. Contacting Pattern
III. Gas-Solid Fluidization Regime
a. Overall contacting flow pattern of gas and solid phases:
b. RTD of each phase:
Krishna (1992), Adv. Chem. Eng. S27
Kinetics & Transport PhenomenaAffecting Process Performance
Oil Shale Pyrolysis
Wallman et al (1980), AIChE Meeting, San Francisco S28
Large throughputs → minimize reactorVolume → need small residence times → need particles in range I → need plug flow of solids
Residence time required for heating up of particle to 95% of Tg = 482°C
Residence time required for isothermal backmixed reactor (174 min)
Conversion of kerogen 99%
Residence time required for isothermal plug flow reactor (8 min)
S29
Desired product (heavy oil) yield improved with small particle size (dp < 2mm).
In grinding shale to make 2mm particles fines may be formed too.
S30
III. Flow Regime Selection Tree
II. Contacting Flow PatternSelection Tree
I. Particle Size Selection Tree
S31
Wilkins et al (1981), 2nd World Congress, Montreal
To reduce oil degradation, must remove oil as soon as formed → in situ product removal
S32
A. Counter-Current Contacting
B. Co-Current Contacting
C. Cross-Current Contacting
Reactor volume requirement → need plug flow of solidsRapid oil removal → cross flow for gas S33
Proper fluidization regime should now be chosen toaccommodate:• Desired particle size (small)• Desired solids holdup (large)• Desired contacting pattern (solids-plug flow, gas short
contact time)• Excellent heat transfer
S34
The “Ideal” Reactor: Multi-Stage Cross-Current Fluidized Bed
Meets the criteria:• Small particles• Plug flow of solids• Short vapor residence time (cross-flow)• Good mixing and heat transfer• Scale-up possible – study one train
Shell Shale Retorting Process(Shell Research)
Krishna (1992) S35
For Shale ExamplePossible Reactor Combinations
regimes onfluidizati
pattern contacting
solid-gas
rangesize
particle
1955133↑↑↑
=××
• Sequential design making leads to success without brute force evaluation of all options.
Choice of wish list effects final result. Add:Choice should be based on known technology
⇓Moving bed reactor
S36
This example illustrates how consideration of all scales leads to successful reactor selection
It also teaches that in situ separation when possible is of high value and can sometimes be achieved by:
Catalytic distillationSelective adsorption or absorptionMembrane separationOther means (e.g. dynamic reactor operation, etc.)
Think Out of the Box!
S37
Clearly is determined by transport limitations and by reactor type and flow regime.
Improving only improves if we are not already transport limited.
Our task in catalytic reactor selection, scale-up and design is to either maximize volumetric productivity, selectivity or product concentration or an objective function of all of the above. The key to our success is the catalyst. For each reactor type considered we can plot feasible operating points on a plot of volumetric productivity versus catalyst concentration.
vm&
aS vm&
maxvm&
maxx x
maxxmaxvm&
aS
ionconcentratcatalyst
activity specific
3 =⎟⎠⎞
⎜⎝⎛
=⎟⎟⎠
⎞⎜⎜⎝
⎛
reactormcatkgx
hcatkgPkgSa
S38
Chemists or biochemists need to improve Sa and together with engineers work on increasing maxx . Engineers by manipulation of flow patterns affect
maxvm& . In Kinetically Controlled Regime
vm& aSx,∝
maxx limited by catalyst and support or matrix loading capacity for cells or enzymes In Transport Limited Regime
vm& ppa xS ,∝
2/10 ≤≤ p Mass transfer between gas-liquid, liquid-solid etc. entirely limit vm& and set maxvm& . Changes in ,aS do not help; alternating flow regime or contact pattern may help! ∴ Important to know the regime of operation
S39
Schematic of Bubble Column Type of Photo Reactors (Commercially Used)
A train of bubble columns (sparged reactors) through which liquid toluene and chlorinated products flow in series while chlorine is added into each column and hydrogen is removed from the column.
Typical selectivity to benzyl chloride: 90% But Toluene conversion is less than 30%. Can one do better?
S40
Schematic of Photo Reactive Distillation SystemConfigured into a Semi-Batch Model
Allows in situ product removal and toluene recycle.
Selectivity to benzyl chloride: 96% + up to toluene conversion of 98%.
Z. Xu (1998) S41
PROBLEMProduction of herbicide intermediate, aryl amino-alcohol (AA) via hydrogenation of aryl nitro-alcohol (NA)
Reaction System: complexCurrent Reactor: semi-batch dribbling liquid reactor with
suspended catalyst slurry
DISADVANTAGES:Low volumetric productivityPoor selectivityCatalyst filtration and separation problemsPressure limitations (due to shaft)
Khadilkar et al., AIChE J., 44(4), 912 (1998)Khadilkar et al., AIChE J., 44(4), 921 (1998) S42
Reaction Network
S43
ConclusionsLiquid trickling flow pattern is preferable to a suspended catalyst mixed slurry to obtain the desired yield and productivity of Amino Alcohol.
Yield improvement is observed with decreasing feed concentration, liquid flow rate and temperature due to suppression of NA decomposition and subsequent side reactions.
Productivity of AA is a complex function of flow, feed concentration and temperature with optimal productivity being determined by the level of acceptable by-product concentrations.
Laboratory trickle bed performance data is shown to be an effective means to obtain the network kinetic parameters by proposing a plausible mechanism and optimizing the reactor model generated data. This is particularly effective in cases where conventional slurry and basked methods are rendered ineffective by the dominance of side reactions.
S44
References1. Dudukovic, M.P., Larachi, F., Mills, P.L., “Multiphase
Reactors – Revisited”, Chem. Eng. Science, 541, 1975-1995 (1999).
2. Dudukovic, M.P., Larachi, F., Mills, P.L., “Multiphase Catalytic Reactors: A Perspective on Current Knowledge and Future Trends”, Catalysis Reviews, 44(11), 123-246 (2002).
3. Levenspiel, Octave, Chemical Reaction Engineering, 3rd
Edition, Wiley, 1999.
4. Tranbouze, P., Euzen, J.P., “Chemical Reactors – From Design to Operation”, IFP Publications, Editions TECHNIP, Paris, France (2002).
S45