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    Heuristic design of pressure swing adsorption: a preliminary

    study

    S. Jain a, A.S. Moharir a, P. Li b,*, G. Wozny b

    a Department of Chemical Engineering, Indian Institute of Technology, Bombay 400 076, Indiab Institut fur Prozess und Anlagentechnik, Technische Universitat Berlin, KWT9, 10623 Berlin, Germany

    Received 29 November 2001; received in revised form 15 November 2002; accepted 4 December 2002

    Abstract

    Due to its complicated nature and multiple decision parameters including plant dimensionality and operation

    condition, the design of pressure swing adsorption (PSA) processes is not a tri vial task. Most previous studies on PSA

    design have been made through rigorous modeling and experimental investigation for specific separation tasks. General

    heuristics for a preliminary design of PSA processes are necessary but not well investigated so far. In this paper, we

    attempt to develop easy-to-use rules for PSA process design, based on analysis of the inherent properties of adsorbate /

    adsorbent systems (i.e. equilibrium isotherm, adsorption kinetics, shape of breakthrough curves, etc.) and simulationresults. These rules include the selection of adsorbent, particle size, bed size, bed configuration, purge volume, pressure

    equalization andvacuum swing adsorption. Results of two case studies are presented to verify the rules proposed in this

    preliminary study.

    # 2002 Elsevier Science B.V. All rights reserved.

    Keywords: Pressure swing adsorption; Simulation; Design and operation; Heuristics

    1. Introduction

    Because pressure swing adsorption (PSA) has

    the properties of high selectivity, high throughputand high energy efficiency, more and more PSA

    processes are designed and operated to carry out

    gas bulk separation and purification tasks in the

    chemical industry. In a PSA process, the adsorbent

    adsorbs the preferential species of a gas mixture,

    which is then desorbed by reduction in pressure.

    Since the development of PSA, many improve-

    ments in the process have been done to make it

    more efficient. The most previous studies on PSA

    design have been made through rigorous modelingand experimental investigation for specific purifi-

    cation tasks. Since a PSA process is quite compli-

    cated and there are many parameters to be

    decided, there have been no general easy-to-use

    design rules so far. Because a pilot plant study of

    PSA is costly compared with computational study,

    simulation has become a viable alternative to pilot

    plant experiments. Based on basic kinetics and

    equilibrium data as well as operation parameters,

    simulation provides a method of predicting outlet* Corresponding author. Fax: /49-30-314-26915.

    E-mail address: [email protected](P. Li).

    Separation and Purification Technology 33 (2003) 25/43

    www.elsevier.com/locate/seppur

    1383-5866/02/$ - see front matter # 2002 Elsevier Science B.V. All rights reserved.

    doi:10.1016/S1383-5866(02)00208-3

    mailto:[email protected]:[email protected]
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    Nomenclature

    b Langmuir constant (atm1)

    C concentration in gas phase (mole per m3 of fluid)

    D intracrystalline diffusivity (cm2 s1)dp diameter of particle (cm)

    G purge/feed volume ratio

    K Henrys Law constant

    k overall mass transfer coefficient (s1)

    L total height of the column (m)

    N total number of components

    P pressure (atm)

    Q molar flow rate

    q adsorbed phase concentration (mole per m3 of solids)

    q * equilibrium concentration of adsorbed phase (mole per m3 of solids)

    qs Langmuir constant (mol cm3

    )R universal gas constant

    T temperature (K)

    t time (s)

    v superficial velocity (m s1)

    W power (kW)

    x adsorbed phase composition

    y gas phase composition

    z height of the bed (/0 at feed end, /L at product end) (m)

    Greek symbols

    a separation factor (dimension less)

    o bed Porosity

    f factor defined in (Eq. (19))

    g ratio of specific heats in gas phase

    h mechanical efficiency

    r density (kg m3)

    m gasviscosity (Cp)

    t residence time (s)

    Subscripts

    0 initial

    1, 2 components

    act actual

    ads adsorption

    blow blowdown stepf feed

    g gas phase

    H high pressure step

    I component

    L low pressure step

    min minimum value

    pres pressurization step

    prod product

    purg purge step

    s solid phase

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    concentrations and the dynamic capacity of PSA,

    without recourse to experimentation. To this end,

    a comprehensive model and a numerical solution

    method are required[1,2].Cen and Yang [3] showed that due to its

    simplicity, the equilibrium model can be widely

    used for PSA simulation. Alpay and Scott[4] used

    the linear driving force (LDF) model to describe

    the adsorption and desorption kinetics in spherical

    particles. Raghavan and Ruthven [5] presented

    numerical simulation of PSA in the recovery of

    trace adsorbable from an inert carrier using the

    linear equilibrium and linear rate expressions.

    They also assumed that during pressure changes

    (blowdown and pressurization) there was no masstransfer between the fluid and adsorbent. Ragha-

    van and Ruthven [6] discussed numerical simula-

    tion for a simple two bed PSA process in which

    effects of kinetics and changes in flow rate due to

    adsorption are significant. They showed that when

    the above effects are significant, adsorption equili-

    brium and constant velocity assumptions are no

    longer valid.

    Chahbani and Tondeur [7] discussed the mass

    transfer kinetics in PSA. They showed that the

    choice of the pore diffusion model plays a key rolefor obtaining reliable simulations. They compared

    their results with other models like LDF and

    equilibrium model. Kvamsdal and Hertzberg [8]

    showed the effect of mass transfer during the

    blowdown step. According to their results, the

    frozen solid assumption is valid only in certain

    cases, and taking into account the mass transfer

    during the blowdown step gives a better overall

    model performance in the studied cases. A series

    modeling and simulation studies have been done

    aiming at finding proper PSA design and opera-

    tion such as the particle size and pressure ratio[9/

    12].

    These previous works mainly focused on mod-

    eling and simulation of PSA. From these studies, it

    is found that for design and operation of PSA, one

    has to go for a rigorous simulation. Modeling PSA

    leads to a nonlinear dynamic partial differential

    equation system, which is difficult to solve. The

    parameters in PSA models affecting the behavior

    of the process are highly coupled to each other.

    Studies on the sensitivities of these parameters

    through rigorous modeling and simulation are

    quite expensive. Therefore, it is necessary to

    develop heuristic rules with which design and

    operation of PSA processes can be made withoutdoing more rigorous simulation.

    Heuristic rules (or rules of thumb) simplify the

    design and/or operating options and shortlist a few

    options which could be probed further. They thus

    reduce the dimensionality of an otherwise combi-

    natorial design problem. Heuristics has found wide

    applications in process design (usually a prelimin-

    ary design). Potential designs from heuristic rules

    can then be fine tuned using rigorous simulation, if

    necessary.

    The number of decision parameters, includingplant dimensionality and operation condition, is

    quite large in the design of PSA. More and more

    adsorbents are being developed, but adsorbent/

    adsorbate system characteristics themselves are

    not fully understood. The accumulated experiences

    with adsorptive separations are also insignificant

    compared with those in the cases of thermal

    distillation and chemical reaction.

    This work attempts to develop a set of heuristic

    rules for the design of PSA systems. A model of

    adsorptive separation is used to generate casestudies. Based on the properties of adsorbate/

    adsorbent systems (i.e. equilibrium isotherm, ad-

    sorption kinetics, shape of break through curves

    etc.), systematic knowledge of the input/output

    relations thus gained is extracted out to evolve

    some simple rules for design. Product purity and

    recovery are the performance factors studied to

    derive the rules forvarious decision steps in design

    of PSA. They include decisions on size of particles,

    pressure levels, configuration of PSA cycle, resi-

    dence time in PSA bed, design of PSA bed, choice

    for pressure equalization step and choice for VSAprocess.

    2. Modeling PSA processes

    Fig. 1shows a typical PSA process. The process

    consists of two fixed-bed adsorbers undergoing a

    cyclic operation of four steps: (1) adsorption, (2)

    blowdown, (3) purge, and (4) pressurization. By

    employing a sufficiently large number of beds and

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    using more complicated procedures in changing

    bed pressure, PSA may be carried out as a

    continuous process. Additional steps such as co-

    current depressurization and pressure equalization

    have been added to improve the purity and

    recovery of products as well as to make the process

    more energy-efficient. A common feature of all

    PSA processes is that they are dynamic, i.e. they

    have no steady state. After a sufficiently large

    number of cycles, each bed in the process reaches a

    cyclic steady state (CSS), in which the conditions

    in the bed at the end of a cycle are approximately

    the same as those at the beginning of the next

    cycle.

    In the present work, the following assumptions

    are made to model a PSA process: (1) the system is

    isothermal with negligible pressure drop through

    the adsorbent beds; (2) the pressure change in thesteps of pressurization and blowdown is so rapid

    that no significant exchange between adsorbed

    phase and gas phase occurs. This is also called the

    frozen solid assumption; (3) Langmuir isotherm is

    valid for the system; (4) the mass transfer rate is

    represented by a linear driving force expression;

    (5) the ideal gas law is applicable and (6) plug flow

    is assumed, i.e. there is no axial or radial disper-

    sion. The component balance for species i in the

    bed is[1,2]:

    @Ci@t

    @vCi@z

    (1 o)

    o

    @qi@t0; i1 and 2 (1)

    The last term inEq. (1)is the mass transfer termbetween solid and gas, where qi is the concentra-

    tion of component i in the solid. For pressure

    changing steps (pressurization and depressuriza-

    tion) this term is zero due to assumption (2).

    Summation ofEq. (1)for all the components leads

    to the total mass balance equation. For constant

    pressure steps (adsorption and purge) the total

    concentration of the fluid remains constant in the

    bed, thus the total mass balance will be

    C@v

    @z

    (1 o)

    o

    XNi1

    @q

    i

    @t0 (2)

    while for pressure changing steps the total mass

    balance is

    @v

    @z

    1

    P

    @P

    @t0 (3)

    where it is assumed that the pressure drop in the

    bed is negligible. Eqs. (1)/(3) are applied for the

    flow from z/0 to L . If the flow is reverse, the

    term @/@z will be negative. The mass transferkinetics is modeled using the LDF approximation,

    based on the simplification of Ficks second law of

    diffusion

    @qi@tki(qiqi) (4)

    whereq idenotes the equilibrium concentration of

    componenti. It is calculated using either extended

    Langmuir isotherm,

    qi

    qSi

    bipi

    1 Xjnj1

    bjpj

    (5a)

    or using Henrys law,

    qiKiCi (5b)

    The following boundary conditions are consid-

    ered for Eqs. (1)/(3). For the adsorption and

    pressurization steps, the concentration of fluid at

    the inlet is assumed to be equal to the feed

    condition, since axial and radial dispersion is

    Fig. 1. Basic two-bed PSA process.

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    neglected, namely

    Cijz0Cfi (6)for the purge step it is

    CizLPL

    PH(CizL)ads (7)

    and for the depressurization step

    @Ci@z

    jz00 (8)

    The velocity boundary condition for the pres-

    surization and adsorption step is

    vz0vf (9)where vfis the superficial velocity of feed at z/0.

    (Velocity need not be constant with time during

    pressurization step unless specifically controlled.

    Normally, controllers are not used in PSA. Above

    could be seen as a simplifying assumption.) For

    the purge step the velocity boundary condition is

    vzLGvf (10)

    whereGis the purge-to-feedvelocity ratio. For the

    blowdown step thevelocity boundary condition is

    vzL0 (11)

    In the cyclic operation, the initial condition in

    the bed is the condition at the end of the previous

    step. For startup, either a clean bed or a saturated

    bed can be used. For a clean bed the initial

    conditions are

    Ci(z; 0)0; qi(z; 0)0 (12)

    and for a saturated bed they are

    Ci(z; 0)C0; qi(z; 0)qi (13)

    The above set of equations is discretized by

    using finite difference and then solved by theNewton/Raphson algorithm.

    The performance of a PSA process is measured

    on the basis of product purity and product

    recovery. Product purity of the desired component

    2 is defined as its average composition in the

    adsorption step

    y2;prod

    gtads

    0

    y2;prod(t)dt

    tads

    (14)

    while product recovery is defined as

    Eq. (15)is valid only for a PSA process having

    re-pressurization step with feed.

    3. Heuristics for PSA process

    When an adsorption for separating a gas

    mixture is determined, a logical sequence of

    decision steps in design of a PSA process is as

    follows:

    1) Selection of a proper adsorbent based on its

    equilibrium and kinetic characteristics.

    2) Selection of particle size distribution and

    particle shape.

    3) Selection of operating pressure levels for a

    PSA system.

    4) PSA cycle configuration and duration of each

    individual steps.

    Reco

    amount of component2 obtained during adsorption step

    amount of component 2 used in purge step

    amount of component 2 used during adsorption step in feed

    amount of component2 fed during pressurization step

    y2;prod(PHvftads PLGvftpurg)

    y2;f

    (PH

    v

    f

    tads

    (PH

    PL

    =2)vf

    tpres

    )(15)

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    5) PSA bed dimensions.

    6) Inclusion/exclusion of pressure equalization

    step.

    7) Vacuum swing adsorption (VSA) as an alter-native.

    Based on the model described in the last section,

    simulation studies were carried out to analyze the

    performances of PSA and to develop heuristics for

    the decision steps indicated above. The systems

    considered for the simulation, as given inAppen-

    dix A, cover a wide range of adsorbate/adsorbent

    alternatives. The resultant heuristic rules are pre-

    sented in the following.

    3.1. Selection of adsorbent

    Adsorption is achieved due to the interaction

    forces between the adsorbing molecules and the

    adsorption surface. Different substances are ad-

    sorbed with different affinities. It is this selectiv-

    ity that provides the basis for adsorption

    separation processes. The task of adsorbent is to

    provide the surface area required for selective

    adsorption of the preferentially adsorbed species.

    A high selectivity is of users interest. The separa-tion factor (a ) can be used as a measure of

    selectivity. The separation factor of an absorbent

    is defined as[1]:

    a12x1=x2y1=y2

    (16)

    wherex1andy1are, respectively, the mole fraction

    of component 1 in adsorbed phase and fluid phase.

    The separation factor depends on the adsorption

    property, either adsorption kinetics or adsorption

    equilibrium, or both. In an equilibrium controlledadsorption process, it is simply the ratio of the

    equilibrium constants. For an extended Langmuir

    isotherm and a linear isotherm, this separation

    factor is the ratio of Henrys constants

    a12K1

    K2(17)

    In a kinetically controlled adsorption, the selec-

    tivity depends on the difference of kinetic para-

    meters. The time-dependent concentration within

    the adsorbent particle depends on the diffusivity of

    adsorbing molecules. For short time intervals this

    dependency can be approximated by[1]:

    qt8ffiffiffiffi

    Dp

    (18)

    Thus the separation factor for kinetically con-

    trolled process is calculated by

    a12

    ffiffiffiffiffiffiD1

    D2

    s (19)

    It is always useful that the separation factor is

    calculated by considering both equilibrium and

    kinetic effect. Thus the separation factor can be

    defined as

    a12K1

    K2

    ffiffiffiffiffiffiD1

    D2

    s (20)

    In this study, Eq. (20) is used to calculate the

    separation factor for all cases considered.Table 1

    shows some simulation results. Adsorbents with

    different selectivities are used to separate a two-

    component fluid mixture (such as say air with 20%

    oxygen and 80% nitrogen) with a mole-fraction of

    0.2 for the highly adsorbed species (species 1).

    While doing simulation the other parameters arekept constant. Fig. 2 shows a graphical represen-

    tation of these results. FromTable 1andFig. 2, it

    can be seen that the product purity will be

    increased, if a higher separation factor is selected.

    Thus a high separation factor is a key for a quick

    screening ofvarious adsorbents.

    Table 1

    Comparison of adsorbents based upon separation factor

    K1/K2 / ffiffiffiffiffiffiffiffiffiffiffiffiffiffiD1=D2p a Product purity of component B1 0.68 0.68 0.78

    1 2.14 2.14 0.821

    1 6.76 6.76 0.952

    1 21.4 21.4 0.999

    0.11 6.76 0.75 0.787

    2.5 6.76 17.1 0.993

    10 6.76 67.6 0.999

    2.14 1 2.14 0.812

    7 1 7 0.942

    10 1 10 0.954

    The conditions for the simulation are given in the caption of

    Fig. 2.

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    3.2. Size distribution and shape of particles

    In adsorption processes, the particle size dis-

    tribution and particle shape decide the bed poros-

    ity. Porosity affects bed performance in two ways.

    If other parameters remain constant, a lower

    porosity leads to a higher bed pressure drop. On

    the other hand, a lower porosity means a higher

    adsorbent content of the bed and hence a higher

    adsorption capacity. Moreover, a lower porosity

    means less loss of the adsorbable component

    during the blowdown step and less requirement

    of product gas for an effective extraction during

    the purge step. Both of these properties increase

    the product recovery.

    Bed porosity can be varied using different

    shapes and sizes of adsorbent particles and to

    some extent packing techniques. Simulation stu-

    dies are made usingvariousvalues of bed porosity.

    The results are shown in Fig. 3. The effect of bed

    porosity on product purity is significant for both

    bulk separation and purification processes. The

    effect on product recovery is significant only in

    bulk separation cases. Fig. 3a/d show that asporosity increases both the product purity and

    recovery will decrease. FromFig. 3e, it can be seen

    that as the porosity increases, product recovery

    remains almost constant for purification processes

    (where the highly adsorbing species is in very low

    concentration, e.g. air containing moisture).

    On the other hand, the porosity of a bed also

    affects the bed pressure drop. In a packed bed the

    pressure drop can be calculated from Blake/

    Kozeny equation

    @P

    @z

    180mv

    d2p

    (1 o)2

    o3; z [0; L] (21)

    From Eq. (21), as the porosity increases the bedpressure drop will decrease. Fig. 4 shows the

    pressure dropversus the bed porosity. For a given

    system,Eq. (21)can be rewritten as

    @P

    @zf

    (1 o)2

    o3(22)

    where f is given as

    f180mv

    d2p(23)

    There are two opposite effects of porosity: high

    product purity requires low porosity and a low

    pressure drop is achieved with high porosity. From

    Fig. 4, it can be seen that for bed porosity lower

    than 0.3, the pressure drop increases rapidly. Thus

    this should be the lower limit of porosity (which

    can be achieved for most practical particle shapes

    and sizes). For bed porosity higher than 0.5, the

    change in pressure drop becomes moderate, thus

    this can be considered as the upper limit. Similarly,

    the effect of the porosity on the product purity, as

    shown in Fig. 3a/e, indicates that when bedporosity is higher than 0.5, the purity will decrease

    significantly, thus confirming the use of 0.5 as the

    upper limit of the bed porosity.

    3.3. Selection of adsorption pressure

    Selection of the adsorption pressure is based on

    the equilibrium relationship of the system. An

    isotherm describes the equilibrium loading of a

    species, which is dependent on the partial pressure

    of the species in an adsorption process. As theadsorption pressure increases, the amount of fluid

    adsorbed on the adsorbent will increase. To

    determine the pressure level for adsorption, one

    should keep in mind that the larger the difference

    between the capacities of the competing adsor-

    bates, the purer the raffinate will be. The selectiv-

    ity of an extended Langmuir isotherm and a linear

    isotherm is constant [1,2]. These isotherms are,

    therefore, called constant selectivity isotherm.

    For constant selectivity systems, if the pressure is

    Fig. 2. Effect of separation factor on product purity (PH/3

    atm, PL/1 atm, tads/tpurg/40 s, tpres/tblow/5 s, o/0.4,

    vf/0.007 m s1, purge/feed/2,L/0.65 m).

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    increased, which causes more adsorption of the

    highly adsorbed species, the product purity will be

    increased. The less favorable species is also ad-

    sorbed more, but in comparison to the more

    favorable species it is always less, as long as the

    more adsorbing species is present in significantquantities in the bulk phase. Therefore, for such

    systems a higher pressure always leads to a purer

    product.

    Besides this advantage of high pressure for

    constant selectivity systems, there is one disadvan-

    tage too, that is energy loss. A higher pressure le vel

    leads to higher compression costs and a higher loss

    of energy in the blowdown step. If an adiabatic

    compression is assumed, the power requirement

    can be approximated as[1]:

    Fig. 3. Effect of porosity on bed performance (a): Bed porosityvs. product purity. (b): Bed porosity vs. product recovery. (c): Product

    recovery for system 3. (d): Product purity for systems 4 and 5 (purification process). (e): Product recovery for systems 4 and 5

    (purification process).

    Fig. 4. Effect of bed porosity on bed pressure drop.

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    W g

    g 1

    QRT

    hPH

    PL

    (g1)=g

    1 (24)

    wherePHand PLare high and low pressure levels,

    respectively,Q is thevolumetric flow rate, andT is

    the operating temperature. Simulation results of

    extended Langmuir and linear isotherms are given

    inFig. 5a/c forvarious adsorption pressure levels.

    It can be seen that as the pressure increases, the

    product purity will be increased. At the same time

    the power required for compression also rises. If a

    high purity product is desired, the adsorption

    pressure should be as high as possible. Fig. 6

    shows that the power requirement increases with

    the increase of the adsorption and the desorption

    pressure ratio. Considering the trade-off between

    product quality and power requirement, the ad-

    sorption pressure should be taken as the value atwhich the change of the adsorbed phase concen-

    tration with pressure becomes moderate.

    If the selectivity varies with the operating

    pressure, the adsorption pressure should be that

    at which the selectivity is maximum. To study the

    effect of pressure for varying selectivity systems,

    two hypothetical systems (with imputed isotherm

    constants) are taken and simulated. The simula-

    tion results are shown in Fig. 7a and b. It is

    Fig. 5. Effect of adsorption pressure on product purity with

    yf/(0.99, 0.01). (a) System 1 and 2. (b): System 3. (c): Systems

    4 and 5 (purification process).

    Fig. 6. Effect of pressure ratio on power requirement.

    Fig. 7. Effect of pressure on bed performance for varying

    selectivity. System A: Having same properties as system 2 of

    Fig. 6 except equilibrium selectivity. System B: Having same

    properties as system 2 of Fig. 6 except equilibrium selectivi-

    tyand kinetic selectivity. The kinetic data are: k1/0.002 s1,

    k2/0.00018 s1. (a): Selectivity. (b): Product purity.

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    illustrated that the product purity is maximum at

    the pressure where the selectivity is also maximum.

    3.4. Selection of adsorption time

    In a PSA process, the duration of the adsorption

    step is determined by studying the breakthrough

    curve. The term breakthrough curve refers to the

    response of the initially clean bed to an influent

    with a constant composition. It can be seen by

    monitoring the concentration of the effluent.

    Breakthrough occurs when the effluent concentra-

    tion reaches a specific value. The adsorbate con-

    centration in the flow at any given point in a bed isa function of time, resulting from the movement of

    concentration front in the bed. The breakthrough

    curve for a gas containing a single adsorbate can

    be obtained by the solution of the mass balance

    equations for both the bed and adsorbent parti-

    cles, along with the equilibrium isotherm.

    The duration of the adsorption step is the time

    period needed for breakthrough to occur. After

    this time the product purity will decline, and

    before this time the full bed capacity will not be

    employed. Thus the adsorption time should benear the breakthrough time. This time depends

    upon isotherm, diffusivity and residence time of

    the feed in the bed.

    From simulation studies, it can be observed that

    beyond a certain value of the adsorption time, the

    change in product purity becomes insignificant.

    The product purity decreases as the adsorption of

    less adsorbable species increases.Fig. 8shows how

    the change in the adsorption time affects the

    product purity. It can be seen that the time of

    Fig. 8. Effect of adsorption time on product purity. (System 2:

    PH/4 atm, PL/1 atm, purge/feed/2).

    Fig. 9. Effect of distribution of total adsorption time on bed

    performance. (a): Product purity. (b): Product recovery.

    Fig. 10. Effect of distribution of total adsorption time on bed

    performance for purification process (a): Product purity. (b):

    Product recovery.

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    the adsorption step should be where the product

    purity is maximum. This is the time when break-

    through occurs.

    3.5. Effect of distribution of adsorption time

    In a two-bed, four-step PSA system, adsorption

    takes place in both the pressurization and adsorp-

    tion steps. The apportion of the total adsorption

    time to these two steps affects the performance of

    PSA. Figs. 9 and 10 show the simulation results

    corresponding to different time allocations to these

    two steps. InFig. 10, where the results shown are

    those of purification processes, it can be seen that

    as the ratio of the pressurization time and theadsorption time increases, the product recovery

    will decrease, but its purity will increase. With a

    higher time ratio, less product will be obtained. At

    the same time, higher time ratio improves product

    quality. Moreover, it can be seen from the simula-

    tion results that the rate of the decrease of product

    recovery is much greater than the rate of the

    increase of product purity. Thus, the change in

    recovery is a dominating factor to determine the

    adsorption time apportion. Having these two

    opposite effects and taking the fact that therecovery effect is more dominant, the ratio of the

    pressurization time to the adsorption time should

    be low. The upper limit should be 0.2, according to

    the simulation results.

    3.6. Effect of purge-to-feed ratio

    The purge step in PSA is a desorption step that

    regenerates adsorbents by desorbing the adsorbed

    species. In a PSA process, saturated adsorbents are

    regenerated by lower pressure, thus a low pressure

    purge step is required. Generally, from the productvessel with the raffinate at a high pressure, a

    fraction of the product stream is withdrawn to

    purge the bed and expended to a low pressure. The

    volume required in the purge step affects the

    product quality as well as its recovery. As the

    purge volume increases, purging becomes more

    effective, providing a regenerated bed with adsor-

    bents of less loading and leading to an increased

    product purity. In principal, the bed should be

    fully regenerated with adsorbents completely un-

    saturated, thus more purging is necessary. At the

    same time, since purging is done by utilizing the

    product, increase in the purge volume decreases

    the product recovery. Generally, the purge volume

    specification for PSA is given by the purge-to-feed

    volume ratio.

    Simulation was made with different values of

    the purge-to-feed volume ratio. The results are

    presented in Fig. 11. The effect of this ratio on

    product purity and recovery is shown for two

    cases. It can be seen that as this ratio increases, theproduct purity increases as well, but the recovery

    decreases. The rate of the increase in purity is

    much slower than the rate of the decrease in

    recovery. From these results, one may infer that

    the purge-to-feed ratio should be neither too low

    nor too high. A guideline regarding this ratio from

    the simulation results is that it should be between

    1.0 and 2.0, if purging is done by product. These

    are volumetric ratios. It should be noted that,

    although the volume of purge used is more than

    Fig. 11. Effect of purge/feed ratio on bed performance (a):

    Product purity. (b): Product recovery.

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    the volume of feed, the mass of purge is less than

    the mass of feed or product, since the pressure of

    purging is much lower than the feed pressure.

    3.7. Residence time determination

    The residence time of species in a bed is the ratio

    of the bed holdup to the volumetric feed rate.

    Sufficient residence time should be provided, so

    that the desired product purity can be achieved.

    For species with lower diffusivities, greater resi-

    dence time is required. The choice of residence

    time is critical in adsorption, since if the residence

    time is too short, there will be no significant

    adsorption. Increase in residence time can be

    made by reducing the feed rate or by increasing

    the bed volume. Since the feed rate is decided by

    the desired capacity of the unit, required residence

    can be achieved by changing the bed volume.

    However, in an existing unit, residence time can be

    altered only by adjusting feed rate or feed pressure

    or both.

    Simulations were made to study the effect of

    residence time on bed performances.Fig. 12shows

    the effect of residence time and feed composition

    on the product purity for system 2 (referAppendixA). Similar profiles can be obtained for other

    systems too. For different systems, the shape of

    profiles remains the same. The main features of

    these plots are that, at low residence time, no high

    product purity can be obtained, and the relation-

    ship between feed composition and product com-

    position is linear. When keeping the feed

    composition constant, product purity can be

    increased by increasing residence time. If the feed

    composition of the desired species is high, product

    purity will increase linearly with residence time.Fig. 13 shows the effect of the decrease in

    diffusivity with a factor of 0.1 for the highly

    adsorbing species. Comparing Fig. 13 with Fig.

    12, it can be observed that for the same residence

    time, a decrease in diffusivity leads to a decrease in

    product purity. This means that for the same

    product purity, more residence time is needed for

    systems with lower diffusivity. To calculate the

    residence time for a given system and a given

    product purity, the concept of the minimum

    residence time is introduced in the following.

    3.7.1. The minimum residence time

    A PSA process reaches its cyclic steady state

    after a certain number of cycles of operation. A

    steady state PSA model can be developed using the

    same assumptions as stated before. The governing

    equations may be obtained as follows. First, by

    combining Eqs. (1) and (4) and letting the time-

    differential terms be zero, the following equation

    can be gained

    Fig. 12. Effect of residence time and feed composition on

    product purity. System 2: PH/3 atm, PL/1 atm, tads/

    tpurg/40 s, tpres/tblow/5 s, L/0.65 m. (a): Effect of

    residence time. (b): Effect of feed composition.

    Fig. 13. Effect of residence time and feed composition on

    product purity for system 2 by decreasing diffusivity of the

    highly adsorbing species with a factor of 0.1.

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    o

    (1 o)

    dCi

    ki(qi qi)

    dz

    v

    (25)

    If the maximum driving force is applied, i.e. by

    takingqi/0 in the above equation, one has

    o

    (1 o)

    dCi

    kiqi

    dz

    v

    (26)

    The boundary condition for this equation is the

    same as given in Eq. (6). It is easy to solve this

    equation, and the solution for the highly adsorbed

    component will give the residence time for a

    system under the conditions of a constant velocity

    and the maximum driving force. Therefore, thesolution ofEq. (26) gives the minimum residence

    time for a given feed and desired product compo-

    sition. Initially, one may expect the existence of

    certain relationship between the ratio of the actual

    and the minimum residence time, with the kinetic

    parameters and separation factor. These relations

    are shown in Figs. 14 and 15. Fig. 14 gives the

    relationship between the separation factor and the

    time ratio. As the separation factor increases, the

    required ratio of actual-to-minimum residence

    time also increases. The results of actual-to-mini-

    mum residence time versus the mass transfer

    coefficient ratio are shown in Fig. 15. But this

    relation is less clear. As an explanation, one may

    argue that the ratio of actual-to-minimum resi-

    dence time depends on the total amount of gas

    adsorption, rather than the kinetic selectivity (the

    ratio of diffusivities). Basis for this argument is

    that in the calculation of the minimum residence

    time, the maximum driving force is considered

    (takingqi/0), but this is not the case of the actual

    residence time. The difference arises due to thedifference in driving force, which is the adsorbed

    phase concentration in a practical cycle. The

    concentration in the adsorbed phase depends on

    the mass transfer of each component, which relies

    on the individual mass transfer coefficient. In this

    way, the total effect on the adsorbed phase

    concentration depends on the sum of the mass

    transfer coefficient, rather than the kinetic selec-

    tivity. To test this argument, in Fig. 16, the time

    ratio is plotted against the sum of the mass

    Fig. 14. Effect of adsorption separation factor on the ratio of

    actual-to-minimum residence time for k1/k2/0.0055 in sys-

    tem 2. PH/4 atm, PL/1 atm, tads/tpurg/40 s, tpres/

    tblow/5 s, vf/0.007 m s1, L/0.65 m.

    Fig. 15. Effect of kinetic separation factor on the ratio of

    actual-to-minimum residence time for system 2. PH/4 atm,

    PL/1 atm, tads/tpurg/40 s, tpres/tblow/5 s, vf/0.007 m

    s1, L/0.65 m.

    Fig. 16. Effect of summation of mass transfer coefficients on

    the ratio of actual-to-minimum residence time. PH/4 atm,

    PL/1 atm, tads/tpurg/40 s, tpres/tblow/5 s, vf/0.007 m

    s1, L/0.65 m, feed composition (0.21, 0.79).

    Fig. 17. Relation between (k1/k2)(K1/K2) and the ratio of

    actual-to-minimum residence time.

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    transfer coefficients. A more obvious relationship

    between these two quantities can be seen.

    In Fig. 17 an attempt is made to combine the

    relations of Figs. 14 and 16, from which therelation between (K1/K2)(k1/k2) and the ratio of

    actual-to-minimum residence time can be ob-

    served. It should be noted that this ratio also

    depends on the feed composition, but this relation

    is not so clear. This is because in calculation of the

    minimum residence time, the assumption of a

    constant velocity is taken, which is invalid if the

    concentration of the highly adsorbing species is

    high in the feed. If the concentration of the highly

    adsorbing species in the feed increases, the product

    flow rate will be low as compared with the feedflow rate, and the minimum residence time will be

    much less than the actual residence time. Thus the

    ratio of actual-to-minimum residence time will

    also depend on feed composition. This relation is

    illustrated in Fig. 18, in which various cases

    (including systems 1, 2 and 3) are tested. It is

    seen that all these data fit a straight line, which can

    be approximated with the following relation

    tact

    tmin

    1100(k1k2)K1

    K2yf1 (27)

    Most of the systems have (k1/k2)(K1/K2)yf1B/

    0.015, where the value of the time ratio is in

    between 1 and 2. From this result, a quick

    estimation of the bed size can be made.

    The bed volume is determined based on the

    required residence time. To specify the bed size, i.e.

    the bed diameter and bed height, some criteria

    should be kept in mind. The choice of the bed

    diameter depends on the fluidizingvelocity, which

    is the minimum velocity required to fluidize a bed.

    The maximum velocity in the bed should not

    exceed 70% of the minimum fluidizing velocity

    [9]. For velocities greater than this value, entrain-ment of adsorbents in effluent stream may occur

    and also the pressure drop in the bed would be

    very high. After determining the fluidizing velo-

    city, the bed diameter can be calculated. Another

    important criterion for bed specifications is the

    crushing strength of the solids. The height should

    be such that no crushing occurs in the bed.

    3.8. Pressure equalization

    The first improvement over Skarstroms cycle is

    the introduction of a pressure equalization step, as

    shown in Fig. 19. After the first bed has been

    purged and the second bed has completed its high-

    pressure adsorption step, instead of blowing down

    the second bed directly, the two beds may be

    connected to each other through their product

    ends in order to equalize their pressures. The first

    bed is thus partially pressurized with gas from the

    outlet region of the second bed. After the pressure

    equalization, the two beds are disconnected andthe first bed is pressurized with feed gas while the

    second bed is vented to complete the blowdown.

    The pressure equalization step conserves energy,

    because the compressed gas from the high-pressure

    bed is used to partially pressurize the low-pressure

    bed. Since this gas is partially depleted of the

    strongly adsorbed species, the degree of separation

    is conserved and the blowdown losses are reduced.

    Based on these considerations, a pressure equal-

    Fig. 18. Relation between (k1/k2)(K1/K2)yf1 and the ratio of

    actual-to-minimum residence time. Fig. 19. Pressure equalization step in a PSA process.

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    ization step is often incorporated in the PSA

    process.

    Simulation results are presented in Table 2

    indicating the PSA performance with and withouta pressure equalization step. It can be seen that a

    pressure equalization step favors product recovery.

    But if the pressure swing is sufficiently low, the

    inclusion of a pressure equalization step may be

    impractical. Otherwise, the pressure equalization

    step should always be incorporated in the PSA

    process.

    3.8.1. Selection of the intermediate pressure

    The intermediate pressure is the pressure after

    the pressure equalization step. As the intermediate

    pressure increases, the degree of saturation of thehighly adsorbed species increases in the bed, which

    is unfavorable. If it is higher than a certain value,

    this saturation causes decrease in product purity

    and recovery. Simulation results for different

    intermediate pressures are shown in Fig. 20. It

    can be seen that once the intermediate pressure is

    increased beyond a threshold value, both the

    product recovery and purity are adversely affected.

    This means that the intermediate pressure should

    be below this threshold value. If the intermediate

    pressure is denoted as PI, then the followingrelation holds approximately

    PI

    PL (0:5 to 0:8)

    PH

    PL(28)

    3.9. Vacuum swing adsorption

    Vacuum swing adsorption (VSA) is also a

    Skarstrom cycle in which the low-pressure purge

    step is replaced by a vacuum desorption. The

    product end of the bed is kept closed and the

    vacuum is applied through the feed end, as shown

    inFig. 21. In a VSA process, using the same high

    operation pressure as a Skarstrom cycle and for

    the same product purity, the loss of the less

    favorably adsorbed species in the evacuation step

    is normally less than the corresponding loss in the

    purge. The gain in raffinate recovery is achieved at

    the expense of the additional mechanical energy

    required for the evacuation step. A significant

    Table 2

    Comparison of PSA process with and without pressure equal-

    ization step for air separation on CMS

    Product

    purity

    Recovery without pres-

    sure equalization

    Recovery with pressure

    equalization

    0.914 0.418 0.532

    0.945 0.374 0.51

    0.96 0.348 0.488

    0.972 0.325 0.469

    Fig. 20. Effect of intermediate pressure (after purge) on

    product purity and product recovery (a):System 1: Feed

    composition: (0.4, 0.6), PH/5 atm, vf/0.007 m/s, L/0.6

    m, purge/feed/1.5. (b): System 2. Feed composition: (0.21,

    0.79), PH/5 atm, vf/0.007 m/s,L/0.65 m, purge/feed/1.5. Fig. 21. The sequence of VSA cycle (only one bed is shown).

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    amount of energy can be saved, if the adsorption

    takes place slightly above the atmospheric pressure

    and the desorption is done at a very low pressure.

    A VSA cycle will, therefore, be advantageous overa normal Skarstrom cycle, if a low-pressure

    product is acceptable.

    In kinetically controlled separation, a major

    disadvantage using a normal Skarstrom cycle is

    that the slowly diffusing raffinate product would

    be continuously adsorbed during the purge step.

    This problem can be avoided by using VSA. In

    kinetically controlled processes there is a little

    difference in isotherms of feed components (e.g.

    nitrogen separation from air using zeolite 4A) but

    a large difference in diffusivity. In such a system,purging with the product to remove the highly

    diffusing species from the bed is undesirable. This

    is so because apart from wasting product (a certain

    fraction of nitrogen), the raffinate gas will be

    adsorbed during this step, thereby reducing the

    capacity for oxygen during the next adsorption

    step. For such type of systems a VSA process is

    worth considering.

    Simulation is performed for the nitrogen separa-

    tion from air using carbon molecular sieve (CMS).

    The results are shown in Table 3, which illustratethat the recovery of nitrogen is greater in a VSA

    process than in an ordinary Skarstrom cycle. From

    the results and the above explanation, it can be

    concluded that for kinetically controlled processes,

    VSA is a better choice over a normal Skarstrom

    cycle.

    4. Two case studies

    Heuristics developed in the previous section

    have been tested using two case studies. Rajasreeand Moharir [16] discussed simulation based

    synthesis, design and optimization of PSA pro-

    cesses. The system used was air separation using

    Zeolite 5A. The data are given in Table A1 in the

    Appendix Awith system 6.Table 4 compares the

    results in [16] with the results obtained using our

    heuristic rules. In [16] the pressure equalization

    step was used for some cases. They showed that

    product (oxygen) recovery increases from 28.5 to

    32.8% when pressure equalization step is included.

    According to the proposed heuristics, recovery

    increases if pressure equalization is considered.

    Air separation using CMS was considered by

    Nilchan [15]. The author discussed optimization

    approach for PSA processes. The objective func-

    tion used in the case study is minimizing the power

    requirement. The data are given in Table A1 in the

    Appendix Awith system 2.Table 5 compares the

    results in [15] using optimization study with the

    results obtained using the heuristic rules proposed

    in this study.

    Both the case studies show that the results

    obtained using the heuristics are close to the

    results obtained using optimization. It demon-

    strates that heuristics based synthesis is useful for

    preliminary design and screening of PSA pro-

    cesses. In addition, in both case studies the flow

    to be separated is air, but the adsorbent is different

    (in case 1 Zeolite 5A, and in case 2 CMS), due to

    different product requirement. In the first case

    oxygen is the desired component, and in the

    second case nitrogen is the desired component.

    The separation factor for nitrogen in the second

    case is 41, while in the first case it is 0.16. If

    nitrogen is the desired component from air, CMS

    adsorbent should be used rather than Zeolite 5A.

    The heuristic rule proposed for this case also

    suggests using the adsorbent with a higher separa-

    tion factor.

    Table 3

    Performance comparison of VSA cycle with ordinary Skar-strom cycle

    Product purity

    for nitrogen in %

    % Recovery of nitro-

    gen in Skarstrom cycle

    % Recovery of ni-

    trogen in VSA cycle

    89.5 56.4 88.3

    92.5 53.7 83.3

    94.2 49.7 77.6

    95.1 42.1 72.5

    98.2 21.6 60.1

    The blowdown pressure used is 1 atm and the vacuum

    pressure used is 0.25 atm.

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    5. Conclusions

    In PSA design and operation, heuristics devel-

    oped in this study may be summarized as follows:

    Rule 1 : Adsorbent, which gives the largest

    separation factor, should be used.

    Rule 2 : Bed porosity should be in the range

    0.3/0.5. Particle size distribution and shape

    should be such that bed porosity is within these

    limits.Rule 3 (a ): For systems whose isotherms are

    given either by the Henrys Law or by the

    extended Langmuir isotherm expression, the

    adsorption pressure should be as high as

    possible, subjected to the power requirement

    constraint.

    Rule 3 (b ): For systems with pressure dependent

    selectivity, adsorption pressure should be the

    pressure, which gives maximum selectivity.

    Rule 4 (a ): The adsorption time should be near

    the adsorption breakthrough time.

    Rule 4 (b ): For a two bed PSA process, the

    adsorption and desorption time should be

    equal.

    Rule 5 : The maximum limit for the ratio of the

    pressurization time to the adsorption time

    should be 0.2.Rule 6: The ratio of purge-to-feed volume

    should be in the range 1.0/2.

    Rule 7 (a): The bed diameter should be such

    that thevelocity within the bed does not exceed

    70% of the minimum fluidizing velocity.

    Rule 7 (b ): Bed height should not cross the

    crushing strength of adsorbent particles.

    Table 4

    Comparison of results by the heuristic rules and optimization (Case Study 1)

    Purity of oxygen 87.8% andrecovery is 36.8% From Rajasree andMoharir[16] Using heuristic rules proposed

    o 0.376 0.3/0.5

    PH(atm) 6 Heuristic suggests to use high pressure to obtain higher purity

    P/F 6.125 1.0/2.0

    tads 65 Both are equal

    tdes(s) 65

    tpress/tads 0.077 0.0/0.2

    tmin(s) 104.00 104.00

    tactual(s) 270.0 316.0

    Table 5

    Comparison of results by the heuristic rules and optimization (Case Study 2)

    Purity of nitrogen 87.1% and

    recovery is 67.6%

    From Nilchan[15] Using heuristic rules proposed

    o 0.4 0.3/0.5

    PH(atm) 2.36 Power requirement decides the adsorption pressure

    P/F Purging was not

    considered

    Zero purge results in high impurity in the product. As in the case study,

    without purge consideration high impurity (12.89%) was achieved

    tpress/tads 0.086 0.0/0.2

    tmin(s) 18.2 18.2 (solution of Eq. (26))

    tactual(s) 21.2 19.3

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    Rule 7 (c ): The Ratio of actual-to-minimum

    residence time should be in the range 1/2.Eq.

    (27)may be used to calculate the ratio.

    Rule 8 (a ): For processes with high swing inpressure, a pressure equalization step should be

    included.

    Rule 8 (b ): The ratio of intermediate pressure to

    the low pressure should be in the range 0.5/0.8

    of the ratio of the high pressure to the low

    pressure.

    Rule 9 : For a kinetically controlled process,

    VSA should be considered.

    The work for developing heuristics for PSA has

    been initiated in this paper. Some rules couldappear obvious or trivial, considering the accumu-

    lated knowledge on PSA at this stage. More

    detailed models and more extensive simulation

    studies in future would help modify the rules

    proposed here and develop more elaborate heur-

    istics. Moreover, the study of interactions between

    individual decision parameters is also part of the

    further work.

    Appendix A: Systems considered in the simulationstudies

    Table A2: Purification systems

    Number 4 5

    System CO2/He/Silica

    Gel [13]

    H2O/Air/Alu-

    mina[13]

    Component

    1

    CO2 1% H2O 1%

    Component

    2

    He 99% Air 99%

    K1 9084 52.7

    k1 (s1) 2.583 e-4 4.67 e-2

    References

    [1] D.M. Ruthven, S. Farooq, K.S. Knaebel, Pressure Swing

    Adsorption, VCH Publishers, New York, 1994.

    [2] R.T. Yang, Gas Separation by Adsorption Processes,

    Butterworth Publishers, Boston, 1987.

    [3] P.L. Cen, R.T. Yang, AIChE Symposium Series 80 (1985)

    68.

    [4] E. Alpay, D.M. Scott, Chemical Engineering Science 47

    (1992) 499.

    [5] N.S. Raghavan, D.M. Ruthven, The American Institute of

    Chemical Engineers Journal 31 (1985) 385.

    [6] N.S. Raghavan, D.M. Ruthven, The American Institute of

    Chemical Engineers Journal 31 (1985) 2017.

    Table A1: Bulk separation systems

    Number 1 2 3 6

    System CH4/N2/CMS

    [14]

    Air separation/CMS

    [15]

    Hypothetical

    system

    Air separation/Zeolite

    5A[16]

    Composition of compo-

    nent 1

    N2 40% O221% 40% N2 79%

    Composition of compo-

    nent 2

    CH4 60% N2 79% 60% O2 21%

    qs1 (mol cm3) 0.00182 0.00264 0.0033 0.0258

    qs2 (mol cm3) 0.00255 0.00264 0.00065 0.00344

    b1 (atm1) 0.26 0.14 0.161 0.0155

    b2 (atm1) 0.62 0.154 0.164 0.057

    k1(s1) 9.99 e-4 2.7 e-3 0.002 0.0098

    k2(s1) 4.82 e-6 5.9 e-5 0.0018 0.0032

    S. Jain et al. / Separation and Purification Technology 33 (2003) 25/4342

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    [7] M.H. Chahbani, D. Tondeur, Separation and Purification

    Technology 20 (2000) 185.

    [8] H.M. Kvamsdal, T. Hertzberg, Chemical Engineering

    Science 50 (1995) 1203.[9] Z.P. Lu, J.M. Loureiro, M.D. LeVan, A.E. Rodrigues, The

    American Institute of Chemical Engineers Journal 38

    (1992) 857.

    [10] Z.P. Lu, J.M. Loureiro, M.D. LeVan, A.E. Rodrigues,

    Gas Separation and Purification 6 (1992) 15.

    [11] Z.P. Lu, J.M. Loureiro, M.D. LeVan, A.E. Rodrigues,

    Industrial Engineering and Chemical Research 32 (1993)

    2740.

    [12] Z.P. Lu, J.M. Loureiro, A.E. Rodrigues, M.D. LeVan,

    Chemical Engineering Science 48 (1993) 1699.

    [13] W.L. McCabe, J.C. Smith, Unit Operations of Chemical

    Engineering, fifth ed., McGraw-Hill, New York, 1993.[14] A.I. Fatehi, K.F. Loughlin, M.M. Hassan, Gas Separation

    and Purification 9 (1995) 199.

    [15] S. Nilchan, The optimization of periodic adsorption

    processes, Ph.D. Thesis, Department of Chem. Tech.,

    Imperial College of Science, Technology and Medicine,

    London, 1997.

    [16] R. Rajasree, A.S. Moharir, Computers and Chemical

    Engineering 24 (2000) 2493.

    S. Jain et al. / Separation and Purification Technology 33 (2003) 25/43 43