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Page 1: Empirical Kraft Pulping Models

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Empirical Kraft Pulping Models

• Models developed by regression of pulping study results• Excellent for digester operators to have for quick reference

on relation between kappa and operating conditions • “Hatton” models are excellent examples of these

Kappa orYield

H-factor

15% EA15% EA15% EA

18% EA

20% EA

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Emperical Kraft Pulping Models

Kappa (or yield) = -(log(H)*EAn),, and n are parameters that must be fit to the data. Values of ,, and n for kappa prediction are shown in the table below.

Hatton Equation

Species n kappa range

Hemlock 259.3 22.57 0.41 21-49

Jack Pine 279.3 30.18 0.35 22-53

Aspen 124.7 5.03 0.76 14-31

Warning: These are empirical equations and apply only over the specified kappa range. Extrapolation out of this range is dangerous!

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Delignification Kinetics ModelsH Factor Model

• Uses only bulk delignification kinetics• Uses only bulk delignification kinetics

RTkedtdL /000,32/

k = Function of [HS-] and [OH-]

K*mole

cal 1.987

R =

T [=] °K

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Delignification Kinetics ModelsH Factor Model

k0 is such that H(1 hr, 373°K) = 1k0 is such that H(1 hr, 373°K) = 1

t tRT dtekH0

)(/000,320

Relative reaction rate

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Delignification Kinetics ModelsH Factor Model

• Provides mills with the ability to handle common disturbance such as inconsistent digester heating and cooking time variation.

• Provides mills with the ability to handle common disturbance such as inconsistent digester heating and cooking time variation.

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Delignification Kinetics ModelsH Factor/Temperature

900

700

500

300

100Rel

ativ

e R

eact

ion

Rat

e

1 2Hours from Start

90

130

170

Tem

pera

ture

°C

H factor equalto area under thiscurve

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Kraft Pulping KineticsH Factor/Temperature

0

5

10

15

20

25

30

0 500 1000 1500 2000 2500

H Factor

Lig

nin

(%

of

Pu

lp)

150°C

160°C

170°C

0

5

10

15

20

25

30

0 500 1000 1500 2000 2500

H Factor

Lig

nin

(%

of

Pu

lp)

150°C

160°C

170°C

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Delignification Kinetics ModelsKerr model ~ 1970

• H factor to handle temperature

• 1st order in [OH-]

• Bulk delignification kinetics w/out [HS-] dependence

• H factor to handle temperature

• 1st order in [OH-]

• Bulk delignification kinetics w/out [HS-] dependence

LOHekdtdL RT *][*/ /000,32

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Delignification Kinetics ModelsKerr model ~ 1970

Integrated form:Integrated form:

t tRTL

LeK

LfL

dLf

i 0

)(

000,32

)(*

H-FactorFunctional relationship between L and [OH-]

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Delignification Kinetics ModelsKerr model ~ 1970

Slopes of lines are not a function of EA charge

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Delignification Kinetics ModelsKerr model ~ 1970

• Variations in temperature profile» Steam demand

» Digester scheduling

» Reaction exotherms

• Variations in alkali concentration» White liquor variability

» Differential consumption of alkali in initial delignification- Often caused by use of older, degraded chips

• Good kinetic model for control

• Variations in temperature profile» Steam demand

» Digester scheduling

» Reaction exotherms

• Variations in alkali concentration» White liquor variability

» Differential consumption of alkali in initial delignification- Often caused by use of older, degraded chips

• Good kinetic model for control

Model can handle effect of main disturbances on pulping kinetics

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Delignification Kinetics ModelsGustafson model

• Divide lignin into 3 phases, each with their own kinetics» 1 lignin, 3 kinetics

• Transition from one kinetics to another at a given lignin content that is set by the user.

• Divide lignin into 3 phases, each with their own kinetics» 1 lignin, 3 kinetics

• Transition from one kinetics to another at a given lignin content that is set by the user.

For softwood: Initial to bulk ~ 22.5% on wood

Bulk to residual ~ 2.2% on wood

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Delignification Kinetics ModelsGustafson model

• Initial» dL/dt = k1L

» E ≈ 9,500 cal/mole

• Bulk» dL/dt = (k2[OH-] + k3[OH-]0.5[HS-]0.4)L

» E ≈ 30,000 cal/mole

• Residual» dL/dt = k4[OH-]0.7L

» E ≈ 21,000 cal/mole

• Initial» dL/dt = k1L

» E ≈ 9,500 cal/mole

• Bulk» dL/dt = (k2[OH-] + k3[OH-]0.5[HS-]0.4)L

» E ≈ 30,000 cal/mole

• Residual» dL/dt = k4[OH-]0.7L

» E ≈ 21,000 cal/mole

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Delignification Kinetics ModelsGustafson model

Another model was formulated that was of the type

dL/dt = K(L-Lf)

Where Lf = floor lignin level – set @ 0.5% on wood

• Did not result in any better prediction of pulping behavior

Another model was formulated that was of the type

dL/dt = K(L-Lf)

Where Lf = floor lignin level – set @ 0.5% on wood

• Did not result in any better prediction of pulping behavior

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Delignification Kinetics ModelsPurdue Model

2 types of lignin:

• High reactivity

• Low reactivity

2 types of lignin:

• High reactivity

• Low reactivity

))(][][(/ 2/12

2/11 fLLHSkOHkdtdL

High reactivity E ≈ 7000 cal/mole

Low reactivityEk1 ≈ 8300 cal/mole

Ek2 ≈ 28,000 cal/mole

Lf assumed to be zero

Assumed to react simultaneously

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Delignification Kinetics ModelsPurdue Model

Potential difficulties• High reactivity lignin (initial lignin) dependent on

[OH-] and [HS-]• No residual lignin kinetics

Potential difficulties• High reactivity lignin (initial lignin) dependent on

[OH-] and [HS-]• No residual lignin kinetics

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Delignification Kinetics ModelsAndersson, 2003

• 3 types of lignin:» Fast

» Medium

» slow

• 3 types of lignin:» Fast

» Medium

» slow

Assumed to react simultaneously, like Purdue model

10-1

10

10

0

1

0 50 100 150 200 250 300

L1 lignin L2 lignin

L3 lignin

total lignin

Lig

nin

[%o

w]

time [min]

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Delignification Kinetics ModelsAndersson, 2003

Fast ≈ 9% on wood (all t)

dL/dt = k1+[HS-]0.06LE ≈ 12,000 cal/mole

Medium ≈ 15% on wood (t=0)

dL/dt = k2[OH-]0.48[HS-]0.39LE ≈ 31,000 cal/mole

Slow ≈ 1.5% on wood (t=0)

dL/dt = k3[OH-]0.2LE ≈ 31,000 cal/mole

Fast ≈ 9% on wood (all t)

dL/dt = k1+[HS-]0.06LE ≈ 12,000 cal/mole

Medium ≈ 15% on wood (t=0)

dL/dt = k2[OH-]0.48[HS-]0.39LE ≈ 31,000 cal/mole

Slow ≈ 1.5% on wood (t=0)

dL/dt = k3[OH-]0.2LE ≈ 31,000 cal/mole

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Delignification Kinetics ModelsAndersson, 2003

Model also assumes that medium can become slow lignin depending on the pulping conditions

L*≡ Lignin content where amount of medium lignin equals the amount of slow lignin

Complex formula to estimate L*:

))15.273(10*97.283.1(*

)01.0]([)01.0]([49.025

19.065.0*

T

HSOHL

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Delignification Kinetics ModelsAndersson, 2003

35030025020015010050010-1

100

101

Lig

nin

[%

ow

]

time [min]

Total lignin

L2,L3

L*

Increasing [OH-]

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Model PerformanceGustafson model

Pulping data for thin chips – Gullichsen’s data

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Model PerformanceGustafson model

Pulping data for mill chips - Gullichsen’s data

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Model PerformanceGustafson model

Virkola data on mill chips

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Model Performance (Andersson)Purdue Model

Purdue model suffers from lack of residual delignification

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Model Performance (Andersson)Purdue Model

Purdue model suffers from lack of residual delignification

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Model Performance (Andersson)Gustafson Model

Model works well until very low lignin content

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Model Performance (Andersson)Gustafson Model

Model handles one transition well and the other poorly

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Model Performance (Andersson)Andersson Model

Andersson predicts his own data well

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Model Performance (Andersson)Andersson Model

Model handles transition well