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1 (from www.halliburton.com) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University ChevronTexaco ETC, San Ramon, CA
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Page 1: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

1

(from www.halliburton.com)

Optimization of Advanced Well Type and Performance

Louis J. Durlofsky

Department of Petroleum Engineering, Stanford University

ChevronTexaco ETC, San Ramon, CA

Page 2: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

2

• B. Yeten, I. Aitokhuehi, V. Artus

• K. Aziz, P. Sarma

Acknowledgments

Page 3: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

3TAML, 1999

Multilateral Well Types

Page 4: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

4

Optimization of NCW Type and Placement

• Applying a Genetic Algorithm that optimizes via analogy to Darwinian natural selection

• GA approach combines “survival of the fittest” with stochastic information exchange

• Algorithm includes populations with generations that reproduce with crossover and mutation

• General level of fitness as well as most fit individual tend to increase as algorithm proceeds

Page 5: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

5

101011011010110101111101100010110011010011010...

I1 J1 K1 lxy hz Jn lxy hz

heel toe

main trunk

heel toe

lateral

multilateral well

• Representation allows well type to evolve (Jn 0 generates a lateral)

Encoding of Unknowns for GA

Page 6: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

6

well

kz

k

kxy

k

z

xy

z

xy

z

y

x

dq

t

l

J

t

l

J

t

l

h

h

h

1

1

1

1

p well

Y

ng

w

o

T

ng

w

o

nC

C

C

C

Q

Q

Q

if

1 1

1

Unknowns Objective Function

• Objective function can be any simulation output (NPV, cumulative oil)

Nonconventional Well Optimization

Page 7: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

7

Flowchart for Single Geological Model

evaluatefitness

reservoir sim ulator

0101011101010111110100100111110000101101111000101101011100111101

x1 x2 x3 x4 x5 x6

y 1 y 2

rank based selection

reproduction

ANN

hillclim ber

formchildren

skintransformer

4

1

2

com posepopulation

performa local search

3

6

5

Objective function f (or fitness):

NPV, cumulative oil

Page 8: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

8

60.0

80.0

100.0

120.0

140.0

160.0

180.0

200.0

0 10 20 30 40Generation #

Fitn

ess

- NP

V, M

M$

Best Average

Single Well Optimization Example

• Objective: optimum well and production rate that maximizes NPV, subject to GOR, WOR constraints

(from Yeten et al., 2003)

Optimum well (quad-lateral)

Page 9: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Evolution of Well Types

0%

20%

40%

60%

80%

100%

1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31 33 35 37 39

invalid monobore 1 lateral 2 laterals 3 laterals 4 laterals

(from Yeten et al., 2003)

Page 10: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

10

?

Nonconventional Well Optimization with Geological Uncertainty

Page 11: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Optimization over Multiple Realizations

• Find well that maximizes F = < f > + r < f > is average fitness of well over N realizations, r is

risk attitude, is variance in f over realizations)

• Evaluate each individual (well) for each realization (well i, realization j)

Op

tim

i za t

ion

En

gi n

e ( G

A)

{In

div

idu

al} i

F f= < > + r i ii

Page 12: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

12

Realization #

NP

V (

$)

Risk Neutral (r =0) Optimization(Primary Production, Maximize NPV)

Page 13: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Realization #

NP

V (

$)

Risk Averse (r = -0.5) Optimization (Primary Production, Maximize NPV)

Page 14: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Risk averse attitude (r = -0.5)

well cost = $ 1,058,704

expected NPV = $ 3,401,210

std = $ 404,920

Risk neutral attitude (r = 0)

well cost = $ 759,158

expected NPV = $ 3,506,390

std = $ 935,720

Realization #

NP

V (

$)

Comparison of Optimization Results

Page 15: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

15

attr

ibu

te 1

attribute 2

attr

ibu

te 1

attribute 2

Proxy - Unsupervised Cluster Analysis

fitn

ess

cluster #

• Attributes can be combined into principal components

Page 16: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Proxy Estimate for a Single Realization(Primary Production, Monobore Wells)

esti

mat

ed f

itn

ess

actual fitness

r = 0.93

Page 17: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

17

Estimated Mean for All Realization(Primary Production, Monobore Wells)

esti

mat

ed m

ean

fit

nes

s

actual mean fitness

r = 0.97

Page 18: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

18

www.halliburton.com

Page 19: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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• Reactive control: adjust downhole settings to react to problems (e.g., water or gas production) as they occur

• Defensive control: optimize downhole settings to avoid or minimize problems. This requires:

– Accurate reservoir description (HM models)

– Optimization procedure

• Optimize using gradients computed numerically or via adjoint procedure

Smart Well Control:“Reactive” versus “Defensive”

Page 20: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

20

Numerical Gradients

• Define cost function J (NPV, cumulative oil)

1

1

0

,N

n n n

n

L x uJ

• Numerically compute J/u

x - dynamical states, u - controls

( ) ( )J J u u J u

u u

• Apply conjugate gradient technique to drive J/u to 0

Page 21: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Adjoint Procedure

1

1 ( 1) 1

0

, , , N

n n n T n n n n nA

n

L x u g x x uJ

- Lagrange multipliers, x - dynamical states, u - controls, g - reservoir simulation equations

• Optimality requires first variation of JA = 0 (JA = 0):

1 1( 1) 0

n n nT n Tn

n n n

L g g

x x x

( 1) 0n n

T nAn n n

J L g

u u u

optimality criteriaadjoint equations

• Define augmented cost function JA

Page 22: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Adjoint versus Numerical Gradient Approaches for Optimization

Numerical Gradients

Advantages• Easily implemented• No simulator source

code required

Main Drawback• CPU requirements

Adjoint Gradients

Advantages• Much faster for large number

of wells & updates• Can also be used for HM

Main Drawback• Adjoint simulator required

• Adjoint and numerical gradient procedures developed; implementation of smart well model into GPRS underway

Page 23: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Smart Well Model

• Numerical gradient approach (Yeten et al., 2002) allows use of existing (commercial) simulator

• Applying ECLIPSE multi-segment wells option

Page 24: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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• Sequential restarts applied to determine optimal settings

Optimization Methodology - Fixed Geology

Page 25: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Impact of Smart Well Control - Example

• Channelized reservoir, 4 controlled branches

• Production at fixed liquid rate with GOR and WOR constraints (three-phase system)

Page 26: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Effect of Valve Control on Oil Production

Oil rate - uncontrolled case Oil rate - controlled case

• Downhole control provides an increase in cumulative oil production of 47%

(from Yeten et al., 2002)

Page 27: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Optimized Valve Settings

Page 28: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Optimization with History Matching

• Actual geology is unknown (one model selected randomly represents “actual” reservoir and provides “production” data)

• Update reservoir models based on synthetic history

• Optimize using current (history-matched) model

Page 29: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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History Matching Procedure

• Facies-based probability perturbation algorithms (Caers, 2003)

• Multiple-point geostatistics (training images)

• Performs two levels of nonlinear optimization (facies and k-)

• History matching based on well pressure, cumulative oil and water cut (for each branch)

• Initial models from same training image as “actual” models

Page 30: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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History Matching Objective Functions

• Two levels of optimization

– Single parameter facies optimization

– Multivariate permeability-porosity optimization

data observed data, model

))(( )( minimize 2,

]1,0[

obs

jjobsDjD

r

DD

DrDrgD

2,

0 1

( ( ) )minimize ( )

: statistics of and log

i

j obs j

j

D Df

k

αα

α

Page 31: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Channelized Model I

• Unconditioned 2 facies model, 20 x 20 x 6 grid• Quad-lateral well with a valve on each branch

– Constant total fluid rate (10 MSTB/D initial liquid rate)– Shut-in well if water cut > 80%

• OWG flow, M < 1; 4 optimization and HM steps

Page 32: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Optimization on Known Geology

• Valves provide ~40% gain in cumulative oil over no-valve base case

Page 33: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Dimensionless Increase in Np

• Dimensionless cumulative oil difference, N

N = 0 (no valves result)

N = 1 (known geology result)

valveson geology, nownkp w/valvesgeology, knownp

valvesno geology, nownkp w/valvesmodel targetp

NN

NNN

Page 34: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Illustration of Incremental Recovery

N =0

N =1

N =0.5

HM with valves

Page 35: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Optimization with History Matching

• Optimization with history matching gives N =0.94

• Repeating for different initial models: N =0.900.18

Page 36: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Channelized Model II

• Unconditioned 2 facies model, 20 x 20 x 6 grid• Different training image than Channelized Model I, same

well and other system parameters

Page 37: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

37

Optimization with History Matching - CM II

0

500

1000

1500

2000

2500

3000

0 200 400 600 800 1000

days

Cu

m.

oil,

MS

TB

Known geol. w/o valves

HM w/valves

Known geol. w/valves

N =0.41

• Repeating for different initial models: N =0.440.27

• Inaccuracy may be due to nonuniqueness of HM

Page 38: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Optimization over Multiple HM Models

• Use of multiple history-matched models provides significant gains

Number of HM Models N ()

1

3

5

0.44 0.27

0.85 0.16

0.84

Page 39: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Effect of Conditioning (on Facies)

• Partial redundancy of conditioning and production data reduces impact of conditioning in some cases

• For CM II, use of 3 conditioned and history matched models gives N = 0.83 0.10 (~same as w/o cond)

Single HM Model

Page 40: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Summary

• Presented genetic algorithm for optimization of nonconventional well type and placement

• Applied GA under geological uncertainty

• Developed combined valve optimization – history matching procedure for real-time smart well control

• Demonstrated that optimization over multiple history-matched models beneficial in some cases

Page 41: 1 (from ) Optimization of Advanced Well Type and Performance Louis J. Durlofsky Department of Petroleum Engineering, Stanford University.

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Research Directions

• Developing efficient proxies for optimization of well type and placement under geological uncertainty

• Implementing adjoint approach (optimal control theory) and multisegment well model into GPRS for determination of valve settings

• Plan to incorporate additional data (4D seismic) and accelerate history matching procedure


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