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¿De dónde viene y para dónde va la deforestación
en Colombia?
Liliana M. Dávalos

ICESI

17 Julio 2017
!
What we do in the lab
The Dávalos Lab
A double mission
Biological
diversity
Evolution Extinctionincrease decrease
Come to ColEvol! 17 August 2017
Biological
diversity
Evolution Extinctionincrease decrease
Focus on deforestation A recent headline
Biological
diversity
Evolution Habitat lossincrease decrease
A positive exponential trend
Álvarez 2002 Cons. Biol.
Dávalos et al. 2011 Env.
Sci. & Tech.
Coca = deforestation
Evaluating effects of
coca
• Direct vs. indirect

• Plots small, direct
effect small

• Indirect effects larger

• There are other countries

• Should hold across
producers

• Background
deforestation ≠ 0

• Must control for other
factors

• E.g., roads, population
Dávalos et al. 2011 Env.
Sci. & Tech.
If coca cultivation is an
important factor then:
• Direct effects

• Loss rate high

• Compared to other
agriculture

• Indirect effects:

• Loss rate higher in
producer countries/
areas

• Times with more coca
correspond to more
deforestation

• Coca cultivation will
covary with rates
Rates higher in areas
without coca, but Bolivia
Data from Hansen et al.
2013 Science
Direct loss rate from
coca is low
UNODC 2016 World
Drug Report
In Bolivia rates did rise
with coca boom
Killeen et al. 2007
Ambio
The best data are
from Colombia
• Three ≠ studies

• Dávalos et al. 2011
Env. Sci. & Tech.
• LandSat 2002-2007
• Armenteras et al. 2013
Reg. Environ. Change

• LandSat 1990-2005
• Sánchez Cuervo & Aide
2013 Ecosystems

• MODIS 2001-2010
Dávalos et al. 2011 Env.
Sci. & Tech.
Not in Amazonia, but still
signal
Armenteras et al. 2013
Reg. Environ. Change
However, generalized linear
models cannot be trusted
Mets et al. 2017
Ecosphere
A reanalysis of the data Unpublished
Key points, illicit crops
• Direct effects

• Loss rate high ✘ when
compared to other
agriculture

• Indirect effects:

• Loss rate higher in
producer countries ✘

• Times with more coca
correspond to more
deforestation ✔ in Bolivia

• Coca cultivation will covary
with rates ✘
Novoa & Finer 2015
200 km
40 km
Not all effects
depend on rates
• If endemic species

• Small area = large
effect

• Biodiversity in Andes,
Chocó

• High

• Irreplaceable

• Detailed and focused
analyses needed
Unpublished
Serranía de San
Lucas
• Last large remnant of
Andean forest in
Colombia

• Unprotected

• Almost declared a park
in 2010

• Decision postponed
because of gold mining

• Threats:

• Agriculture including
coca

• Mining
Dávalos 2001 Biod. &
Cons.
Dynamics of San Lucas
stand out
Mets et al. 2017
Ecosphere
San Lucas
Santa Marta
San Lucas
Santa Marta
San Lucas
Santa Marta
San Lucas
Santa Marta
Modeling forest loss
in San Lucas
• Time

• 2002-2007

• 2007-2010

• Factors

• Roads

• Rivers

• Proximity to other
crops
Chadid et al. 2015
Forests
Modeling forest loss
in San Lucas
• Time

• 2002-2007

• 2007-2010

• Factors

• Roads

• Rivers

• Proximity to other
crops
Chadid et al. 2015
Forests
Pastures and coca
behave differently
Chadid et al. 2015
Forests
Key points, San
Lucas
• Deforestation accelerating

• Focus on annual
deforestation obscures
pattern

• Direct loss

• Coca << pasture

• But coca not negligible

• Operates as spearhead
for later cultivation

• Frontier dynamics

• Roads either not recorded or
not important
Chadid et al. 2015
Forests
Most forest loss =
pasture = cattle?
Kaimowitz et al. 2004
CIFOR
Guaviare forests, coca, pastures and cattle
Hamburger! (or steak)

Kaimowitz et al. 2004 CIFOR
Coca

Dávalos et al. 2011 Environ
Sci Technol
Land tenure and property

Hecht 1993 BioScience
Three hypotheses, three sets of predictions
Hamburger! (or steak)

Kaimowitz et al. 2004 CIFOR
Coca

Dávalos et al. 2011 Environ
Sci Technol
Land tenure and property

Hecht 1993 BioScience
+ demand beef
+ beef, + cattle
+ cattle, + pasture
+ pasture, - forest
+ demand cocaine
+ cocaine, + coca
+ coca, - forest
+ demand land
+ pasture, + cattle
+ cattle, - forest
1400
1600
1800
2000
2200
●
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●
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●
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●
3035404550
Forest
NP
1500
2000
2500
●
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28 30 32 34 36 38 40
Pasture
150
200
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300
350
400
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0.51.01.52.02.5
Coca
500
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3035404550
PA(ha)
150
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28 30 32 34 36 38 40
2
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0.51.01.52.02.5
90
100
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3035404550
PLAND
ENN(m)
95
100
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28 30 32 34 36 38 40
PLAND
300
400
500
600
●
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0.51.01.52.02.5
PLAND
Figure 2
BA
G
C
E FD
H I
25
30
35
40
45
50
2001 2004 2007 2010
25
30
35
40
2001 2004 2007 2010
1
2
3
2001 2004 2007 2010
PLAND
K L M
Rapid forest loss in
Guaviare
Dávalos et al. 2014
Biol. Cons.
A
B
C
Figure
Calamar
El Retorno
San Jose
30,000
60,000
90,000
10
20
30
Year
CattlePriceofbeef(pesos/Kg)RanchingGDP(109
pesos)
2000 2002 2004 2006 2008 2010
1,600
1,800
2,000
2,200
The hamburger
connection
• Cattle increase ✔

• Demand beef ✘

• Revenue beef ✘
Dávalos et al. 2014
Biol. Cons.
●
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●
2000
4000
6000
0 3000 6000 9000
Eradication previous year (ha)
Cocacultivation(ha)
The coca connection
• Cultivation increase ✘

• Effect of
eradication?
Dávalos et al. 2014
Biol. Cons.
Municipality
●
●
●
Calamar
El Retorno
San Jose
Figure 6
A B
●
●
●
●
●
●
●
●
●
●●
●
●
●
●
●
● ●
●
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●
20
30
40
30,000 60,000 90,000
Cattle
Percentagelandpasture
●
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●
2,000
4,000
6,000
30 40 50 60
Percentage population urban
Cocacultivation(ha)
Urban development
eliminates coca
• More urban, less coca

• At ~50% urban
population

• No coca in smaller
municipalities
Dávalos et al. 2014
Biol. Cons.
A
B
C
Figure 5
Calamar
El Retorno
San Jose
2010
0.00
0.02
0.04
0.06
20
30
40
50
2
3
4
5
2000 2002 2004 2006 2008
Year
FinancialGDP
(109pesos)
ConstructionGDP
(109pesos)
PropertyTax
(106pesos/capita)
Urban/developing
Guaviare
• Larger tax base

• More construction
GDP

• Finance more
important

• Less dependence on
ranching (and
agriculture)
Dávalos et al. 2014
Biol. Cons.
Key points, Guaviare
• Rapidly urbanizing

• Catalysts:

• Bogotá-Villavicencio road time
cut in half since 1990s

• Improving road Villavicencio-
San José

• Expectation of urbanization

• Land grabs

• Technology

• Especially farther into Llanos 

• Ley 2 1959 (national forest
reserve)

• Ineffective
Dávalos et al. 2014
Biol. Cons.
Previous analyses
• Pixels high resolution

• LandSat = 30 m

• Frequency annual

• Or lower depending on
cloud cover

• Forests frontiers are cloudy
places

• Annual is too late
Whitehead 2016
Google Earth Blog
One alternative
• Pixels low resolution

• MODIS = 250 m

• Frequency ~1.5 days

• Lower for tropics

• On average ~15 days

• Especially useful for
detecting fires

• Already used in Brazil
Schmaltz 2003 Fires in
Venezuela and Colombia
Using MODIS to
forecast loss
• Focus on Guaviare

• Loss ~ distance to fires

• Spatial autocorrelation

• Bayesian spatial modeling

Armenteras et al. 2017
Ecol. Appl.
Predictions and loss Armenteras et al. 2017
Ecol. Appl.
Example 2013 Armenteras et al. 2017
Ecol. Appl.
Model Alertas
Key points,
prediction
• Deforestation follows frontier
dynamics

• With few exceptions

• Annual and after the fact is
too late

• Need self-updating tools

• Edges vulnerable, main tool
is fire

• Probabilistic model can
update Alertas system
Armenteras et al. 2017
Ecol. Appl.
¿De dónde viene?
• Coca has been blamed for a
lot of deforestation

• But many activities
involved

• Most forest ends up as
pasture

• Most important incentives
have to do with land as
value

• Deforestation is about land
as a resource
¿De dónde viene?
• But coca is an important
indicator

• Opens up beachheads in
many areas

• Effects devastating where
biodiversity high

• Andean forests

• Chocó

• Size ≠ effect in high-
biodiversity regions
Future = past?
• Closing of the forest frontier

• Forest->property

• End state = no forest

• Already happened in other
regions

• E.g., parts of Caquetá,
Putumayo (Mocoa),
central Andes

• Currently unfolding in
Amazonia parts of Chocó
Etter et al. 2006 J.
Environ. Manage.
¿Para dónde va?
• Wherever development goes

• Roads

• Population (migration)

• Fires

• Strong indicator of ongoing
and future activities

• Can be used for
monitoring, need action
though
Thanks!

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¿De dónde viene y para dónde va la deforestación en Colombia?

  • 1. ¿De dónde viene y para dónde va la deforestación en Colombia? Liliana M. Dávalos ICESI 17 Julio 2017 !
  • 2. What we do in the lab The Dávalos Lab
  • 4. Come to ColEvol! 17 August 2017 Biological diversity Evolution Extinctionincrease decrease
  • 5. Focus on deforestation A recent headline Biological diversity Evolution Habitat lossincrease decrease
  • 6. A positive exponential trend Álvarez 2002 Cons. Biol.
  • 7. Dávalos et al. 2011 Env. Sci. & Tech. Coca = deforestation
  • 8. Evaluating effects of coca • Direct vs. indirect • Plots small, direct effect small • Indirect effects larger • There are other countries • Should hold across producers • Background deforestation ≠ 0 • Must control for other factors • E.g., roads, population Dávalos et al. 2011 Env. Sci. & Tech.
  • 9. If coca cultivation is an important factor then: • Direct effects • Loss rate high • Compared to other agriculture • Indirect effects: • Loss rate higher in producer countries/ areas • Times with more coca correspond to more deforestation • Coca cultivation will covary with rates
  • 10. Rates higher in areas without coca, but Bolivia Data from Hansen et al. 2013 Science
  • 11. Direct loss rate from coca is low UNODC 2016 World Drug Report
  • 12. In Bolivia rates did rise with coca boom Killeen et al. 2007 Ambio
  • 13. The best data are from Colombia • Three ≠ studies • Dávalos et al. 2011 Env. Sci. & Tech. • LandSat 2002-2007 • Armenteras et al. 2013 Reg. Environ. Change • LandSat 1990-2005 • Sánchez Cuervo & Aide 2013 Ecosystems • MODIS 2001-2010 Dávalos et al. 2011 Env. Sci. & Tech.
  • 14. Not in Amazonia, but still signal Armenteras et al. 2013 Reg. Environ. Change
  • 15. However, generalized linear models cannot be trusted Mets et al. 2017 Ecosphere
  • 16. A reanalysis of the data Unpublished
  • 17. Key points, illicit crops • Direct effects • Loss rate high ✘ when compared to other agriculture • Indirect effects: • Loss rate higher in producer countries ✘ • Times with more coca correspond to more deforestation ✔ in Bolivia • Coca cultivation will covary with rates ✘ Novoa & Finer 2015
  • 18. 200 km 40 km Not all effects depend on rates • If endemic species • Small area = large effect • Biodiversity in Andes, Chocó • High • Irreplaceable • Detailed and focused analyses needed Unpublished
  • 19. Serranía de San Lucas • Last large remnant of Andean forest in Colombia • Unprotected • Almost declared a park in 2010 • Decision postponed because of gold mining • Threats: • Agriculture including coca • Mining Dávalos 2001 Biod. & Cons.
  • 20. Dynamics of San Lucas stand out Mets et al. 2017 Ecosphere San Lucas Santa Marta San Lucas Santa Marta San Lucas Santa Marta San Lucas Santa Marta
  • 21. Modeling forest loss in San Lucas • Time • 2002-2007 • 2007-2010 • Factors • Roads • Rivers • Proximity to other crops Chadid et al. 2015 Forests
  • 22. Modeling forest loss in San Lucas • Time • 2002-2007 • 2007-2010 • Factors • Roads • Rivers • Proximity to other crops Chadid et al. 2015 Forests
  • 23. Pastures and coca behave differently Chadid et al. 2015 Forests
  • 24. Key points, San Lucas • Deforestation accelerating • Focus on annual deforestation obscures pattern • Direct loss • Coca << pasture • But coca not negligible • Operates as spearhead for later cultivation • Frontier dynamics • Roads either not recorded or not important Chadid et al. 2015 Forests
  • 25. Most forest loss = pasture = cattle? Kaimowitz et al. 2004 CIFOR
  • 26. Guaviare forests, coca, pastures and cattle Hamburger! (or steak) Kaimowitz et al. 2004 CIFOR Coca Dávalos et al. 2011 Environ Sci Technol Land tenure and property Hecht 1993 BioScience
  • 27. Three hypotheses, three sets of predictions Hamburger! (or steak) Kaimowitz et al. 2004 CIFOR Coca Dávalos et al. 2011 Environ Sci Technol Land tenure and property Hecht 1993 BioScience + demand beef + beef, + cattle + cattle, + pasture + pasture, - forest + demand cocaine + cocaine, + coca + coca, - forest + demand land + pasture, + cattle + cattle, - forest
  • 28. 1400 1600 1800 2000 2200 ● ● ● ● ● ● ● ● 3035404550 Forest NP 1500 2000 2500 ● ● ● ● ● ● ● ● 28 30 32 34 36 38 40 Pasture 150 200 250 300 350 400 ● ● ● ● ● ● ● ● 0.51.01.52.02.5 Coca 500 550 600 650 700 ● ● ● ● ● ● ● ● 3035404550 PA(ha) 150 200 250 300 350 ● ● ● ● ● ● ● ● 28 30 32 34 36 38 40 2 4 6 8 10 12 14 ● ● ● ●● ● ● ● 0.51.01.52.02.5 90 100 110 ● ● ● ● ● ● ● ● 3035404550 PLAND ENN(m) 95 100 105 110 115 120 ● ● ● ● ● ● ● ● 28 30 32 34 36 38 40 PLAND 300 400 500 600 ● ● ● ● ● ● ● ● 0.51.01.52.02.5 PLAND Figure 2 BA G C E FD H I 25 30 35 40 45 50 2001 2004 2007 2010 25 30 35 40 2001 2004 2007 2010 1 2 3 2001 2004 2007 2010 PLAND K L M Rapid forest loss in Guaviare Dávalos et al. 2014 Biol. Cons.
  • 29. A B C Figure Calamar El Retorno San Jose 30,000 60,000 90,000 10 20 30 Year CattlePriceofbeef(pesos/Kg)RanchingGDP(109 pesos) 2000 2002 2004 2006 2008 2010 1,600 1,800 2,000 2,200 The hamburger connection • Cattle increase ✔ • Demand beef ✘ • Revenue beef ✘ Dávalos et al. 2014 Biol. Cons.
  • 30. ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● 2000 4000 6000 0 3000 6000 9000 Eradication previous year (ha) Cocacultivation(ha) The coca connection • Cultivation increase ✘ • Effect of eradication? Dávalos et al. 2014 Biol. Cons.
  • 31. Municipality ● ● ● Calamar El Retorno San Jose Figure 6 A B ● ● ● ● ● ● ● ● ● ●● ● ● ● ● ● ● ● ● ● ● 20 30 40 30,000 60,000 90,000 Cattle Percentagelandpasture ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● 2,000 4,000 6,000 30 40 50 60 Percentage population urban Cocacultivation(ha) Urban development eliminates coca • More urban, less coca • At ~50% urban population • No coca in smaller municipalities Dávalos et al. 2014 Biol. Cons.
  • 32. A B C Figure 5 Calamar El Retorno San Jose 2010 0.00 0.02 0.04 0.06 20 30 40 50 2 3 4 5 2000 2002 2004 2006 2008 Year FinancialGDP (109pesos) ConstructionGDP (109pesos) PropertyTax (106pesos/capita) Urban/developing Guaviare • Larger tax base • More construction GDP • Finance more important • Less dependence on ranching (and agriculture) Dávalos et al. 2014 Biol. Cons.
  • 33. Key points, Guaviare • Rapidly urbanizing • Catalysts: • Bogotá-Villavicencio road time cut in half since 1990s • Improving road Villavicencio- San José • Expectation of urbanization • Land grabs • Technology • Especially farther into Llanos • Ley 2 1959 (national forest reserve) • Ineffective Dávalos et al. 2014 Biol. Cons.
  • 34. Previous analyses • Pixels high resolution • LandSat = 30 m • Frequency annual • Or lower depending on cloud cover • Forests frontiers are cloudy places • Annual is too late Whitehead 2016 Google Earth Blog
  • 35. One alternative • Pixels low resolution • MODIS = 250 m • Frequency ~1.5 days • Lower for tropics • On average ~15 days • Especially useful for detecting fires • Already used in Brazil Schmaltz 2003 Fires in Venezuela and Colombia
  • 36. Using MODIS to forecast loss • Focus on Guaviare • Loss ~ distance to fires • Spatial autocorrelation • Bayesian spatial modeling Armenteras et al. 2017 Ecol. Appl.
  • 37. Predictions and loss Armenteras et al. 2017 Ecol. Appl.
  • 38. Example 2013 Armenteras et al. 2017 Ecol. Appl. Model Alertas
  • 39. Key points, prediction • Deforestation follows frontier dynamics • With few exceptions • Annual and after the fact is too late • Need self-updating tools • Edges vulnerable, main tool is fire • Probabilistic model can update Alertas system Armenteras et al. 2017 Ecol. Appl.
  • 40. ¿De dónde viene? • Coca has been blamed for a lot of deforestation • But many activities involved • Most forest ends up as pasture • Most important incentives have to do with land as value • Deforestation is about land as a resource
  • 41. ¿De dónde viene? • But coca is an important indicator • Opens up beachheads in many areas • Effects devastating where biodiversity high • Andean forests • Chocó • Size ≠ effect in high- biodiversity regions
  • 42. Future = past? • Closing of the forest frontier • Forest->property • End state = no forest • Already happened in other regions • E.g., parts of Caquetá, Putumayo (Mocoa), central Andes • Currently unfolding in Amazonia parts of Chocó Etter et al. 2006 J. Environ. Manage.
  • 43. ¿Para dónde va? • Wherever development goes • Roads • Population (migration) • Fires • Strong indicator of ongoing and future activities • Can be used for monitoring, need action though