HYDROLOGICAL PROCESSESHydrol. Process. 22, 4922–4935 (2008)Published online 16 September 2008 in Wiley InterScience(www.interscience.wiley.com) DOI: 10.1002/hyp.7115
The impact of land use change and check-dams on catchmentsediment yield
Carolina Boix-Fayos,1* Joris de Vente,2,3 Marıa Martınez-Mena,1 Gonzalo G. Barbera1
and Vıctor Castillo1
1 Soil and Water Conservation Department, CEBAS, CSIC (Spanish Research Council), Campus Universitario de Espinardo, PO Box 164, 30100Murcia, Spain
2 Physical and Regional Geography Research Group, Katholieke Universiteit Leuven GEO-INSTITUTE, Celestijnenlaan 200 E, 3001, Heverlee,Belgium
3 Desertification and Geoecology Department, EEZA, CSIC (Spanish Research Council) General Segura 1, 04001 Almeria, Spain
Abstract:
Extensive land use changes have occurred in many areas of SE Spain as a result of reforestation and the abandonment ofagricultural activities. Parallel to this the Spanish Administration spends large funds on hydrological control works to reduceerosion and sediment transport. However, it remains untested how these large land use changes affect the erosion processesat the catchment scale and if the hydrological control works efficiently reduce sediment export. A combination of field work,mapping and modelling was used to test the influence of land use scenarios with and without sediment control structures(check-dams) on sediment yield at the catchment scale. The study catchment is located in SE Spain and suffered importantland use changes, increasing the forest cover 3-fold and decreasing the agricultural land 2Ð5-fold from 1956 to 1997. In addition58 check-dams were constructed in the catchment in the 1970s accompanying reforestation works.
The erosion model WATEM-SEDEM was applied using six land use scenarios: land use in 1956, 1981 and 1997, each withand without check-dams. Calibration of the model provided a model efficiency of 0Ð84 for absolute sediment yield. Modelapplication showed that in a scenario without check dams, the land use changes between 1956 and 1997 caused a progressivedecrease in sediment yield of 54%. In a scenario without land use changes but with check-dams, about 77% of the sedimentyield was retained behind the dams. Check-dams can be efficient sediment control measures, but with a short-lived effect. Theyhave important side-effects, such as inducing channel erosion downstream. While also having side-effects, land use changescan have important long-term effects on sediment yield. The application of either land use changes (i.e. reforestation) orcheck-dams to control sediment yield depends on the objective of the management and the specific environmental conditionsof each area. Copyright 2008 John Wiley & Sons, Ltd.
KEY WORDS land use change; check-dams; sediment yield; geomorphological impact; management; reforestation
Received 8 January 2008; Accepted 23 June 2008
INTRODUCTION
Two widely applied soil conservation strategies inMediterranean environments are reforestation and theconstruction of check-dams in rivers and streams. Itis well known that land use changes (including refor-estation) and hydrological correction works may altersubstantially the sediment delivery and water dischargeof a catchment, influencing the geomorphological pro-cesses within the river bed, and sometimes inducingnon-desirable processes for river management (Kondolfet al., 2002). However, until now relatively little has beenknown about the effects of changing land use patternsand the introduction of hydrological correction workson sediment yield at the catchment scale. Evaluationof widely applied management measures in mountainstreams is necessary in order to increase our understand-ing of sediment dynamics, and to allocate resources in
* Correspondence to: Carolina Boix-Fayos, Soil and Water Conserva-tion Department, CEBAS, CSIC (Spanish Research Council), CampusUniversitario de Espinardo, PO Box 164, 30100 Murcia, Spain. E-mail:[email protected]
a responsible manner. Particular attention must be paidto upstream/downstream connections, hillslope/channelconnections, process domains, physical and ecologicalroles of disturbance, and stream resilience (Wohl, 2006).
Check-dam effects on river channels
In-channel structures such as check-dams, create seg-mented longitudinal profiles, alter sediment dynamics,bed and bank stability, interrupt longitudinal movementof nutrients and aquatic organisms, and alter the pas-sage of flood waves (Wohl, 2006). Check-dams induceimportant morphological and granulometrical effects inthe river bed (Boix-Fayos et al., 2007) which changethe hydraulic behaviour of the flow in extreme events(Conesa Garcıa et al., 2004). Besides the control ofthe sedimentary load accomplished by check-dams asreported for different environments (Simon and Darby,2002; Martın-Rosales et al., 2003; Surian and Rinaldi,2003), there are also indications that check-dams inducelocal erosion processes (Gomez-Villar and Martınez-Castroviejo, 1991; Porto and Gessler, 1999; Martın Ros-ales, 2002; Castillo et al., 2007; Conesa-Garcıa and
Copyright 2008 John Wiley & Sons, Ltd.
IMPACT OF LAND USE CHANGE AND CHECK-DAMS ON CATCHMENT SEDIMENT YIELD 4923
Garcıa-Lorenzo, 2008) affecting the sediment budget atthe catchment scale. Disturbances induced by check-damscan be negative when induced erosion is high, or whenthey create a false stabilization image (Garcıa-Ruiz et al.,1996b; White et al., 1997; Gutierrez et al., 1998; Alcov-erro et al., 1999; Boix-Fayos et al., 2007). On the con-trary, the effects of check-dams can have short- and long-term benefits. For example, Xiang-Zhou et al. (2004)explain how a check-dam system in gullies is one ofthe most effective ways to conserve soil and water in theLoess Plateau of China, where reforestation methods arenot successful due to the arid climate and barren soils.The sediment retained by the dams provides a uniqueopportunity for high-yield croplands or orchards. A pos-itive influence of check-dams on the riparian vegetationis reported by Bombino et al. (2006), who found a longi-tudinal diversification of vegetation types and creation ofnew habitats for biological and ecological communities,attributed to the geometric characteristics of check-dams.
Land use change effects on sediment yield
Mountain streams are particularly vulnerable tochanges in hillslope processes because of close couplingwith adjacent hillslopes. Hillslope processes are easilyaltered by land use changes. An increase of vegetationcover leads in general to a decrease in runoff generationand sediment detachment resulting in the medium termin the stabilization of sedimentary structures at the catch-ment scale (Garcıa-Ruiz et al., 1996a; Beguerıa et al.,2006). Sometimes a very limited change in land usecan have a significant effect on regional soil erosionrates (Van Rompaey et al., 2002). However, not only thechange in the cover of different land uses induces changeson sediment yield, but also the change in landscape struc-ture has important consequences for the sediment yield.For example, changes in temporal patterns of cultiva-tion practices (Vezina et al., 2006), changes in the spatialconnectivity between sediment- producing areas and theriver network (Vanacker et al., 2003; 2005), changes inthe combined effects of land use and field sizes (Vanackeret al., 2005; Van Rompaey et al., 2007) and changes inthe location of field boundaries (Van Oost et al., 2000)have remarkable effects on sediment yield. So althoughit is well known that changes in land use affect erosionand sediment yield, an integrated evaluation of the effec-tiveness and impacts of check-dams compared with refor-estation and other land use changes is lacking. Recentlyan evaluation of the effect of land use changes, smallfarm dams and large reservoirs on sediment yield in anAustralian catchment has been carried out (Verstraetenand Prosser, 2008).
Perspective and objectives
In south-east Spain significant land use changes haveoccurred as a result mainly of the abandonment ofagricultural activities and the introduction of reforestationplans. In addition, the Spanish Administration spendslarge funds on hydrological control works to reduce
flood risk and sedimentation of reservoirs. However, itremains untested how these land use changes and thehydrological control work affect the erosion processesat the catchment scale, and if they are really efficient.A previous study (Boix-Fayos et al., 2007) analysed thecombined influence of land use change and a networkof check-dams on the morphological evolution of a riverchannel in SE Spain. This paper raises the question towhat extent are (i) land use changes and/or (ii) check-dams responsible for the decreased sediment yield atthe catchment scale. The main objective is to determinethe effectiveness of land use changes and check-damsas management options to control sediment yield at thecatchment scale.
STUDY AREA
The Rogativa catchment (Murcia, SE Spain, 38° 080 N,2° 130 W), with a size of 47Ð2 km2 was selected as thestudy area. The study area and the land use changesthat have occurred within it since 1956 were describedextensively in Boix-Fayos et al. (2007). The catchmentdrains the northern face of Revolcadores (2027 m) andthe Cuerda de la Gitana (1829 m) mountain ranges inS–N direction. It belongs to the catchment of the Taibilla,a tributary of the Segura river, located at the Subbetic unitof the Betic Mountains. The dominant lithology consistsof marls, limestones, marly limestones and sandstones ofthe Cretaceous, Oligocene, and Miocene (IGME, 1978).Mountains are mainly limestone while mid- and bottom-valley locations are dominated by marls. The averageannual rainfall for the period 1933–2004 was 583 mmand the average annual temperature 13Ð3 °C.
The landscape represents a mix of dryland farming,mainly barley, plantations of walnuts (Junglans regia),forests and shrublands. The catchment has been affectedby important land use changes since the second half ofthe twentieth century. These changes consist mainly ofa progressive abandonment of dryland farming activitiesand an increase in forest cover (Boix-Fayos et al., 2007).The surface area of the land use classes in 1997 is listedin Table I. Table II shows changes in surface area of themost important land uses between different periods.
Forest is dominated by Pinus nigra salzmanii, althoughalso some Pinus pinaster and Pinus halepensis occur inthe lower basin. Quercus rotundifolia was reduced dueto intense wood and charcoal production and clearingfor agriculture in the past. Shrublands located higherwithin the catchment are dominated by Erinacea anthylliswhile at lower altitudes Cytisus reverchonii, Rosmarinusofficinalis, Thymus vulgaris and Genista scorpius appear.
In the catchment area 58 check-dams were constructedin 1976 and 1977 (Figures 1 and 2). Of those, 72%are silted and 81% present erosion features directlydownstream of the dam (Boix-Fayos et al., 2007). Inthe main stream 11 check-dams are located, all of themcompletely silted. Further characteristics of check-damsand their drainage areas are given in Table I.
Copyright 2008 John Wiley & Sons, Ltd. Hydrol. Process. 22, 4922–4935 (2008)DOI: 10.1002/hyp
4924 C. BOIX-FAYOS ET AL.
Tabl
eI.
Loc
atio
nan
dm
ain
char
acte
rist
ics
ofth
ech
eck-
dam
san
dth
eir
drai
nage
area
sof
the
Rog
ativ
aca
tchm
ent.
The
area
ofth
ela
ndus
ecl
asse
sis
deri
ved
from
digi
tal
orth
opho
tos
of19
97
Che
ck-d
amC
heck
-dam
cond
itio
nL
ocat
ion
(rav
ine
nam
e)Y
ear
Sedi
men
tsbu
lkde
nsit
y(g
cm�3
)a
Dra
inag
ear
ea(h
a)
Ori
gina
lst
orag
eca
paci
ty(m
3)
Tra
pef
ficie
ncy
(%)b
Sedi
men
tyi
eld
(tyr
�1)
Hig
han
dm
ediu
mde
nsity
fore
st(h
a)
Low
dens
ity
fore
st(h
a)
Shru
blan
d(h
a)Pa
stur
e(h
a)D
ryla
ndag
ricu
ltur
e(h
a)
D1
silt
edR
oble
1976
1Ð55
15Ð36
676Ð9
987
Ð5530
Ð261Ð0
87Ð3
5—
—6Ð9
3D
2si
lted
Rob
le19
761Ð5
558
Ð1613
6Ð26
27Ð22
28Ð77
15Ð30
32Ð11
——
10Ð71
D3
silt
edU
mbr
ıade
las
vıbo
ras
1976
1Ð55
125Ð4
162
5Ð48
44Ð32
81Ð11
48Ð92
60Ð31
16Ð18
——
D4
non-
silt
edU
mbr
ıade
las
vıbo
ras
1976
1Ð55
25Ð17
404Ð4
971
Ð9521
Ð541Ð8
122
Ð25—
—1Ð1
9D
5no
n-si
lted
Can
tarr
ales
119
761Ð5
524
6Ð57
278Ð9
815
Ð3082
Ð3680
Ð9116
4Ð00
——
1Ð63
D6
non-
silte
dC
anta
rral
es1
1976
1Ð55
5Ð80
229Ð9
786
Ð3513
Ð995Ð1
4—
——
0Ð67
D7
non-
silte
dC
anta
rral
es1
1976
1Ð55
11Ð67
326Ð5
281
Ð719Ð1
111
Ð66—
——
0Ð01
D8
non-
silt
edU
mbr
ıade
las
vıbo
ras
1976
1Ð55
230Ð5
690
3Ð34
38Ð47
99Ð45
73Ð72
56Ð66
58Ð81
9Ð20
32Ð18
D9
silt
ed(C
5cm
)C
ueva
del
Agu
a19
761Ð5
585
Ð1012
61Ð68
70Ð29
104Ð4
963
Ð441Ð0
113
Ð85—
6Ð81
D10
non-
silt
edR
ogat
iva
1976
1Ð55
26Ð91
573Ð4
077
Ð2826
Ð905Ð8
815
Ð905Ð0
7—
0Ð06
D11
non-
silt
edR
ogat
iva
1977
1Ð55
37Ð29
1968
Ð7489
Ð3995
Ð5624
Ð532Ð7
20Ð7
5—
9Ð30
D12
silte
dB
arra
ca19
771Ð5
536
Ð0341
9Ð77
65Ð03
37Ð10
8Ð75
1Ð22
4Ð86
—21
Ð20D
13no
n-si
lted
Can
tarr
ales
219
771Ð5
535
Ð7325
8Ð48
53Ð59
22Ð92
35Ð67
0Ð07
——
—D
14si
lted
Can
tarr
ales
219
761Ð5
013
Ð2570
9Ð34
89Ð53
43Ð90
11Ð00
——
—2Ð2
5D
15no
n-si
lted
Poci
cos
1976
1Ð50
86Ð98
238Ð2
530
Ð4221
Ð9224
Ð7753
Ð398Ð8
2—
—D
16si
lted
(C20
.3cm
)So
lana
1977
1Ð52
4Ð73
1070
Ð2297
Ð3166
Ð650Ð0
8—
——
4Ð64
D17
silt
edSo
lana
1977
1Ð52
155Ð6
512
45Ð77
56Ð09
125Ð0
212
9Ð59
1Ð67
——
24Ð40
D18
silt
edR
ogat
iva
1977
1Ð55
42Ð31
8246
Ð1096
Ð8948
9Ð14
5Ð19
——
—37
Ð12D
19si
lted
(C10
cm)
Java
nas
1977
1Ð52
20Ð25
746Ð4
885
Ð4750
Ð7012
Ð91—
1Ð79
—5Ð5
5D
20si
lted
Est
ebas
1977
1Ð52
181Ð3
113
2Ð75
10Ð46
71Ð42
51Ð14
62Ð62
4Ð88
46Ð81
15Ð88
D21
non-
silte
dJa
vana
s19
771Ð5
211
Ð4278
9Ð42
91Ð69
42Ð81
3Ð30
—7Ð4
50Ð0
20Ð6
5D
22si
lted
(C20
cm)
Java
nas
1977
1Ð52
66Ð72
92Ð24
18Ð08
32Ð31
39Ð89
9Ð37
7Ð68
9Ð79
—D
23si
lted
Lom
aPa
rril
la19
771Ð5
244
0Ð05
1058
Ð9927
Ð7521
4Ð81
245Ð6
512
0Ð70
8Ð07
50Ð99
14Ð65
D24
non-
silt
edL
oma
Parr
illa
1977
1Ð52
17Ð08
703Ð8
986
Ð8134
Ð4215
Ð37—
1Ð65
——
D25
silt
edR
ogat
iva
1977
1Ð55
85Ð47
80Ð39
13Ð05
35Ð40
31Ð48
——
—54
Ð00D
26si
lted
Rog
ativ
a19
771Ð5
514
7Ð72
3058
Ð1876
Ð7722
8Ð95
45Ð90
—20
Ð633Ð2
577
Ð91D
27si
lted
(C20
cm)
Est
ebas
1977
1Ð50
41Ð31
47Ð94
15Ð63
19Ð12
14Ð17
—5Ð8
7—
21Ð26
D28
silt
ed(C
10cm
)A
lmen
icas
1977
1Ð50
361Ð7
743
2Ð86
16Ð03
154Ð5
826
3Ð91
25Ð67
61Ð12
9Ð17
1Ð90
D29
non-
silt
edE
scri
bano
1977
1Ð50
7Ð92
2350
Ð1097
Ð9312
6Ð33
4Ð61
——
—3Ð3
1
Copyright 2008 John Wiley & Sons, Ltd. Hydrol. Process. 22, 4922–4935 (2008)DOI: 10.1002/hyp
IMPACT OF LAND USE CHANGE AND CHECK-DAMS ON CATCHMENT SEDIMENT YIELD 4925
Tabl
eI.
(Con
tinu
ed)
Che
ck-d
amC
heck
-dam
cond
itio
nL
ocat
ion
(rav
ine
nam
e)Y
ear
Sedi
men
tsbu
lkde
nsit
y(g
cm�3
)a
Dra
inag
ear
ea(h
a)
Ori
gina
lst
orag
eca
paci
ty(m
3)
Tra
pef
ficie
ncy
(%)b
Sedi
men
tyi
eld
(tyr
�1)
Hig
han
dm
ediu
mde
nsity
fore
st(h
a)
Low
dens
ity
fore
st(h
a)
Shru
blan
d(h
a)Pa
stur
e(h
a)D
ryla
ndag
ricu
ltur
e(h
a)
D30
silt
edE
scri
bano
1977
1Ð50
231Ð1
354
6Ð00
27Ð38
110Ð5
119
3Ð34
—8Ð3
1—
29Ð48
D31
silt
edE
scri
bano
1977
1Ð50
5Ð49
750Ð7
595
Ð6243
Ð514Ð7
8—
——
0Ð71
D32
silt
ed(C
25cm
)E
scri
bano
1977
1Ð50
7Ð65
1539
Ð9996
Ð9895
Ð335Ð0
7—
——
2Ð58
D33
silt
edC
irue
los
1977
1Ð50
61Ð29
1529
Ð8279
Ð9310
6Ð06
60Ð38
——
—0Ð9
4D
34si
lted
(C40
cm)
Cir
uelo
s19
771Ð5
014
Ð7515
28Ð65
94Ð30
99Ð28
12Ð32
——
—2Ð4
1D
35si
lted
Cir
uelo
s19
771Ð5
019
Ð9413
78Ð72
91Ð69
83Ð33
11Ð77
0Ð34
0Ð57
—7Ð3
8D
36si
lted
(C50
cm)
Cir
uelo
s19
771Ð5
01Ð0
717
07Ð89
99Ð61
110Ð8
50Ð5
10Ð1
6—
0Ð40
D37
silt
edC
irue
los
1999
1Ð50
71Ð13
2506
Ð8384
Ð9116
3Ð61
43Ð35
—22
Ð92—
4Ð80
D38
silt
edR
ogat
iva
1977
1Ð55
238Ð3
610
841Ð1
487
Ð8970
8Ð88
128Ð3
233
Ð2211
Ð241Ð5
764
Ð02D
39si
lted
Cem
ente
rio
1977
1Ð50
9Ð95
3019
Ð7297
Ð9817
0Ð79
8Ð69
——
—1Ð2
6D
40si
lted
Cem
ente
rio
1977
1Ð50
5Ð11
1005
Ð7496
Ð9257
Ð515Ð1
1—
——
—D
41si
lted
(C30
cm)
Cem
ente
rio
1977
1Ð50
156Ð5
292
5Ð49
48Ð55
116Ð2
068
Ð3388
Ð19—
——
D42
silte
dC
emen
teri
o19
771Ð5
07Ð0
244
9Ð36
91Ð09
27Ð34
3Ð62
—0Ð0
2—
3Ð39
D43
silt
edSa
lval
ejo
1977
1Ð50
36Ð44
931Ð8
180
Ð3264
Ð2915
Ð0219
Ð200Ð0
3—
2Ð19
D44
silt
ed(C
20cm
)Sa
lval
ejo
1977
1Ð50
25Ð79
423Ð6
772
Ð3934
Ð8311
Ð2114
Ð58—
——
D45
non-
silt
edSa
lval
ejo
1977
1Ð50
35Ð91
315Ð1
458
Ð3415
Ð5210
Ð9924
Ð92—
——
D46
non-
silt
edSa
lval
ejo
1977
1Ð50
15Ð18
175Ð2
564
Ð825Ð9
99Ð6
05Ð5
8—
——
D47
non-
silt
edSa
lval
ejo
1977
1Ð50
18Ð58
382Ð1
776
Ð6513
Ð4013
Ð345Ð2
4—
——
D48
non-
silt
edSa
lval
ejo
1977
1Ð55
352Ð4
229
5Ð53
11Ð80
85Ð27
208Ð1
157
Ð6111
Ð5275
Ð19—
D49
silt
ed(C
20cm
)C
asa
Nue
va19
771Ð5
312
3Ð67
1038
Ð6857
Ð2710
9Ð41
0Ð00
86Ð36
3Ð04
14Ð51
19Ð75
D50
silt
ed(C
10cm
)R
ogat
iva
1977
1Ð52
308Ð2
595
89Ð21
83Ð24
670Ð8
411
6Ð29
111Ð7
97Ð9
713
Ð2359
Ð05D
51no
n-si
lted
Suer
teE
stre
cha
1977
1Ð37
48Ð70
745Ð6
970
Ð9645
Ð7025
Ð0523
Ð64—
——
D52
silt
edSu
erte
Est
rech
a19
771Ð3
731
Ð8039
2Ð45
66Ð33
29Ð93
20Ð22
7Ð35
4Ð23
——
D53
silt
edE
rmit
a19
771Ð3
79Ð3
812
24Ð13
95Ð42
64Ð90
8Ð26
1Ð07
——
—D
54si
lted
Erm
ita
1977
1Ð37
30Ð55
662Ð8
577
Ð5943
Ð2230
Ð210Ð4
1—
——
D55
silt
ed(C
10cm
)E
rmit
a19
771Ð3
711
Ð1810
25Ð64
93Ð61
57Ð01
10Ð95
0Ð13
0Ð11
——
D56
silt
ed(C
50cm
)R
uico
1977
1Ð37
168Ð5
225
06Ð00
70Ð36
202Ð7
210
6Ð62
34Ð95
—26
Ð95—
D57
silt
ed(C
10cm
)R
uico
1977
1Ð37
6Ð81
1170
Ð2396
Ð4863
Ð406Ð7
70Ð0
4—
——
D58
silt
ed(C
20cm
)R
ogat
iva
1978
1Ð52
146Ð9
615
142Ð3
894
Ð2797
1Ð16
72Ð67
57Ð95
9Ð87
2Ð39
4Ð09
aA
vera
gebu
lkde
nsity
dete
rmin
edfo
rsa
mpl
esta
ken
inth
eal
luvi
alw
edge
behi
ndea
chda
mb
Tra
pef
ficie
ncy
ofth
eor
igin
alca
paci
tyof
the
chec
k-da
ms
calc
ulat
edac
cord
ing
toB
row
n(1
943)
Copyright 2008 John Wiley & Sons, Ltd. Hydrol. Process. 22, 4922–4935 (2008)DOI: 10.1002/hyp
4926 C. BOIX-FAYOS ET AL.
Table II. Area covered by different land uses in 1956, 1981 and 1997 and ratios between years
Areas Ratios
1956 km2 1981 km2 1997 km2 1981/1956 1997/1981 1997/1956
High density forest 1Ð98 6Ð91 9Ð51 3Ð48 1Ð38 4Ð80Medium density forest 7Ð09 10Ð07 16Ð52 1Ð42 1Ð64 2Ð33Low density forest 15Ð34 8Ð36 10Ð10 0Ð55 1Ð21 0Ð66Shrubland 6Ð00 9Ð92 2Ð47 1Ð65 0Ð25 0Ð41Pasture land 4Ð04 2Ð13 2Ð73 0Ð53 1Ð28 0Ð67Dry land agriculture 12Ð07 9Ð15 5Ð21 0Ð76 0Ð57 0Ð43
Figure 1. Location map of the study area, check-dams and sampling points within the Rogativa catchment
METHODS
The methodological approach to this work consisted ofthree main parts: (i) field surveys in order to estimatesediment yields at the subcatchment level and to charac-terize the soils within the catchment; (ii) GIS analysis tocalculate various model input parameters; and (iii) a mod-elling exercise using the existing spatially distributed soil
erosion model WATEM-SEDEM (Van Oost et al., 2000;Van Rompaey et al., 2001; Verstraeten et al., 2002).
(i) A first field survey to locate all the check-dams con-structed within the catchment was carried out. 58check-dams were found and georeferenced with aGPS Trimble GeoXM with differential correction.
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IMPACT OF LAND USE CHANGE AND CHECK-DAMS ON CATCHMENT SEDIMENT YIELD 4927
Figure 2. (A) General view of the catchment in November 2004; (B) check-dam in a tributary river at the medium catchment in May 2004;(C) check-dam in a tributary river at the upper catchment in June 2004; (D) check-dam at the outlet of the catchment in May 2005
Measurements of the dam structure (height, length),and detailed mapping of the sediment wedges behindeach dam was carried out. The volume of sedimentswas estimated assuming that the alluvial wedge hasthe form of a prismatic channel with a rectangu-lar section (Prosser and Karssies, 2001; Lien, 2003;Castillo et al., 2007), measuring in the field theheight and area of the wedges. Undisturbed samplingof a selection of sediment wedges was carried out toestimate the average bulk densities of retained sedi-ments. Seven sediment wedges were sampled at thefront and the end of the wedge (two sampling areasper wedge) (Figure 1). Bulk samples of 100 cm3
at 7 cm depth intervals were taken to a maximumdepth of 1Ð25 m, and two replicates also with 7 cmdepth intervals to 35 cm depth were taken at eachsampling area. A total of 189 undisturbed sampleswere collected. With these data, the mass of sedi-ment retained by each check-dam was estimated. Ina second field survey the soil texture for differentareas within the catchment was determined. A totalof 70 sample locations distributed from upstream todownstream in the catchment were sampled at 0–5and 5–10 cm depth. Soils were air dried; the organicmatter was eliminated with H2O2, the samples werechemically dispersed with hexametaphosphate andtheir particle size distribution characterized by laserdiffraction using a Coulter LS200. Three laboratoryreplicates for each sample were done. The percent-age of coarse and fine sand, coarse and fine silt and
clay were obtained as well as the geometric meansize of particles. Results were used to obtain a soilerodibility map (K factor) as explained below.
(ii) GIS analysis was used to derive various modelinput parameters. First of all, the catchment areadraining to each check-dam was calculated using adigital elevation model (DEM) of the catchment. TheDEM was extracted from the contour lines (10 minterval) of digital topographic maps obtained fromthe Spanish National Geographic Institute (IGN). Themaps were published between 2000 and 2002 andbased on photogrammetric information of a flight of1988. From these maps a DEM was created at 30 mresolution using the Idrisi software. Trap efficiencyfor each check-dam was calculated following Brown(1943) using the initial volume of each check-dam. This method estimates trap efficiency accordingto the structure capacity and watershed area ratioand it is useful for estimations of mid- and long-term trap efficiencies, especially when no inflowdata are available (Verstraeten and Poesen, 2000).Specific sediment yield data (SSY, t ha�1 yr�1) andabsolute sediment yield (SY, t yr�1) were calculatedbased on the volume of sediments retained by eachcheck-dam, the bulk density of sediments, the trapefficiency of check-dams and the drainage area ofeach check-dam. Similar approaches are reportedby several authors to estimate sediment yield databehind small dams or check-dams (Verstraeten et al.,2007; Romero-Dıaz et al., 2007a).
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4928 C. BOIX-FAYOS ET AL.
Furthermore, several GIS layers were prepared as inputfor the erosion model RUSLE (see third paragraph of thissection) in the following way:
1. The land use scenarios of three years (1956, 1981 and1997) derived from interpretation of aerial photographs(spatial resolution 1 m) of those years were adapted insize and resolution to the study area. Details of themethods to derive the land use scenarios can be foundin Boix-Fayos et al. (2007).
2. Crop factor (C factor) map. C factors were assignedto land use classes based on the estimations of theNational Inventory of Soils for the Region of Murcia(DGCONA, 2002).
3. Rainfall factor (R factor) map. This factor was cal-culated based on mean monthly rainfall data ofthe National Meteorological Institute of Spain forthe period 1937–2004. The equation of Renard andFreimund (1994) as explained in de Vente et al.(2007b) was applied to calculate R.
4. Erodibility (K factor) map. A K factor for each soilsampling point was estimated using the algorithmproposed by Romkens et al. (1987). The data wereextrapolated for the whole catchment using a krigingprocedure. For very steep slopes (>35°), the K factorwas set at a value of 20.
5. Rivers map6. Pond map with a specific trap efficiency7. Parcels map
All layers were resampled at 30 m resolution for themodel application.
GIS analysis was also used to characterize the landuse pattern for 1956, 1981 and 1997 by the applicationof the perimeter to area ratio and the fragmentation index(Monmomier, 1974, Eq. (1)):
F D(
m∑iD1
(c � 1
n � 1
)/n
)�1�
where n D number of different classes present in thekernel of 5 by 5 pixels, c D number of cells consideredin the 5 by 5 pixels kernel and m D number of pixels inthe image. A high perimeter to area ratio and a highfragmentation index indicate a more fragmented landuse pattern with more small isolated patches of differentland use.
Since the available land use maps from aerial pho-tographs (1956, 1981, 1997) did not provide an imageof the land use at the moment of the installation of thehydrological control works (i.e. starting 1976), a classifi-cation was performed of a historic Landsat MultispectralScanner (MSS) satellite image of 21 January 1974 in aneffort to characterize land use conditions for this timeperiod. The MSS sensor took images in four bands ofthe electromagnetic spectrum: two in the visible partof the spectrum, and two in the infrared part. A falsecolour image based on the combination of bands 4, 2, 1was used to perform a supervised classification of land
uses. Because of the relatively low level of detail in theLandsat MSS images (spatial resolution 75 m), in thisclassification two of the original land use classes weremerged (i.e. high and medium density forest). Becauseof the lower spatial resolution of the satellite image com-pared with the aerial photographs, the satellite image wasonly used to characterize the land use at the moment ofconstruction of the control works and not as a land usescenario for modelling purposes.
(iii) The spatially distributed model WATEM-SEDEM (VanOost et al., 2000; Van Rompaey et al., 2001; Ver-straeten et al., 2002) was used to estimate the sedimentyield at the outlet of the catchment under different landuse scenarios. WATEM-SEDEM provides long-termmean annual soil erosion rates by water and sedimentyield. The model was extensively described in earlierpublications (e.g. Van Oost et al., 2000, Van Rompaeyet al., 2001, Verstraeten et al., 2002, de Vente et al.,2007b), so here we summarize the most important fea-tures. The model calculates on a pixel basis and hasthree main components: soil erosion assessment, sedi-ment transport capacity and sediment routing. WithinWATEM-SEDEM mean annual soil erosion is pre-dicted with a modified version of the revised universalsoil loss equation (RUSLE; Renard et al., 1997) thatwas proposed by Desmet and Govers (1996a, b) as:
E D R ð K ð LS2D ð C ð P �2�
where E is the mean annual soil erosion (kg m�2 yr�1),R is the rainfall erosivity factor (MJ mm m�2 h�1 yr�1),K is the soil erodibility factor (kg h MJ�1 mm�1),LS2D is the two-dimensional topographic factor, C isthe crop and management factor, and P is the erosioncontrol practice factor. In the original WATEM-SEDEMmodel the sediment transport capacity is calculated asthe product of the rill and interrill erosion potential anda constant factor called the transport capacity coefficient.Here we used an adapted formula to calculate transportcapacity as suggested by Verstraeten et al. (2007):
TC D KTC ð R ð K ð A1Ð4 ð S1Ð4 �3�
where, TC is the transport capacity (kg m�2 yr�1), KTCis the transport capacity coefficient (�), R and K are therainfall intensity and soil erodibility factor of the RUSLE,A is the upslope area (m2), and S the local slope gradient(m m�1). The difference between this equation and theoriginal formulation of sediment transport capacity is thatit allows a high transport capacity throughout zero-orderbasins, which is essential in basins where gully erosionis an important erosion process (de Vente et al., 2007b,Verstraeten et al., 2007).
Once soil erosion and sediment transport capacity areknown for each pixel, sediments are routed through thebasin towards the river along a runoff pattern that iscalculated with a multiple-flow algorithm (Desmet andGovers, 1996a). The location of the check-dams withinthe catchment was introduced in the model as sedimen-tation areas within the channels using the calculated trap
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IMPACT OF LAND USE CHANGE AND CHECK-DAMS ON CATCHMENT SEDIMENT YIELD 4929
Figure 3. Land use maps 1956, 1981, 1997 (modified from Boix-Fayos et al., 2007) derived from air photographs
Table III. Area covered by different land uses in 1956, 1974, 1981 and 1997 (data from different sources: 1956, 1981 and 1997 fromdigital air photographs, 1974 from Landsat MSS satellite image)
1956 km2 1974 km2 1981 km2 1997 km2
Forest (total cover) 24Ð42 25Ð18 25Ð34 36Ð13Forest (high C medium density) 9Ð08 16Ð20 16Ð98 26Ð03Low density forest 15Ð34 8Ð98 8Ð36 10Ð10Shrubland 6Ð00 7Ð91 9Ð92 2Ð47Pasture land 4Ð04 0Ð90 2Ð13 2Ð73Dry land agriculture 12Ð07 12Ð48 9Ð15 5Ð21
Table IV. Change in landscape metric indicators between the studied periods
Perimeter to Area ratio (km km�2) Fragmentation index
1956 1981 1997 1956 1981 1997
High density forest 25Ð09 11Ð93 4Ð54 0Ð055 0Ð030 0Ð035Medium density forest 15Ð94 7Ð94 3Ð71 0Ð038 0Ð020 0Ð024Low density forest 9Ð16 7Ð05 9Ð17 0Ð024 0Ð018 0Ð023Shubland 14Ð73 11Ð43 18Ð41 0Ð037 0Ð027 0Ð041Pasture land 15Ð06 14Ð05 13Ð03 0Ð037 0Ð036 0Ð032Dry land agriculture 9Ð47 10Ð75 12Ð93 0Ð023 0Ð025 0Ð029Mean values 14Ð91 10Ð53 10Ð30 0Ð036 0Ð026 0Ð031
efficiency for each dam. In this way calculation of sed-iment yields for each river segment upstream of eachcheck-dam was carried out.
RESULTS AND DISCUSSION
Land use scenarios and sediment yield dataLarge differences in land use occurred between 1956
and 1997. The area occupied by high density forestincreased 4Ð8-fold, the area covered by medium densityforest increased 2Ð3-fold and the area dedicated to agri-culture decreased by 57% (Table II, Figure 3). By 1981
many important land use changes had already occurred,the high density forest had already increased 3Ð5-fold, themedium density forest had increased 1Ð42-fold and theagricultural land had been reduced by 24% by that time.Also remarkable is that the area covered by shrublandhad increased in 1981 1Ð65-fold.
The land use map derived from the satellite imageof 1974 offers an image of the situation just before thestart of the hydrological correction works (reforestationand check-dam construction) in 1976. Table III offers acomparison of the land use areas at the four dates afteraggregation of the classes, high- and medium-density
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4930 C. BOIX-FAYOS ET AL.
forest. However, the 1974 land use map is difficult tocompare with those of 1956, 1981 and 1997 becauseof the different spatial resolution of the remote sensingsources (see methods section). In the classification of the1974 satellite image the class ‘pasture land’ producedconfusion with the class ‘dryland agriculture’, and as aresult the pasture land class is probably underestimated.Nevertheless, the different land use classes in 1974occupy areas of very similar size to those in 1981,which means that important changes in forest cover hadalready occurred before the initiation of the hydrologicalcorrection works of 1976. The total forest cover in1974 had approximately the same extension as in 1956(24Ð42 km2 and 25Ð18 km2, respectively) but a higherdensity of forest in 1974 can be observed through theincrease of the area with high- and medium- density forest(9Ð08 km2 and 16Ð20 km2 in 1956 and 1974, respectively)and a decrease in the low-density forest. On the otherhand, the area of agricultural land in 1974 had notdecreased with respect to 1956 (Table III).
The spatial pattern of land use also experiencedimportant changes during the whole study period, asindicated by the fragmentation index and the perimeterto area ratio (Table IV). The perimeter to area ratio isthe highest for high density forest and medium densityforest and the lowest for agricultural land in 1956. Thefragmentation index is the highest for high-density forestand the lowest for agricultural land in 1956, while in1997 the fragmentation index was still high for high-density forest but had considerably decreased with respectto 1956. For agricultural land the fragmentation indexhad slightly increased in 1997 with respect to 1956.All these indicators show that agricultural land had lowfragmentation and was well connected in 1956. Howeverthe land use mosaic in 1997 shows a decreased areaof agricultural land with higher fragmentation than in1956. These results are comparable with those obtainedby Vanacker et al. (2005) in a comparison of land usechanges between 1963 and 1995 in the Deleg catchmentin Ecuador, where the barren land was characterizedby a strong increase in fragmentation during the studyperiod.
Absolute sediment yield (Table I) and specific sed-iment yield for the subcatchments (Figure 4a) of all58 check-dams within the study area was estimatedbased on the measured sediment volumes trapped behindthe check-dams. The specific sediment yield valuesvary between 0Ð25 t ha�1 yr�1 and 107Ð33 t ha�1 yr�1
for subcatchments of 352Ð4 ha and 1Ð1 ha, respectively(Figure 4b). Specific sediment yield values are drasticallyreduced at catchment areas larger than 40 ha; above thisthreshold 85% of the subcatchments show specific sedi-ment yield values lower than 2 t ha�1 yr�1 (see Table Ifor catchment areas and Figure 4a for specific sedimentyield, subcatchments with a drainage area larger than40 ha belong to check-dams 2, 3, 5, 8, 9, 15, 17, 18,20, 22, 23, 25, 26, 27, 28, 30, 33, 37, 38, 41, 48, 49, 50,51, 56, 58). A large variability in specific sediment yieldwas observed and in general, sediment yield decreased
with increasing catchment area (Figure 4b). This situationslightly differs from the model proposed by de Vente andPoesen (2005), where an increase in specific sedimentyield values was described in subcatchments until 1 km2,and a decreasing tendency above this threshold.
The check-dams with catchment areas >40 ha and withSSY > 2 t ha�1 yr�1 are marked in Figure 4b. Thesecorrespond to the subcatchments of check-dams locatedin the main channel of the Rogativa catchment. InFigure 4c the specific sediment yield estimated fromcheck-dams located in the main channel of the Rogativaare plotted from upstream to downstream. There is aslight increase in SSY in the downstream direction; itis possible that this can be caused because other erosionprocesses, such as channel erosion and bank erosion froma certain threshold, are introducing large sediment yieldsin the main channel, as has been observed for other cases(de Vente et al., 2007a).
Model calibration
The WATEM-SEDEM model was calibrated for theentire study catchment using the 1981 land use map asthe land use scenario and including within the modelthe position of the check-dams. The land use of 1981was used for calibration because it was consideredthe most representative of the land use pattern at thetime of construction of check-dams (1976–1977), andfurthermore it has a high level of detail (i.e. more thanthe 1974 map). Only the subcatchments with non-siltedcheck-dams were used for the calibration procedure,since sediment yield of subcatchments of silted dams isless accurate because it is not known when the damswere silted and so no accurate sediment yield can becalculated. The limitation of this approach is obviouslythat the non-silted check-dams are probably located inthe less erodible subcatchments, thus an underestimationof sediment yield for the whole catchment is expected inthe modelling exercise. However, given that the objectiveof the paper is to compare the relative impact of land usescenarios and check-dams on the total sediment yield,the suggested approach is considered valid for relativecomparisons.
The WATEM-SEDEM model was run with a widerange of transport capacity coefficients (KTc). The KTcvalues in Equation (3) were assigned for two contrastingland cover categories, reflecting their different sensitivityto overland flow sediment transport. For well-vegetatedsurfaces (i.e. natural vegetation classes) a low KTc valuewas used (KTc Low), and for poorly-vegetated surfaces(i.e. dry land agriculture) a high KTc value was applied(KTc High). For each parameter combination (i.e. KTcLow and KTc High), the absolute sediment yield (SY ; tyr�1) was calculated for each catchment. The optimal KTcvalues were selected according to the model efficiency
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IMPACT OF LAND USE CHANGE AND CHECK-DAMS ON CATCHMENT SEDIMENT YIELD 4931
Figure 4. (a) Specific sediment yield estimated at the 58 subcatchments of the check-dams. The error bars represent the change in sediment yieldestimated with the loss of trap efficiency of the check-dams since the moment of their construction (1976–1977), until the moment of sedimentvolume estimation (2003). The change in sediment yield due to the loss of trap efficiency is only represented for the non-silted check-dams, thesilted check-dams have lost their trap efficiency completely and are supposed to let pass through all the sediment produced (Ł107Ð33 t ha�1 yr�1).(b) Specific sediment yield versus drainage area at the check-dams subcatchments with indication of the relation with the Taibilla reservoir. (c) Specific
sediment yield in the check-dams located along the main stream of the Rogativa catchment
(ME ) described by Nash and Sutcliffe (1970):
ME D 1 �
n∑iD1
�Oi � Pi�2
n∑iD1
�Oi � Omean�2
�4�
where n is the number of observations, Oi is the observedvalue, Omean is the mean observed value and Pi is thepredicted value. The closer the ME value approaches 1,the more efficient the model is. It was decided to calibrate
on absolute sediment yield (t yr�1) instead of relativesediment yield (t km�2 yr�1) since the objective of thestudy was to assess the effect of land use changes and theconstruction of check dams on absolute sediment outputfrom the catchment.
The optimal KTc values were 10�6 for KTc Low and3 ð 10�5 for KTc High, showing a model efficiencyof 0Ð84 (Figure 6). The model efficiency obtained inthis application falls within the range of model efficien-cies obtained in previous applications of the WATEM-SEDEM. Model efficiencies reported oscillate between0Ð14 and 0Ð89 for applications of WATEM-SEDEM in
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4932 C. BOIX-FAYOS ET AL.
Figure 5. Land use classification extracted from the Landsat MSS imageof January 1974
Italy, Belgium, Spain, Australia and Czech Republic (VanRompaey et al., 2005; Verstraeten et al., 2006; de Venteet al., 2007b; Verstraeten et al., 2007 and Van Rompaeyet al., 2007, respectively).
Influence of land use changes and check-damson sediment yield
After calibration, the WATEM-SEDEM model was runwith six scenarios. First, modelling the effect of differentland use patterns (scenarios with land use of 1956, landuse of 1981 and land use of 1997) and check-dams(original scenario with land use of 1956 and check-dams)on sediment yield separately; and the combined effectof land use patterns and check-dams (scenario with landuse of 1981 and check-dams; scenario with land use of1997 and check-dams). Table V shows the main results ofthe modelling exercise. The results of the model appliedto the land use scenarios without check-dams show aprogressive decrease in sediment yield from 1956 to1997, which can probably be explained by the increasingforest cover and decreasing dryland agriculture from 1956to 1997 (Table II). With the 1981 landuse scenario a 44%decrease of sediment yield with respect to 1956 appears.In 1997 a 54% less sediment yield appears with respectto 1956. Notice that between 1981 and 1997 sedimentyield was reduced only 10%, whereas a decrease of 9%in agricultural areas and an increase of 18% in forestcover was observed.
Figure 6. Calibration curves using the land use scenario of 1981 and thenon-silted check-dams
Table V. Results of the modeled sediment yield at the catch-ment scale under different land use scenarios with and without
check-dams
Land usescenarios
1956 1981 1997
Sediment yieldWithout check-dams 1123 t 632 t 519 tWith check-dams 257 t 19 t 137 t
Decreased sediment yieldWithout check-dams — �44 % �54 %With check-dams �77 % �98 % �88 %
Sediment retained behindcheck-dams
866 t 613 t 382 t
Retention of the total producedsediment
77% 97% 74%
With a scenario without land use change (maintainingthe 1956 landuse scenario) but with the construction ofcheck-dams, there is a decrease of 77% sediment yield. Ina scenario of land use change and check-dams in 1981,there is a decrease of 98% of sediment yield. With ascenario of land use changes and check-dams in 1997,the sediment yield was reduced by 88%. The 58 check-dams network added a 54% reduction in sediment yield
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IMPACT OF LAND USE CHANGE AND CHECK-DAMS ON CATCHMENT SEDIMENT YIELD 4933
to the land use scenario of 1981, and a 34% reduction insediment yield to the land use scenario of 1997.
The greatest control of sediment yield in the long termis made by land use; in 1981 sediment decreased 44%but most of it went to the dams (97%); in 1997 sedimentyield decreased 54%, 10% more, but only 74% went tothe dams (Table V). The most likely explanation for thisis that there were no dams close to the most importantsource areas of sediment in the land use scenario of 1997.This stresses the importance of the landscape pattern andconnectivity for the prediction of sediment yield, as wasearlier mentioned by Van Oost et al. (2000) and Bakkeret al. (2008).
The application of one type or another of sediment con-trol measures (e.g. reforestation or check dam construc-tion), or a combination of them, depends on the objectiveof the management and on the environmental conditionsof each specific area. For example, when the objective isto drastically reduce sediment delivery in badland areaswith high difficulties for the establishment of vegetation,it will probably be more efficient to combine check-dams with adapted revegetation strategies for the area.A recent proposal focuses on re-vegetation strategies thatreduce the connectivity of overland flow, after evaluationof past reforestation experiences that induced landscapedegradation (Recondes team, 2007). It must be taken intoaccount that check-dams induce erosion processes down-stream (Boix-Fayos et al., 2007; Castillo et al., 2007).Romero-Dıaz et al. (2007b) estimated that up to 20%of the sediments retained by the dams could be inducedby the construction of upstream check-dams and accesstracks. In general check-dams are a temporary solutionbecause they often fill up rapidly.
In contrast, in areas without urgent problems relatedto high sediment delivery from rivers and streams,sufficiently deep soils and favourable climatologicalconditions for the establishment of shrubland and forest,revegetation is a suitable and sustainable solution toreduce catchment sediment yield. In the case of theRogativa catchment, the environmental conditions causeda very positive evolution of the forest cover detectedbetween 1956 and 1974, just before the reforestationand hydrological control works. The model applicationshowed an important control of land use on sedimentyield in this area. Sediment yield was reduced by up to54% only by changing land use conditions. Therefore, itis likely that the natural recovery of the forest togetherwith the progressive abandonment of agriculture wouldhave led to an important decrease of sediment yieldbefore the construction of the check-dams. This makesthe relevance of the construction of the check-damsas an additional measure in the Rogativa catchmentquestionable.
CONCLUSIONS
Both land use changes and check-dams are effective mea-sures decreasing sediment yield in catchments, however
they act at very different temporal scales. Check-dams arevery effective in the short term but potentially increaseerosion downstream. In the studied catchment the effectof land use changes (mainly decrease of agriculturalactivities and increase of forest cover) decreased the sed-iment yield by 44% in 25 years and 54% in 40 years.The addition of 58 check-dams to the land use pattern of1997 meant an extra decrease of 34% in sediment yield.The construction of check-dams without land use changeswith respect to the 1956 scenario controlled 77% of thesediment yield in the study area. In the case of the Rog-ativa catchment it seems that the change in the spatialpattern of land use at the moment of the construction ofcheck-dams could have reduced sediment yield alreadyby 40%.
Land use changes are long-term sustained sedimentcontrol measures compared with check-dams, which areshort-term effective sediment control measures. The useof each of them should be conditioned by the environ-mental characteristics of the area and the specific objec-tives of the management project. In high erodibility areaswith problems for vegetation establishment, check-damscan be effective for reducing sediment yield. In areaswith favourable conditions for vegetation establishment,land use changes leading to an increased vegetation coverare sustainable measures to reduce sediment yield, andcheck-dams can be confined to important source areas ofsediment.
ACKNOWLEDGMENTS
This work was financially supported by a researchproject of the Fundacion Instituto Euromediterraneo delAgua (CE) and by the Spanish Ministry of Scienceand Education through the projects CANOA CGL2004-04 949-C02-01; PROBASE CGL2006-11 619 and ERCOCGL2007-62 590/BTE. The first author was financiallysupported by an I3P postdoc contract CSIC-CE and a“Ramon y Cajal” contract from the Spanish Ministry ofScience and Education. Gonzalo G. Barbera also wassupported by I3P postdoc contract. Joris de Vente wassupported by a Seneca (Region of Murcia Government)foreign researchers grant and through a contract in theintegrated project DESIRE of the EU FP6 037 046(GOCE).
David Correa Calvo helped in the field work. TheDireccion General del Medio Natural of the Region ofMurcia (Directorate of Environment) is acknowledged forproviding the digital ortophotos. The Mancomunidad deCanales del Taibilla (Community of channels of Taibillariver) is acknowledged for the interest shown in thisresearch.
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