Subscriber access provided by EMORY UNIV
Article
Spatially Explicit Analysis of Biodiversity Loss due to Global Agriculture, Pasture and Forest Land Use from a Producer and Consumer Perspective Abhishek Chaudhary, Stephan Pfister, and Stefanie Hellweg Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.5b06153 • Publication Date (Web): 25 Feb 2016 Downloaded from http://pubs.acs.org on February 28, 2016
Just Accepted “Just Accepted” manuscripts have been peer-reviewed and accepted for publication. They are posted online prior to technical editing, formatting for publication and author proofing. The American Chemical Society provides “Just Accepted” as a free service to the research community to expedite the dissemination of scientific material as soon as possible after acceptance. “Just Accepted” manuscripts appear in full in PDF format accompanied by an HTML abstract. “Just Accepted” manuscripts have been fully peer reviewed, but should not be considered the official version of record. They are accessible to all readers and citable by the Digital Object Identifier (DOI®). “Just Accepted” is an optional service offered to authors. Therefore, the “Just Accepted” Web site may not include all articles that will be published in the journal. After a manuscript is technically edited and formatted, it will be removed from the “Just Accepted” Web site and published as an ASAP article. Note that technical editing may introduce minor changes to the manuscript text and/or graphics which could affect content, and all legal disclaimers and ethical guidelines that apply to the journal pertain. ACS cannot be held responsible for errors or consequences arising from the use of information contained in these “Just Accepted” manuscripts.
Environmental Science & Technology is published by the American Chemical Society. 1155 Sixteenth Street N.W., Washington, DC 20036 Published by American Chemical Society. Copyright © American Chemical Society. However, no copyright claim is made to original U.S. Government works, or works produced by employees of any Commonwealth realm Crown government in the course of their duties.
Page 1 of 27
Environmental Science & Technology
3
Spatially Explicit Analysis of Biodiversity Loss due to Global Agriculture, Pasture and Forest Land Use from a Producer and Consumer Perspective
4
Abhishek Chaudhary1*, Stephan Pfister1, and Stefanie Hellweg1
1 2
5 6 7
1
8
ABSTRACT
9
Anthropogenic land use to produce commodities for human consumption is the major driver of
10
global biodiversity loss. Synergistic collaboration between producers and consumers in needed to
11
halt this trend. In this study, we calculate species loss on 5 min × 5 min grid level and per
12
country due to global agriculture, pasture and forestry by combining high-resolution land use
13
data with countryside species area relationship for mammals, birds, amphibians, and reptiles.
14
Results show that pasture was the primary driver of biodiversity loss in Madagascar, China and
15
Brazil, while forest land use contributed the most to species loss in DR Congo and Indonesia.
16
Combined with the yield data, we quantified the biodiversity impacts of 1 m3 of roundwood
17
produced in 139 countries, concluding that tropical countries with low timber yield and a large
18
presence of vulnerable species suffer the highest impact. We also calculated impacts per kg for
19
160 crops grown in different countries and linked it with FAO food trade data to assess the
20
biodiversity impacts embodied in Swiss food imports. We found that more than 95% of Swiss
21
consumption impacts rest abroad with cocoa, coffee and palm oil imports being responsible for
22
majority of damage.
Institute of Environmental Engineering, ETH Zurich, 8093 Zurich, Switzerland, (*Corresponding author phone: 41-44-6330254; fax: 41-44-6331061; e-mail:
[email protected])
23 24 25
ACS Paragon Plus Environment
Environmental Science & Technology
26
INTRODUCTION
27
Global biodiversity faces unprecedented extinction crisis1 mainly owing to habitat loss caused by
28
conversion of natural forests to anthropogenic land use.2 Growing population, increasing per
29
capita consumption, a shift to meat-based diets and biofuel production are the leading factors
30
responsible for this trend.3 More than 75% of the Earth’s ice-free land is already being affected
31
by human activities.4 The FAO forecasts a ∼70% increase in global food demand from 2000 to
32
2050, perhaps leading to further habitat loss to make way for additional cropland.5 In addition to
33
deforestation for agriculture and pasture land use, forest exploitation for commercial purposes is
34
another threat to biodiversity especially in the tropics.6
35
International efforts aimed at halting rate of global biodiversity loss have failed to meet their
36
targets.1,7 Apart from traditional measures such as setting aside areas rich in biodiversity for
37
conservation purposes,8 novel policies aimed at directly addressing the human drivers of
38
biodiversity loss (e.g. reducing the intensity of damaging land use types or changing
39
consumption patterns) need to be implemented in parallel.9 Identification of hotspots and the
40
land use types causing high biodiversity damage can help producer nations develop local
41
strategies and control further damage. On the other hand, as the international trade of food and
42
timber products continues to increase,10 informing the consumers regarding the environmental
43
impacts ‘hidden’ behind the imported products and identifying commodities causing high
44
damage in producing nations may induce sustainable consumption patterns and help design
45
demand-side mitigation measures.
46
Life cycle assessment (LCA) is increasingly used to evaluate the cradle to grave environmental
47
impacts of products.11 The main advantage of LCA studies over traditional impact assessments is
48
that it establishes a link between the final commodity (e.g. one kg of tea) and the associated
ACS Paragon Plus Environment
Page 2 of 27
Page 3 of 27
Environmental Science & Technology
49
biodiversity loss.12 However, within LCA, biodiversity impacts due to land use are often poorly
50
quantified.13-15
51
Land use impact assessment within LCA
52
Traditional methods for land use impact assessment within LCA are often based on limited
53
biodiversity datasets from specific world regions (such as Europe) or taxa (mainly vascular
54
plants).16 Only recently, globally applicable and spatially differentiated methods have been made
55
available. de Baan et al.17 were the first to provide local characterization factors (CFs, i.e. the
56
factors indicating species loss caused by unit area of a particular land) for different taxa in
57
different terrestrial biomes. However, local CFs do not inform regarding the contribution of land
58
use towards potential irreversible, global extinction of rare and threatened species due to habitat
59
loss/degradation. Avoiding global species extinctions is important to preserve the evolutionary
60
and genetic diversity of life on Earth. For predicting regional and global species extinctions
61
resulting from habitat loss, species area-relationships (SARs) have commonly been used in
62
LCA.18,19
63
Countryside SAR has recently been shown to perform better than other SAR models in
64
predicting species extinction from habitat loss in a heterogeneous, human modified landscape
65
(i.e. the countryside) and recognizes the fact that species adapted to human-modified habitats
66
also survive in the absence of natural habitat.20 Recently Chaudhary et al.21 provided ecoregion
67
specific regional CFs for six land use types using countryside SAR (e.g. regional species lost per
68
m2 of annual crop) for different taxa. The global CFs were then calculated by weighting the
69
regional CFs with a ‘vulnerability score’ (VS) of that ecoregion.21
70
Global scale land use impact assessment
ACS Paragon Plus Environment
Environmental Science & Technology
71
Many studies have assessed the land use impacts of individual crops or food items from
72
particular countries using different methods. For example, Mattsson et al.22 assessed Swedish
73
rapeseed, Brazilian soybean and Malaysian palm oil, de Baan et al.12 assessed impacts of tea,
74
coffee and tobacco in East Africa, Chaudhary et al.21 assessed sugarcane, wheat, sugarbeet and
75
maize from Brazil, France and USA. However, an explicit assessment of species loss due to all
76
crops from all countries is lacking. Similarly, for impacts due to forest or pasture land use,
77
studies have focused on individual countries, e.g. for Norway23 or Ghana24, while a global
78
analysis is lacking. In order to assess the impacts of different land use types on biodiversity with
79
global coverage, spatially differentiated land use inventory data need to be combined with
80
regionalized characterization factors.25
81
On the inventory side, global maps of agricultural crops and pasture land use have been compiled
82
by Monfreda et al.26 at 5 × 5 arc minute grid level. For forest land use, global maps also at 5 arc
83
minute grid level are available.27,28 The advantage of these maps is that they combine ‘land
84
cover’ data from remote sensing with statistical data on human activities, and thereby provide
85
information on ‘land use’ (e.g. forests for timber extraction) and not only land cover (e.g.
86
coniferous forests - as given by Hansen et al.29). On the impact assessment side, the
87
characterization factors (CFs) provided by Chaudhary et al.21 can be used to assess impacts of
88
different land use classes such as arable or permanent crops on a global scale.
89
Objectives & Scope
90
The overall goal of manuscript is to provide a spatially-explicit analysis of land-use driven
91
biodiversity loss from worldwide agriculture, pasture and forestry, using the recently published
92
impact assessment method of Chaudhary et al.21in combination with high resolution land use
93
maps. From a producer’s perspective, we identify the most damaging land use types causing high
ACS Paragon Plus Environment
Page 4 of 27
Page 5 of 27
Environmental Science & Technology
94
species loss for mammals, birds, amphibians and reptiles globally and also on a regional scale at
95
5 arc minute resolution. We then aggregate the results to country level and in combination with
96
crop and timber yield data, quantify species loss per kg of 160 global crops and per m3 of
97
roundwood production. These results can be applied in combination with trade data to assess
98
biodiversity impacts embodied in traded food, fibre and wood items and to determine
99
biodiversity impacts from a consumer perspective. To illustrate how the newly calculated
100
country-crop impact factors can be used to quantify the impacts imported and exported by
101
different countries, we carry out a case-study on Swiss food consumption.
102
MATERIALS AND METHODS
103
Land use biodiversity impacts at 5 arc minute resolution
104
We imported the global land occupation characterization factors (CFs) per ecoregion for the land
105
use types - annual crops, permanent crops, pasture, extensive forest and intensive forest from
106
Chaudhary et al.21. The global CFs were derived using countryside SAR and weighted with
107
vulnerability score for each of the four vertebrate taxa (mammals, birds, amphibians and reptiles)
108
in 804 terrestrial ecoregions. The global CFs are higher for ecoregions hosting more endemic and
109
threatened species and provide an estimate of permanent (irreversible) species extinction caused
110
by an unit area of land use.21 See supporting information-1 (SI-1) for more details and equations
111
used for calculation of CFs.
112
We combine these CFs with high-resolution (5 x 5 arc minute) land use maps of global
113
agriculture26, pasture26 and forest27,28 land use to calculate biodiversity impacts per grid cell
114
(pixel). It was assumed that value of characterization factors in each pixel, CFp, is the same for
115
all pixels p situated within an ecoregion j (CFj). The biodiversity damage for each taxon g due to
116
land use type i per grid cell (,, ) is given by:
ACS Paragon Plus Environment
Environmental Science & Technology
Page 6 of 27
,, = ,,, × , 117
Equation 1
118
Where , is the area occupied by land use type i in the pixel p (in m2·years). The global CFs
119
( ,,, ) provide biodiversity damage in the units- global species equivalents lost per m2 of
120
land use type i in pixel p (hereafter species eq. lost/m2, see Chaudhary et al.21 for full details).
121
Therefore, equation-1 provides the biodiversity damage (,, ) caused by land use type i in
122
units of species eq. lost·years for each taxonomic group g.21 Additionally, we also assessed the
123
impacts using the taxa-aggregated CFs for each land use type per ecoregion provided by
124
Chaudhary et al.21 that give the biodiversity impacts in the units- potentially disappeared fraction
125
per m2 of land use (PDF/m2), which can be used in LCA studies (see SI-1 for details).21
126
The pasture and agricultural land area inside each pixel was imported from Monfreda et al.26
127
while the area occupied by forest land use per pixel was taken as the average of managed forest
128
area provided by global land use maps ANTHROME28 and LADA27, both at 5 arc minute grid
129
level.
130
For global agricultural land use, the harvested area and yield maps are available for each of 160
131
crops on a 5 min grid level from Monfreda et al.26 Pfister et al.30 adjusted this crop area per pixel
132
for multiple cropping, using length of growing season estimates of each crop in different agro-
133
ecological zones. We used these adjusted values for area occupied by a crop c in each pixel p
134
(denoted as , hereafter). The biodiversity damage (,, ) per taxa g due to crop c is
135
calculated by multiplying the characterization factor of agriculture land with the area occupied
136
by the crop within each pixel p: ,, = ,,, × ,
137
Equation 2
ACS Paragon Plus Environment
Page 7 of 27
Environmental Science & Technology
138
Land use biodiversity impacts per country
139
The total biodiversity damage caused by each land use type in a country is calculated as the sum
140
of biodiversity impacts per pixel ,, calculated in equation 1 above:
,, = ,, = ,,, ∙ , 141
Equation 3
142
Here n is the total number of pixels within the country k. Analogously, the total biodiversity
143
damage caused by each of the 160 crops in each country (,, ) is obtained by summing the
144
impacts per pixel (,, ) calculated in equation 2 above.
145
Country-specific characterization factors
146
As life cycle inventory and global trade databases often report the country but not the ecoregion
147
of production, we also calculated the CFs per country which will be more convenient than those
148
at ecoregion level previously provided by Chaudhary et al.21We calculated the country-specific
149
CFs for the land use types – extensive forestry, intensive forestry and pasture for all countries k
150
and taxa g by dividing the total impact due to these land use types by the total area occupied by
151
the them in country k. ,,,
∑ ,,, ∙ , = ∑ ,
152
Equation 4
153
Here n denotes the number of pixels within the country k, ,,, are CFs on pixel level
154
derived by Chaudhary et al.21 Similarly, we also calculated country-specific CFs for each of 160
155
global crops by dividing their total impact (from equation-2 above) by the total area occupied by
156
them in country k.
157
Biodiversity impacts per m3 of roundwood production per country
ACS Paragon Plus Environment
Environmental Science & Technology
Page 8 of 27
158
We calculate the biodiversity impacts per m3 of roundwood by dividing the country-specific
159
extensive and intensive forestry CFs (species eq. lost per m2, from equation 4) with the
160
corresponding harvesting intensity (m3/ha/year) in the units species eq. lost·years per m3: ,, =
,
!,,
× 10000 × (1 − %, ) ,,, × 10000 × %, + &' !, &',
161
Equation 5
162
Where index ext denotes extensive forestry, pla for planted (intensively managed) forests. The
163
forest plantations often consisting of fast growing timber species were assumed to fall in
164
intensive forestry category as they simplify the forest structure leading to higher biodiversity
165
damage.6 All other types of natural managed forests were considered in extensive forestry
166
category. Wood harvesting intensity per country (&' ) in m3/ha/year was derived for both
167
managed natural forests and planted forests by dividing the total annual roundwood production
168
by their respective area per country using values from FAO forest resource assessment report.31
169
The fraction of a country’s roundwood coming from planted forests (%, ) was obtained from
170
Jürgensen et al.32
171
Biodiversity impacts per kg of crop
172
The biodiversity damage per kg of crop c of country k (species eq. lost·years per kg) is calculated
173
as the total impact due to crop land use in that country (equation 3) divided by the total crop
174
production (in kg): ,,, =
,, ∑ ), ∙ ,
175
Equation 6
ACS Paragon Plus Environment
Page 9 of 27
Environmental Science & Technology
176
Here n is the total pixels within the country k, , is the area of crop c in pixel p (ha) and ), is
177
the yield (kg/ha) for crop c in pixel p, also obtained from Monfreda et al.26
178
Case-study: Swiss food consumption impacts
179
The weight of each food item imported by Switzerland in 2011 was obtained from FAOSTAT
180
trade database.33 For processed food products, we used conversion factors provided by FAO34 to
181
estimate the weight of crop required to produce the item (e.g. 4 kg of oranges required per kg of
182
orange juice).
183
However, the FAO data only reports the last country from which the food item is traded but not
184
the actual country where the item was produced. An example is Belgium as an intermediate
185
trader, which exports tea to a lot of EU countries but does not produce it. We assumed that if a
186
country produces the exported crop then the land use occurred there. However if it does not
187
produce the product (e.g. tea from Belgium), the imported quantity was allocated to the biggest
188
producers of this product worldwide in the same proportion as their global export share (data
189
from FAOSTAT).33
190
More sophisticated approaches exist to trace the actual country of origin such as MRIO databases
191
that utilize monetary transaction and economic data (e.g. Eora9, EXIOBASE35, or Kastner et
192
al.36). However, one of the shortcomings of existing MRIO tables is the grouping of multiple
193
crops (e.g. staple crops) or regions (e.g. South-east Asia) into a common category. As the crops
194
of one category might differ significantly in terms of their environmental impacts or the
195
countries within one big region might differ in terms of impacts per unit land use, such grouping
196
might lead to under/over estimation of their impacts. We used an alternative approach and utilize
197
the physical supply chain data available from FAOSTAT33 to allocate the imported food item to
198
correct for intermediate trading countries. We only considered the food items directly derived
ACS Paragon Plus Environment
Environmental Science & Technology
Page 10 of 27
199
from crops and did not consider the imported livestock products as this was beyond the scope of
200
this study.
201
Once the food item was allocated to countries of origin, the biodiversity damage associated with
202
its import was calculated by multiplying its mass (kg) with newly calculated per kg impacts for
203
that combination of crop and country (equation 6). The imported impacts were also compared
204
with impacts occurring due to net agriculture land use within Switzerland for Swiss consumption
205
(i.e. total agricultural land use minus land use for exports).
206
RESULTS
207
Biodiversity damage due to crop, pasture and forest land use
208
Figure 1(a) shows the total global mammal species loss per pixel due to agriculture, pasture and
209
forestry land use combined. Geographic hotspots of land-use driven mammal species loss are
210
located in Indonesia, Madagascar, Philippines, Brazil, Papua New Guinea, China, India, DR
211
Congo and Mexico. Figures 1(b) and 1(c) show the zoomed in maps for Brazil and Indonesia
212
respectively to help identify hotspots of mammal species loss within these countries at a 5 arc
213
minute resolution. Managed forest is the main driver of mammal species loss in Indonesia,
214
whereas pasture is most damaging land use type in Brazil. Agriculture land use was identified as
215
main driver in Philippines India, and Sri Lanka. See supporting information-1 for all maps
216
showing impacts due to each land use type per taxa in each pixel.
217
ACS Paragon Plus Environment
Page 11 of 27
Environmental Science & Technology
218
219 220
Figure 1. a). Total mammal impacts (global species eq. lost·years) at 5 arc minute resolution due
221
to current anthropogenic land occupation. Impacts per pixel due to agriculture, pasture and forest
222
land use were calculated separately using equation 1 and then summed, b). Zoomed in map of
223
Brazil showing high damage areas lie mostly along the east coast and in the Andes, c). Zoomed
224
in map of Indonesia showing global hotspots of mammal species loss (dark brown pixels). See
225
supporting information-1 for all maps showing impacts due to each land use type per taxa.
226
The impact due to total agriculture land use per country for all taxa was calculated using
227
equation 3. Table S1 of supporting information-2 (SI-2) shows the detailed results of biodiversity
228
loss due to each land use type per country and taxa. Here again, although countries with large
ACS Paragon Plus Environment
Environmental Science & Technology
Page 12 of 27
229
agriculture area were expected to incur high impacts, smaller countries such as Sri Lanka,
230
Malaysia, Philippines, all featured in top 10 countries suffering high biodiversity loss due to high
231
species richness and vulnerability scores for ecoregions within these countries (Table S1, SI-2).
232
Table S1 further shows that for pasture land use, highest mammal species loss was found to
233
occur in Madagascar, China, Brazil, Australia and Colombia causing ~45% of the total mammal
234
species loss due to global pasture land use. Together these five countries account for 28% of
235
global pasture area. For birds, in addition to the above countries, New Zealand also showed high
236
species loss. For amphibians, Colombia, Brazil, Ecuador, Peru and Venezuela were identified as
237
hotspots of species loss due to pasture land use.
238
Regarding the managed forests, Russia, Brazil, Canada, USA and China are the top five
239
countries in terms of area. However they do not feature in the top 5 countries with highest
240
species loss. For instance, despite the fact that Russia has highest amount of forest land use, it
241
ranks 21, 87, 101 and 73rd on the mammal, birds, amphibians and reptile species lost
242
respectively. This is due to the fact that these countries have low species richness to start with
243
and the low vulnerability score of taxa hosted by them, thereby having low characterization
244
factors (equation 1).21Indonesia, Papua New Guinea, Madagascar, DR Congo, Brazil and
245
Malaysia suffer the highest species loss due to anthropogenic forest land use (Table S1, SI-2).
246
Table S2 in SI-2 shows the total biodiversity loss associated with each of the 160 crops. Rice,
247
maize and wheat were expected to contribute most to biodiversity loss because together these
248
three crops occupy ~40% of global agricultural land. However, crops such as coffee, rubber, tea,
249
palm oil and soybean have a disproportionally high biodiversity footprint considering the fact
250
that they only occupy less than 10% of global agricultural land. This is because these crops
ACS Paragon Plus Environment
Page 13 of 27
Environmental Science & Technology
251
occupy biodiversity-rich regions hosting high number of endemic and threatened species (i.e.
252
with high CFs, equation 1).
253
Table S3 in SI-2 throws further insight into the biodiversity burden of global agricultural land
254
use by listing the impacts for each of the 7,666 crop × country combinations. While wheat from
255
the USA, Canada, and Russia occupy large agricultural areas on earth, their contribution to
256
global land-use related biodiversity loss is meagre. Land use for rice, coconut, rubber and palm
257
oil production in South-east Asian countries Indonesia, Malaysia and Philippines were found to
258
contribute the most to biodiversity loss among all combinations of crop and country. For
259
amphibians and reptiles, maize production in Mexico and tea in Sri Lanka also contributed
260
significantly to species loss. For each taxa, just the top 30 combinations of crop × country are
261
responsible for ~50% of global agriculture impact.
262
Country-specific characterization factors (CFs)
263
The calculated CFs for pasture, extensive and intensively managed forest land use for each
264
country (from equation 4) are listed in SI-2, Table S4. Pasture land use had in general higher
265
CFs, reflecting the relatively low affinity of species to them as compared to natural managed
266
forests but were close to intensively managed forest. All three CFs were within one order of
267
magnitude for most countries. The CFs were in general higher for tropical countries and small,
268
island countries (such as in Caribbean); lower for countries in temperate and boreal regions and
269
varied over 4 orders of magnitude across 250 countries. For agricultural land use, CFs were
270
calculated for 7,666 crop and country combinations and are shown in SI-2, Table S5.
271
Impacts per m3 of roundwood production
272
Figure 2 and Table S6 in SI-2 show that for an equal amount of roundwood production, the
273
biodiversity impacts range over 4 orders of magnitude across different countries. Island and
ACS Paragon Plus Environment
Environmental Science & Technology
Page 14 of 27
274
tropical countries such as Madagascar, Comoros, Sao Tome and Dominican Republic suffer
275
highest species lost per m3 of roundwood produced. However most of these countries have little
276
forest area and thus low wood production (Table S6, SI-2). Countries producing majority of
277
global roundwood such as the US, Canada, Russia, Brazil -rank very low in terms of impact per
278
m3. The impacts differ because of interplay of factors such as harvesting intensity, CFs and forest
279
management regime prevalent in different countries. For example, the forestry CFs for mammal
280
species loss (equation 4) for Indonesia is around 500 times higher than that for Germany (both
281
for plantations and natural managed forests, Table S6). Further, the average wood yield from
282
forests in Germany is more than four times higher than in Indonesia. Consequently, mammal
283
species lost per m3 of roundwood is ~2000 times higher in Indonesia (4.7 ×10-7) than in Germany
284
(2.5 ×10-10). In general, countries with low yields per hectare along with high biodiversity and
285
presence of endemic and threatened species (high global CFs) performed the worst in terms of
286
impacts per m3.
287 288
Figure 2. Total mammal impacts per m3 of roundwood produced in 139 countries (unit- global
289
species eq. lost·years/m3) calculated using equation 5 above. See Table S6 in supporting
ACS Paragon Plus Environment
Page 15 of 27
Environmental Science & Technology
290
information-2 for impacts on other taxa per country. NA denotes the countries with negligible
291
roundwood production.
292
Biodiversity impacts per kg of crop
293
Table S5 in SI-2 shows the biodiversity impacts per kg of crop in each country. For all four taxa,
294
the impacts per kg for a particular crop ranged over five orders of magnitude (~10-11 to 10-16
295
species eq. lost·years/kg) depending on the country. For example, 1 kg of wheat from Brazil
296
results in 1.05 x 10-11 mammal species eq. lost·years as compared to 5.94 x 10-13 in Canada
297
(Table S5). The impacts per kg were generally higher for amphibians and reptiles followed by
298
mammals and least for birds but were mostly within an order of magnitude.
299
Case-study: Swiss food import impacts
300
Table 1 shows the top 10 crop × country combinations causing highest mammal impacts along
301
with their net mass and area imported (i.e. after subtracting the exports) into Switzerland for the
302
year 2011. Cocoa, coffee and soybean imports resulted in highest mammal species loss in
303
countries of origin.
304
Table 1. Top 10 crop items imported into Switzerland for the year 2011 with highest embodied
305
mammal impacts (in units – species eq. lost·years) along with their country of origin. Mass of
306
crop items (in tons) and corresponding area embodied (in ha) is also shown. Taxa-aggregated
307
impacts are in the units - potentially disappeared fraction·years (PDF·years). See Table S7 in
308
supporting information-2 for full list of imported crop items and their embodied impacts. Crop
cocoa
From
Ecuador
Mass
Land
Mammal
Birds
Amphibians
Reptiles
Aggregated
imported
imported
(Species eq.
(Species eq.
(Species eq.
(Species eq.
(PDF·years)
(Tons)
(ha)
lost·years)
lost·years)
lost·years)
lost·years)
4
1.1×10
5.1×10
4
9.3×10
-3
5.7×10
-3
ACS Paragon Plus Environment
-3
74×10
4.6×10
-3
7.2×10
-6
Environmental Science & Technology
4
1.2×10
5
6.8E×10
3
6.9×10
3
2.7×10
4
4.3×10
4
2.50×10
3
6.0×10
3
2.50×10
4
2.4×10
4
2.30×10
3
2.4×10
3
1.90×10
3
9.2×10
3
1.70×10
4
2.2×10
4
1.40×10
5
3.2×10
4
1.30×10
cocoa
Ghana
3.5×10
cocoa
Cameroon
2.4×10
sunflower
Tanzania
2.6×10
coffee
India
5.3×10
coffee
Brazil
1.9×10
coconut
Philippines
9.6×10
coffee
Colombia
8.4×10
cocoa
Ivory coast
1.5×10
soybean
Brazil
2.5×10
-3
-3
1.1×10
-3
Page 16 of 27
5.6×10
-3
-3
2×10
-4
4.3×10
-4
1.40×10
-4
7.30×10
-4
1.50×10
-4
1.50×10
-4
1.30×10
-4
2.70×10
0.33×10
-3
7.90×10
-3
4.10×10
-3
7.60×10
-3
5.90×10
-3
8.40×10
-3
2.20×10
-3
4.80×10
-3
-3
3.2×10
-3
1.7×10
-6
0.2×10
-3
4.8×10
-7
-4
7.1×10
-7
-2
3.0×10
-6
-4
8.4×10
-7
-3
7.3×10
-7
-4
1.4×10
-6
-4
3.5×10
-7
-4
3.8×10
-7
5.30×10
-2
1.10×10
-3
2.40×10
-3
2.40×10
-2
8.90×10
-3
6.10×10
-3
1.80×10
309 310
Total Swiss crop imports resulted in loss of 0.0556 mammals, 0.019 birds, 0.189 amphibians and
311
0.046 reptile species eq. lost·years (Table S7, SI-2). The total imported impacts are 20-300 times
312
higher than those due to domestic crop land use for Swiss consumption in Switzerland for
313
different taxa considered (Table S7). This is much higher in contrast to the ratio of total land
314
embodied in imported products and net domestic agricultural land used for consumption (= 3.5).
315
This suggests embodied land is not a good proxy for embodied biodiversity impacts. Overall
316
>95% of biodiversity impacts of Swiss food consumption occur outside its border.
317
DISCUSSION
318
The study is first to present the spatially-explicit biodiversity impacts due to global agriculture,
319
pasture and forest land use at 5 arc minute grid cell level (Figure 1, Figure S1 to S3 in supporting
320
information-1) and aggregated to country level (Table S1, SI-2). As land use decisions are
321
mostly made at national and sub-national level, country-specific impacts and their distribution
ACS Paragon Plus Environment
Page 17 of 27
Environmental Science & Technology
322
within the nation for pasture, forestry land and specific crops can be used by producer nations to
323
identify geographical hotspots and most damaging land use types. This in turn can induce the
324
changes in production methods and other measures to control further damage (e.g. by shifting
325
from high to low intensity agriculture or forestry or by protecting ecologically valuable habitats).
326
On the consumption side, the study is first to provide ready to use factors quantifying
327
biodiversity impacts per m3 of roundwood (Table S5, SI-2) and per kg of crop (Table S6, SI-2)
328
from each country. The Swiss case study demonstrated how these factors can be linked with
329
trade data to identify commodities causing high biodiversity loss (e.g. imports of cocoa from
330
Ecuador, coffee from India or soybean from Brazil). Reducing the volume of imported trade
331
commodities that cause high species loss and raising consumers’ awareness about the
332
biodiversity damage caused by the products they buy can go a long way in reducing the existing
333
rate of biodiversity loss.
334
Overall the study marks a significant improvement over previous land use impact assessment
335
methods within LCA that provide characterization factors (CFs) at an ecoregion level for broad
336
land use categories.19,21 Combining the high-resolution yield and area maps of global crops26
337
with the ecoregion specific CFs for annual and permanent crops from Chaudhary et al.21, enabled
338
us to calculate the impacts and CFs for each of the 160 individual crops from 250 different
339
countries (Table S2, S3 in SI-2). Within LCA inventory databases, the land use flow information
340
is often available at country level rather than ecoregion, therefore the country-specific CFs are
341
more useful and can be directly used for impact assessment (Table S4, SI-2).
342
High biodiversity impacts associated with certain land use types in particular regions can be
343
traced back to high CFs for these regions (see all maps in SI-1). To calculate biodiversity
344
damage, we used the CFs from Chaudhary et al.21which were calculated by combining
ACS Paragon Plus Environment
Environmental Science & Technology
Page 18 of 27
345
countryside species area relationship (SAR) and taxa-specific vulnerability score (VS). The SAR
346
model includes aspects of ecosystem vulnerability (i.e. how much an ecosystem is already
347
affected by land use pressures), and the VS addresses the vulnerability of species inhabiting a
348
particular region to future land use pressures. The VS give particular weight to regions hosting
349
range-restricted and threatened species that are near extinction and whose loss can result in
350
permanent loss of unique evolutionary history associated with them.21 The CFs are higher for
351
ecoregions hosting biodiversity that is unique and endemic and is found nowhere else, and they
352
are lower for the ecoregions that contain only tiny fractions of species’ range (mostly range
353
edges). As the VS also incorporates IUCN assigned species threat level, it means that for two
354
regions hosting equal endemic richness, the CFs will be higher for regions containing more
355
threatened species than those containing non-threatened species.21 The CFs therefore help flag
356
regions with high land use impacts on species requiring immediate conservation attention.
357
Tropical and island countries were found to suffer the highest biodiversity damage due to land
358
use. For example, Ecuador ranks 61st globally in terms of total forest land use area. However, it
359
ranks 9th on the country suffering highest amphibian species loss due to forest land use (Table
360
S1, SI-2). This is because it is home to 336 amphibian endemic species that are not found
361
anywhere else in the world and thus any land use poses high extinction risk to them. Our results
362
show that for the biodiversity impacts, the region where the land use takes place is more
363
important than the total area occupied.
364
Regarding the calculated impacts per m3 of roundwood, the results showed that countries with
365
high forestry CFs and low wood harvesting yields fare the worst (Table S6, SI-2). Interestingly,
366
we found that some sub-tropical, species rich countries hosting many endemic and threatened
367
species (i.e. with high CF) performed very well in terms of biodiversity loss per m3 of
ACS Paragon Plus Environment
Page 19 of 27
Environmental Science & Technology
368
roundwood production. For example, in India, the majority of roundwood is sourced from
369
planted forests (94%) which have 50 times higher yield (3.8 m3/ha/year) than corresponding
370
natural managed forests (0.07 m3/ha/year), leading to low impacts per m3. The case-study results
371
showed that food imports to Switzerland are responsible for ~20-300 times the biodiversity loss
372
occurring domestically due to its total agricultural land use (Table S7, SI-2). This ratio actually
373
might be even higher as we did not include finished livestock products imported from abroad and
374
just considered crop products in our analysis. Overall the results corroborate with unequal-
375
exchange theory37 and previous studies who also found that food consumption in industrialized
376
nations drives biodiversity loss in tropical developing countries through international trade.9
377
Limitations and data gaps
378
The input data used to calculate the characterization factors through SAR model as well as the
379
global crop, pasture and forestry land use maps used come with uncertainties and limitations that
380
should be considered when interpreting the results. For example, the species affinity estimates
381
(ℎ,,+ , equation S1 of SI-1) fed into the SAR model were derived from empirical data from
382
literature review (see supporting information-1).21 As more plot-scale local biodiversity
383
monitoring data comes along (e.g. PREDICTS database)38, these estimates can be updated and
384
accuracy of results can be improved. Further, the yield and harvested area maps used to derive
385
impacts per kg (equation 6) were based on the year 2000.26 Yields and area of some crops might
386
have increased (or decreased) over last decade in different world regions.39 Thus we might have
387
over or under estimated some of the impacts but currently these maps are the best available
388
source for high resolution inventory of global crop land use.
389
We used species richness loss as an indicator of land use driven biodiversity loss. However, this
390
indicator masks the biodiversity damage due to changes in species composition that can take
ACS Paragon Plus Environment
Environmental Science & Technology
Page 20 of 27
391
place following disturbances. Future studies should explore the alternative measures of
392
biodiversity loss such as beta diversity index 40 or mean species abundance41 which might reveal
393
alternate hot-spots of land use impacts. Another limitation of the analysis is that we only
394
considered four taxa and owing to lack of data, impacts on other species groups such as
395
arthropods, bacteria, fungi that make up majority of global terrestrial species richness could not
396
be calculated. These species groups perform several important ecological functions and the data
397
gaps should be filled through future research efforts.
398
For roundwood production, we took average yield of plantation forests and managed natural
399
forest per country. However, biodiversity damage and yields differ greatly depending upon the
400
harvesting techniques used in the region. In this study all managed natural forests were grouped
401
into broad category of ‘extensive forestry.’ In reality, low yields observed in some of the
402
countries might be because of low intensity harvesting techniques rather than technological
403
limitations and therefore our calculated impacts might be overestimated for these countries.
404
Many studies have shown that forests managed using low intensity harvesting techniques such as
405
reduced impact logging42 or retention harvesting43 result in negligible species loss as compared
406
to conventional selective logging or clear-cut regimes. However, spatially-explicit maps
407
depicting forest management regimes and their harvesting intensity are currently unavailable on
408
a global scale.
409
Finally, any application of the methods and results presented should be accompanied by an
410
analysis of other impact categories. In this paper, we calculate biodiversity impacts due to land
411
use which is the main global driver of biodiversity loss. However, methods compatible with our
412
approach are still missing and more effort is needed to harmonize the methods and metrics so
413
that the biodiversity impacts from other stressors can be jointly assessed. We used global
ACS Paragon Plus Environment
Page 21 of 27
Environmental Science & Technology
414
(permanent) species extinctions as a metric for biodiversity loss, but other impact categories
415
within LCA typically quantify impacts as local or regional species loss.13 We assess the impacts
416
for four vertebrate taxa while the LCA methods for other stressors such as acidification44
417
consider impacts on vascular plants, while eutrophication impacts are usually assessed on fish
418
species45 due to data availability restrictions. To allow for a comparison of biodiversity impacts
419
from different impact categories, consistent approaches for harmonizing the metrics and
420
aggregating the impacts across different taxa are needed.13,46 Efforts are underway in this
421
direction as Verones et al.46 proposed approaches for harmonized assessment of biodiversity loss
422
from land and water use, but future studies should aim to include additional stressors. Similarly,
423
other impacts of land use such as soil erosion47 or appropriation of net primary productivity48
424
must also be taken into account in environmental decision making. For the Swiss case-study,
425
including these impacts will further increase the imported biodiversity impacts.
426
Outlook
427
The overall results are useful for producer nations and can be a first step for further in-depth
428
investigations aimed at sustainable land use management on a global and regional level, as they
429
reveal current geographical hotspots and the drivers of biodiversity loss. Results are also relevant
430
to consumers, global retailers and food processing companies who are increasingly interested in
431
the environmental product information. By quantifying biodiversity impacts per kg of crop from
432
different locations, the results can help improve the life-cycle based product information, which
433
currently often only address carbon emission impacts (e.g. UK carbon reduction label).9 The
434
calculated country, crop and taxa–specific impacts can also be used as a basis for compensatory
435
mechanisms or offsetting programs. For example, food products with high biodiversity impacts
436
could be made more expensive and the premium can go towards financing ecosystem service or
ACS Paragon Plus Environment
Environmental Science & Technology
Page 22 of 27
437
biodiversity conservation programs. Such biodiversity compensation programs could
438
complement already existent efforts to reduce and compensate for greenhouse gas emissions.9 To
439
ensure progress toward reducing the rate of global biodiversity loss, policies aimed at all the
440
actors in the supply chain (be it exporters, traders or consumers) would have to be implemented
441
in parallel. 9
442
The calculated impacts per m3 of roundwood production demonstrated how species rich regions
443
with currently high forest land use impacts can potentially benefit by producing wood from high-
444
yield planted forests. Planted forests are less biodiversity-benign than extensively managed
445
natural forests6, but, if grown on previously degraded lands and inducing no land-use change
446
from natural ecosystems, they can serve dual purpose of timber production and alleviating the
447
pressure on the remaining natural forests which in turn can spared for biodiversity conservation.
448
While several trade databases9,33,35,49 documenting the flow of commodities between countries
449
exist, the factors giving biodiversity impacts per unit commodity have not been available. Our
450
estimates of biodiversity impacts per kg of crop or per m3 of roundwood fill these gaps. The
451
Swiss case study showed how the results can be combined with trade data to identify the location
452
and severity of environmental impacts caused by imported goods in a country. Future studies
453
should expand this analysis to quantify biodiversity impacts embodied in global trade of food
454
and forestry products.
455
Supporting Information
456
The supporting information-1 contains additional methods and maps. Supporting information-2
457
excel file contains Tables S1 to S7. This information is available free of charge via the Internet at
458
http://pubs.acs.org.
459
Corresponding Author
ACS Paragon Plus Environment
Page 23 of 27
Environmental Science & Technology
460
* E-mail:
[email protected]; phone: +41-44-633-02-54; fax: +41-44-633-10-61
461
ACKNOWLEDGEMENTS
462
This research was funded within the National Research Programme “Resource Wood” (NRP 66)
463
by the Swiss National Science Foundation (project no. 136612).
464
REFERENCES
465
1
Ceballos, G.; Ehrlich, P. R.; Barnosky, A. D.; García, A.; Pringle, R. M.; Palmer, T. M.
466
Accelerated
467
extinction. Science advances, 2015, 1(5), e1400253.
468
2
modern
human–induced
species
losses:
Entering
the
sixth
mass
Millennnium Ecosystem Assessment Ecosystems and human wellbeing: biodiversity synthesis; Washington, DC, 2005.
469 470
3
Foley, J.A., et al. Global consequences of land use. Science 2005, 309,570–574.
471
4
Sanderson, E.W., Jaiteh, M., Levy, M.A., Redford, K.H., Wannebo, A.V., & Woolmer, G. The human footprint and the last of the wild. Bioscience 2002, 52, 891–904.
472 473
5
Food and Agriculture Organization, Rome, 2012.
474 475
Alexandratos, N.; Bruinsma, J. World Agriculture Towards 2030/2050: The 2012 Revision,
6
Gibson, L.; Lee, T. M.; Koh, L. P.; Brook, B. W.; Gardner, T. A.; Barlow, J.; ... Sodhi, N.
476
S. Primary forests are irreplaceable for sustaining tropical biodiversity. Nature 2011,
477
478(7369), 378-381.
478
7
Tittensor, D. P.; Walpole, M.; Hill, S. L.; Boyce, D. G.; Britten, G. L.; Burgess, N. D.; ...
479
Visconti, P. A mid-term analysis of progress toward international biodiversity targets.
480
Science 2014, 346(6206), 241-244.
481
8
hotspots for conservation priorities. Nature, 2000, 403(6772), 853-858.
482 483
9
Lenzen, M.; Moran, D.; Kanemoto, K.; Foran, B.; Lobefaro, L.; Geschke, A. International trade drives biodiversity threats in developing nations. Nature 2012 486(7401), 109-112.
484 485
Myers, N.; Mittermeier, R. A.; Mittermeier, C. G.; Da Fonseca, G. A.; Kent, J. Biodiversity
10
Erb, K. H.; Krausmann, F.; Lucht, W.; Haberl, H. Embodied HANPP: Mapping the spatial
486
disconnect between global biomass production and consumption. Ecol. Econ. 2009, 69(2),
487
328-334.
ACS Paragon Plus Environment
Environmental Science & Technology
488
11
cycle assessment. Science 2014, 344(6188), 1109-1113.
489 490
Hellweg, S.; i Canals, L. M. Emerging approaches, challenges and opportunities in life
12
de Baan, L.; Curran, M.; Rondinini, C.; Visconti, P.; Hellweg, S.; Koellner, T. High-
491
resolution assessment of land use impacts on biodiversity in life cycle assessment using
492
species habitat suitability models. Environ. Sci. Technol., 2015, 49(4), 2237-2244.
493
13
Curran, M.; de Baan, L.; de Schryver, A.M.; van Zelm, R.; Hellweg, S.; Koellner, T.;
494
Sonnemann, G.; Huijbregts, M.A.J. Toward meaningful endpoints of biodiversity in Life
495
Cycle Assessment. Environ. Sci. Technol., 2011, 45 (1), 70–79.
496
14
Koellner, T., de Baan, L., Beck, T., Brandão, M., Civit, B., Margni, M., ... & Müller-Wenk,
497
R.. UNEP-SETAC guideline on global land use impact assessment on biodiversity and
498
ecosystem services in LCA. Int. J. Life Cycle Assess. 2013, 18 (6), 1188−1202.
499
15
with Life Cycle Assessment: are we there yet?. Glob. Chang. Biol. 2015, 21(1), 32-47.
500 501
Souza, D. M.; Teixeira, R. F.; Ostermann, O. P. Assessing biodiversity loss due to land use
16
Goedkoop, M.; Heijungs, R.; Huijbregts, M.; De Schryver, A.; Struijs, J.; van Zelm, R.
502
ReCiPe Main Report, Part 1: Characterization, 1st ed.; Ministerie van Volkshuisvesting,
503
Ruimtelijke Ordening en Milieubeheer (VROM): The Hague, 2009; http://www.pre-
504
sustainability.com/download/misc/ReCiPe_main_report_final_27-02 2009_web.pdf.
505
17
approach. Int. J. Life Cycle Assess. 2013a, 18 (6), 1216−1230.
506 507
de Baan, L.; Alkemade, R.; Koellner, T. Land use impacts on biodiversity in LCA: a global
18
Olson, D.; Dinerstein, E.; Wikramanayake, E.; Burgess, N.; Powell, G.; Underwood, E.;
508
D’Amico, J.; Itoua, I.; Strand, H.; Morrison, J.; Loucks, C.; Allnutt, T.; Ricketts, T.; Kura,
509
Y.; Lamoreux, J.; Wettengel, W.; Hedao, P.; Kassem, K. Terrestrial ecoregions of the
510
worlds: A new map of life on Earth. BioScience 2001, 51 (11), 933− 938.
511
19
de Baan, L.; Mutel, C. L.; Curran, M.; Hellweg, S.; Koellner, T. Land use in life cycle
512
assessment: global characterization factors based on regional and global potential species
513
extinction. Environ. Sci. Technol. 2013b, 47 (16), 9281-9290.
514
20
Pereira, H. M.; Ziv, G.; Miranda, M. Countryside Species–Area Relationship as a Valid
515
Alternative to the Matrix‐Calibrated Species–Area Model. Conserv Biol. 2014, 28 (3), 874-
516
876.
ACS Paragon Plus Environment
Page 24 of 27
Page 25 of 27
517
Environmental Science & Technology
21
Chaudhary, A.; Verones, F.; de Baan, L.; Hellweg, S. Quantifying Land Use Impacts on
518
Biodiversity: Combining Species–Area Models and Vulnerability Indicators. Environ. Sci.
519
Technol., 2015, 49(16), 9987-9995.
520
22
case studies of three vegetable oil crops. J. Cleaner Prod. 2000, 8(4), 283-292.
521 522
23
24
Eshun, J. F., Potting, J., Leemans, R. LCA of the timber sector in Ghana: preliminary life cycle impact assessment (LCIA). Int. J. Life Cycle Assess. 2011, 16(7), 625-638.
525 526
Michelsen, O. Assessment of land use impact on biodiversity. Int. J. Life Cycle Assess. 2008, 13(1), 22-31.
523 524
Mattsson, B.; Cederberg, C.; Blix, L. Agricultural land use in life cycle assessment (LCA):
25
Mutel, C. L.; Pfister, S.; Hellweg, S. GIS-based regionalized life cycle assessment: how
527
big is small enough? Methodology and case study of electricity generation. Environ. Sci.
528
Technol. 2011, 46(2), 1096-1103.
529
26
Monfreda, C., Ramankutty, N., Foley, J. A. Farming the planet: 2. Geographic distribution
530
of crop areas, yields, physiological types, and net primary production in the year 2000.
531
Glob. Biogeochem. Cycles, 2008, 22(1), GB1022.
532
27
LADA, Mapping Land use Systems at global and regional scales for Land Degradataion
533
Assessment Analysis. Nachtergaele, F., Petri, M. In LADA Technical Report n.8, version
534
1.1; UNEP/GEF; 2008.
535
28
Frontiers Ecol. Environ. 2008, 6 (8), 439−447.
536 537
Ellis, E.; Ramankutty, N. Putting people in the map: anthropogenic biomes of the world.
29
Hansen, M. C., Potapov, P. V., Moore, R., Hancher, M., Turubanova, S. A., Tyukavina, A.,
538
... & Townshend, J. R. G. High-resolution global maps of 21st-century forest cover
539
change. Science 2013, 342(6160), 850-853.
540
30
Pfister, S., Bayer, P., Koehler, A., & Hellweg, S. Environmental impacts of water use in
541
global crop production: hotspots and trade-offs with land use. Environ. Sci. Technol. 2011,
542
45(13), 5761-5768.
543
31
assessment 2015: Main report. Food and Agriculture Organization of the United Nations.
544 545
Food and Agriculture Organization of the United Nations. Global forest resources
32
Jürgensen, C., Kollert, W. and Lebedys, A. Assessment of industrial roundwood
546
production from planted forests. FAO Planted Forests and Trees Working Paper FP/48/E.
547
Rome. 2014.
ACS Paragon Plus Environment
Environmental Science & Technology
548
33
Page 26 of 27
FAOSTAT, 2015. FAO Statistical Databases: Agriculture, Fisheries, Forestry, Nutrition.
549
Statistics Division, Food and Agriculture Organization of the United Nations, Rome
550
(Available at http://faostat.fao.org/).
551
34
Organization of the United Nations, Rome. 2003.
552 553
35
36
Kastner, T., Kastner, M., & Nonhebel, S. Tracing distant environmental impacts of agricultural products from a consumer perspective. Ecol. Econ. 2011, 70(6), 1032-1040.
556 557
Wood, R.., et al. Global sustainability accounting-developing EXIOBASE for multiregional footprint analysis. Sustainability 2015, 7 (1), pp. 138-163.
554 555
FAO. Technical Conversion Factors for Agricultural Commodities. Food and Agriculture
37
Shandra, J. M., Leckband, C., McKinney, L. A., & London, B. Ecologically Unequal
558
Exchange, World Polity, and Biodiversity Loss A Cross-National Analysis of Threatened
559
Mammals. Int. J. Comp. Sociol. 2009, 50(3-4), 285–310.
560
38
Hudson, L. N., Newbold, T., Contu, S., Hill, S. L., Lysenko, I., De Palma, A., ... &
561
Choimes, A. The PREDICTS database: a global database of how local terrestrial
562
biodiversity responds to human impacts. Ecol. Evol. 2014, 4 (24), 4701-4735.
563
39
Mueller, N. D.; Gerber, J. S.; Johnston, M.; Ray, D. K.; Ramankutty, N.; Foley, J. A.
564
Closing yield gaps through nutrient and water management. Nature, 2012, 490(7419), 254-
565
257.
566
40
Fattorini, S.; R.L.H. Dennis.; Cook, L.M. Conserving organisms over large regions
567
requires multi-taxa indicators: one taxon’s diversity-vacant area is another taxon’s
568
diversity zone. Biological Conservation, 2011, 144, 1690-1701.
569
41
Alkemade, R.; van Oorschot, M.; Miles, L.; Nellemann, C.; Bakkenes, M.; ten Brink, B.
570
GLOBIO3: A framework to investigate options for reducing global terrestrial biodiversity
571
loss. Ecosystems 2009, 12 (3), 374−390.
572
42
opportunities. Forest Ecol. Manag. 2008, 256, 1427–1433.
573 574
Putz, F. E.; Sist, P.; Fredericksen, T.; Dykstra, D. Reduced-impact logging: Challenges and
43
Fedrowitz, K., Koricheva, J., Baker, S. C., Lindenmayer, D. B., Palik, B., Rosenvald, R., ...
575
& Gustafsson, L. Can retention forestry help conserve biodiversity? A meta‐analysis. J.
576
Appl. Ecol. 2014, 51(6), 1669-1679.
ACS Paragon Plus Environment
Page 27 of 27
577
Environmental Science & Technology
44
Azevedo, L. B.; van Zelm, R.; Hendriks, A. J.; Bobbink, R.; Huijbregts, M. A. J. Global
578
assessment of the effects of terrestrial acidification on plant species richness. Environ.
579
Pollut. 2013a, 174, 10-15.
580
45
Azevedo, L. B.; Henderson, A. D. ; van Zelm, R. ; Jolliet, O.; Huijbregts, M. A. J.
581
"Assessing the Importance of Spatial Variability versus Model Choices in Life Cycle
582
Impact Assessment: The Case of Freshwater Eutrophication in Europe." Environ. Sci.
583
Technol. 2013b, 47(23), 13565-13570.
584
46
Verones, F. ; Huijbregts, M. A. ; Chaudhary, A. ; de Baan, L. ; Koellner, T.; Hellweg, S.
585
Harmonizing the assessment of biodiversity effects from land and water use within
586
LCA. Environ. Sci. Technol. 2015, 49(6), 3584-3592.
587
47
Núñez, M. ; Antón, A. ; Muñoz, P.; Rieradevall, J. Inclusion of soil erosion impacts in life
588
cycle assessment on a global scale: application to energy crops in Spain. Int. J. Life Cycle
589
Assess. 2013, 18(4), 755-767.
590
48
Haberl, H. ; Erb, K. H. ; Krausmann, F. ; Gaube, V., Bondeau, A., Plutzar, C., ... &
591
Fischer-Kowalski, M. Quantifying and mapping the human appropriation of net primary
592
production in earth's terrestrial ecosystems. Proc. Natl. Acad. Sci. U.S.A. 2007, 104(31),
593
12942-12947.
594 595
49
Moran, D.; Petersone, M.; Verones, F. On the suitability of input–output analysis for calculating product-specific biodiversity footprints. Ecol. Indic. 2016, 60, 192-201.
596 597
TOC art:
598 599
ACS Paragon Plus Environment