1
A GEOGRAPHICALLY EXPLICIT APPROACH FOR PRICE
DETERMINATION OF FOREST FEEDSTOCK UNDER DIFFERENT
NEXT-GENERATION BIOFUEL PRODUCTION SCENARIOS – THE
CASE OF SWEDEN
Ismail Ouraich, Luleå University of Technology, +46920493519, [email protected]
Robert Lundmark, Luleå University of Technology, +46920492346, [email protected]
Abstract The objective of this paper is to develop a geographically-explicit model of price determination of forest biomass
for Sweden. The model uses a simple demand-supply framework to determine new equilibrium prices at the
gridcell level. Data on forest biomass supply and harvest cost is available for Sweden for 334 0.5x0.5 degree
gridcells. We use the data to construct regional supply curves, and investigate the impacts on equilibrium prices
of increased demand for forest biomass for bioenergy production under a number of scenarios generated via the
BeWhere-Sweden model. We run simulations for two energy production scenarios from forest biomass: 10 TWh
and 20 TWh. The scenarios represent biofuel targets aimed at in Sweden for the decoupling of the transportation
sector from fossil fuels by 2030. Overall, the results indicate that the price of forest resources would only
moderately increase. The average price increase does not exceed one percent. The simulation results show that
the spatial distribution of price changes does not track spatial distribution of demand pressure, which holds for
the 10 TWh and 20 TWh scenarios. The largest impacts are observed in the southern and middle parts of
Sweden, despite large endowments of forest, owing to high demand clustering.
Introduction In recent decades, the paradigm of transitioning from a fossil fuel-based economic system to a sustainable bio-
based one has gained much traction in policy circles, motivated by a number of interlinked issues such as
reduction of greenhouse gas emissions, energy security and independence, climate change, etc. To this end, a
number of countries have devoted substantial resources in developing technologies for transportation biofuels,
based on feedstock from either the agricultural sector or the forestry sector, broadly categorized as first and
second generation biofuel technologies, respectively. However, due to growing concerns over negative spill-over
effects (e.g., food security) from using agricultural feed-stocks, the development of second generation
technologies has become more important. The expansion of second generation production facilities will also
affect the feed-stock markets. Thus, an important question is how large-scale developments of second generation
transportation biofuels will affect the market price for forest resources? This will not only resonate back to the
feasibility of the investment decision itself but also affect the competitive situation for the other areas the forest
resources are used. Moreover, the local and regional price effects might be more severe than what might be
suggested by using national averages. Spatial considerations and dimensions are therefore important to
incorporate in order to obtain reliable results and implications.
For second generation technologies, the main industrial framework covered in the literature centres around the
concept of ‘biorefineries’. A biorefinery can be described as sustainable processing of biomass into a wide range
of marketable products and energy carriers [1]. This can be either in the form of stand-alone production facilities
or as add-ons to existing industrial processes, i.e., the production of chemical pulp. Initial research efforts
focused on the technological dimension of producing transportation biofuels and energy from forest resources. In
more recent years, and as new bioenergy conversion technologies mature, the focus shifted to studies on the
techno-economic feasibility of large-scale implementation of biorefineries. To this effect, the empirical literature
has focused primarily on model development, either by system analyses or by analysing new and improved value
chains of biorefineries. The focus of such models spans a number of themes that covers issues related to e.g., the
procurement costs of forest resources, logistics, and optimal localization of biofuel conversion capacity. An
important strand of literature empirically analyse biofuel supply chains, integrated into existing industrial
processes [2-5]. Another development in the literature is the explicit treatment of the spatial dimension. Much of
the modelling effort uses geographical information system (GIS)-based models that explicitly account for the
spatial dimension [6-11], and/or a hybrid approach which uses a techno-economic routine of cost-minimization
of the whole value-chain, all the while explicitly incorporating the spatial dimension [12-20].
The objective of this paper is to develop a spatial price determination model of forest resources that accounts for
the potential impacts of increased demand pressure from an expanding second generation biofuel industry. Price
determination is based on a bottom-up supply-demand framework, where local supply schedules are constructed
2
and used in conjunction with estimates of potential demand, at a gridcell level. As such, the model adopts a
spatial disaggregation of determinants. The developed framework will be applied on Sweden. Forest resources
are the major feedstock in the production of transport biofuels in Sweden. This is can be explained by (i) the
large endowment of forests in Sweden and (ii) a mature, large and export-orientated forest industry with
considerable flows of by-products suitable for biofuel value chains and technical adaptation. The increasing
production of transport biofuels using forest resources is in direct competition with the more traditional uses of
the resources from the forest industries. In addition, conservation, recreational use and ecosystem services are
also competing for the same resources. Many studies have pointed to the potential that exists in Sweden with
respect to the usage of forest resources for energy production [21-27]. In connection to that, a number of studies
have developed spatially-explicit harvest cost model and/or hybrid models [4, 28-31]. Lundmark [28] argue that
increased bioenergy production will not cause a major disruption in the supply of forest resources to the
traditional forest industries. Other studies in the Swedish context support this finding. For instance, empirical
studies on the factor substitution in the forest industries and the heating industry indicate that there exists a
potential for negative impacts on the heating industry from an increased feed-stock competition. However, the
parameter estimates are in general low, which suggests that the level of competition would remain relatively
limited [24, 30, 32]. Other studies, nonetheless, show that the feed-stock competition will on a global scale
increase significantly. Many factors will have an impact on this process. For instance, demand for forest
resources is projected to increase, driven primarily by increasing demand from developing economies. As global
market integration continues, coupled with reduced transport cost, the trade in forest resources is also expected
to increase [26]. This is also true for the trade within EU, which is expected to be driven by the promotion of
bioenergy targets, in general and by transportation biofuels targets in particular [33]. Countries with large forest
endowments will most likely have a major role in meeting the targets. Sweden has been shown to have a
moderate potential to contribute to EU production of bioenergy by trading forest resources to EU [34].
Swedish forest sector In 2015, gross felling reached 92.6 Mm
3sk
based on the latest estimates from the Swedish Forest Agency’s
statistical database.1 The net felling volume was 74.4 million cubic metres solid volume excluding bark (Mm
3f
ub), of which 35.9 Mm3f ub of sawlogs (48.3%), 30.9 of pulpwood (41.5%), 7.1 of fuelwood (9.5%), and other
roundwood accounted for 0.5 Mm3f ub (0.7%). Figure 1 depicts the spatial distribution of gross felling volumes
in Sweden for 2013. Noticeable is that the northern and central counties have the highest gross felling. This is
connected to the fact that those counties also have the largest share of forest endowments.
The harvested volumes were predominantly used by the pulp and paper industry and the sawmill industry. They
accounted for 41 and 57 percent of the total net felling, respectively. Between 1995 and 2012, sawmills and the
pulp and paper mills increased their consumption of forest resources by 5 and 14 percent, respectively. The
overall industrial consumption of forest resources increased steadily from 59.7 in 1975 to its peak of 86.1 Mm3f
ub in 2005. This corresponds to an increase by 44 percent over the period. The consumption volume has declined
somewhat after 2005 due to various reasons. In 2012, the total consumption reached 81 Mm3f ub (incl.by-
products), which is a 6 percent decline compared to 2005 [35]. The declining trends can partly be explained by a
decline in the production capacity. Nonetheless, if all areas of usage are included, the total utilisation of forest
resources exhibits an increasing trend during the last decades. The decline in the industrial usage has been more
than off-set by an increasing use in the energy sector. Indeed, an increasing share of forest resources is being
converted to energy. Approximately 129 terawatt-hours (TWh) out of a total energy supply of 565 TWh comes
from biomass, which represents 23 percent of total energy supply. The increase in bio-based energy supply is
projected to continue owing to policy reforms that aim to decouple the Swedish economy from fossil fuels.
In terms of the spatial distribution of productive forest land and gross felling volumes, we notice that the
northern and middle counties in Sweden represent the largest share in terms of forest land endowment, and hence
in terms of supply of wood material. However, when investigating the county-level spatial distribution of gross
felling yield2 for productive forest land, we notice that the southern counties exhibit higher yields compared to
the northern counties (Figure A1, Appendix).
1 See
http://pxweb.skogsstyrelsen.se/Default.aspx?px_language=sv&px_db=Skogsstyrelsens%20statistikdatabas&rxid
=57840e53-1f66-45c7-bee8-a2a7dc29fabf [Last accessed 10/3/2016] 2 We compute gross yield of productive forest land in Sweden by taking the ratio of gross felling volumes (in
1000 m3sk) and productive forest land area (in 1000 ha).
3
Harvesting volumes and costs The supply-side dynamics is captured through the construction of regional supply curves using data on harvested
volumes and harvesting cost for different wood assortment, harvesting operation and geographical area
(gridcell)[31]. The supply covers four types of wood assortment: sawlogs, pulpwood, branches & tops, and
stumps. The harvesting operations are separated by final felling and thinning. Table 1 summarizes the total
volume harvested and average harvesting cost, by wood assortment and harvesting operation.
Table 1: Aggregate harvested volume and average harvesting cost in Sweden
Total supply (TWh yr-1) Average harvest cost (MEUR TWh-1)
Final felling
Sawlogs 75.3 20.7
Pulpwood 32.3 13.7
Branches & Tops 20.2 14.6
Stumps 16.0 22.1
Thinning
Sawlogs 14.1 25.1
Pulpwood 37.0 16.7
Branches & Tops 10.8 16.0
Source: Authors’ adaptation (Datasource: Lundmark et al. (2015) [31])
The spatial distribution of harvested volumes indicates that the harvesting is mainly concentrated in the southern
and central regions of Sweden. This finding holds true for all the wood assortments included in the analysis.
However, the spatial distribution for harvested volumes in thinning operations displays a stronger concentration
in the identified regions compared to final felling. Nonetheless, this finding is not surprising especially since the
spatial distribution of the gross felling yield of productive forest land in Sweden.
The harvesting cost is calculated per geographical area and is based on the results from Lundmark et al. [31].
They are constructed using a bottom-up approach using productivity measures together with unique
topographical and geographical information for the specific are. With respect to the spatial distribution of
harvesting cost, a fairly homogeneous cost structure across Sweden can be observed. The highest harvesting
costs are observed in the northern region of Sweden. However, there exists a substantial difference between the
spatial distribution of harvesting cost for final felling and thinning operations. For final felling, the harvesting
costs are characterized by a uniform spatial distribution, whereby higher costs occur in a limited scope in the
northern regions. This finding holds for all type of wood raw material. But for thinning operations, a different
spatial pattern can be observed. Indeed, it seems that the southern, and to a limited extent, the northern regions of
Sweden exhibit a strong concentration of higher harvesting cost in thinning operations compared to the central
regions of the country.
Demand scenarios The demand-side of the model consists of two parts. The first part describes the demand changes derived from an
expanding production of transportation biofuels to satisfy different policy targets. These demand changes are
results obtained from BeWhere-Sweden model simulations [29]. BeWhere-Sweden is a techno-economic,
geographically explicit optimization model to determine optimal localization and conversion technology of
integrated biorefineries. The strength of the model consists in its explicit treatment of spatial aspects of supply
and demand of forest resources from different sectors. The optimization routine of BeWhere-Sweden consists of
the cost minimization of the entire system cost, which includes harvest cost, transportation cost, and investment
costs of different technology alternatives, and various policy instrument constraints (e.g. taxes, subsidies). The
model is expressed as linear programming problem. The spatial dimension is captured via 334, 0.5x0.5 degrees,
gridcells (50km x 50km) representation of Sweden.
With respect to the demand side, we obtain input data under different scenarios of biofuel production targets in
Sweden from the BeWhere-Sweden model [29]. The data is provided at a spatial resolution identical to the data
on supply and harvest cost. The biofuel scenarios characterizing the demand for wood raw material pertain to
projected increase in biofuel production to supply transportation fuel in Sweden, which aims at achieving a
complete decoupling of the transport sector from fossil fuels by 2030. To this effect, the analysis includes three
scenarios (their effects are summarized in Table 2):
Business-as-usual (BAU) scenario, which captures current demand for wood raw material from its
different uses (incl. energy generation);
10TWh scenario, which represents the BAU scenario + a 10 terawatt hour biofuel production target for
use in the transportation sector; and
4
20TWh scenario, which represents the BAU scenario + a 20 terawatt hour biofuel production target for
use in the transportation sector.
Table 2: Demand scenarios in level and in percent change from BAU included in the analysis
Demand scenarios (in TWh yr-1)
BAU 10TWh 20TWh
Level Change (%) Level Change (%) Level Change (%)
Final felling Sawlogs 69.5 n.a. 71.2 3% 73.6 6%
Pulpwood 32.1 n.a. 32.2 0.2% 32.2 0.2%
Branches & Tops 14.6 n.a. 18.7 28% 19.9 36%
Stumps 1.1 n.a. 4.8 322% 10.7 835%
Thinning Sawlogs 5.7 n.a. 8.1 41% 12.4 117%
Pulpwood 36.4 n.a. 36.8 1% 36.9 1%
Branches & Tops 6.6 n.a. 9.9 50% 10.5 60%
Source: Authors’ adaptation (Datasource: Lundmark et al. (2015) [31], Wetterlund et al. (2013) [29])
The spatial distribution of demand indicates that for most of the wood assortments, the demand seems to be
concentrated primarily in the southern and, to a lesser extent, the central regions of Sweden under the BAU
scenario. This comes as no surprise owing to the fact that population and industrial density is higher in the latter.
However, it can be observed that demand peaks in particular locations in the northern regions. Comparing the
spatial distribution of demand for the scenarios suggest only small differences. For most of the wood
assortments, the demand intensity seems to be located within the same regions regardless of production target
(Figures A2-A8, Appendix).
Method This section will outline a bottom-up, spatially-explicit, supply-demand model of price determination for
geographically dispersed resources and fixed demand nodes. The geographical partition is based on
approximately 50x50 km gridcells. In each gridcell, a potential harvesting volume and cost is calculated per
wood assortment and harvesting operation. These volumes and costs constitute the building blocks for the
‘merit-order’ regional supply curve. In each gridcell a regional supply curve can be constructed for each wood
assortment by ranking the enclosed gridcells’ harvesting cost – from lowest to highest – and where the width of
the cost-order is the harvesting volume. The enclosed gridcells is determined by assuming a maximum
transportation distance (or by adding a constant transportation cost per km). This approach allows the
construction of a regional supply curve in any arbitrary gridcell.
The demand changes are exogenously given and reflect the change in demand in a specific gridcell in which new
or changed biofuel production capacity has been added. In order to account for the potential demand competition
between different locations (and uses), an adjusted-demand is estimated using a distance-decay framework.
Historically, distance-decay functions represent the workhorse tool that evolved in two separate fields of
research: spatial interaction studies in the social sciences and gene dispersal in genetics [36]. Within the
economic field, the most widely used model of spatial interaction is the gravity model, which is based on
Newtonian physics. The ‘gravity model’ has been used extensively within the international trade literature in
recent years. The objective of such models is to analyse the interaction between two ‘masses’ or ʻflowsʼ (e.g.
exports and/or imports flows, etc.) and how distance impacts competition among different locations [36-42]. For
the purpose of this study, a distance-decay adjusted demand is estimated in order to capture the potential
competition dynamics of demand nodes for the forest resources. This is achieved through the following:
𝑋𝐷𝑖,𝑚𝑎𝑑𝑗
= 𝑋𝐷𝑖,𝑚 + ∑ 𝑋𝐷𝑖,𝑚,𝑛𝑑𝑒𝑐𝑎𝑦
𝑛≠𝑚 (𝐸𝑞. 1)
and
𝑋𝐷𝑖,𝑚,𝑛𝑑𝑒𝑐𝑎𝑦
= 𝛼 × 𝑋𝐷𝑖,𝑚 × (1 − (𝑑𝑚,𝑛
𝑑𝑚𝑎𝑥)𝛾
) (𝐸𝑞. 2)
where 𝑋𝐷𝑖,𝑚𝑎𝑑𝑗
is the distance-decay adjusted demand for wood assortment 𝑖 in gridcell 𝑚; 𝑋𝐷𝑖,𝑚 is the demand
for wood assortment; 𝑋𝐷𝑖,𝑚,𝑛𝑑𝑒𝑐𝑎𝑦
is the distance-decay demand flow from gricell 𝑚 to gridcell 𝑛; 𝑑𝑚,𝑛 is the
distance matrix; 𝑑𝑚𝑎𝑥 is the maximum distance range and ; 𝛼 and 𝛾 are calibration parameters.
5
The equations suggest that an increasing demand in a specific gridcell will radiate outwards to neighbouring
gridcells with a diminishing effect. The effect will accumulate in gridcell that are affected by more than one
demand change. As a consequence, the most intense demand effect might be observed in gridcells within the
vicinity of several expected capacity expansions, but that does not have a capacity expansion itself. The main
objective is to capture how the expected increase in the demand for forest resources in a particular location (i.e.,
gridcell) competes with the demand from other locations. Figures A9-A15 (Appendix) display the results of the
distance-decay demand adjustment. The spatial price determination model is implemented using GAMS.
Results From results, we observe that the spatial distribution of the adjusted demand displays substantial changes when
comparing the BAU vs. 10TWh and the BAU vs. 20TWh scenarios. This is not a surprise, owing to the fact that
increased production of biofuels from wood material will put increased pressure on their demand. For sawlogs
from final felling and thinning, we notice that the locus of high demand locations is concentrated in the southern,
and to a lesser extent, middle regions of Sweden (Figures A9 and A13, Appendix). The situation seems to be
reversed for pulpwood, where we observe that demand seems to be clustered in the in the middle regions of
Sweden, primarily eastward along the coast where urban agglomerations are largest (Figures A10 and A14,
Appendix). For both sawlogs and pulpwood, the spatial distribution does not exhibit differential across scenarios,
i.e. BAU vs. 10TWh vs. 20TWh. The only difference corresponds to the degree of diffusion and level of the
adjusted demand.
A different situation emerges for branches & tops and stumps. Whereas there does not seem to be stark
differences between the 10TWh and 20TWh scenarios in terms of spatial distribution; there exists, however, a
significant shift in the adjusted demand between the BAU scenario on one hand and the 10TWh and 20TWh
scenarios on the other hand. Indeed, we notice that under the BAU scenario, the southern regions in Sweden
concentrate the locus of locations with the highest level of demand. Whereas these regions contain still an
important locus of demand point, we observe that the locus of the highest demand points shifted to the mid-
northern regions under the 10TWh and 20TWh scenarios (Figures A11-A12 and A15, Appendix).
As argued earlier, we use regionally-constructed supply curves and the distance-decay adjusted demand to gauge
the potential impact of increased production of biofuels on market prices of wood raw materials. Table 4
summarizes the aggregated results in terms of percent impacts.
In terms of magnitude of impacts, we notice that prices are projected to increase the most for pulpwood and
branches & tops. In addition, we notice that the impacts are slightly larger for final felling compared to thinning.
For pulpwood, the price increase ranges from 0.004% to 18.95% for final felling and 0.01% to 14.19% for
thinning; whereas for branches & tops, it ranges from 0.001% to 7.17% for final felling and from 0.01% to
1.91% for thinning. However, we notice that the average percent change in prices is not high where it reaches
0.93% and 0.99% for pulpwood from final felling and thinning respectively. Similarly, average impact for
branches & tops reaches 0.45% and 0.38% for final felling and thinning respectively. This indicates that the loci
of locations that exhibit the maximum impacts in terms of price change are few and limited in numbers. For
stumps from final felling and sawlogs from thinning, the results did not yield any impact on prices. Hence, there
are no results reported (Table 3).
In terms of the spatial distribution of the price changes, we notice that the latter behaves as expected given that it
matches the spatial distribution of demand. However, the magnitude of the price does not always correspond to
areas where the demand pressure is higher. This is so given that we must take into consideration the spatial
distribution of supply. Indeed, some of the highest impacts in terms of price change are located in locations with
relatively low-to-moderate demand pressure. However, these locations are also characterized by a relative supply
scarcity of wood material. This is typically the case in northern regions in Sweden. Another finding is that there
exists little change with respect to impact on prices between the two biofuel scenarios analysed. The impact
seems to be more pronounced, as previously argued on aggregate, for final felling vs. thinning. Also, the level of
dispersion of price impacts is larger for final felling compared to thinning operations (Figures A16-A20,
Appendix).
6
Table 3: Summary of impacts on prices of wood raw material by biofuel production scenarios in level and
in percent change
Scenario 1: 10 TWh Scenario 2: 20 TWh
Level (MEUR/TWh) Percent change Level (MEUR/TWh) Percent change
Avg Max Min Avg Max Min Avg Max Min Avg Max Min
Fin
al f
elli
ng
Sawlogs 19.8 20.7 19.1 0.23 1.13 0.002 19.8 20.7 19.1 0.23 1.13 0.002
Pulpwood 13.3 16.7 12.7 0.93 18.95 0.004 13.3 16.7 12.7 0.93 18.95 0.004
Branches
& Tops 13.9 15.7 13.6 0.45 7.17 0.003 13.9 15.7 13.6 0.45 7.17 0.001
Stumps 21.2 22.1 20.8 n.a. n.a. n.a. 21.2 22.1 20.8 n.a. n.a. n.a.
Th
inn
ing Sawlogs 24.1 25.7 22.5 n.a. n.a. n.a. 24.1 25.7 22.5 n.a. n.a. n.a.
Pulpwood 16.4 20.5 15.0 0.99 14.19 0.01 16.4 20.5 15.0 0.99 14.19 0.01
Branches
& Tops 15.6 16.8 14.9 0.38 1.91 0.01 15.6 16.8 14.9 0.38 1.91 0.01
Conclusions In this paper, an original, spatially-explicit price determination model is developed. The model is used to analyse
the price impacts of increased transportation biofuel production in Sweden and its spatial characteristics. The
model is applied using a scenario-analysis of potential increased transportation biofuel production in Sweden.
Two scenarios are developed for 10 and 20 TWh production of transportation biofuels using second generation
technologies per year.
Overall, to achieve the scenario goals using the location, input mix and technology choice suggested by
BeWhere-Sweden, the price of forest resources would only moderately increase. The average price increase does
not exceed one percent. The simulation results show that the spatial distribution of price changes does not track
spatial distribution of demand pressure, which holds for the 10 TWh and 20 TWh scenarios. The largest impacts
are observed in the southern and middle parts of Sweden, despite large endowments of forest, and this is due to
high demand clustering owing to population density, industrial cluster, etc. However, relatively large impacts
can be observed in the northern regions as well, especially for biomass obtained via the thinning operation. The
spatial distribution of the price changes differ depending on type of harvest operation (final felling vs. thinning).
Biofuel production targets might affect the spatial distribution, but relatively minor.
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Appendix
Figure A1: County-level spatial distribution of productive forest land (in 1000 ha) (left), gross feeling volumes (in 1000 m3sk) (center) and gross feeling yield (in m
3sk ha
-1)
(right)
Data source: Skogstatistika årsboken, 2014 [35]
10
Figure A2: Spatial distribution of demand of sawlogs from final felling under the 10TWh (left) and
20TWh scenario (right)
Figure A3: Spatial distribution of demand of pulpwood from final felling under the 10TWh (left) and
20TWh scenario (right)
Figure A4: Spatial distribution of demand of branches & tops from final felling under the 10TWh (left)
and 20TWh scenario (right)
11
Figure A5: Spatial distribution of demand of stumps from final felling under the 10TWh (left) and 20TWh
scenario (right)
Figure A6: Spatial distribution of demand of sawlogs from thinning under 10TWh (left) and 20TWh
scenario (right)
Figure A7: Spatial distribution of demand of pulpwood from thinning under the 10TWh (left) and 20TWh
scenario (right)
12
Figure A8: Spatial distribution of demand of branches & tops from thinning under the 10TWh (left) and
20TWh scenario (right)
13
Figure A9: Spatial distribution of distance-decay adjusted demand of sawlogs from final felling under the
10TWh (left) and 20TWh scenario (right)
Figure A10: Spatial distribution of distance-decay adjusted demand of pulpwood from final felling under
the 10TWh (left) and 20TWh scenario (right)
Figure A11: Spatial distribution of distance-decay adjusted demand of branches & tops from final felling
under the 10TWh (left) and 20TWh scenario
14
Figure A12: Spatial distribution of distance-decay adjusted demand of stumps from final felling under the
10TWh (left) 20TWh scenario (right)
Figure A13: Spatial distribution of distance-decay adjusted demand of sawlogs from thinning under the
10TWh (left) and 20TWh scenario (right)
Figure A14: Spatial distribution of distance-decay adjusted demand of pulpwood from thinning under the
10TWh (left) and 20TWh scenario (right)
15
Figure A15: Spatial distribution of distance-decay adjusted demand of branches & tops from thinning
under the 10TWh (left) and 20TWh scenario (right)
16
Figure A16: Spatial distribution of price impacts for sawlogs from final felling under 10TWh scenario
(left) and 20TWh scenario (right) in Sweden (in %change from BAU)
Figure A17: Spatial distribution of price impacts for pulpwood from final felling under 10TWh scenario
(left) and 20TWh scenario (right) in Sweden (in %change from BAU)
Figure A18: Spatial distribution of price impacts for branches & tops from final felling under 10TWh
scenario (left) and 20TWh scenario (right) in Sweden (in %change from BAU)
17
Figure A19: Spatial distribution of price impacts for pulpwood from thinning under 10TWh scenario
(left) and 20TWh scenario (right) in Sweden (in %change from BAU)
Figure A20: Spatial distribution of price impacts for branches & tops from thinning under 10TWh
scenario (left) and 20TWh scenario (right) in Sweden (in %change from BAU)