Towards a Dynamic Multi-criteria Approach based on GIS and
MCDM for Wind Farm Site-selection in Morocco
Asmae Azzioui
1a
, Rafika Hajji
2b
, Mohammed Ettarid
3
and Moulay Hafid Bouhamidi
1
1
Exploration Department, Masen (The Moroccan Agency for Sustainable Energy), Rabat, Morocco
2
Department of Geodesy and Topography, Hassan 2
nd
Institute of Agronomy and Veterinary Medicine, Rabat, Morocco
3
Department of Photogrammetry and Cartography, Hassan 2
nd
Institute of Agronomy and Veterinary Medicine, Rabat,
Morocco
Keywords: Wind
Energy, Site-selection, GIS, MCDM, Criteria.
Abstract: Wind energy is one of the most available energies in Morocco that could contribute appreciably to the
improvement of national energy mix. Thus, identifying optimal locations for wind farm energy is a key issue
in the wind energy development process. However, site selection is a complex study that involves not only
technical considerations, but also economic, social and environmental requirements. Our research aims to
develop a dynamic, comprehensive, multiscale and multi-criteria approach for the assessment of quality wind
power sites resulting from an in-depth bibliographic study and extensive consultation of a set of professionals
in the field. Our approach is based on Geographic Information System (GIS) and Multi-Criteria Decision
Making analysis (MCDM) to assess suitable locations for wind farm energy in Morocco. The approach is
aimed to be dynamic by consideration of relevant criteria for site selection and by using data of high quality
and resolution. This paper aims to present the framework of our research. We start by exposing and analysing
basic concepts and methods of wind farm site selection from the literature, then we present and discuss the
first methodological guidelines of the research.
1 INTRODUCTION
During the current century, energy has become one of
the most critical issues in human life, due to global
warming, air pollution and other issues caused by
fossil fuels. Energy is one of the important inputs for
economic development and power generation (El
Khchine et al., 2019).
Wind is one of the renewable sources of energy
which have an important role in the mitigation of
climate change. In the world, the global wind
installed capacity was around 651 GW at the end of
2019. It accounted for around 5.3% of global
electricity production in 2019
(www.connaissancedesenergies.org). Wind energy is
a clean energy (a wind turbine does not consume
water and is not pollutant) which is characterized by
a very low surface footprint and a negligible impact
on biodiversity (IEA, 2013). In particular, offshore
wind energy is becoming more attractive due to the
a
https://orcid.org/0000-0003-3367-336X
b
https://orcid.org/0000-0002-1291-397X
restrictions of land availability for onshore
installations. The cumulative annual capacity of
offshore wind energy has tripled over the past five
years, reaching around 28.3 GW (Sönnichsen, 2020).
Offshore resources are by far the most interesting in
terms of potential thanks to the regularity of their
wind (no turbulence created by landforms or
buildings and locally characterized by low roughness)
and their limited impact on the terrestrial landscape.
Morocco benefits from an exceptional wind
potential due to its good climatic and geographic
conditions. Its potential is estimated at 25 GW (1215
MW installed until the end of 2018) in identified on-
shore regions and at 250 GW along 3,500 km of off-
shore regions (the equivalent of 10 times the national
wind potential in on-shore (MEM, 2015)). Several
actions have been undertaken to increase the access
to electricity produced from renewable energies as
part of the objectives of reducing Green House Gas
(GHG) emissions and ensuring 52% of the country’s
energy mix from renewable sources by 2030. Masen
(Moroccan Agency for Sustainable Energy), is the
national agency responsible for managing renewable
energy in Morocco by developing integrated projects
to reach an objective of an additional 3,000 MW of
clean electricity capacity by 2020 and a further 6,000
MW in 2030 (www.masen.ma).
Wind project development begins with a
prospecting phase which consists of identifying
potential wind power sites with maximum energy
production and minimum of CAPEX (CAPital
EXpenditure) (EWEA, 2009). Site selection occurs at
a stage in the development process before significant
resources have been allocated to a particular site
(Shaheen et al., 2016). Furthermore, building a wind
power plant is a costly process. Although the average
service life of a typical wind turbine is about 20 years,
site selection has to consider the return of investment
on them.
Site selection of wind farms is a complex study.
This is due to the multiplicity of constraints and
parameters to be considered (environmental,
topographical and geographical, public opposition,
regulatory barriers, etc). In other words, planners are
facing a double challenge as they have to design
projects that will contribute to economic growth
while minimizing environmental risks and reducing
opposition from local stakeholders. Consequently, it
is required to identify (assess) suitable locations for
the development of wind farms.
"Multi-Criteria Decision Making analysis
(MCDM) aims to provide a decision-maker with the
tools to progress in solving the decision problem
where several points of view, often contradictory,
must be taken into account"(Chakhar, 2006). MCDM
is one of the best-known branches of decision
analysis in research which contribute to solve
problems involving variety of factors. The MCDM
deals with the decision-making process in the
presence of multiple objectives. The goal is to choose
among several alternatives using a number of
decision criteria (Ben Mena, 2000). In the literature,
the process of choosing wind farm sites is generally
treated under a MCDM approach combined to GIS to
analyze the potential locations of a wind farm. The
particular characteristics of GIS and MCDM
complement each other. GIS has great capabilities for
manipulating, storing, managing, analyzing and
visualizing geospatial data, while MCDM provides a
collection of procedures, techniques and algorithms
to solve complexities in decision making, for
structuring, designing, evaluating and prioritizing
alternative decisions (Gigović et al., 2017).
This paper aims to provide a bibliographical
review of the methods of wind farm site selection and
to highlight and discuss the first methodological
guidelines for our ongoing research. The first part
(section 2) is devoted to a state of the art of the used
approaches for wind site-selection both in the global
and local context of Morocco. The second section
analyses and discusses the existing methodologies
and then defines the objective and research
methodology. While the third section presents and
discusses the proposed approach. Finally, the paper
ends with a conclusion.
2 BACKGROUND
2.1 Wind Farms Site-selection Criteria
There are two types of variables in an MCDM
approach for site selection (Eastman et al. 1993):
Constraints or exclusion criteria: based on
Boolean criteria (true/false), are in the form of
a limit threshold, a buffer zone, a setback
distance, allowing the exclusion of some zones
upstream of the site selection procedure
(Sánchez-Lozano et al., 2016).
Selection or ranking criteria (also called
factors) allows assessing the degree of
opportunity of a site. They are associated with
preference parameters (e.g. weight,
discrimination thresholds, etc.) according to
their importance (Chakhar, 2006). They define
areas or alternatives based on a continuous
measure of suitability, reinforcing or
diminishing the importance of an alternative
resulting from the exclusion of areas defined by
restrictions (Gigović et al., 2017).
Selecting a site for a wind farm requires taking
into account several criteria and adopting assessment
methods to determine the best possible location and
to minimize or eliminate obstacles to the development
of wind power. Fig. 1 shows an example of the
hierarchical structure of the decision process. It
contains four levels: goal, constraints, objectives or
criteria and factors.
Figure 1: Decision Process hierarchy (Adapted from
Cathcart, 2011).
The success of a wind project depends on the
correct choice of a site which takes into consideration
a variety of criteria: technical aspects (regular wind
potential without excessive turbulence, topography,
proximity to the electricity and road network, size of
the project / land, etc.), technical easement constraints
(aviation easements, housing and forest), socio-
economic constraints and aspects of land use
planning, local acceptance, environmental constraints
(visual and sound impact, land use, protected areas
and issues related to birds and bats) and the landscape
(emblematic sites, remarkable landscapes, registered
or classified sites, etc.). Table 1 represents the results
of a bibliographical review about site selection
criteria, covering a large number of studies carried out
in various countries around the world.
Site selection is also the cornerstone to the success
of offshore wind farm projects, both economically
and technically. An offshore site must be selected in
terms of wind speed, depth of the sea, territorial
waters, military zones, civil aviation, maritime traffic
(shipping roads), pipelines and submarine cables,
aquaculture, sand and gravel extraction areas, marine
archaeology sites, seascapes as public heritage,
offshore renewable energy projects already installed
in the region of interest and their corresponding
characteristics (water depth, distance to shore,
distance from the operation and maintenance base,
seabed geology, social and regulatory issues, safety).
In addition, relatively minor environmental and social
concerns, such as noise and visual impact from wind
farms, movement of birds and mammals, may place
restrictions on offshore wind farm sites. Many other
limitations, such as the location of oil and gas
platforms and mining areas, are typically taken into
account in other countries when identifying the site of
a wind farm. Bathymetry and properties of the seabed
should be carefully considered as soil structure
influences the cost of turbine installations (Argin et
al., 2018).
2.2 Wind Site-selection Approaches
Many studies have associated GIS with topics related
to wind energy (Gigović et al., 2017) (Sánchez-
Lozano et al., 2016) (Hansen, 2005). GIS capabilities
facilitate the work of decision-makers to identify
potential sites for wind turbines, and can so save time
and reduce the financial costs of a project (Mari et al.,
2011). The input database is made up of dozens of
parameters to be evaluated (map of wind speeds,
distance to roads, etc.), and the resulting output is a
suitability map of the optimal sites for the installation
of wind turbines. GIS are efficient tools for spatial
and multi-criteria analysis. However, they lack a set
of mechanisms allowing the integration and the
evaluation of conflicting objectives and criteria
(Laaribi, 2000). While MCDM methods are
considered as an efficient approach to such a complex
decision problem.
(Malczewski, 2006) lists 319 works which
integrated GIS and MCDM during the period 1990-
2004, in the field of science, urban planning,
environment, transport, agriculture, ecology, remote
sensing, biology and engineering. In particular, the
number of studies using GIS-based MCDM for
planning of wind farms is low and some of them are
to be reviewed here. The GIS-based MCDM
approach gained significant interest in early 2000’s
and has been utilized in several countries like Turkey,
Greece, Denmark, USA, UK, Germany, Poland,
Vietnam and Sweden. Several researchers have
grouped site selection problems under various topics
such as network layout, mixed integer programming,
capacity-limited, hierarchical, single/multiple
product, fixed/flexible demand, static/dynamic
period, deterministic/ stochastic, single/multiple
objective models, etc (Malczewski, 2006).
The main categories of methodologies include: a)
Outranking methods; b) Value / Utility based
methods; c) Interactive methods programming and
d) Other methods, which we expose in the next
paragraphs.
a) Outranking methods, such as the ELECTRE
(Elimination and Choice Translating Reality)
families, the PROMETHEE (Preference Ranking
Organization Method for Enrichment Evaluation)
and TOPSIS method (Technique for Order of
Preference by Similarity to Ideal Solution): These
methods use pairwise comparisons between potential
alternatives and establish an outranking relationship
between them.
b) Value / Utility based methods (American
School), such as Multi-Attribute Utility Theory
(MAUT), Simple Multi-Attribute Rated Technique
(SMART), Analytic Hierarchy Process (AHP), Simple
Additive Weighting (SAW): their purpose is to create
a utility function of values that groups together the
decision-maker preferences about evaluation criteria.
This formula provides a quantitative mode which
guides the decision maker.
c) Interactive methods – programming: like
Artificial Neural Network (ANN). They are based on
an iterative process. At the start, the analyst
establishes an initial solution. The decision-maker
responds by providing additional data about the
preferences. This additional information is then
introduced into the model during the next calculation
step. The procedure is repeated until an acceptable
solution is reached (Aydogan et al., 2017).
d) Other methods such as NAIADE (Novel
Approach to Imprecise Assessment and Decision
Environment), Flag model and SMAA (Stochastic
Multi-Criteria Acceptability analysis), among others:
there are just different types of techniques that are
difficult to put into any of the categories mentioned
above.
Regarding the application of MCDM methods,
restricted or exclusion zones where it is strictly
forbidden to install wind turbines are excluded from
the beginning of the studies (Gigović et al., 2017)
(Atici et al., 2015) (Noorollahi et al., 2016), either by
the Fuzzy method (Aydin et al., 2009), or by the
Boolean method (Latinopoulos et al., 2015).
Subsequently, the most important factor in the
MCDM is how to affect "weights" to a set of criteria
according to their importance. According to (de
Lourdes Vazquez et al., 2011), the weight of factors
is calculated from interviews with different actors and
professionals. They estimate their scores based on
political, environmental and economic standards.
(Hansen, 2005) used direct assignments of criteria
weights based on common sense or subjective
opinion of authors. (Latinopoulos et al., 2015);
(Sánchez-Lozano et al., 2016) ; (Bennui et al., 2007)
evaluated the weights of the criteria by the AHP
method, which is the most widely used method to
quantify the weight according to the expert opinion.
It consists in ranking the criteria through a
comparison matrix. To overcome the drawback of
inconsistently when assigning weight, a Fuzzy
Analytic Hierarchy Process (FAHP) which combines
fuzzy theory with AHP can be used on each factor to
determine the fuzziness weight of its attributes. It is
an improvement addressing “the vagueness,
imprecision and uncertainty associated with the
process” of traditional hierarchy process (Asakereh et
al., 2017). (Baban et al., 2000) tested two methods.
First, the authors standardized the factors into the
same number of classes. Then, the first method
consists in superimposing the factors with equal
weights (Aydin et al., 2009), and the second, in
combining them with weights derived from AHP.
Their results favor the second method. (Sánchez-
Lozano et al., 2016) combined the AHP method for
analyzing and weighting the factors and the TOPSIS
method (Villacreses et al., 2017) for assessment of
alternatives. TOPSIS is a method based on the
concept that the chosen alternative should have the
shortest distance from the positive ideal solution and
the farthest from the negative one (Sánchez-Lozano
et al., 2013). The final ranking is obtained using a
closeness index. In terms of the combination of the
criteria, the three most frequent methods are
Weighted Linear Combination (WLC) (Latinopoulos
et al., 2015) (Hansen, 2005), Weighted Index Overlay
(WIO) (Noorollahi et al., 2016), Ordered Weighted
Averaging (OWA) (Aydin et al., 2009); (Villacreses
et al., 2017). Thematic maps must first be
standardized into the same number of classes for the
three methods. The difference between the methods
is that the OWA studies two variables, the order of
importance of the factor and its weight. This method
is used in conjunction with the Fuzzy approach.
While the WLC and WIO methods build the decision
map using just the weight of the factors.
In the category c) of methods, MCDM hybrid
model combining fuzzy multi-criteria analysis with
analytical capabilities that SOLAP systems (Spatial
OnLine Analytical Processing) can provide is used to
evaluate, rank and select the strategic industrial
location for implanting new business corporation in
the region of Casablanca (Hanine et al., 2013). In this
kind of models, data is well organized multi-
dimensionally so that the decision makers could
analyze them interactively and iteratively at a detailed
and/or aggregated level. The main difference between
these techniques, and others consist at the ability to
control the temporal evolution (time dimension’s
role) of a given problem.
ANN method was applied to identify suitable
areas for the installation of Photo-Voltaic (PV)
systems. The final index is determined by combining
the quantitative criteria using an ANN, trained with
values corresponding to the sites of existing PV plants
in the given region (Mondino et al., 2015). (Ari et al.,
2020) proposes within the scope of linear
programming perspective, two models using mixed
integer linear programming based on power
maximization. In (Ari et al., 2020), three approaches
were examined based on MCDM methods: SMAA (a
simulation-based approach with different kinds of
uncertain information), AHP (a conventional
deterministic approach), and AHP-SMAA (a hybrid
approach) were applied separately in Turkey.
(Shaheen et al., 2016) proposed an efficient method
for utilization of data mining techniques in wind site
selection.
Dynamic multi-criteria decision making
(DMCDM) is an emerging subject in the decision-
making field until the challenge to consider time as an
interesting variable has become important.
(Campanella et al., 2011) proposed a flexible
framework as a general DMCDM model that
combines feedback information (historical data) with
current information, for each alternative, in a spatial-
temporal decision process. Further, the dynamic
decision model was adapted for a business-to-
business general supplier selection process. (Jassbi et
al., 2014) investigates an MCDM model for group
decision making, by taking into consideration its
dynamic perspective. A case-study about hotel
ranking, involving multi-groups in the decision-
making process is sketched to illustrate the approach.
(Jassbi et al., 2014) introduces a DMCDM with future
knowledge for supplier selection. In this work, the
authors extend a dynamic spatial-temporal
framework, designed to deal with historical data
(feedback), to address the problem of considering
future information/knowledge (feed-forward).
Recently, (Thong et al., 2020) proposed an extension
of dynamic internal-valued neutrosophic sets. Based
on this extension, the authors develop some operators
and a TOPSIS method to deal with the change of both
criteria, alternatives, and decision-makers by time.
(Dissanayake et al., 2020) explicitly incorporated
linkages between inter-temporal price changes and
location of selected and future reserve sites in a
dynamic optimization framework. This study
presents a two-period linear integer programming
model for conservation reserve design that
incorporates amenity driven price feedback effects
inherent in the reserve development problem.
(González-Prida et al., 2014) presented the proposed
methodology called DAHP (Dynamic AHP). In short,
the DAHP applies the same AHP methodology but
considers the influence of the decisions in the
boundary conditions. In other words, while the AHP
provides a fixed picture of a system in a specific
moment with its best local decision, the DAHP
provides a motion picture of the system where the
best decision can be different to the ones calculated
in determined moments.
2.3 Analysis and Discussion
Several studies relative to the development of wind
energy aimed at assessing the suitability for sites
selection based on various MCDM methods. The
adopted techniques have both advantages and
disadvantages, which are summarized in (Choudhary
et al., 2012). The most widely used MCDM method
is the AHP method proposed by (Saaty, 1980) and
WLC for energy planning. AHP is universally
recognized for its robustness, flexibility, ease of
application and its suitability for complex decision-
making processes. Furthermore, it allows the
integration of qualitative and quantitative criteria and
permits testing the consistency of the weight
allocation process by reducing the bias in the
decision-making progression. However, some
authors who use AHP do not provide a consistency
ratio and do not include pairwise comparison
matrices. The authors also pointed out that because of
the specificity of the decision-making process in
energy planning, hybrid methods of MCDM are
increasingly used. Some of the drawbacks of the AHP
method are the large number of pairwise comparisons
needed as the number of alternatives increases
(Choudhary et al., 2012) and the critic regarding the
measurement scale of the pairwise comparisons. In
addition, in many cases, AHP cannot give a good
representation of reality, as general preferences from
a point of view are very difficult to model by a single
function.
Moreover, in the literature, no consensus on the
ranking order nor the relative importance of the
criteria could be found. In some cases, authors assign
weights based on their previous experiences or by
using questionnaires and interviews (involving
experts, planners and students). According to (Uyan,
2017), collecting expert opinion is the best option for
assigning relative weights. However, it is important
that the experts should be familiar with the study area.
According to (Uyan, 2017), using the same criteria
and restrictions for different areas is a mistake. Some
relevant criteria may be applied in the same way
around the world (e.g. wind speed), but others vary
widely due to market differences in national
regulations and laws (e.g. distance from urban areas).
While the constraints are similar in the works
mentioned (Table 1), some differences exist in the
nuances of the thresholds between countries, which
are linked to land and landscape development and
planning.
They are more or less rigorous from one
Table 1: Bibliographical review of site selection criteria.
region to another depending on local issues. For
example, in Turkey and Iran which are located in
areas with high seismic risk, the proximity factor to
faults is studied for security reasons but with low
weight compared to other factors (Atici et al., 2015)
(Noorollahi et al., 2016). In addition, the karstic
geomorphological structure was excluded from the
study on the area between Washington State and
Oregon, since the risks associated with the
development of this formation are varied. (Bennui et
al., 2007) is the most demanding on the distance
between a wind farm and rural (> 2,500 m) and urban
(> 1,000 m) area. Their choice may be related to the
vast rural and populated areas of Thailand. Another
example is about Turkish legislation which imposes
thresholds concerning noise pollution, safety, nature
reserves and the size of surfaces occupied by wind
turbines (Atici et al., 2015). On the other hand, it
considers forests as potential sites (Aydin et al.,
2009). The distance to the electrical grid is one of the
10 most important criteria defined by the American
Wind Energy Association for the construction of
wind farms (AWEA, 2007). However, the importance
of this criterion in the literature is ambiguous. It
seems to depend strongly on the location of the study
area. The majority of studies use wind speed as the
first rank criterion. However, wind speed is a
parameter which varies significantly both spatially
and temporally. We therefore propose to opt for the
Wind Power Density (WPD) (Liu et al., 2020) which
is calculated on the basis of the frequency distribution
and allows to clearly understand the turbulence of the
resource.
2.4 The Moroccan Context
In Morocco, MCDM combined with GIS has been
used in recent years in the process of site selection for
the development of renewable energies. Particularly,
in solar site prospecting, the most quoted regional
studies are (Tahri et al., 2015); (Tazi et al., 2018);
(Azmi et al., 2017); (Sedrati et al., 2019) and (Kamli
et al., 2016) which are largely based on Boolean and
AHP methods. In the case of wind energy, we can
quote only three studies. The first one is conducted by
the CDER (Centre de Developpement des Energies
Renouvelables) and has resulted in a wind potential
map. However, the adopted method does not allow a
refined assessment of the suitability of a site. It is
mainly based on wind potential criterion for choosing
sites without considering exclusion criteria.
Moreover, the wind used data isn’t based on the
Moroccan Wind Atlas set up by Masen in the form of
a GIS database with high spatial resolution (2km)
covering the whole country with a buffer zone of 30
km offshore along the Moroccan coast.
The second study of (Elmahmoudi et al., 2020)
investigated the selection of the location of wind
farms in the Tarfaya region of Morocco. In order to
calculate the weight to be assigned to each criterion,
AHP, Fuzzy-AHP algorithm from Buckley and the
geometric mean Fuzzy-AHP method, were combined
to GIS. The third study of (Achbab et al., 2020)
presented a model based on GIS coupled with a
MCDM using the Fuzzy AHP method to locate a
hybrid solar-wind energy system with high potential
in the Dakhla region located in the south of Morocco.
Looking at the two studies, it turns out that they only
concern a small, particular region of Morocco, with a
limited number of criteria and no exclusion criteria
has been considered for the first one. In addition,
impacts on avifauna are not considered. Furthermore,
the used data have a limited spatial resolution (wind
data and electrical network).
In general, we can state that most current wind
farm site selection procedures lack systematic
methods and models, and are mainly based on ad hoc
decisions and individual experiences of the decision
makers or planners in charge. Therefore, this
motivates us to conduct this research in order to
propose an innovative approach based on a spatial
decision support system and advanced modelling
techniques which allow precise and dynamic
simulations of wind farm sites in Morocco.
3 OUR APPROACH
Our research aims to develop a dynamic approach for
wind sites selection, based on precise data and a
detailed analysis of relevant criteria for wind site
selection by including those related to environment
and social impact. Our approach will allow
simulation and assessment of various resulting
scenarios through a dynamic platform. Therefore, we
can arise the following questions: 1) What criteria are
relevant for site selection of wind turbines? 2) How
these criteria can be weighted? 3) Which approach to
be adopted for modelling the process and assessing
the potential location of wind turbines?
Some researches already exist in DMCDM area
but when compared with static decision-making
models, DMCDM needs more work to be applicable
in real industrial problems. The purpose of our study
is to deal with the change of criteria, alternatives, and
decision-makers during time. In a recent systematic
literature review (Shao et al., 2020) of MCDM
applications for renewable energy site selection
performed, covering a total of 85 papers published
from 2001 to 2018 in high-level journals, no article
has dealt with a dynamic simulation for wind site
selection.
Our research will also lead to two main outputs:
1) a proposal of a national standard for site selection
of wind turbines and 2) a national map for wind
potential which can serve as a support for the
establishment of the electricity grid in some
unconnected areas.
3.1 Methodological Workflow
Firstly, the aim of the process is to mask and eliminate
all the constrained areas. Then, the DAHP method
will be used to determine the weight of the factors.
The final map will be drawn by a weighted overlay of
thematic layers (WLC). Thus, an overall relevance or
suitability index (SI) will be calculated for each cell.
This method can be modified to meet the
requirements of experts and in the field. Sensitivity
analysis (SA) is a beneficial measure to include in
MCDM approaches because it allows a better
understanding of the sensitivity of outputs (i.e. areas
suitable for development) to errors, erroneous
assumptions, or disturbances in input values (ie,
criterion values and / or criterion weights). SA helps
to assess the accuracy and limitations of the model
(Chen et al., 2010). AS can therefore help to identify
areas of greatest uncertainty, and criteria that need to
be assessed. more carefully (Chang et al., 2008).
Wind farm sites will be identified after a
comprehensive approach is carried out upstream, over
a large area to locate potential areas for hosting wind
turbines. The identified areas are delimited and
prioritized and analysed in a more detailed way in
order to reach a suitable portfolio of sites.
Accordingly, the model will be applied first to the
national territory then by downscaling to each area of
interest. Finer resolution data will be used for refining
the site choice.
Figure 2 shows the basic steps of the
methodological workflow.
Figure 2: Methodological Workflow.
3.2 Material
Table 2 below summarizes the data to be used in the
process of wind site selection.
Since wind speed and WPD are the main criterion
for the wind sites assessment, the use of high quality
wind atlas is crucial. In the literature, most of the
authors use low quality and resolution (or
interpolated) wind maps (Liu et al., 2020).
Table 2: Data characteristics.
Data Format Source
Wind speed /
energy
Raster layer of wind
speeds, Wind power
density at 2 km
resolution at 60m,
80m and 120m above
ground
Masen (based on
mesoscale
simulation of
reanalysis data)
Cities and
towns
Vector layer
Digitized on
Google Maps
background
Road
Network
Map
Vector layer
http://www.diva-
gis.org/
Electric grid
map
Vector layer ONEE
Map of the
hydrographic
network
Vector layer of
watercourses and
bodies of water (dams
and lakes)
http://www.diva-
gis.org/
Airports
Vector layer
ICAO database
(International Civil
Aviation
Organization)
Data Format Source
Elevation
Digital elevation
model SRTM at 30m
resolution
SRTM (Shuttle
Radar Topography
Mission)
http://srtm.csi.cgiar
.org
Slope
Map of slopes in (%)
at 30m resolution
Calculated on the
basis of the DEM
Landuse
Raster layer of 24 soil
classes at 1km
resolution
USGS
Coasts
Vector layer (nearly
3500 km)
Digitized on border
of Morocco
Bodies of
water
Vector layer
http://www.diva-
gis.org/
Military
installation
& Dense
forest with
significant
heigh
t
Vector layer
Extracted from the
land use map
National
parks /
reserve /
protected
areas /
Ramsar /
SIBE
Vector layer from the
World Database on
Protected Areas
WDPA (Version
3.1)
Bird and bats
flight
corridor
Vector layer of IBA
(Important Bird
Area)
International
Database (Birdlife
International)
Furthermore, the database is to be completed by
physical or environmental data like the layer of
existing wind projects, summary map of technical
easements, map of regulatory protection of heritage
and landscapes, flood areas, landslide and karst risk
areas, map of landscape entities and other non-spatial
data (planning standards, environmental standard,
safety requirements, and location of sensitive
buildings).
3.3 Expected Results
This research aims to draw up a dynamic map of areas
suitable for wind power development and to elaborate
a procedural guide / standards for the choice of sites
for wind power projects. In the absence of legislation
and regulations related to wind energy in Morocco,
we used the bibliography and knowledge of the field
to choose the threshold of constraints and local
factors for wind prospecting. The most recurrent and
relevant factors and constraints in the literature and
adapted to Morocco were selected. Pairwise
comparison values were assigned based on the
literature analysis and our knowledge of the study
area to establish a criteria weighting matrix specific
to Masen.
4 CONCLUSIONS
Morocco has many natural resources and many assets
in terms of space which can allow reconciling the
development of sustainable energies, land use
planning and the preservation of the environment.
Our research focuses on wind energy which is one of
the most important sources of clean energy with high
potential in Morocco. We aim at developing a new
method for potential site selection. As the process is
multidimensional, the adopted approach should deal
with all the variables and the aspects of the decisional
process.
This research aims to set up a dynamic, innovative
and multiscale site choice approach using as input
very high quality data based on the combination of
GIS and MCDM in order to simulate location of
potential sites for large -scale wind power projects.
The input data and the weight of the criteria are
fundamental in defining the final result. Therefore,
the factors and criteria must correspond as much as
possible to the characteristics of the studied territory.
We are aware that the final decision is also the result
of other processes, such as political strategies.
However, the "scientific" identification of the best
solution is undoubtedly an important decision-
making support.
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